Abstract
The ability to estimate the probability of a drug to receive approval in clinical trials provides natural
advantages to optimizing pharmaceutical research workflows. Success rates of clinical trials have deep
implications to costs, duration of development, and under pressure due to stringent regulatory approval
processes. We propose a machine learning approach that can predict the outcome of the trial with reliable
accuracies, using biological activities, physicochemical properties of the compounds, target-related
features, and NLP-based compound representation. Biological activities have never been used as a
predictive feature. We have extracted the drug-disease pair from clinical trials and mapped target(s) to that
pair using multiple data sources. Empirical results demonstrate that ensemble learning outperforms
independently trained, small-data ML models. We report results and inferences derived from a Random
forest classifier with an average accuracy of 93%, and an F1 score of 0.96 for the 'Pass' class. 'Pass' refers
to one of the two classes (Pass/ Fail) of all clinical trials and the model performed well in predicting the
'Pass' category. An analysis of the features demonstrates that bioactivity plays an important role in
predicting the outcome of a clinical trial. A significant effort has gone into the production of the dataset
that, for the first time, integrates clinical trial information with protein targets. All code to map these entities
is available through this study, and all data are from publicly available sources. While our model identifies
low-lying inferences when biological activities are included, the code to integrate biological activity and
target information provide researchers with access to deep curated and proprietary clinical trial databases
the ability to get deeper insights, better statistical significance, and capabilities to better predict trial
failures.
Supplementary materials
Title
Predicting Clinical Trial Outcomes Using Drug Bioactivities through Graph Database Integration and Machine Learning
Description
Supporting Information - Predicting Clinical Trial Outcomes Using Drug Bioactivities through Graph Database Integration and Machine Learning
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