Literature DB >> 33519433

Artificial Intelligence in Pharmacoepidemiology: A Systematic Review. Part 2-Comparison of the Performance of Artificial Intelligence and Traditional Pharmacoepidemiological Techniques.

Maurizio Sessa1, David Liang1, Abdul Rauf Khan1,2, Murat Kulahci2,3, Morten Andersen1.   

Abstract

Aim: To summarize the evidence on the performance of artificial intelligence vs. traditional pharmacoepidemiological techniques.
Methods: Ovid MEDLINE (01/1950 to 05/2019) was searched to identify observational studies, meta-analyses, and clinical trials using artificial intelligence techniques having a drug as the exposure or the outcome of the study. Only studies with an available full text in the English language were evaluated.
Results: In all, 72 original articles and five reviews were identified via Ovid MEDLINE of which 19 (26.4%) compared the performance of artificial intelligence techniques with traditional pharmacoepidemiological methods. In total, 44 comparisons have been performed in articles that aimed at 1) predicting the needed dosage given the patient's characteristics (31.8%), 2) predicting the clinical response following a pharmacological treatment (29.5%), 3) predicting the occurrence/severity of adverse drug reactions (20.5%), 4) predicting the propensity score (9.1%), 5) identifying subpopulation more at risk of drug inefficacy (4.5%), 6) predicting drug consumption (2.3%), and 7) predicting drug-induced lengths of stay in hospital (2.3%). In 22 out of 44 (50.0%) comparisons, artificial intelligence performed better than traditional pharmacoepidemiological techniques. Random forest (seven out of 11 comparisons; 63.6%) and artificial neural network (six out of 10 comparisons; 60.0%) were the techniques that in most of the comparisons outperformed traditional pharmacoepidemiological methods.
Conclusion: Only a small fraction of articles compared the performance of artificial intelligence techniques with traditional pharmacoepidemiological methods and not all artificial intelligence techniques have been compared in a Pharmacoepidemiological setting. However, in 50% of comparisons, artificial intelligence performed better than pharmacoepidemiological techniques.
Copyright © 2021 Sessa, Liang, Khan, Kulahci and Andersen.

Entities:  

Keywords:  artificial intelligence; deep learning; machine learning; pharmacoepidemiology; systematic review

Year:  2021        PMID: 33519433      PMCID: PMC7841344          DOI: 10.3389/fphar.2020.568659

Source DB:  PubMed          Journal:  Front Pharmacol        ISSN: 1663-9812            Impact factor:   5.810


  1 in total

Review 1.  Major areas of interest of artificial intelligence research applied to health care administrative data: a scoping review.

Authors:  Olga Bukhtiyarova; Amna Abderrazak; Yohann Chiu; Stephanie Sparano; Marc Simard; Caroline Sirois
Journal:  Front Pharmacol       Date:  2022-07-18       Impact factor: 5.988

  1 in total

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