市場調查報告書
商品編碼
1423107
2024-2032 年醫療保健巨量資料分析市場報告(按組件、分析類型、交付模型、應用程式、最終用戶和地區)Healthcare Big Data Analytics Market Report by Component, Analytics Type, Delivery Model, Application, End-User, and Region 2024-2032 |
2023年,全球醫療保健巨量資料分析市場規模達到418億美元。展望未來, IMARC Group預計到2032年市場規模將達到1,182億美元,2024-2032年複合年成長率(CAGR )為11.9%。由於人們越來越關注加強患者護理和治療結果、透過電子健康記錄 (EHR)、醫學影像和基因組資料不斷增加的資料量,以及透過整合先進技術來簡化醫療保健營運,該市場正在經歷穩定成長。
市場成長與規模:在醫療保健資料量不斷增加以及對數據驅動洞察的需求不斷成長的推動下,市場正在強勁成長。
技術進步:創新,例如人工智慧 (AI) 支援的診斷和預測分析,以提供個人化建議。此外,雲端運算和巨量資料平台正在實現更有效率的資料儲存和處理。
產業應用:醫療保健巨量資料分析可應用於臨床決策支援、藥物研究、人口健康管理和遠距醫療。它還有助於疾病追蹤、個人化治療和改善患者治療結果。
地理趨勢:在嚴格的資料安全和隱私措施的推動下,北美引領市場。然而,由於醫療保健機構越來越關注數據驅動的決策,亞太地區正在成為一個快速成長的市場。
競爭格局:主要參與者正在致力於整合來自不同來源的資料,包括電子健康記錄 (EHR)、醫療設備、穿戴式裝置和研究資料庫,以全面了解病患健康和醫療保健運作。
挑戰與機會:雖然市場面臨資料安全和隱私問題等挑戰,但也遇到了利用資料進行個人化醫療的機會。
未來展望:隨著先進技術的日益採用,醫療保健巨量資料分析市場的未來看起來充滿希望。此外,對人口健康管理的日益關注預計將促進市場成長。
增加資料量
醫療保健產業正在經歷大量資料的產生。這包括電子健康記錄 (EHR)、醫學影像和基因組資料。穿戴式裝置的採用不斷增加,同時也會產生大量資料。除此之外,傳統的資料分析方法還不夠。此外,醫療保健組織也意識到需要利用巨量資料分析來改善病患照護、提高營運效率並做出明智的決策。此外,先進的分析工具和技術可以快速處理和分析大型資料集,並提取與臨床決策相關的有價值的見解、識別趨勢並最佳化資源分配。除此之外,預測分析可以幫助醫院預測病患入院狀況,進而改善員工調度和資源管理。此外,大型醫院和醫療機構每天都在處理大量資料,包括行政、財務和營運資料。與此一致的是,醫療保健領域對循證決策的日益關注正在促進市場的成長。
先進技術的融合
機器學習(ML)、人工智慧(AI)、區塊鏈、自然語言處理(NLP)、機器人技術和遠距醫療以及雲端運算等先進技術的整合,以簡化醫療保健營運,正在推動市場成長。此外,機器學習演算法可以識別人類分析師可能無法注意到的醫療資料模式。此外,人工智慧驅動的聊天機器人和虛擬助理正在提高患者的參與度並提供個人化的健康建議。人工智慧驅動的影像分析可以高精度檢測醫學影像中的異常情況,幫助放射科醫生診斷癌症或骨折等疾病。除此之外,NLP 演算法還用於從非結構化醫療資料中提取有價值的資訊,例如臨床記錄、醫學文獻和患者敘述。該技術可以自動處理文字資料,從而更容易將敘述資料涵蓋分析中。此外,區塊鏈技術有助於增強醫療資料的安全性和完整性。它為健康記錄提供了一個安全的分類賬,確保病患資料防篡改並且只有授權方可以存取。
更加重視改善患者治療效果
對加強患者護理和治療結果的日益關注正在推動市場的成長。與此一致的是,對基於價值的護理的需求增加,因為它的重點是在控制成本的同時改善患者的治療結果。此外,醫療保健組織擴大根據所提供的護理品質而不是所提供的服務數量獲得報銷。除此之外,巨量資料分析使醫療保健組織能夠追蹤患者的治療結果、監控治療計劃的遵守情況,並確定提高品質和降低成本的干涉措施。它還透過對患者群體進行細分並針對特定群體制定干涉措施來幫助人口健康管理。此外,醫療保健巨量資料分析使醫療保健提供者能夠根據大量患者資料做出明智的決策。這些資料分析解決方案有助於分析歷史患者資料、治療效果和臨床路徑,並允許提供者確定最有效的治療和介入措施。
The global healthcare big data analytics market size reached US$ 41.8 Billion in 2023. Looking forward, IMARC Group expects the market to reach US$ 118.2 Billion by 2032, exhibiting a growth rate (CAGR) of 11.9% during 2024-2032. The market is experiencing steady growth driven by the growing focus on enhanced patient care and outcomes, rising data volume through electronic health records (EHRs), medical imaging, and genomic data, and integration of advanced technologies to streamline healthcare operations.
