Publication | Open Access
SynPred: Prediction of Drug Combination Effects in Cancer using Full-Agreement Synergy Metrics and Deep Learning
10
Citations
47
References
2021
Year
Artificial IntelligenceDrug TargetEngineeringFull-agreement Synergy MetricsMultiomicsHigh-throughput Screening TechnologiesOncologyData ScienceBiostatisticsCancer ResearchTranslational BioinformaticsOmicsDeep LearningPharmacologyBioinformaticsCancer HeterogeneityTarget PredictionOmics IntegrationDrug Combination EffectsComputational BiologySystems BiologyMedicineHealth InformaticsDrug Discovery
High-throughput screening technologies continues to produce large amounts of multiomics data from different populations and cell types for various diseases, such as cancer. However, analysis of such data encounters difficulties due to cancer heterogeneity, further exacerbated by human biological complexity and genomic variability. There is a need to redefine the drug discovery development pipeline, bringing an Artificial Intelligence (AI)-powered informational view that integrates relevant biological information and explores new ways to develop effective anticancer approaches. Here, we show SynPred, an interdisciplinary approach that leverages specifically designed ensembles of AI-algorithms, links omics and biophysical traits to predict synergistic anticancer drug synergy. SynPred exhibits state-of-the-art performance metrics: accuracy – 0.85, precision – 0.77, recall – 0.75, AUROC – 0.82, and F1-score - 0.76 in an independent test set. Moreover, data interpretability was achieved by deploying the most current and robust feature importance approaches. A simple web-based application available online at http://www.moreiralab.com/resources/synpred/ was constructed to predict synergistic anticancer drug combinations requiring only the upload of the two drug SMILES to be tested, allowing easy access by non-expert researchers.
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