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市場調查報告書
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1682700

醫療保健的巨量資料市場:各零件,硬體設備類別,軟體類別,各服務形式,展開選擇,各適用領域,各醫療保健業界,各終端用戶,各地區,各主要企業:2035年前的產業趨勢與全球預測

Big Data in Healthcare Market by Component, Type of Hardware, Type of Software, and Type of Service, Deployment Option, Application Area, Healthcare Vertical, End User, Geography, and Leading Players: Industry Trends and Global Forecasts, Till 2035

出版日期: | 出版商: Roots Analysis | 英文 331 Pages | 商品交期: 最快1-2個工作天內

價格

預計到 2035 年,全球醫療保健大數據市場規模將從目前的 780 億美元增長至 5,400 億美元,預測期內複合年增長率為 19.20%。

大數據分析在醫療保健領域的整合具有巨大的潛力,可以徹底改變行業並為服務提供者創造有利可圖的機會。從大量數據中匯總、分析和獲取可操作見解的能力可以增強臨床決策、優化資源分配並改善患者治療效果。此外,預測分析和機器學習演算法與大數據的結合可以實現更早的疾病檢測、個人化治療方案和精準醫療。這種範式轉變為服務供應商提供了開發創新解決方案的機會,例如即時監控系統和基於雲端的數據驅動診斷平台。總的來說,這些進步有可能顯著降低醫療成本、提高營運效率並提供更高品質的醫療服務。隨著醫療保健行業繼續採用大數據分析,其變革性影響和商業機會變得越來越清晰 - 並有望為醫療保健提供者和患者帶來翻天覆地的變化。

超過 405 家公司提供客製化解決方案和服務,幫助利用醫療保健領域的大數據,其中約 55% 的公司提供資料倉儲或資料湖用於資料管理和分析。

Big Data in Healthcare Market-IMG1

市場格局高度分散,各地區都有新進業者和現有企業,其中近 55% 為中型公司。各種分析模型從臨床、營運和財務數據中獲得見解。 23% 的參與者提供了用於大數據分析的綜合軟體套件,包括預測分析、規格分析和描述分析。隨著基於雲端的解決方案和服務的日益普及,醫療保健市場的大數據預計在未來 12 年內以 19.06% 的複合年增長率增長。高收入國家優先採用大數據解決方案來優化營運管理,進而提高醫療保健營運的效率和效力,進而推動市場收入。隨著對遠距醫療服務和個人化醫療的需求不斷增長,醫療保健市場的大數據為不同地區的參與者提供了有利可圖的機會。

Big Data in Healthcare Market-IMG2

按本報告提供全球醫療保健的巨量資料市場相關調查,提供市場概要,以及各零件,硬體設備類別,軟體類別,各服務形式,展開選擇,各適用領域,各醫療保健業界,各終端用戶,各地區的趨勢,及加入此市場的主要企業簡介等資訊。

目錄

第1章 序文

第2章 調查手法

第3章 經濟以及其他的計劃特有的考慮事項

第4章 摘要整理

第5章 簡介

第6章 市場形勢

第7章 重要的洞察

第8章 企業競爭力分析

第9章 企業簡介:北美的醫療保健的巨量資料服務供應商

第10章 企業簡介:歐洲的醫療保健的巨量資料服務供應商

第11章 企業簡介:亞洲及其他地區的醫療保健的巨量資料服務供應商

第12章 對市場的影響分析:促進因素,阻礙因素,機會,課題

第13章 全球醫療保健的巨量資料市場

第14章 醫療保健的巨量資料市場,各零件

第15章 醫療保健的巨量資料市場,各硬體設備類型

第16章 醫療保健的巨量資料市場,各軟體類型

第17章 醫療保健的巨量資料市場,各服務形式

第18章 醫療保健的巨量資料市場,展開選擇

第19章 醫療保健的巨量資料市場,各適用領域

第20章 醫療保健的巨量資料市場,各醫療保健業界

第21章 醫療保健的巨量資料市場,各終端用戶

第22章 醫療保健的巨量資料市場,經濟狀況

第23章 醫療保健的巨量資料市場,各地區

第24章 醫療保健的巨量資料市場,主要企業的收益預測

  • 章概要
  • 與主要的前提調查手法
  • Microsoft
  • Optum
  • IBM
  • Oracle
  • Allscripts

第25章 結論

第26章 執行洞察

第27章 附錄I:表格形式資料

第28章 附錄II:企業及團體一覽

Product Code: RA100475

BIG DATA IN HEALTHCARE MARKET: OVERVIEW

As per Roots Analysis, the global big data in healthcare market is estimated to grow from USD 78 billion in the current year to USD 540 billion by 2035, at a CAGR of 19.20% during the forecast period, till 2035.

The market sizing and opportunity analysis has been segmented across the following parameters:

Component

  • Hardware (Storage Devices, Servers, and Networking Infrastructure)
  • Software (Electronic Health Record, Practice Management Software, Revenue Cycle Management Software, and Workforce Management Software)
  • Services (Descriptive Analytics, Diagnostic Analytics, Predictive Analytics, and Prescriptive Analytics)

Deployment Option

  • Cloud-based
  • On-premises

Application Area

  • Clinical Data Management
  • Financial Management
  • Operational Management
  • Population Health Management

Healthcare Vertical

  • Healthcare Services
  • Medical Devices
  • Pharmaceuticals
  • Other Verticals

Economic Status

  • High Income Countries
  • Upper-Middle Income Countries
  • Lower-Middle Income Countries

End User

  • Clinics
  • Health Insurance Agencies
  • Hospitals
  • Other End Users

Geography

  • North America
  • Europe
  • Asia
  • Latin America
  • Middle East and North Africa
  • Rest of the World

BIG DATA IN HEALTHCARE MARKET: GROWTH AND TRENDS

The integration of big data analytics in the healthcare domain holds immense potential for revolutionizing the industry and unlocking lucrative business opportunities for service providers. The ability to aggregate, analyze, and derive actionable insights from vast amounts of data can enhance clinical decision-making, optimize resource allocation, and improve patient outcomes. Moreover, the integration of predictive analytics and machine learning algorithms with big data can enable early detection of diseases, personalized treatment plans, and precision medicine. This paradigm shift offers service providers the chance to develop innovative solutions, such as cloud-based platforms for real-time monitoring systems, and data-driven diagnostics. Collectively, these advancements have the potential to drastically reduce healthcare costs, enhance operational efficiency, and enable the delivery of higher quality care. As the healthcare industry continues to embrace big data analytics, the magnitude of the transformative impact and the vast business opportunities will become increasingly evident, revolutionizing the landscape for both providers and patients.

BIG DATA IN HEALTHCARE MARKET: KEY INSIGHTS

The report delves into the current state of the big data in healthcare market and identifies potential growth opportunities within the industry. Some key findings from the report include:

  • More than 405 players claim to offer customized solutions and services to support big data in healthcare initiatives, with around 55% offering data warehouses and data lakes for data management and analytics.
Big Data in Healthcare Market - IMG1
  • The market landscape is highly fragmented, featuring the presence of both new entrants and established players based across different geographical regions; close to 55% of such players are mid-sized companies.
  • Various analytical models derive insights from clinical, operational and financial data; 23% of the players offer a comprehensive software suite of big data analytics including predictive, prescriptive, and descriptive analytics.
  • Driven by the increasing adoption of cloud-based solutions and services, the big data in healthcare market is likely to grow at a CAGR of 19.06% over the next 12 years.
  • High-income countries are driving market revenues by prioritizing the deployment of big data solutions to optimize operational management, leading to enhanced efficiency and effectiveness in healthcare operations.
  • With the rise in demand for telehealth services and personalized medicine, the big data in healthcare market presents lucrative opportunities for players based across various geographies.
Big Data in Healthcare Market - IMG2

BIG DATA IN HEALTHCARE MARKET: KEY SEGMENTS

Hardware Component Occupies the Largest Share of the Big Data in Healthcare Market

Based on the type of component, the global market is segmented into hardware, services and software. At present, hardware holds the maximum share of the big data in healthcare market. It is worth highlighting that the market for software is likely to grow at a relatively higher CAGR.