Market Growth and Size: The market is witnessing strong growth, driven by the increasing volume of healthcare data, along with the growing demand for data-driven insights.
Technological Advancements: Innovations, such as artificial intelligence (AI)-powered diagnostics and predictive analytics, for personalized recommendations. Moreover, cloud computing and big data platforms are enabling more efficient data storage and processing.
Industry Applications: Healthcare big data analytics finds applications in clinical decision support, pharmaceutical research, population health management, and telemedicine. It also aids in disease tracking, treatment personalization, and improving patient outcomes.
Geographical Trends: North America leads the market, driven by stringent data security and privacy measures. However, Asia Pacific is emerging as a fast-growing market due to the rising focus on data-driven decision-making in healthcare facilities.
Competitive Landscape: Key players are working on integrating data from diverse sources, including electronic health records (EHRs), medical devices, wearables, and research databases, to enable a comprehensive view of patient health and healthcare operations.
Challenges and Opportunities: While the market faces challenges, such as data security and privacy concerns, it also encounters opportunities in utilizing data for personalized medicine.
Future Outlook: The future of the healthcare big data analytics market looks promising, with the increasing adoption of advanced technologies. Additionally, the rising focus on population health management is projected to bolster the market growth.
Increasing data volume
The healthcare industry is experiencing a huge volume of data generation. This includes electronic health records (EHRs), medical imaging, and genomic data. There is an increase in the adoption of wearable devices that also generate large amounts of data. Besides this, traditional methods of analyzing data are insufficient. In addition, healthcare organizations are recognizing the need to utilize big data analytics to improve patient care, enhance operational efficiency, and make informed decisions. Moreover, advanced analytics tools and techniques can process and analyze large datasets quickly and extract valuable insights relating to clinical decisions, identify trends, and optimize resource allocation. Apart from this, predictive analytics can help hospitals forecast patient admissions, allowing for improved staff scheduling and resource management. Furthermore, large hospitals and healthcare organizations are handling massive amounts of data daily, including administrative, financial, and operational data. In line with this, the rising focus on evidence-based decision-making in healthcare is contributing to the growth of the market.
Integration of advanced technologies
Integration of advanced technologies, such as machine learning (ML), artificial intelligence (AI), blockchain, natural language processing (NLP), robotics and telemedicine, and cloud computing, to streamline healthcare operations is impelling the market growth. In addition, ML algorithms can identify patterns in medical data that might not be noticeable to human analysts. Moreover, AI-powered chatbots and virtual assistants are improving patient engagement and delivering personalized health recommendations. AI-driven image analysis can detect anomalies in medical images with high accuracy, aiding radiologists in diagnosing conditions like cancer or fractures. Besides this, NLP algorithms are used to extract valuable information from unstructured healthcare data, such as clinical notes, medical literature, and patient narratives. This technology allows for the automated processing of textual data, making it easier to incorporate narrative data into analytics. Furthermore, blockchain technology assists in enhancing the security and integrity of healthcare data. It provides a secure ledger for health records, ensuring that patient data remains tamper-proof and accessible only to authorized parties.
Increasing focus on enhanced patient outcomes
The rising focus on enhanced patient care and outcomes is bolstering the growth of the market. In line with this, there is an increase in the demand for value-based care, as it focuses on achieving improved patient outcomes while controlling costs. Moreover, healthcare organizations are increasingly being reimbursed based on the quality of care delivered, rather than the volume of services provided. Besides this, big data analytics allows healthcare organizations to track patient outcomes, monitor adherence to treatment plans, and identify interventions that improve quality and reduce costs. It also helps in population health management by segmenting patient populations and tailoring interventions to specific groups. Furthermore, healthcare big data analytics enables healthcare providers to make informed decisions based on a wealth of patient data. These data analytics solutions assist in analyzing historical patient data, treatment efficacy, and clinical pathways and allow providers to identify the most effective treatments and interventions.
