Effects of machine learning-based clinical decision support systems on decision-making, care delivery, and patient outcomes: a scoping review

Author:

Susanto Anindya Pradipta12ORCID,Lyell David1ORCID,Widyantoro Bambang23,Berkovsky Shlomo1,Magrabi Farah1ORCID

Affiliation:

1. Centre for Health Informatics, Australian Institute of Health Innovation, Macquarie University , Sydney, NSW 2109, Australia

2. Faculty of Medicine, Universitas Indonesia , Jakarta, DKI Jakarta 10430, Indonesia

3. National Cardiovascular Center Harapan Kita Hospital , Jakarta, DKI Jakarta 11420, Indonesia

Abstract

Abstract Objective This study aims to summarize the research literature evaluating machine learning (ML)-based clinical decision support (CDS) systems in healthcare settings. Materials and methods We conducted a review in accordance with the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta Analyses extension for Scoping Review). Four databases, including PubMed, Medline, Embase, and Scopus were searched for studies published from January 2016 to April 2021 evaluating the use of ML-based CDS in clinical settings. We extracted the study design, care setting, clinical task, CDS task, and ML method. The level of CDS autonomy was examined using a previously published 3-level classification based on the division of clinical tasks between the clinician and CDS; effects on decision-making, care delivery, and patient outcomes were summarized. Results Thirty-two studies evaluating the use of ML-based CDS in clinical settings were identified. All were undertaken in developed countries and largely in secondary and tertiary care settings. The most common clinical tasks supported by ML-based CDS were image recognition and interpretation (n = 12) and risk assessment (n = 9). The majority of studies examined assistive CDS (n = 23) which required clinicians to confirm or approve CDS recommendations for risk assessment in sepsis and for interpreting cancerous lesions in colonoscopy. Effects on decision-making, care delivery, and patient outcomes were mixed. Conclusion ML-based CDS are being evaluated in many clinical areas. There remain many opportunities to apply and evaluate effects of ML-based CDS on decision-making, care delivery, and patient outcomes, particularly in resource-constrained settings.

Funder

Macquarie University

NHMRC

Centre for Research Excellence

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference71 articles.

1. Guide to Health Informatics

2. An overview of clinical decision support systems: benefits, risks, and strategies for success;Sutton;NPJ Digit Med,2020

3. Artificial intelligence in healthcare;Yu;Nat Biomed Eng,2018

4. On algorithms, machines, and medicine;Coiera;Lancet Oncol,2019

5. Association of clinician diagnostic performance with machine learning-based decision support systems: a systematic review;Vasey;JAMA Netw,2021

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