Storage Devices are Likely to Dominate the Big Data in Healthcare Market During the Forecast Period

Based on the type of hardware, the global market is segmented into storage devices, networking infrastructure and servers. At present, storage devices hold the maximum share of the big data in healthcare market. This trend is unlikely to change in the near future.

Electronic Health Records Occupy the Largest Share of the Big Data in Healthcare Market

Based on the type of software, the global market is segmented into electronic health record (EHR), practice management software, revenue cycle management software and workforce management software. At present, electronic health record holds the maximum share of the big data in healthcare market. This trend is unlikely to change in the foreseeable future. The increasing demand for EHRs can be attributed to the growing adoption of digital health technologies and the global efforts towards interoperability in healthcare systems.

Diagnostic Analytics is Likely to Dominate the Big Data in Healthcare Market

Based on the type of service, the global market is segmented into descriptive analytics, diagnostic analytics, predictive analytics, and prescriptive analytics. It is worth highlighting that, at present, diagnostic analytics holds a larger share of the big data in healthcare market. However, the global market for prescriptive analytics is likely to grow at relatively higher CAGR.

Cloud-based Deployment Captures a Considerable Proportion of the Big Data in Healthcare Market During the Forecast Period

Based on the deployment option, the global market is segmented into cloud-based and on-premises. At present, cloud-based deployment holds the maximum share of the big data in healthcare market. This trend is unlikely to change in the near future.

Operational Management Occupies the Largest Share of the Big Data in Healthcare Market

Based on the application area, the global market is segmented into clinical data management, financial management, operational management and population health management. It is worth highlighting that majority of the current big data in healthcare market is captured by the operational management segment.

Medical Devices are the Fastest Growing Segment of the Big Data in Healthcare Market During the Forecast Period

Based on the healthcare vertical, the global market is segmented into healthcare services, medical devices, pharmaceuticals, and other verticals. It is worth highlighting that, at present, healthcare services hold a larger portion of the big data in healthcare market. However, the global market for medical devices is likely to grow at a relatively higher CAGR.

Hospitals are Likely to Dominate the Big Data in Healthcare Market During the Forecast Period

Based on the end-users, the global market is segmented into clinics, health insurance agencies, hospitals and other end users. At present, hospitals hold the maximum share of the big data in healthcare market. This trend is unlikely to change in the near future.

High Income Countries Occupy the Largest Share of the Big Data in Healthcare Market

Based on the economic status, the global market is segmented into high income countries, upper-middle income countries, and lower-middle income countries. It is worth highlighting that the current big data in healthcare market is likely to be driven by revenues generated in high income countries.

North America Accounts for the Largest Share of the Market

Based on key geographical regions, the market is segmented into North America, Europe, Asia, Middle East and North Africa, Latin America, and Rest of the World. Majority share is expected to be captured by players based in North America. It is worth highlighting that, over the years, the market in Asia is expected to grow at a higher CAGR.

Example Players in the Big Data in Healthcare Market

  • Accenture
  • Akka Technologies
  • Altamira.ai
  • Amazon Web Services
  • Athena Global Technologies
  • atom Consultancy Services (ACS)
  • Avenga
  • Happiest Minds
  • InData Labs
  • Itransition
  • Kellton
  • Keyrus
  • Lutech
  • Microsoft
  • Nagarro
  • Nous Infosystems
  • NTT data
  • Oracle
  • Orange Mantra
  • Oxagile
  • Scalefocus
  • Softweb Solutions
  • Solix Technologies
  • Spindox
  • Tata Elxsi
  • Teradata
  • Trianz (formerly CBIG Consulting)
  • Trigyn Technologies
  • XenonStack

Primary Research Overview

The opinions and insights presented in this study were influenced by discussions conducted with multiple stakeholders. The research report features detailed transcripts of interviews held with the following industry stakeholders:

  • Chief Executive Officer and Founder, Emorphis Technologies
  • Chief Executive Officer and Co-Founder, DataToBiz
  • Chief People Officer and Co-Founder, Estenda Solutions
  • Vice President, Marketing, Growth Acceleration Partners
  • Business Head, OrangeMantra
  • Senior IT Inside Sales Lead, Soulpage IT Solutions
  • Senior Manager, Business Development, TechMango
  • Delivery Manager, W2S Solutions
  • Strategy, Research and Analyst Relations Manager, Tata Elxsi
  • Business Development Manager, OpenXcell
  • Business Development Associate, ThirdEye Data
  • Business Development Specialist Advisor, NTT Data Services
  • Business Development Executive, CodeRiders
  • Business Consultant, Xenon Stack

BIG DATA IN HEALTHCARE MARKET: RESEARCH COVERAGE

  • Market Sizing and Opportunity Analysis: The report features an in-depth analysis of the big data in healthcare market, focusing on key market segments, including [A] component, [B] type of hardware, [C] type of software, [D] type of service, [E] deployment option, [F] application area, [G] healthcare vertical, [H] end user, [I] economic status and [J] geographical regions.
  • Market Landscape: A comprehensive evaluation of service providers involved in the big data in healthcare market, considering various parameters, such as [A] year of establishment, [B] company size (in terms of the number of employees), [C] location of headquarters, [D] business model, [E] type of offering, [F] type of big data analytics offered, [G] type of big data storage solution offered, [H] deployment option, [I] application area and [J] end user.
  • Key Insights: A detailed analysis, encompassing the contemporary big data in healthcare market trends, based on relevant parameters, such as [A] company size and location of headquarters; [B] company size and business model; [C] type of offerings and location of headquarters; [D] type of big data storage solution offered and deployment option; [E] type of big data analytics offered and application area; [F] company size, application area and end user.
  • Company Competitiveness Analysis: A comprehensive competitive analysis of big data in healthcare service providers, examining factors, such as [A] supplier strength and [B] portfolio strength.
  • Company Profiles: In-depth profiles of key industry players offering big data analytics solutions across various geographies, focusing on [A] company overviews, [B] financial information (if available), [C] big data analytics offerings and capabilities, [D] recent developments and [E] an informed future outlook.
  • Market Impact Analysis: The report analyzes various factors such as drivers, restraints, opportunities, and challenges affecting the market growth.

KEY QUESTIONS ANSWERED IN THIS REPORT

  • How many companies are currently engaged in this market?
  • Which are the leading companies in this market?
  • What are the factors that are likely to influence the evolution of this market?
  • What is the current and future market size?
  • What is the CAGR of this market?
  • How is the current and future market opportunity likely to be distributed across key market segments?

REASONS TO BUY THIS REPORT

  • The report provides a comprehensive market analysis, offering detailed revenue projections of the overall market and its specific sub-segments. This information is valuable to both established market leaders and emerging entrants.
  • Stakeholders can leverage the report to gain a deeper understanding of the competitive dynamics within the market. By analyzing the competitive landscape, businesses can make informed decisions to optimize their market positioning and develop effective go-to-market strategies.
  • The report offers stakeholders a comprehensive overview of the market, including key drivers, barriers, opportunities, and challenges. This information empowers stakeholders to stay abreast of market trends and make data-driven decisions to capitalize on growth prospects.

