The impact of machine learning on patient care: A systematic review

Artif Intell Med. 2020 Mar:103:101785. doi: 10.1016/j.artmed.2019.101785. Epub 2019 Dec 31.

Abstract

Background: Despite the expanding use of machine learning (ML) in fields such as finance and marketing, its application in the daily practice of clinical medicine is almost non-existent. In this systematic review, we describe the various areas within clinical medicine that have applied the use of ML to improve patient care.

Methods: A systematic review was performed in accordance with the PRISMA guidelines using Medline(R), EBM Reviews, Embase, Psych Info, and Cochrane Databases, focusing on human studies that used ML to directly address a clinical problem. Included studies were published from January 1, 2000 to May 1, 2018 and provided metrics on the performance of the utilized ML tool.

Results: A total of 1909 unique publications were reviewed, with 378 retrospective articles and 8 prospective articles meeting inclusion criteria. Retrospective publications were found to be increasing in frequency, with 61 % of articles published within the last 4 years. Prospective articles comprised only 2 % of the articles meeting our inclusion criteria. These studies utilized a prospective cohort design with an average sample size of 531.

Conclusion: The majority of literature describing the use of ML in clinical medicine is retrospective in nature and often outlines proof-of-concept approaches to impact patient care. We postulate that identifying and overcoming key translational barriers, including real-time access to clinical data, data security, physician approval of "black box" generated results, and performance evaluation will allow for a fundamental shift in medical practice, where specialized tools will aid the healthcare team in providing better patient care.

Keywords: Artificial intelligence; Clinical practice; Machine learning; Patient care; Systematic review.

Publication types

  • Systematic Review

MeSH terms

  • Clinical Medicine / organization & administration*
  • Humans
  • Machine Learning*
  • Patient Care / methods*
  • Prospective Studies
  • Retrospective Studies