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Predicting drug response of tumors from integrated genomic profiles by deep neural networks

BACKGROUND: The study of high-throughput genomic profiles from a pharmacogenomics viewpoint has provided unprecedented insights into the oncogenic features modulating drug response. A recent study screened for the response of a thousand human cancer cell lines to a wide collection of anti-cancer dru...

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Autores principales: Chiu, Yu-Chiao, Chen, Hung-I Harry, Zhang, Tinghe, Zhang, Songyao, Gorthi, Aparna, Wang, Li-Ju, Huang, Yufei, Chen, Yidong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6357352/
https://www.ncbi.nlm.nih.gov/pubmed/30704458
http://dx.doi.org/10.1186/s12920-018-0460-9
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author Chiu, Yu-Chiao
Chen, Hung-I Harry
Zhang, Tinghe
Zhang, Songyao
Gorthi, Aparna
Wang, Li-Ju
Huang, Yufei
Chen, Yidong
author_facet Chiu, Yu-Chiao
Chen, Hung-I Harry
Zhang, Tinghe
Zhang, Songyao
Gorthi, Aparna
Wang, Li-Ju
Huang, Yufei
Chen, Yidong
author_sort Chiu, Yu-Chiao
collection PubMed
description BACKGROUND: The study of high-throughput genomic profiles from a pharmacogenomics viewpoint has provided unprecedented insights into the oncogenic features modulating drug response. A recent study screened for the response of a thousand human cancer cell lines to a wide collection of anti-cancer drugs and illuminated the link between cellular genotypes and vulnerability. However, due to essential differences between cell lines and tumors, to date the translation into predicting drug response in tumors remains challenging. Recently, advances in deep learning have revolutionized bioinformatics and introduced new techniques to the integration of genomic data. Its application on pharmacogenomics may fill the gap between genomics and drug response and improve the prediction of drug response in tumors. RESULTS: We proposed a deep learning model to predict drug response (DeepDR) based on mutation and expression profiles of a cancer cell or a tumor. The model contains three deep neural networks (DNNs), i) a mutation encoder pre-trained using a large pan-cancer dataset (The Cancer Genome Atlas; TCGA) to abstract core representations of high-dimension mutation data, ii) a pre-trained expression encoder, and iii) a drug response predictor network integrating the first two subnetworks. Given a pair of mutation and expression profiles, the model predicts IC(50) values of 265 drugs. We trained and tested the model on a dataset of 622 cancer cell lines and achieved an overall prediction performance of mean squared error at 1.96 (log-scale IC(50) values). The performance was superior in prediction error or stability than two classical methods (linear regression and support vector machine) and four analog DNN models of DeepDR, including DNNs built without TCGA pre-training, partly replaced by principal components, and built on individual types of input data. We then applied the model to predict drug response of 9059 tumors of 33 cancer types. Using per-cancer and pan-cancer settings, the model predicted both known, including EGFR inhibitors in non-small cell lung cancer and tamoxifen in ER+ breast cancer, and novel drug targets, such as vinorelbine for TTN-mutated tumors. The comprehensive analysis further revealed the molecular mechanisms underlying the resistance to a chemotherapeutic drug docetaxel in a pan-cancer setting and the anti-cancer potential of a novel agent, CX-5461, in treating gliomas and hematopoietic malignancies. CONCLUSIONS: Here we present, as far as we know, the first DNN model to translate pharmacogenomics features identified from in vitro drug screening to predict the response of tumors. The results covered both well-studied and novel mechanisms of drug resistance and drug targets. Our model and findings improve the prediction of drug response and the identification of novel therapeutic options.
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spelling pubmed-63573522019-02-07 Predicting drug response of tumors from integrated genomic profiles by deep neural networks Chiu, Yu-Chiao Chen, Hung-I Harry Zhang, Tinghe Zhang, Songyao Gorthi, Aparna Wang, Li-Ju Huang, Yufei Chen, Yidong BMC Med Genomics Research BACKGROUND: The study of high-throughput genomic profiles from a pharmacogenomics viewpoint has provided unprecedented insights into the oncogenic features modulating drug response. A recent study screened for the response of a thousand human cancer cell lines to a wide collection of anti-cancer drugs and illuminated the link between cellular genotypes and vulnerability. However, due to essential differences between cell lines and tumors, to date the translation into predicting drug response in tumors remains challenging. Recently, advances in deep learning have revolutionized bioinformatics and introduced new techniques to the integration of genomic data. Its application on pharmacogenomics may fill the gap between genomics and drug response and improve the prediction of drug response in tumors. RESULTS: We proposed a deep learning model to predict drug response (DeepDR) based on mutation and expression profiles of a cancer cell or a tumor. The model contains three deep neural networks (DNNs), i) a mutation encoder pre-trained using a large pan-cancer dataset (The Cancer Genome Atlas; TCGA) to abstract core representations of high-dimension mutation data, ii) a pre-trained expression encoder, and iii) a drug response predictor network integrating the first two subnetworks. Given a pair of mutation and expression profiles, the model predicts IC(50) values of 265 drugs. We trained and tested the model on a dataset of 622 cancer cell lines and achieved an overall prediction performance of mean squared error at 1.96 (log-scale IC(50) values). The performance was superior in prediction error or stability than two classical methods (linear regression and support vector machine) and four analog DNN models of DeepDR, including DNNs built without TCGA pre-training, partly replaced by principal components, and built on individual types of input data. We then applied the model to predict drug response of 9059 tumors of 33 cancer types. Using per-cancer and pan-cancer settings, the model predicted both known, including EGFR inhibitors in non-small cell lung cancer and tamoxifen in ER+ breast cancer, and novel drug targets, such as vinorelbine for TTN-mutated tumors. The comprehensive analysis further revealed the molecular mechanisms underlying the resistance to a chemotherapeutic drug docetaxel in a pan-cancer setting and the anti-cancer potential of a novel agent, CX-5461, in treating gliomas and hematopoietic malignancies. CONCLUSIONS: Here we present, as far as we know, the first DNN model to translate pharmacogenomics features identified from in vitro drug screening to predict the response of tumors. The results covered both well-studied and novel mechanisms of drug resistance and drug targets. Our model and findings improve the prediction of drug response and the identification of novel therapeutic options. BioMed Central 2019-01-31 /pmc/articles/PMC6357352/ /pubmed/30704458 http://dx.doi.org/10.1186/s12920-018-0460-9 Text en © The Author(s). 2019 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Chiu, Yu-Chiao
Chen, Hung-I Harry
Zhang, Tinghe
Zhang, Songyao
Gorthi, Aparna
Wang, Li-Ju
Huang, Yufei
Chen, Yidong
Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title_full Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title_fullStr Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title_full_unstemmed Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title_short Predicting drug response of tumors from integrated genomic profiles by deep neural networks
title_sort predicting drug response of tumors from integrated genomic profiles by deep neural networks
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6357352/
https://www.ncbi.nlm.nih.gov/pubmed/30704458
http://dx.doi.org/10.1186/s12920-018-0460-9
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