ADDITIONAL BENEFITS

  • Complimentary PPT Insights Packs
  • Complimentary Excel Data Packs for all Analytical Modules in the Report
  • 10% Free Content Customization
  • Detailed Report Walkthrough Session with Research Team
  • Free Updated report if the report is 6-12 months old or older

TABLE OF CONTENTS

1. PREFACE

  • 1.1. Introduction
  • 1.2. Market Share Insights
  • 1.3. Key Market Insights
  • 1.4. Report Coverage
  • 1.5. Key Questions Answered
  • 1.6. Chapter Outlines

2. RESEARCH METHODOLOGY

  • 2.1. Chapter Overview
  • 2.2. Research Assumptions
  • 2.3. Project Methodology
  • 2.4. Forecast Methodology
  • 2.5. Robust Quality Control
  • 2.6. Key Considerations
    • 2.6.1. Demographics
    • 2.6.2. Economic Factors
    • 2.6.3. Government Regulations
    • 2.6.4. Supply Chain
    • 2.6.5. COVID Impact / Related Factors
    • 2.6.6. Market Access
    • 2.6.7. Healthcare Policies
    • 2.6.8. Industry Consolidation
  • 2.7. Key Market Segmentations

3. ECONOMIC AND OTHER PROJECT SPECIFIC CONSIDERATIONS

  • 3.1. Chapter Overview
  • 3.2. Market Dynamics
    • 3.2.1. Time Period
      • 3.2.1.1. Historical Trends
      • 3.2.1.2. Current and Forecasted Estimates
    • 3.2.2. Currency Coverage
      • 3.2.2.1. Major Currencies Affecting the Market
      • 3.2.2.2. Impact of Currency Fluctuations on the Industry
    • 3.2.3. Foreign Exchange Impact
      • 3.2.3.1. Evaluation of Foreign Exchange Rates and Their Impact on Market
      • 3.2.3.2. Strategies for Mitigating Foreign Exchange Risk
    • 3.2.4. Recession
      • 3.2.4.1. Historical Analysis of Past Recessions and Lessons Learnt
      • 3.2.4.2. Assessment of Current Economic Conditions and Potential Impact on the Market
    • 3.2.5. Inflation
      • 3.2.5.1. Measurement and Analysis of Inflationary Pressures in the Economy
      • 3.2.5.2. Potential Impact of Inflation on the Market Evolution

4. EXECUTIVE SUMMARY

  • 4.1. Chapter Overview

5. INTRODUCTION

5. Introduction

  • 5.1. Chapter Overview
  • 5.2. Overview of Big Data
    • 5.2.1. Types of Big Data
      • 5.2.1.1. Structured Data
      • 5.2.1.2. Unstructured Data
      • 5.2.1.3. Semi-Structured Data
    • 5.2.2. Management and Storage of Big Data
  • 5.3. Big Data Analytics
    • 5.3.1. Types of Big Data Analytics
      • 5.3.1.1. Descriptive Analytics
      • 5.3.1.2. Diagnostic Analytics
      • 5.3.1.3. Predictive Analytics
      • 5.3.1.4. Prescriptive Analytics
  • 5.4. Applications of Big Data in Healthcare
  • 5.5. Future Perspective

6. OVERALL MARKET LANDSCAPE

  • 6.1. Chapter Overview
  • 6.2. Big Data in Healthcare Service Providers: Overall Market Landscape
  • 6.3. Analysis by Year of Establishment
  • 6.4. Analysis by Company Size
  • 6.5. Analysis by Location of Headquarters
  • 6.6. Analysis by Type of Business Model
  • 6.7. Analysis by Type of Offering
  • 6.8. Analysis by Type of Big Data Analytics Offered

6.9. Analysis by Type of Big Data Storage Solution Offered

  • 6.10. Analysis by Deployment Option
  • 6.11. Analysis by Application Area
  • 6.12. Analysis by End User

7. KEY INSIGHTS

  • 7.1. Chapter Overview
  • 7.2. Big Data in Healthcare Service Providers: Key Insights
    • 7.2.1. Analysis by Year of Establishment and Company Size
    • 7.2.2. Analysis by Company Size and Location of Headquarters
    • 7.2.3. Analysis by Type of Offering and Company Size
    • 7.2.4. Analysis by Type of Big Data Analytics Offered and Application Area
    • 7.2.5. Analysis by Company Size, Application Area and End User

8. COMPANY COMPETITIVENSS ANALYSIS

  • 8.1. Chapter Overview
  • 8.2. Assumptions and Key Parameters
  • 8.3. Methodology
  • 8.4. Big Data in Healthcare Service Providers: Company Competitiveness Analysis
    • 8.4.1. Big Data in Healthcare Service Providers based in North America
      • 8.4.1.1. Small Service Providers based in North America
      • 8.4.1.2. Mid-sized Service Providers based in North America
      • 8.4.1.3. Large Service Providers based in North America
      • 8.4.1.4. Very Large Service Providers based in North America
    • 8.4.2. Big Data in Healthcare Service Providers based in Europe
      • 8.4.2.1. Small Service Providers based in Europe
      • 8.4.2.2. Mid-sized Service Providers based in Europe
      • 8.4.2.3. Large and Very Large Service Providers based in Europe
    • 8.4.3. Big Data in Healthcare Service Providers based in Asia and Rest of the World
      • 8.4.3.1. Small Service Providers based in Asia and Rest of the World
      • 8.4.3.2. Mid-sized Service Providers based in Asia and Rest of the World
      • 8.4.3.3. Large Service Providers based in Asia and Rest of the World
      • 8.4.3.4. Very Large Service Providers based in Asia and Rest of the World

9. COMPANY PROFILES: BIG DATA IN HEALTHCARE SERVICE PROVIDERS IN NORTH AMERICA

  • 9.1. Chapter Overview
  • 9.2. Detailed Company Profiles of Leading Players in North America
    • 9.2.1. Amazon Web Services
      • 9.2.1.1. Company Overview
      • 9.2.1.2. Financial Information
      • 9.2.1.3. Big Data Offerings and Capabilities
      • 9.2.1.4. Recent Developments and Future Outlook
    • 9.2.2. Microsoft
      • 9.2.2.1. Company Overview
      • 9.2.2.2. Financial Information
      • 9.2.2.3. Big Data Offerings and Capabilities
      • 9.2.2.4. Recent Developments and Future Outlook
    • 9.2.3. Oracle
      • 9.2.3.1. Company Overview
      • 9.2.3.2. Financial Information
      • 9.2.3.3. Big Data Offerings and Capabilities
      • 9.2.3.4. Recent Developments and Future Outlook
    • 9.2.4. Teradata
      • 9.2.4.1. Company Overview
      • 9.2.4.2. Financial Information
      • 9.2.4.3. Big Data Offerings and Capabilities
      • 9.2.4.4. Recent Developments and Future Outlook
  • 9.3. Short Company Profiles of Other Prominent Players in North America
    • 9.3.1. Itransition
      • 9.3.1.1. Company Overview
      • 9.3.1.2. Big Data Offerings and Capabilities
    • 9.3.2. Nous Infosystems
      • 9.3.2.1. Company Overview
      • 9.3.2.2. Big Data Offerings and Capabilities
    • 9.3.3. Oxagile
      • 9.3.3.1. Company Overview
      • 9.3.3.2. Big Data Offerings and Capabilities
    • 9.3.4. Softweb Solutions
      • 9.3.4.1. Company Overview
      • 9.3.4.2. Big Data Offerings and Capabilities
    • 9.3.5. Solix Technologies
      • 9.3.5.1. Company Overview
      • 9.3.5.2. Big Data Offerings and Capabilities
    • 9.3.6. Trianz (formerly CBIG Consulting)
      • 9.3.6.1. Company Overview
      • 9.3.6.2. Big Data Offerings and Capabilities

