2017
DOI: 10.1038/s41598-017-12943-x
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Development of A Machine Learning Algorithm to Classify Drugs Of Unknown Fetal Effect

Abstract: Many drugs commonly prescribed during pregnancy lack a fetal safety recommendation – called FDA ‘category C’ drugs. This study aims to classify these drugs into harmful and safe categories using knowledge gained from chemoinformatics (i.e., pharmacological similarity with drugs of known fetal effect) and empirical data (i.e., derived from Electronic Health Records). Our fetal loss cohort contains 14,922 affected and 33,043 unaffected pregnancies and our congenital anomalies cohort contains 5,658 affected and 3… Show more

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Cited by 32 publications
(22 citation statements)
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“…In the area of drug safety, a random forest classifier was used to predict the effect of drugs on the fetus. The models successfully identified category C drugs that are likely to be harmful and those likely to be safe for fetal loss or congenital anomalies 79 .…”
Section: The Complete E2e Modelmentioning
confidence: 99%
“…In the area of drug safety, a random forest classifier was used to predict the effect of drugs on the fetus. The models successfully identified category C drugs that are likely to be harmful and those likely to be safe for fetal loss or congenital anomalies 79 .…”
Section: The Complete E2e Modelmentioning
confidence: 99%
“…Boland et al developed a method that utilizes machine learning to predict the fetal toxicity of pharmacologics taken during pregnancy, including first through third trimesters of the pregnancy [79]. The ML method employed a technique called 'random forests' whereby information was learned from drugs that were known to be harmful to the fetus by previous outcomes studies (and were already labeled as contraindicated in pregnancy by the United States Food and Drug Administration (FDA)-or category D or X).…”
Section: Pharmacologics and Pregnancymentioning
confidence: 99%
“…The AI method was able to predict which drugs were more likely to be fetal toxic versus fetal safe for those drugs that were in the middle or unknown fetal toxicity category (i.e., FDA Category C drugs). Boland et al's method also used chemical information on the drugs and whether or not the drug was known to target a vitamin gene or a known Mendelian disease gene to improve the performance of the method [79]. The importance of understanding Mendelian disease genes and pharmacologics that target them (even as unintended targets or 'off-targets') in fetal outcomes was established via an extensive manual review process [80] that helped to inform the design of our later machine learning approach [79].…”
Section: Pharmacologics and Pregnancymentioning
confidence: 99%
“…We employed computational, data‐driven techniques that offer opportunities to perform simultaneous inferences about the use of multiple medications. Such methods have only recently been considered for discovery of unknown drug effects and interactions (Boland, Polubriaginof, & Tatonetti, ; Chiang et al, ; Tatonetti et al, ; Tatonetti, Ye, Daneshjou, & Altman, ). Tatonetti et al successfully used data mining of ADEs to discover several previously unidentified drug‐to‐drug interactions (Chiang et al, ; Tatonetti et al, ).…”
Section: Introductionmentioning
confidence: 99%