Predicting drug response of tumors from integrated genomic profiles by deep neural networks
Yu-Chiao Chiu, Hung-I Harry Chen, Tinghe Zhang, Songyao Zhang, Aparna, Gorthi, Li-Ju Wang, Yufei Huang, Yidong Chen

TL;DR
This paper introduces a deep neural network model that predicts tumor drug responses using integrated genomic data, outperforming classical methods and revealing insights into resistance mechanisms and new therapeutic targets.
Contribution
The study develops a pre-trained DNN model that accurately predicts drug response in tumors from genomic profiles, bridging cell line data and tumor applications.
Findings
Achieved mean squared error of 1.96 in predicting IC50 values for 265 drugs.
Predicted known drug responses in specific cancer types, validating model accuracy.
Identified potential new therapeutic agents and resistance mechanisms.
Abstract
The study of high-throughput genomic profiles from a pharmacogenomics viewpoint has provided unprecedented insights into the oncogenic features modulating drug response. A recent screening of ~1,000 cancer cell lines to a collection of anti-cancer drugs illuminated the link between genotypes and vulnerability. However, due to essential differences between cell lines and tumors, the translation into predicting drug response in tumors remains challenging. Here we proposed a DNN model to predict drug response based on mutation and expression profiles of a cancer cell or a tumor. The model contains a mutation and an expression encoders pre-trained using a large pan-cancer dataset to abstract core representations of high-dimension data, followed by a drug response predictor network. Given a pair of mutation and expression profiles, the model predicts IC50 values of 265 drugs. We trained and…
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Taxonomy
TopicsComputational Drug Discovery Methods · Molecular Biology Techniques and Applications · Bioinformatics and Genomic Networks