10. COMPANY PROFILES: BIG DATA IN HEALTHCARE SERVICE PROVIDERS IN EUROPE

  • 10.1. Chapter Overview
  • 10.2. Detailed Company Profiles of Leading Players in Europe
    • 10.2.1. Accenture
      • 10.2.1.1. Company Overview
      • 10.2.1.2. Financial Information
      • 10.2.1.3. Big Data Offerings and Capabilities
      • 10.2.1.4. Recent Developments and Future Outlook
    • 10.2.2. Keyrus
      • 10.2.2.1. Company Overview
      • 10.2.2.2. Financial Information
      • 10.2.2.3. Big Data Offerings and Capabilities
      • 10.2.2.4. Recent Developments and Future Outlook
  • 10.3. Short Company Profiles of Other Prominent Players in Europe
    • 10.3.1. Akka Technologies
      • 10.3.1.1. Company Overview
      • 10.3.1.2. Big Data Offerings and Capabilities
    • 10.3.2. Altamira.ai
      • 10.3.2.1. Company Overview
      • 10.3.2.2. Big Data Offerings and Capabilities
    • 10.3.3. atom Consultancy Services (ACS)
      • 10.3.3.1. Company Overview
      • 10.3.3.2. Big Data Offerings and Capabilities
    • 10.3.4. Avenga
      • 10.3.4.1. Company Overview
      • 10.3.4.2. Big Data Offerings and Capabilities
    • 10.3.5. Lutech
      • 10.3.5.1. Company Overview
      • 10.3.5.2. Big Data Offerings and Capabilities
    • 10.3.6. Nagarro
      • 10.3.6.1. Company Overview
      • 10.3.6.2. Big Data Offerings and Capabilities
    • 10.3.7. Scalefocus
      • 10.3.7.1. Company Overview
      • 10.3.7.2. Big Data Offerings and Capabilities
    • 10.3.8. Spindox
      • 10.3.8.1. Company Overview
      • 10.3.8.2. Big Data Offerings and Capabilities

11. COMPANY PROFILES: BIG DATA IN HEALTHCARE SERVICE PROVIDERS IN ASIA AND REST OF THE WORLD

  • 11.1. Chapter Overview
  • 11.2. Detailed Company Profiles of Leading Players in Asia and Rest of the World
    • 11.2.1. Tata Elxsi
      • 11.2.1.1. Company Overview
      • 11.2.1.2. Big Data Offerings and Capabilities
      • 11.2.1.3. Recent Developments and Future Outlook
    • 11.2.2. Kellton
      • 11.2.2.1. Company Overview
      • 11.2.2.2. Financial Information
      • 11.2.2.3. Big Data Offerings and Capabilities
      • 11.2.2.4. Recent Developments and Future Outlook
  • 11.3. Short Company Profiles of Other Prominent Players in Asia and Rest of the World
    • 11.3.1. Athena Global Technologies
      • 11.3.1.1. Company Overview
      • 11.3.1.2. Big Data Offerings and Capabilities
    • 11.3.2. Happiest Minds
      • 11.3.2.1. Company Overview
      • 11.3.2.2. Big Data Offerings and Capabilities
    • 11.3.3. InData Labs
      • 11.3.3.1. Company Overview
      • 11.3.3.2. Big Data Offerings and Capabilities
    • 11.3.4. NTT data
      • 11.3.4.1. Company Overview
      • 11.3.4.2. Big Data Offerings and Capabilities
    • 11.3.5. OrangeMantra
      • 11.3.5.1. Company Overview
      • 11.3.5.2. Big Data Offerings and Capabilities
    • 11.3.6. Trigyn Technologies
      • 11.3.6.1. Company Overview
      • 11.3.6.2. Big Data Offerings and Capabilities
    • 11.3.7. XenonStack
      • 11.3.7.1. Company Overview
      • 11.3.7.2. Big Data Offerings and Capabilities

12. MARKET IMPACT ANALYSIS: DRIVERS, RESTRAINTS, OPPORTUNITIES AND CHALLENGES

  • 12.1. Chapter Overview
  • 12.2. Market Drivers
  • 12.3. Market Restraints
  • 12.4. Market Opportunities
  • 12.5. Market Challenges
  • 12.6. Conclusion

13. GLOBAL BIG DATA IN HEALTHCARE MARKET

  • 13.1. Chapter Overview
  • 13.2. Key Assumptions and Methodology
  • 13.3. Global Big Data in Healthcare Market, Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 13.3.1. Scenario Analysis
      • 13.3.1.1. Conservative Scenario
      • 13.3.1.2. Optimistic Scenario
  • 13.4. Key Market Segmentations

14. BIG DATA IN HEALTHCARE MARKET, BY COMPONENT

  • 14.1. Chapter Overview
  • 14.2. Key Assumptions and Methodology
  • 14.3. Big Data in Healthcare Market: Distribution by Component, 2018, 2023 and 2035
    • 14.3.1. Big Data Hardware: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 14.3.2. Big Data Software: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 14.3.3. Big Data Services: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 14.4. Data Triangulation and Validation

15. BIG DATA IN HEALTHCARE MARKET, BY TYPE OF HARDWARE

  • 15.1. Chapter Overview
  • 15.2. Key Assumptions and Methodology
  • 15.3. Big Data in Healthcare Market: Distribution by Type of Hardware, 2018, 2023 and 2035
    • 15.3.1. Storage Devices: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 15.3.2. Servers: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 15.3.3. Networking Infrastructure: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 15.4. Data Triangulation and Validation

16. BIG DATA IN HEALTHCARE MARKET, BY TYPE OF SOFTWARE

  • 16.1. Chapter Overview
  • 16.2. Key Assumptions and Methodology
  • 16.3. Big Data in Healthcare Market: Distribution by Type of Software, 2018, 2023 and 2035
    • 16.3.1. Electronic Health Record: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 16.3.2. Revenue Cycle Management Software: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 16.3.3. Practice Management Software: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 16.3.4. Workforce Management Software: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 16.4. Data Triangulation and Validation

17. BIG DATA IN HEALTHCARE MARKET, BY TYPE OF SERVICE

  • 17.1. Chapter Overview
  • 17.2. Key Assumptions and Methodology
  • 17.3. Big Data in Healthcare Market: Distribution by Type of Services, 2018, 2023 and 2035
    • 17.3.1. Diagnostic Analytics: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 17.3.2. Descriptive Analytics: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 17.3.3. Predictive Analytics: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 17.3.4. Prescriptive Analytics: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 17.4. Data Triangulation and Validation

18. BIG DATA IN HEALTHCARE MARKET, BY DEPLOYMENT OPTION

  • 18.1. Chapter Overview
  • 18.2. Key Assumptions and Methodology
  • 18.3. Big Data in Healthcare Market: Distribution by Deployment Option, 2018, 2023 and 2035
    • 18.3.1. Cloud-based Deployment: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 18.3.2. On-premises Deployment: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 18.4. Data Triangulation and Validation

19. BIG DATA IN HEALTHCARE MARKET, BY APPLICATION AREA

  • 19.1. Chapter Overview
  • 19.2. Key Assumptions and Methodology
  • 19.3. Big Data in Healthcare Market: Distribution by Application Area, 2018, 2023 and 2035
    • 19.3.1. Operational Management: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 19.3.2. Clinical Data Management: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 19.3.3. Financial Management: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 19.3.4. Population Health Management: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 19.4. Data Triangulation and Validation

20. BIG DATA IN HEALTHCARE MARKET, BY HEALTHCARE VERTICAL

  • 20.1. Chapter Overview
  • 20.2. Key Assumptions and Methodology
  • 20.3. Big Data in Healthcare Market: Distribution by Healthcare Vertical, 2018, 2023 and 2035
    • 20.3.1. Healthcare Services: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 20.3.2. Pharmaceuticals: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 20.3.3. Medical Devices: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 20.3.4. Other Verticals: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 20.4. Data Triangulation and Validation

