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Cited 79 time in webofscience Cited 93 time in scopus
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Network-based machine learning in colorectal and bladder organoid models predicts anti-cancer drug efficacy in patients SCIE SCOPUS

Title
Network-based machine learning in colorectal and bladder organoid models predicts anti-cancer drug efficacy in patients
Authors
Kong, JHa, DKim, DHan, SeongKyuLee, HShin, KunyooKIM, SANGUK
Date Issued
2020-10
Publisher
NATURE RESEARCH
Abstract
Cancer patient classification using predictive biomarkers for anti-cancer drug responses is essential for improving therapeutic outcomes. However, current machine-learning-based predictions of drug response often fail to identify robust translational biomarkers from preclinical models. Here, we present a machine-learning framework to identify robust drug biomarkers by taking advantage of network-based analyses using pharmacogenomic data derived from three-dimensional organoid culture models. The biomarkers identified by our approach accurately predict the drug responses of 114 colorectal cancer patients treated with 5-fluorouracil and 77 bladder cancer patients treated with cisplatin. We further confirm our biomarkers using external transcriptomic datasets of drug-sensitive and -resistant isogenic cancer cell lines. Finally, concordance analysis between the transcriptomic biomarkers and independent somatic mutation-based biomarkers further validate our method. This work presents a method to predict cancer patient drug responses using pharmacogenomic data derived from organoid models by combining the application of gene modules and network-based approaches. Cancer patient classification using predictive biomarkers for anti-cancer drug responses is essential for improving therapeutic outcomes. Here, the authors present a machine-learning framework to identify robust drug biomarkers by taking advantage of network-based analyses using pharmacogenomic data.
URI
https://oasis.postech.ac.kr/handle/2014.oak/104598
DOI
10.1038/s41467-020-19313-8
ISSN
2041-1723
Article Type
Article
Citation
NATURE COMMUNICATIONS, vol. 11, no. 1, 2020-10
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