4.6 Review

Real-time data analysis in health monitoring systems: A comprehensive systematic literature review

期刊

JOURNAL OF BIOMEDICAL INFORMATICS
卷 127, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jbi.2022.104009

关键词

Health monitoring systems; Real-time; Data analysis; Data mining; Machine learning technique; Health care; Medical informatics

资金

  1. Brazilian National Council for Scientific and Technological Development (CNPq) - CNPq
  2. Coordenacao de Aperfeicoa-mento de Pessoal de Nivel Superior-Brasil [001]
  3. FAPESP [2014/50937-1, 2015/24485-9]
  4. CNPq [465446/2014-0]

向作者/读者索取更多资源

Health monitoring systems using real-time data analysis techniques have shown promising benefits in health diagnosis and disease prediction. However, there are challenges in implementing these systems, especially in processing the monitored data in real time. This study provides a comprehensive overview of recent research on HMS real-time data analysis, with a focus on machine learning methods. The findings suggest that there is no universal solution for all health domains, but support vector machines are widely used. Further research directions are also discussed.
Health monitoring systems (HMSs) capture physiological measurements through biosensors (sensing), obtain significant properties and measures from the output signal (perceiving), use algorithms for data analysis (reasoning), and trigger warnings or alarms (acting) when an emergency occurs. These systems have the potential to enhance health care delivery in different application domains, showing promising benefits for health diagnosis, early symptom detection, disease prediction, among others. However, the implementation of HMS presents challenges for sensing, perceiving, reasoning, and acting based on monitored data, mainly when data processing should be performed in real time. Thus, the quality of these diagnoses relies heavily on the data and data analysis methods applied. Data mining techniques have been broadly investigated in health systems; however, it is not clear what real-time data analysis techniques are best suited for each context. This work carries out a search in five scientific electronic databases to identify recent studies that investigated HMS using real-time data analysis techniques. Thirty-six research studies were selected after screening 2,822 works. Applied data analysis methods, application domains, utilized sensors, physiological parameters, extracted features, claimed benefits, limitations, datasets used, and published results were described, compared and analyzed. The findings indicate that machine learning methods are trending in such studies. There is no universal solution for all health domains; however, support vector machines are a predominant method. Among the application domains, cardiovascular disease is the most investigated. Most reviewed studies reported improvements in performing data mining tasks or operational modes of solutions. Although studies tested algorithms and presented promising results, those are particular for each experiment. This review gives a comprehensive overview of HMS real-time data analysis and points to directions for future research.

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