21. BIG DATA IN HEALTHCARE MARKET, BY END USER

  • 21.1. Chapter Overview
  • 21.2. Key Assumptions and Methodology
  • 21.3. Big Data in Healthcare Market: Distribution by End User, 2018, 2023 and 2035
    • 21.3.1. Hospitals: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 21.3.2. Health Insurance Agencies: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 21.3.3. Clinics: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 21.3.4. Other End Users: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 21.4. Data Triangulation and Validation

22. BIG DATA IN HEALTHCARE MARKET, BY ECONOMIC STATUS

  • 22.1. Chapter Overview
  • 22.2. Key Assumptions and Methodology
  • 22.3. Big Data in Healthcare Market: Distribution by Economic Status, 2018, 2023 and 2035
    • 22.3.1. High Income Countries: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.1. US: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.2. Canada: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.3. Germany: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.4. UK: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.5. UAE: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.6. South Korea: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.7. France: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.8. Australia: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.9. New Zealand: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.10. Italy: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.11. Saudi Arabia: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.1.12. Nordic Countries: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 22.3.2. Upper-Middle Income Countries: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.2.1. China: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.2.2. Russia: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.2.3. Brazil: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.2.4. Japan: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.2.5. South Africa: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 22.3.3. Lower-Middle Income Countries: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
      • 22.3.3.1. India: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 22.4. Data Triangulation and Validation

23. BIG DATA IN HEALTHCARE MARKET, BY GEOGRAPHY

  • 23.1. Chapter Overview
  • 23.2. Key Assumptions and Methodology
  • 23.3. Big Data in Healthcare Market: Distribution by Geography, 2018, 2023 and 2035
    • 23.3.1. North America: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 23.3.2. Europe: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 23.3.3. Asia: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 23.3.4. Middle East and North Africa: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 23.3.5. Latin America: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
    • 23.3.6. Rest of the World: Historical Trends (since 2018) and Forecasted Estimates (till 2035)
  • 23.4. Data Triangulation and Validation

24. BIG DATA IN HEALTHCARE MARKET, REVENUE FORECAST OF LEADING PLAYERS

  • 24.1. Chapter Overview
  • 24.2. Key Assumptions and Methodology
  • 24.3. Microsoft: Revenue Generated from Big Data in Healthcare Offerings FY 2018 Onwards
  • 24.4. Optum: Revenue Generated from Big Data in Healthcare Offerings FY 2018 Onwards
  • 24.5. IBM: Revenue Generated from Big Data in Healthcare Offerings FY 2018 Onwards
  • 24.6. Oracle: Revenue Generated from Big Data in Healthcare Offerings FY 2018 Onwards
  • 24.7. Allscripts: Revenue Generated from Big Data in Healthcare Offerings FY 2018 Onwards

25. CONCLUSION

  • 25.1. Chapter Overview

26. EXECUTIVE INSIGHTS

  • 26.1. Chapter Overview
  • 26.2. Company A
    • 26.2.1. Company Snapshot
    • 26.2.2. Interview Transcript
  • 26.3. Company B
    • 26.3.1. Company Snapshot
    • 26.3.2. Interview Transcript
  • 26.4. Company C
    • 26.4.1. Company Snapshot
    • 26.4.2. Interview Transcript
  • 26.5. Company D
    • 26.5.1. Company Snapshot
    • 26.5.2. Interview Transcrip
  • 26.6. Company E
    • 26.6.1. Company Snapshot
    • 26.6.2. Interview Transcript
  • 26.7. Company F
    • 26.7.1. Company Snapshot
    • 26.7.2. Interview Transcript
  • 26.8. Company G
    • 26.8.1. Company Snapshot
    • 26.8.2. Interview Transcript
  • 26.9. Company H
    • 26.9.1. Company Snapshot
    • 26.9.2. Interview Transcript
  • 26.10. Company I
    • 26.10.1. Company Snapshot
    • 26.10.2. Interview Transcript
  • 26.11. Company J
    • 26.11.1. Company Snapshot
    • 26.11.2. Interview Transcript
  • 26.12. Company K
    • 26.12.1. Company Snapshot
    • 26.12.2. Interview Transcript
  • 26.13. Company L
    • 26.13.1. Company Snapshot
    • 26.13.2. Interview Transcript
  • 26.14. Company M
    • 26.14.1. Company Snapshot
    • 26.14.2. Interview Transcript
  • 26.15. Company N
    • 26.15.1. Company Snapshot
    • 26.15.2. Interview Transcript

