Abstract

Health informatics (HI) has become a significant research area due to the massive generation of digital health and medical data by biomedical and health research organizations. The health data sources are available in different forms namely electronic health records (EHRs), biomedical imaging, bio-signals, sensor data, genomic data, medical history, social media data, and so on. The structured health data can be utilized for HI and effective predictive modeling of health data assists in the decision-making process. The recently developed artificial intelligence (AI), machine learning (ML), and deep learning (DL) techniques pave a way for effective predictive modeling on health data. Numerous existing works have been presented in the literature depending upon the ML and DL based HI for various applications. With this motivation, this study aims to review the recent state of art ML and DL based predictive models for health sector. This survey primarily identifies the difference between the ML and DL architectures with their significance in health sector. In addition, the existing works are extensively reviewed and compared in terms of different aspects such as objectives, underlying methodology, input source, dataset used, performance validation, metrics, and so on. Finally, the open challenges and future scope of the HI are examined in detail. At the end of the survey, the readers find it useful to identify the present research and possible future scope of the ML and DL based predictive models for HI.

Highlights

  • Health informatics (HI) is determined as a systematic application of computer science, technology, and information in the area of public health, involving prevention, surveillance, health promotion, and preparedness

  • A comprehensive survey of the available machine learning (ML) and deep learning (DL) models are investigated under varying dimensions namely objectives, underlying methodology, input source, dataset used, performance validation, metrics, and so on

  • This paper has carried out a detailed review of the recently developed predictive models using ML and DL approaches in health sector

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Summary

INTRODUCTION

Health informatics (HI) is determined as a systematic application of computer science, technology, and information in the area of public health, involving prevention, surveillance, health promotion, and preparedness. The medical data source includes clinical text, electronic health records (EHRs), health sensor data, biomedical imaging and signals, spontaneous reporting system, genomic and pharmaceutical databases, social media data, biomedical and health literature [2]. Besides the medical sensor data produced in the conventional medical environments like hospital wards, clinics, intensive care units, there is increasing attention in ubiquitous wearable sensor data i.e. interconnected to mobile devices for continuously tracking the condition of health consumers. This is a wide-open area to investigate how they could improve smart methods to harness a large number of medical sensors data in retrospective/real-time analytics for supporting precision and preventive treatment.

PRELIMINARY LITERATURE REVIEW
OVERVIEW OF MACHINE LEARNING VS DEEP LEARNING
REVIEW OF EXISTING ML AND DL MODELS FOR HI
OPEN ISSUES AND FUTURE SCOPE
Objective
CONCLUSION
Part A: Molecular and Biomolecular
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