Literature DB >> 34990939

Potential applications and performance of machine learning techniques and algorithms in clinical practice: A systematic review.

Ezekwesiri Michael Nwanosike1, Barbara R Conway1, Hamid A Merchant1, Syed Shahzad Hasan2.   

Abstract

PURPOSE: The advent of clinically adapted machine learning algorithms can solve numerous problems ranging from disease diagnosis and prognosis to therapy recommendations. This systematic review examines the performance of machine learning (ML) algorithms and evaluates the progress made to date towards their implementation in clinical practice.
METHODS: Systematic searching of databases (PubMed, MEDLINE, Scopus, Google Scholar, Cochrane Library and WHO Covid-19 database) to identify original articles published between January 2011 and October 2021. Studies reporting ML techniques in clinical practice involving humans and ML algorithms with a performance metric were considered.
RESULTS: Of 873 unique articles identified, 36 studies were eligible for inclusion. The XGBoost (extreme gradient boosting) algorithm showed the highest potential for clinical applications (n = 7 studies); this was followed jointly by random forest algorithm, logistic regression, and the support vector machine, respectively (n = 5 studies). Prediction of outcomes (n = 33), in particular Inflammatory diseases (n = 7) received the most attention followed by cancer and neuropsychiatric disorders (n = 5 for each) and Covid-19 (n = 4). Thirty-three out of the thirty-six included studies passed more than 50% of the selected quality assessment criteria in the TRIPOD checklist. In contrast, none of the studies could achieve an ideal overall bias rating of 'low' based on the PROBAST checklist. In contrast, only three studies showed evidence of the deployment of ML algorithm(s) in clinical practice.
CONCLUSIONS: ML is potentially a reliable tool for clinical decision support. Although advocated widely in clinical practice, work is still in progress to validate clinically adapted ML algorithms. Improving quality standards, transparency, and interpretability of ML models will further lower the barriers to acceptability.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  AUROC; COVID-19; Clinical practice; Clinical studies; Electronic health records (EHRs); Machine learning; Model deployment; Prediction

Mesh:

Year:  2021        PMID: 34990939     DOI: 10.1016/j.ijmedinf.2021.104679

Source DB:  PubMed          Journal:  Int J Med Inform        ISSN: 1386-5056            Impact factor:   4.046


  2 in total

1.  Lifestyle, Demographic and Socio-Economic Determinants of Mental Health Disorders of Employees in the European Countries.

Authors:  Dawid Majcherek; Arkadiusz Michał Kowalski; Małgorzata Stefania Lewandowska
Journal:  Int J Environ Res Public Health       Date:  2022-09-21       Impact factor: 4.614

2.  A machine learning-based risk stratification tool for in-hospital mortality of intensive care unit patients with heart failure.

Authors:  Cida Luo; Yi Zhu; Zhou Zhu; Ranxi Li; Guoqin Chen; Zhang Wang
Journal:  J Transl Med       Date:  2022-03-18       Impact factor: 5.531

  2 in total

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