Role of Artificial Intelligence in Patient Safety Outcomes: Systematic Literature Review

被引:142
作者
Choudhury, Avishek [1 ]
Asan, Onur [1 ]
机构
[1] Stevens Inst Technol, Sch Syst & Enterprises, 1 Castle Point Terrace, Hoboken, NJ 07030 USA
关键词
artificial intelligence; patient safety; drug safety; clinical error; report analysis; natural language processing; drug; review; FALSE ARRHYTHMIA ALARMS; ADVERSE DRUG-REACTIONS; AUTOMATED IDENTIFICATION; ROBOTIC SURGERY; BIG DATA; CARE; CLASSIFICATION; PREDICTION; RISK; DEEP;
D O I
10.2196/18599
中图分类号
R-058 [];
学科分类号
摘要
Background: Artificial intelligence (AI) provides opportunities to identify the health risks of patients and thus influence patient safety outcomes. Objective: The purpose of this systematic literature review was to identify and analyze quantitative studies utilizing or integrating AI to address and report clinical-level patient safety outcomes. Methods: We restricted our search to the PubMed, PubMed Central, and Web of Science databases to retrieve research articles published in English between January 2009 and August 2019. We focused on quantitative studies that reported positive, negative, or intermediate changes in patient safety outcomes using AI apps, specifically those based on machine-learning algorithms and natural language processing. Quantitative studies reporting only AI performance but not its influence on patient safety outcomes were excluded from further review. Results: We identified 53 eligible studies, which were summarized concerning their patient safety subcategories, the most frequently used AI, and reported performance metrics. Recognized safety subcategories were clinical alarms (n=9; mainly based on decision tree models), clinical reports (n=21; based on support vector machine models), and drug safety (n=23; mainly based on decision tree models). Analysis of these 53 studies also identified two essential findings . (1) the lack of a standardized benchmark and (2) heterogeneity in AI reporting. Conclusions: This systematic review indicates that AI-enabled decision support systems, when implemented correctly, can aid in enhancing patient safety by improving error detection, patient stratification, and drug management. Future work is still needed for robust validation of these systems in prospective and real-world clinical environments to understand how well AI can predict safety outcomes in health care settings.
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