4.7 Article

Gene-centric multi-omics integration with convolutional encoders for cancer drug response prediction

期刊

COMPUTERS IN BIOLOGY AND MEDICINE
卷 151, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.106192

关键词

Multi-omics integration; Drug discovery; Deep learning; Convolution neural networks

资金

  1. Korea Institute for Advancement Technology (KIAT) - Korea government (Ministry of Trade, Industry and Energy) [P0015390]
  2. National Research Foundation of Korea (NRF) - Ministry of Science, ICT and Future Planning, South Korea [2020R1A4A101942311]

向作者/读者索取更多资源

This study introduces a gene-centric multi-channel architecture to predict cancer drug response by integrating multi-omics. Evaluations on various datasets show the effectiveness of GCMC in improving performance and feature extraction capabilities.
Motivation: Tumor heterogeneity, including genetic and transcriptomic characteristics, can reduce the efficacy of anticancer pharmacological therapy, resulting in clinical variability in patient response to therapeutic medications. Multi-omics integration can allow in silico models to provide an additional perspective on a biological system.Methods: In this study, we propose a gene-centric multi-channel (GCMC) architecture to integrate multi-omics for predicting cancer drug response. GCMC transformed multi-omics profiles into a three-dimensional tensor with an additional dimension for omics types. GCMC's convolutional encoders captures multi-omics profiles for each gene and yields gene-centric features to predict drug responses.Results: We evaluated GCMC on various datasets, including The Cancer Genome Atlas (TCGA) patients, patient-derived xenografts (PDX) mice models, and the Genomics of Drug Sensitivity in Cancer (GDSC) cell line datasets. GCMC achieved better performance than baseline models, including single-omics models, in more than 75% of 265 drugs from GDSC cell line datasets. Furthermore, as for the clinical applicability of GCMC, it achieved the best performance on TCGA and PDX datasets in terms of both AUPR and AUC. We also analyzed models' capability of integrating multi-omics profiles by measuring the contribution ratio of omics types. GCMC can incorporate multi-omics profiles in various manners to enhance performance for each drug type. These results suggested that GCMC can improve performance and feature extraction capability by integrating multi-omics profiles in a gene-centric manner.

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