IMARC Group provides an analysis of the key trends in each segment of the market, along with forecasts at the global and regional levels for 2024-2032. Our report has categorized the market based on component, analytics type, delivery model, application, and end-user.
Services
Software
Electronic Health Record Software
Practice Management
Workforce Management
Hardware
Data Storage
Routers
Firewalls
Virtual Private Networks
E-Mail Servers
Others
Service accounts for the majority of the market share
The report has provided a detailed breakup and analysis of the market based on the component. This includes service, software (electronic health record software, practice management software, and workforce management software), and hardware (data storage, routers, firewalls, virtual private networks, e-mail servers, and others). According to the report, service represented the largest segment.
Service includes consulting, implementation, maintenance, and support. In addition, consulting services involve assisting healthcare organizations in defining their data analytics strategies, selecting appropriate tools, and optimizing data workflows. Besides this, implementation services focus on the actual deployment of data analytics solutions, including software integration and customization. Furthermore, maintenance and support services ensure the continued operation and performance of data analytics systems.
Software encompasses a wide range of applications, including data analytics platforms, business intelligence tools, and data visualization software. Data analytics platforms benefit in facilitating data processing, analysis, and reporting. Moreover, business intelligence tools enable users to create dashboards and reports for data-driven decision-making. Besides this, data visualization software helps in presenting complex healthcare data in a visually understandable format, aiding in insights discovery.
Hardware includes the physical infrastructure required for data storage and processing. It involves servers, storage systems, and network equipment that support the storage and retrieval of vast healthcare datasets. High-performance computing (HPC) clusters and cloud infrastructure are often used to handle the computational demands of big data analytics.
Descriptive Analytics
Predictive Analytics
Prescriptive Analytics
Cognitive Analytics
Descriptive analytics holds the largest market share
A detailed breakup and analysis of the market based on the analytics type have also been provided in the report. This includes descriptive analytics, predictive analytics, prescriptive analytics, and cognitive analytics. According to the report, descriptive analytics accounted for the largest market share.
Descriptive analytics involves the examination of historical healthcare data to understand past trends and events. It provides a foundational understanding about patient demographics, treatment outcomes, and resource utilization. Descriptive analytics is widely used for reporting and creating visualizations to communicate insights effectively.
Predictive analytics focuses on forecasting future healthcare events or outcomes based on historical data and statistical modeling. It enables healthcare providers to anticipate patient needs, disease outbreaks, and demands of healthcare resources. Predictive analytics is essential for early disease detection and risk assessment, aiding in preventive care and optimized resource allocation.
Prescriptive analytics goes beyond predicting future events to provide actionable recommendations and solutions. In line with this, it helps healthcare organizations make informed decisions by suggesting suitable courses of action to achieve desired outcomes.
Cognitive analytics combines advanced technologies like artificial intelligence (AI) and natural language processing (NLP) to mimic human thought processes. It can interpret unstructured healthcare data, such as physician notes and patient narratives, to derive insights. Cognitive analytics is used for complex tasks like medical image analysis, clinical decision support, and sentiment analysis of patient feedback.
On-Premise Delivery Model
On-Demand Delivery Model
On-demand delivery model represents the leading market segment
The report has provided a detailed breakup and analysis of the market based on the delivery model. This includes on-premise delivery model and on-demand delivery model. According to the report, on-demand delivery model represented the largest segment.
On-demand delivery model involves the use of cloud computing infrastructure and services to store, process, and analyze healthcare data. It allows healthcare organizations to access data analytics tools and platforms remotely over the internet, eliminating the need for extensive on-site hardware and software. Cloud-based solutions offer scalability, flexibility, and cost-effectiveness, as healthcare providers can pay for services on a subscription or usage basis.
On-premise delivery model, also known as traditional delivery model, involves the installation and maintenance of data analytics software and infrastructure within the physical premises of a healthcare facility. It allows healthcare organizations to have complete control over their data and analytics systems, ensuring data security and compliance with regulatory requirements. On-premise solutions are suitable for organizations with strict data governance policies or specific security concerns.
Financial Analytics
Clinical Analytics
Operational Analytics
Others
Clinical analytics exhibits a clear dominance in the market
The report has provided a detailed breakup and analysis of the market based on the application. This includes financial analytics, clinical analytics, operational analytics, and others. According to the report, clinical analytics represented the largest segment.
Clinical analytics involves the analysis of healthcare data related to patient care and treatment. It includes the examination of electronic health records (EHRs), medical images, lab results, and patient demographics to improve clinical decision-making. Clinical analytics plays a crucial role in early disease detection, treatment optimization, and personalized medicine.