27. APPENDIX I: TABULATED DATA

28. APPENDIX II: LIST OF COMPANIES AND ORGANIZATIONS

List of Tables

  • Table 5.1 Comparison between Data Lake and Data Warehouse
  • Table 6.1 List of Big Data in Healthcare Service Providers
  • Table 6.2 Big Data in Healthcare Service Providers: Information on Type of Offering and Type of Big Data Analytics Offered
  • Table 6.3 Big Data in Healthcare Service Providers: Information on Type of Big Data Storage Solution Offered and Deployment Option
  • Table 6.4 Big Data in Healthcare Service Providers: Information on Application Area and End User
  • Table 8.1 Company Competitiveness Analysis: Big Data In Healthcare Service Providers based in North America
  • Table 8.2 Company Competitiveness Analysis: Big Data In Healthcare Service Providers based in Europe
  • Table 8.3 Company Competitiveness Analysis: Big Data In Healthcare Service Providers Based in Asia and Rest of the World
  • Table 9.1 Big Data in Healthcare Service Providers in North America: List Companies Profiled
  • Table 9.2 Amazon Web Services: Company Snapshot
  • Table 9.3 Amazon Web Services: Big Data Offerings and Capabilities
  • Table 9.4 Amazon Web Services: Recent Developments and Future Outlook
  • Table 9.5 Microsoft: Company Snapshot
  • Table 9.6 Microsoft: Big Data Offerings and Capabilities
  • Table 9.7 Microsoft: Recent Developments and Future Outlook
  • Table 9.8 Oracle: Company Snapshot
  • Table 9.9 Oracle: Big Data Offerings and Capabilities
  • Table 9.10 Oracle: Recent Developments and Future Outlook
  • Table 9.11 Teradata: Company Snapshot
  • Table 9.12 Teradata: Big Data Offerings and Capabilities
  • Table 9.13 Teradata: Recent Developments and Future Outlook
  • Table 9.14 Itransition: Company Snapshot
  • Table 9.15 Itransition: Big Data Offerings and Capabilities
  • Table 9.16 Nous Infosystems: Company Snapshot
  • Table 9.17 Nous Infosystems: Big Data Offerings and Capabilities
  • Table 9.18 Oxagile: Company Snapshot
  • Table 9.19 Oxagile: Big Data Offerings and Capabilities
  • Table 9.20 Softweb Solutions: Company Snapshot
  • Table 9.21 Softweb Solutions: Big Data Offerings and Capabilities
  • Table 9.22 Solix Technologies: Company Snapshot
  • Table 9.23 Solix Technologies: Big Data Offerings and Capabilities
  • Table 9.24 Trianz (formerly CBIG Consulting): Company Snapshot
  • Table 9.25 Trianz (formerly CBIG Consulting): Big Data Offerings and Capabilities
  • Table 10.1 Big Data in Healthcare Service Providers in Europe: List Companies Profiled
  • Table 10.2 Accenture: Company Snapshot
  • Table 10.3 Accenture: Big Data Offerings and Capabilities
  • Table 10.4 Accenture: Recent Developments and Future Outlook
  • Table 10.5 Keyrus: Company Snapshot
  • Table 10.6 Keyrus: Big Data Offerings and Capabilities
  • Table 10.7 Keyrus: Recent Developments and Future Outlook
  • Table 10.8 Akka Technologies: Company Snapshot
  • Table 10.9 Akka Technologies: Big Data Offerings and Capabilities
  • Table 10.10 Altamira.ai: Company Snapshot
  • Table 10.11 Altamira.ai: Big Data Offerings and Capabilities
  • Table 10.12 atom Consultancy Services (ACS): Company Snapshot
  • Table 10.13 atom Consultancy Services (ACS): Big Data Offerings and Capabilities
  • Table 10.14 Avenga: Company Snapshot
  • Table 10.15 Avenga: Big Data Offerings and Capabilities
  • Table 10.16 Lutech: Company Snapshot
  • Table 10.17 Lutech: Big Data Offerings and Capabilities
  • Table 10.18 Nagarro: Company Snapshot
  • Table 10.19 Nagarro: Big Data Offerings and Capabilities
  • Table 10.20 Scalefocus: Company Snapshot
  • Table 10.21 Scalefocus: Big Data Offerings and Capabilities
  • Table 10.22 Scalefocus: Company Snapshot
  • Table 10.23 Scalefocus: Big Data Offerings and Capabilities
  • Table 11.1 Big Data in Healthcare Service Providers in Asia and Rest of the World: List Companies Profiled
  • Table 11.2 Tata Elxsi: Company Snapshot
  • Table 11.3 Tata Elxsi: Big Data Offerings and Capabilities
  • Table 11.4 Kellton: Company Snapshot
  • Table 11.5 Kellton: Big Data Offerings and Capabilities
  • Table 11.6 Athena Global Technologies: Company Snapshot
  • Table 11.7 Athena Global Technologies: Big Data Offerings and Capabilities
  • Table 11.8 Happiest Minds: Company Snapshot
  • Table 11.9 Happiest Minds: Big Data Offerings and Capabilities
  • Table 11.10 InData Labs: Company Snapshot
  • Table 11.11 InData Labs: Big Data Offerings and Capabilities
  • Table 11.12 NTT Data: Company Snapshot
  • Table 11.13 NTT Data: Big Data Offerings and Capabilities
  • Table 11.14 OrangeMantra: Company Snapshot
  • Table 11.15 OrangeMantra: Big Data Offerings and Capabilities
  • Table 11.16 Trigyn Technologies: Company Snapshot
  • Table 11.17 Trigyn Technologies: Big Data Offerings and Capabilities
  • Table 11.18 XenonStack: Company Snapshot
  • Table 11.19 XenonStack: Big Data Offerings and Capabilities
  • Table 26.1 Emorphis Technologies: Company Snapshot
  • Table 26.2 Estenda Solutions: Company Snapshot
  • Table 26.3 DataToBiz: Company Snapshot
  • Table 26.4 Growth Acceleration Partners: Company Snapshot
  • Table 26.5 W2S Solutions: Company Snapshot
  • Table 26.6 OrangeMantra: Company Snapshot
  • Table 26.7 Soulpage IT Solutions: Company Snapshot
  • Table 26.8 TechMango: Company Snapshot
  • Table 26.9 Tata Elxsi: Company Snapshot
  • Table 26.10 OpenXcell: Company Snapshot
  • Table 26.11 ThirdEye Data: Company Snapshot
  • Table 26.12 NTT Data Services: Company Snapshot
  • Table 26.13 CodeRiders: Company Snapshot
  • Table 26.14 Xenon Stack: Company Snapshot
  • Table 27.1 Big Data in Healthcare Service Providers: Distribution by Year of Establishment
  • Table 27.2 Big Data in Healthcare Service Providers: Distribution by Company Size
  • Table 27.3 Big Data in Healthcare Service Providers: Distribution by Location of Headquarters
  • Table 27.4 Big Data in Healthcare Service Providers: Distribution by Type of Business Model
  • Table 27.5 Big Data in Healthcare Service Providers: Distribution by Type of Offering
  • Table 27.6 Big Data in Healthcare Service Providers: Type of Big Data Analytics Offered
  • Table 27.7 Big Data in Healthcare Service Providers: Type of Big Data Storage Solution Offered
  • Table 27.8 Big Data in Healthcare Service Providers: Distribution by Deployment Option
  • Table 27.9 Big Data in Healthcare Service Providers: Distribution by Application Area
  • Table 27.10 Big Data in Healthcare Service Providers: Distribution by End User
  • Table 27.11 Big Data in Healthcare Service Providers: Distribution by Year of Establishment and Company Size
  • Table 27.12 Big Data in Healthcare Service Providers: Distribution by Company Size and Location of Headquarters
  • Table 27.13 Big Data in Healthcare Service Providers: Distribution by Type of Offering and Company Size
  • Table 27.14 Big Data in Healthcare Service Providers: Distribution by Type of Big Data Analytics Offered and Application Area
  • Table 27.15 Big Data in Healthcare Service Providers: Distribution by Company Size, Application Area and End User
  • Table 27.16 Global Market for Big Data in Healthcare, Historical Trends (since 2018) (USD Billion)
  • Table 27.17 Global Market for Big Data in Healthcare, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.18 Big Data in Healthcare Market for Hardware, Historical Trends (since 2018) (USD Billion)
  • Table 27.19 Big Data in Healthcare Market for Hardware, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.20 Big Data in Healthcare Market for Software, Historical Trends (since 2018) (USD Billion)
  • Table 27.21 Big Data in Healthcare Market for Software, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.22 Big Data in Healthcare Market for Services, Historical Trends (since 2018) (USD Billion)
