AUTHOR=Sessa Maurizio , Khan Abdul Rauf , Liang David , Andersen Morten , Kulahci Murat
TITLE=Artificial Intelligence in Pharmacoepidemiology: A Systematic Review. Part 1—Overview of Knowledge Discovery Techniques in Artificial Intelligence
JOURNAL=Frontiers in Pharmacology
VOLUME=11
YEAR=2020
URL=https://www.frontiersin.org/journals/pharmacology/articles/10.3389/fphar.2020.01028
DOI=10.3389/fphar.2020.01028
ISSN=1663-9812
ABSTRACT=AimTo perform a systematic review on the application of artificial intelligence (AI) based knowledge discovery techniques in pharmacoepidemiology.
Study Eligibility CriteriaClinical trials, meta-analyses, narrative/systematic review, and observational studies using (or mentioning articles using) artificial intelligence techniques were eligible. Articles without a full text available in the English language were excluded.
Data SourcesArticles recorded from 1950/01/01 to 2019/05/06 in Ovid MEDLINE were screened.
ParticipantsStudies including humans (real or simulated) exposed to a drug.
ResultsIn total, 72 original articles and 5 reviews were identified via Ovid MEDLINE. Twenty different knowledge discovery methods were identified, mainly from the area of machine learning (66/72; 91.7%). Classification/regression (44/72; 61.1%), classification/regression + model optimization (13/72; 18.0%), and classification/regression + features selection (12/72; 16.7%) were the three most frequent tasks in reviewed literature that machine learning methods has been applied to solve. The top three used techniques were artificial neural networks, random forest, and support vector machines models.
ConclusionsThe use of knowledge discovery techniques of artificial intelligence techniques has increased exponentially over the years covering numerous sub-topics of pharmacoepidemiology.
Systematic Review RegistrationSystematic review registration number in PROSPERO: CRD42019136552.