Predicting potential adverse events using safety data from marketed drugs

Abstract Background While clinical trials are considered the gold standard for detecting adverse events, often these trials are not sufficiently powered to detect difficult to observe adverse events. We developed a preliminary approach to predict 135 adverse events using post-market safety data from marketed drugs. Adverse event information available from FDA product labels and scientific literature for drugs that have the same activity at one or more of the same targets, structural and target similarities, and the duration of post market experience were used as features for a classifier algorithm. The proposed method was studied using 54 drugs and a probabilistic approach of performance evaluation using bootstrapping with 10,000 iterations. Results Out of 135 adverse events, 53 had high probability of having high positive predictive value. Cross validation showed that 32% of the model-predicted safety label changes occurred within four to nine years of approval (median: six years). Conclusions This approach predicts 53 serious adverse events with high positive predictive values where well-characterized target-event relationships exist. Adverse events with well-defined target-event associations were better predicted compared to adverse events that may be idiosyncratic or related to secondary target effects that were poorly captured. Further enhancement of this model with additional features, such as target prediction and drug binding data, may increase accuracy.

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PID https://www.doi.org/10.6084/m9.figshare.c.4958369.v1
PID https://www.doi.org/10.6084/m9.figshare.c.4958369
URL http://dx.doi.org/10.6084/m9.figshare.c.4958369
URL http://dx.doi.org/10.6084/m9.figshare.c.4958369.v1
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Author Chathuri Daluwatte
Author Schotland, Peter
Author Strauss, David G.
Author Burkhart, Keith K.
Author Racz, Rebecca, 0000-0002-5487-5692
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Collected From Datacite
Hosted By figshare
Publication Date 2020-01-01
Publisher figshare
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system:type other
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Source https://science-innovation-policy.openaire.eu/search/other?orpId=dedup_wf_001::f98d37808a8b2e59feeb61cbf66395c4
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Last Updated 20 December 2020, 03:29 (CET)
Created 20 December 2020, 03:29 (CET)