  • Table 27.23 Big Data in Healthcare Market for Services, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.24 Big Data in Healthcare Market for Storage Devices, Historical Trends (since 2018) (USD Billion)
  • Table 27.25 Big Data in Healthcare Market for Storage Devices, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.26 Big Data in Healthcare Market for Servers, Historical Trends (since 2018) (USD Billion)
  • Table 27.27 Big Data in Healthcare Market for Servers, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.28 Big Data in Healthcare Market for Networking Infrastructure, Historical Trends (since 2018) (USD Billion)
  • Table 27.29 Big Data in Healthcare Market for Networking Infrastructure, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.30 Big Data in Healthcare Market for Electronic Health Record, Historical Trends (since 2018) (USD Billion)
  • Table 27.31 Big Data in Healthcare Market for Electronic Health Record, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.32 Big Data in Healthcare Market for Revenue Cycle Management Software, Historical Trends (since 2018) (USD Billion)
  • Table 27.33 Big Data in Healthcare Market for Revenue Cycle Management Software, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.34 Big Data in Healthcare Market for Practice Management Software, Historical Trends (since 2018) (USD Billion)
  • Table 27.35 Big Data in Healthcare Market for Practice Management Software, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.36 Big Data in Healthcare Market for Workforce Management Software, Historical Trends (since 2018) (USD Billion)
  • Table 27.37 Big Data in Healthcare Market for Workforce Management Software, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.38 Big Data in Healthcare Market for Diagnostic Analytics, Historical Trends (since 2018) (USD Billion)
  • Table 27.39 Big Data in Healthcare Market for Diagnostic Analytics, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.40 Big Data in Healthcare Market for Descriptive Analytics, Historical Trends (since 2018) (USD Billion)
  • Table 27.41 Big Data in Healthcare Market for Descriptive Analytics, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.42 Big Data in Healthcare Market for Predictive Analytics, Historical Trends (since 2018) (USD Billion)
  • Table 27.43 Big Data in Healthcare Market for Predictive Analytics, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.44 Big Data in Healthcare Market for Prescriptive Analytics, Historical Trends (since 2018) (USD Billion)
  • Table 27.45 Big Data in Healthcare Market for Prescriptive Analytics, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.46 Big Data in Healthcare Market for Cloud-based Deployment, Historical Trends (since 2018) (USD Billion)
  • Table 27.47 Big Data in Healthcare Market for Cloud-based Deployment, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.48 Big Data in Healthcare Market for On-premises Deployment, Historical Trends (since 2018) (USD Billion)
  • Table 27.49 Big Data in Healthcare Market for On-premises Deployment, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.50 Big Data in Healthcare Market for Operational Management, Historical Trends (since 2018) (USD Billion)
  • Table 27.51 Big Data in Healthcare Market for Operational Management, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.52 Big Data in Healthcare Market for Clinical Data Management, Historical Trends (since 2018) (USD Billion)
  • Table 27.53 Big Data in Healthcare Market for Clinical Data Management, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.54 Big Data in Healthcare Market for Financial Management, Historical Trends (since 2018) (USD Billion)
  • Table 27.55 Big Data in Healthcare Market for Financial Management, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.56 Big Data in Healthcare Market for Population Health Management, Historical Trends (since 2018) (USD Billion)
  • Table 27.57 Big Data in Healthcare Market for Population Health Management, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.58 Big Data in Healthcare Market for Healthcare Services, Historical Trends (since 2018) (USD Billion)
  • Table 27.59 Big Data in Healthcare Market for Healthcare Services, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.60 Big Data in Healthcare Market for Pharmaceuticals, Historical Trends (since 2018) (USD Billion)
  • Table 27.61 Big Data in Healthcare Market for Pharmaceuticals, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.62 Big Data in Healthcare Market for Medical Devices, Historical Trends (since 2018) (USD Billion)
  • Table 27.63 Big Data in Healthcare Market for Medical Devices, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.64 Big Data in Healthcare Market for Other Verticals, Historical Trends (since 2018) (USD Billion)
  • Table 27.65 Big Data in Healthcare Market for Other Verticals, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.66 Big Data in Healthcare Market for Hospitals, Historical Trends (since 2018) (USD Billion)
  • Table 27.67 Big Data in Healthcare Market for Hospitals, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.68 Big Data in Healthcare Market for Health Insurance Agencies, Historical Trends (since 2018) (USD Billion)
  • Table 27.69 Big Data in Healthcare Market for Health Insurance Agencies, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.70 Big Data in Healthcare Market for Clinics, Historical Trends (since 2018) (USD Billion)
  • Table 27.71 Big Data in Healthcare Market for Clinics, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.72 Big Data in Healthcare Market for Other End Users, Historical Trends (since 2018) (USD Billion)
  • Table 27.73 Big Data in Healthcare Market for Other End Users, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.74 Big Data in Healthcare Market in High Income Countries, Historical Trends (since 2018) (USD Billion)
  • Table 27.75 Big Data in Healthcare Market in High Income Countries, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.76 Big Data in Healthcare Market in Upper-Middle Income Countries, Historical Trends (since 2018) (USD Billion)
  • Table 27.77 Big Data in Healthcare Market in Upper-Middle Income Countries, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.78 Big Data in Healthcare Market in Lower-Middle Income Countries, Historical Trends (since 2018) (USD Billion)
  • Table 27.79 Big Data in Healthcare Market in Lower-Middle Income Countries, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.80 Big Data in Healthcare Market in North America, Historical Trends (since 2018) (USD Billion)
  • Table 27.81 Big Data in Healthcare Market in North America, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.82 Big Data in Healthcare Market in Europe, Historical Trends (since 2018) (USD Billion)
  • Table 27.83 Big Data in Healthcare Market in Europe, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.84 Big Data in Healthcare Market in Asia, Historical Trends (since 2018) (USD Billion)
  • Table 27.85 Big Data in Healthcare Market in Asia, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.86 Big Data in Healthcare Market in Latin America, Historical Trends (since 2018) (USD Billion)
  • Table 27.87 Big Data in Healthcare Market in Latin America, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.88 Big Data in Healthcare Market in Middle East and North Africa, Historical Trends (since 2018) (USD Billion)
  • Table 27.89 Big Data in Healthcare Market in Middle East and North Africa, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.90 Big Data in Healthcare Market in Rest of the World, Historical Trends (since 2018) (USD Billion)
  • Table 27.91 Big Data in Healthcare Market in Rest of the World, Forecasted Estimates (till 2035), Conservative, Base and Optimistic Scenarios (USD Billion)
  • Table 27.92 Big Data in Healthcare Market:

