Machine learning applied to electronic health record data in home healthcare: A scoping review

生物心理社会模型 奇纳 机器学习 人工智能 医学 斯科普斯 健康信息学 梅德林 医疗保健 信息学 人口 决策树 心理信息 计算机科学 心理干预 公共卫生 护理部 精神科 工程类 电气工程 环境卫生 经济 经济增长 法学 政治学
作者
Mollie Hobensack,Jiyoun Song,Danielle Scharp,Kathryn H. Bowles,Maxim Topaz
出处
期刊:International Journal of Medical Informatics [Elsevier BV]
卷期号:170: 104978-104978 被引量:30
标识
DOI:10.1016/j.ijmedinf.2022.104978
摘要

Despite recent calls for home healthcare (HHC) to integrate informatics, the application of machine learning in HHC is relatively unknown. Thus, this study aimed to synthesize and appraise the literature describing the application of machine learning to predict adverse outcomes (e.g., hospitalization, mortality) using electronic health record (EHR) data in the HHC setting. Our secondary aim was to evaluate the comprehensiveness of predictors used in the machine learning algorithms guided by the Biopsychosocial Model.During March 2022 we conducted a literature search in four databases: PubMed, Embase, CINAHL, and Scopus. Inclusion criteria were 1) describing services provided in the HHC setting, 2) applying machine learning algorithms to predict adverse outcomes, defined as outcomes related to patient deterioration, 3) using EHR data and 4) focusing on the adult population. Predictors were mapped to the Biopsychosocial Model. A risk of bias analysis was conducted using the Prediction Model Risk Of Bias Assessment Tool.The final sample included 20 studies. Eighteen studies used predictors from standardized assessments integrated in the EHR. The most common outcome of interest was hospitalization (55%), followed by mortality (25%). Psychological predictors were frequently excluded (35%). Tree based algorithms were most frequently applied (75%). Most studies demonstrated high or unclear risk of bias (75%).Future studies in HHC should consider incorporating machine learning algorithms into clinical decision support systems to identify patients at risk. Based on the Biopsychosocial model, psychological and interpersonal characteristics should be used along with biological characteristics to enhance risk prediction. To facilitate the widespread adoption of machine learning, stakeholders should encourage standardization in the HHC setting.
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