Understanding current states of machine learning approaches in medical informatics: a systematic literature review

被引:0
作者
Najmul Hasan
Yukun Bao
机构
[1] Huazhong University of Science and Technology,Center for Modern Information Management, School of Management
来源
Health and Technology | 2021年 / 11卷
关键词
Machine learning; Medical informatics; Knowledge discovering; Systematic review;
D O I
暂无
中图分类号
学科分类号
摘要
Knowledge mining (KM) tends to deliver the tools and associated components to extract enormous amounts of data for strategic decision-making. Numerous machine learning (ML) techniques have been applied in medical information systems. These can significantly contribute to the decision-making process, such as diagnosis, prediction, and exploring the benefits of clinical care. This study aims to determine insights into the current state of data mining applications employed by ML in the field of medical informatics (MI). We believe that this exploration would lead to many unrevealed answers in predictive modelling in medical informatics. A systematic search was performed in the most influential scientific electronic databases and one specific another database between 2016 to 2020 (April). Research questions are outlined after the researcher has studied previous research done on the subject. We identified 51 related samples out of 1224 searched articles that satisfied our inclusion criteria. There is a significant increasing pattern of ML application in MI. In addition, the most popular algorithm for classification problem is Support Vector Machine (SVM), followed by random forest (RF). In contrast, "Accuracy" and "Specificity" are the most commonly used mechanisms for performance indicators calculation. This systematic literature review provides a new paradigm for the application of ML to MI. By this investigation, the unknown areas of ML on MI were explored.
引用
收藏
页码:471 / 482
页数:11
相关论文
共 100 条
[1]  
Vollmer S(2020)Machine learning and artificial intelligence research for patient benefit: 20 critical questions on transparency, replicability, ethics, and effectiveness BMJ 368 l6927-615
[2]  
Toh TS(2019)Looking beyond the hype: Applied AI and machine learning in translational medicine EBio Med 47 607-214
[3]  
Dondelinger F(2020)Enhanced deep learning algorithm development to detect pain intensity from facial expression images Expert SystAppl 149 113305-e1000097
[4]  
Wang D(2020)Using machine learning to classify suicide attempt history among youth in medical care settings J Affect Disord 268 206-24
[5]  
Bargshady G(2020)Predicting in-hospital mortality of patients with febrile neutropenia using machine learning models Int J Med Informatics 139 104140-166
[6]  
Burke TA(2018)A machine learning model to predict the risk of 30-day readmissions in patients with heart failure: a retrospective analysis of electronic medical records data BMC Med Inform DecisMak 18 44-26
[7]  
Du X(2020)Predicting mental health problems in adolescence using machine learning techniques PLoS One 15 e0230389-1113
[8]  
Golas SB(2009)Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement PLoS Med 6 e1000097-e191
[9]  
Tate AE(2017)Extending the framework for mobile health information systems Research: a content analysis InfSyst 69 1-21002
[10]  
Moher D(2017)A Systematic Literature Review of the Application of Information Communication Technology for Visually Impaired People Int J DisabilManag 11 e6-21885