Financial analytics in healthcare focuses on the management and optimization of financial resources within healthcare organizations. It includes budgeting, revenue cycle management, claims processing, and cost containment. Financial analytics helps healthcare providers maximize revenue, reduce costs, and improve overall financial performance.
Operational analytics focuses on improving the efficiency and effectiveness of healthcare operations. It includes the analysis of data related to hospital logistics, supply chain management, patient flow, and resource allocation. Furthermore, operational analytics helps healthcare organizations streamline processes and enhance operational excellence.
Hospitals and Clinics
Finance and Insurance Agencies
Research Organizations
Hospitals and clinics represent the biggest market share
The report has provided a detailed breakup and analysis of the market based on the end-user. This includes hospitals and clinics, finance and insurance agencies, and research organizations. According to the report, hospitals and clinics represented the largest segment.
Hospitals and clinics are primary end users of healthcare big data analytics solutions. Healthcare providers in these settings use analytics to improve patient care, optimize resource allocation, and enhance operational efficiency. Analytics applications in this segment include clinical decision support, patient outcomes analysis, and population health management.
Finance and insurance agencies play a vital role in healthcare, managing billing, reimbursement, and insurance claims. These organizations use analytics to assess risk, detect fraud, and ensure accurate financial transactions within the healthcare ecosystem. Financial analytics tools play a crucial role in managing revenue cycles effectively.
Research organizations, including pharmaceutical companies, academic institutions, and research centers, use analytics to increase drug discovery, conduct clinical trials, and analyze healthcare trends. Research organizations rely on advanced analytics, including predictive and cognitive analytics, to extract valuable insights from healthcare data.
North America
Europe
Asia Pacific
Middle East and Africa
Latin America
North America leads the market, accounting for the largest healthcare big data analytics market share
The market research report has also provided a comprehensive analysis of all the major regional markets, which include North America, Europe, Asia Pacific, Middle East and Africa, and Latin America. According to the report, North America accounted for the largest market share due to the presence of improved healthcare infrastructure facilities. In line with this, the rising adoption of big data analytics solutions to manage vast healthcare data, improve patient care, and optimize costs is propelling the market growth. Furthermore, stringent data security and privacy measures in the region are impelling the market growth.
Europe stands as another key region in the market, driven by the increasing focus on data analytics to measure and improve patient outcomes. In addition, the growing demand for advanced data analytics for enhanced healthcare decision-making is offering a positive market outlook in the region.
Asia Pacific maintains a strong presence in the market, with the rising number of research institutions and pharmaceutical companies. Besides this, the increasing need for data security and privacy in healthcare data analytics is supporting the growth of the market. Moreover, the growing focus on data-driven decision-making in healthcare facilities is positively influencing the market.
The Middle East and Africa exhibit growing potential in the healthcare big data analytics market on account of the rising adoption of electronic health records (EHRs), which provide valuable data for analysis. In addition, the growing need for data analytics for risk assessment and intervention planning is offering a positive market outlook.
Latin America region shows a developing market for healthcare big data analytics due to the increasing focus on population health management and preventive care. Apart from this, the rising adoption of electronic health records (EHRs) and telemedicine is strengthening the market growth in the region.
Key players are working on integrating data from diverse sources, including electronic health records (EHRs), medical devices, wearables, and research databases, to enable a comprehensive view of patient health and healthcare operations. Apart from this, companies are investing in the development of advanced analytics tools, including machine learning (ML) algorithms, predictive modeling, natural language processing (NLP), and data visualization software. These tools help in analyzing large healthcare datasets efficiently and extracting actionable insights. Moreover, major players are focusing on providing clinical decision support systems that assist healthcare professionals in making informed decisions about patient care. These systems offer real-time insights, treatment recommendations, and risk assessments.
CitiusTech Inc.
Cognizant
Cotiviti, Inc.
ExlService Holdings, Inc.
Gainwell Technologies LLC
Health Catalyst
Hewlett Packard Enterprise Development LP
Inovalon
Koninklijke Philips N.V.
McKesson Corporation
MedeAnalytics, Inc.
Optum, Inc.
Oracle Corporation
SAS Institute Inc.
Veradigm LLC
Wipro Limited
(Please note that this is only a partial list of the key players, and the complete list is provided in the report.)
December, 2021: Oracle Corporation acquired Cerner to transform healthcare delivery by providing medical professionals with enhanced information. With this acquisition, Oracle can provide overworked medical professionals with a new generation of easier-to-use digital tools that enable access to information via a hands-free voice interface to secure cloud applications.