Distribution by Leading Players, since 2018 (USD Billion)

List of Figures

  • Figure 2.1 Research Methodology: Project Methodology
  • Figure 2.2 Research Methodology: Forecast Methodology
  • Figure 2.3 Research Methodology: Robust Quality Control
  • Figure 2.4 Research Methodology: Key Market Segmentation
  • Figure 3.1 Lessons Learnt from Past Recessions
  • Figure 4.1 Executive Summary: Overall Market Landscape
  • Figure 4.2 Executive Summary: Global Market for Big Data in Healthcare by Component, Type of Hardware, Type of Software, Type of Service, and Deployment Option
  • Figure 4.3 Executive Summary: Global Market for Big Data in Healthcare by Application Area, Healthcare Vertical, End User, Economic Status, Geography and Leading Players
  • Figure 5.1 Types of Big Data Analytics
  • Figure 5.2 Applications of Big Data in Healthcare
  • Figure 6.1 Big Data in Healthcare Service Providers: Distribution by Year of Establishment
  • Figure 6.2 Big Data in Healthcare Service Providers: Distribution by Company Size
  • Figure 6.3 Big Data in Healthcare Service Providers: Distribution by Location of Headquarters (Region)
  • Figure 6.4 Big Data in Healthcare Service Providers: Distribution by Location of Headquarters (Country)
  • Figure 6.5 Big Data in Healthcare Service Providers: Distribution by Type of Business Model
  • Figure 6.6 Big Data in Healthcare Service Providers: Distribution by Type of Offering
  • Figure 6.7 Big Data in Healthcare Service Providers: Type of Big Data Analytics Offered
  • Figure 6.8 Big Data in Healthcare Service Providers: Type of Big Data Storage Solution Offered
  • Figure 6.9 Big Data in Healthcare Service Providers: Distribution by Deployment Option
  • Figure 6.10 Big Data in Healthcare Service Providers: Distribution by Application Area
  • Figure 6.10 Big Data in Healthcare Service Providers: Distribution by End User
  • Figure 7.1 Big Data in Healthcare Service Providers: Distribution by Year of Establishment and Company Size
  • Figure 7.2 Big Data in Healthcare Service Providers: Distribution by Company Size and Location of Headquarters
  • Figure 7.3 Big Data in Healthcare Service Providers: Distribution by Type of Offering and Company Size
  • Figure 7.4 Big Data in Healthcare Service Providers: Distribution by Type of Big Data Analytics Offered and Application Area
  • Figure 7.5 Big Data in Healthcare Service Providers: Distribution by Company Size, Application Area and End User
  • Figure 8.1 Company Competitiveness Analysis: Small Service Providers based in North America
  • Figure 8.2 Company Competitiveness Analysis: Mid-sized Service Providers based in North America (I/II)
  • Figure 8.3 Company Competitiveness Analysis: Mid-sized Service Providers based in North America (II/II)
  • Figure 8.4 Company Competitiveness Analysis: Large Service Providers based in North America (I/II)
  • Figure 8.5 Company Competitiveness Analysis: Large Service Providers based in North America (II/II)
  • Figure 8.6 Company Competitiveness Analysis: Very Large Service Providers based in North America
  • Figure 8.7 Company Competitiveness Analysis: Small Service Providers based in Europe
  • Figure 8.8 Company Competitiveness Analysis: Mid-sized Service Providers based in Europe
  • Figure 8.9 Company Competitiveness Analysis: Large and Very Large Big Service Providers based in Europe
  • Figure 8.10 Company Competitiveness Analysis: Small Service Providers based in Asia and Rest of the World
  • Figure 8.11 Company Competitiveness Analysis: Mid-sized Service Providers based in Asia and Rest of the World (I/II)
  • Figure 8.12 Company Competitiveness Analysis: Mid-sized Service Providers based in Asia and Rest of the World (II/II)
  • Figure 8.13 Company Competitiveness Analysis: Large Big Service Providers based in Asia and Rest of the World
  • Figure 8.14 Company Competitiveness Analysis: Very Large Service Providers based in Asia and Rest of the World
  • Figure 9.1 Amazon Web Services: Annual Revenues, FY 2018 Onwards (USD Billion)
  • Figure 9.2 Microsoft: Annual Revenues, FY 2018 Onwards (USD Billion)
  • Figure 9.3 Oracle: Annual Revenues, FY 2018 Onwards (USD Billion)
  • Figure 9.4 Teradata: Annual Revenues, FY 2018 Onwards (USD Billion)
  • Figure 10.1 Accenture: Annual Revenues, FY 2018 Onwards (USD Billion)
  • Figure 10.2 Keyrus: Annual Revenues, FY 2018 Onwards (USD Million)
  • Figure 11.1 Tata Elxsi: Annual Revenues, FY 2018 Onwards (INR Billion)
  • Figure 11.2 Kellton: Annual Revenues, FY 2018 Onwards (INR Billion)
  • Figure 12.1 Big Data in Healthcare Market Drivers
  • Figure 12.2 Big Data in Healthcare Market Restraints
  • Figure 12.3 Big Data in Healthcare Market Opportunities
  • Figure 12.4 Big Data in Healthcare Market Challenges
  • Figure 13.1 Global Market for Big Data in Healthcare, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 13.2 Global Market for Big Data in Healthcare, Forecasted Estimates (till 2035): Conservative Scenario (USD Billion)
  • Figure 13.3 Global Market for Big Data in Healthcare, Forecasted Estimates (till 2035): Optimistic Scenario (USD Billion)
  • Figure 14.1 Big Data in Healthcare Market: Distribution by Component, 2018, 2023 and 2035 (USD Billion)
  • Figure 14.2 Big Data in Healthcare Market for Hardware, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 14.3 Big Data in Healthcare Market for Software, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 14.4 Big Data in Healthcare Market for Services, Historical Trends (since 2018) and Forecasted Estimates
  • Figure 15.1 Big Data in Healthcare Market: Distribution by Type of Hardware, 2018, 2023 and 2035 (USD Billion)
  • Figure 15.2 Big Data in Healthcare Market for Storage Devices, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 15.3 Big Data in Healthcare Market for Servers, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 15.4 Big Data in Healthcare Market for Networking Infrastructure, Historical Trends (since 2018) and Forecasted Estimates
  • Figure 16.1 Big Data in Healthcare Market: Distribution by Type of Software, 2018, 2023 and 2035 (USD Billion)
  • Figure 16.2 Big Data in Healthcare Market for Electronic Health Records, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 16.3 Big Data in Healthcare Market for Revenue Cycle Management Software, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 16.4 Big Data in Healthcare Market for Practice Management Software, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 16.5 Big Data in Healthcare Market for Workforce Management Software, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 17.1 Big Data in Healthcare Market: Distribution by Type of Service, 2018, 2023 and 2035 (USD Billion)
  • Figure 17.2 Big Data in Healthcare Market for Diagnostic Analytics, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 17.3 Big Data in Healthcare Market for Descriptive Analytics, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 17.4 Big Data in Healthcare Market for Predictive Analytics, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 17.5 Big Data in Healthcare Market for Prescriptive Analytics, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 18.1 Big Data in Healthcare Market: Distribution by Deployment Option, 2018, 2023 and 2035 (USD Billion)
  • Figure 18.2 Big Data in Healthcare Market for Cloud-based Deployment, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 18.3 Big Data in Healthcare Market for On-premises Deployment, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 19.1 Big Data in Healthcare Market: Distribution by Application Area, 2018, 2023 and 2035
  • Figure 19.2 Big Data in Healthcare Market for Operational Management, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 19.3 Big Data in Healthcare Market for Clinical Data Management, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 19.4 Big Data in Healthcare Market for Financial Management, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 19.5 Big Data in Healthcare Market for Population Health Management, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 20.1 Big Data in Healthcare Market: Distribution by Healthcare Vertical, 2018, 2023 and 2035
  • Figure 20.2 Big Data in Healthcare Market for Healthcare Services, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 20.3 Big Data in Healthcare Market for Pharmaceuticals, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 20.4 Big Data in Healthcare Market for Medical Devices, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 20.5 Big Data in Healthcare Market for Other Verticals, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 21.1 Big Data in Healthcare Market: Distribution by End User, 2018, 2023 and 2035 (USD Billion)
  • Figure 21.2 Big Data in Healthcare Market for Hospitals, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 21.3 Big Data in Healthcare Market for Health Insurance Agencies, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 21.4 Big Data in Healthcare Market for Clinics, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 21.5 Big Data in Healthcare Market for Other End Users, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.1 Big Data in Healthcare Market: Distribution by Economic Status, 2018, 2023 and 2035
  • Figure 22.2 Big Data in Healthcare Market in High Income Countries, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.3 Big Data in Healthcare Market in the US, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.4 Big Data in Healthcare Market in Canada, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.5 Big Data in Healthcare Market in Germany, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.6 Big Data in Healthcare Market in the UK, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.7 Big Data in Healthcare Market in the UAE, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.8 Big Data in Healthcare Market in South Korea, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.9 Big Data in Healthcare Market in France, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.10 Big Data in Healthcare Market in Australia, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.11 Big Data in Healthcare Market in New Zealand, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.12 Big Data in Healthcare Market in Italy, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.13 Big Data in Healthcare Market in Saudi Arabia, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.14 Big Data in Healthcare Market in Nordic Countries, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.15 Big Data in Healthcare Market in Upper-Middle Income Countries, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.16 Big Data in Healthcare Market in China, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.17 Big Data in Healthcare Market in Russia, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.18 Big Data in Healthcare Market in Brazil, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.19 Big Data in Healthcare Market in Japan, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.20 Big Data in Healthcare Market in South Africa, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 22.21 Big Data in Healthcare Market in India, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.1 Big Data in Healthcare Market: Distribution by Geography, 2018, 2023 and 2035 (USD Billion)
  • Figure 23.2 Big Data in Healthcare Market in North America, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.3 Big Data in Healthcare Market in Europe, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.4 Big Data in Healthcare Market in Asia, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.5 Big Data in Healthcare Market in Middle East and North Africa, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.6 Big Data in Healthcare Market in Latin America, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 23.7 Big Data in Healthcare Market in Rest of the World, Historical Trends (since 2018) and Forecasted Estimates (till 2035) (USD Billion)
  • Figure 24.1 Microsoft: Revenue Generated from Big Data in Healthcare Offerings, FY 2018 Onwards (USD Billion)
  • Figure 24.2 Optum: Revenue Generated from Big Data in Healthcare Offerings, FY 2018 Onwards (USD Billion)
  • Figure 24.3 IBM: Revenue Generated from Big Data in Healthcare Offerings, FY 2018 Onwards (USD Billion)
  • Figure 24.4 Oracle: Revenue Generated from Big Data in Healthcare Offerings, FY 2018 Onwards (USD Billion)
  • Figure 24.5 Allscripts: Revenue Generated from Big Data in Healthcare Offerings, FY 2018 Onwards (USD Billion)