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A network flow-based method to predict anticancer drug sensitivity.


ABSTRACT: Predicting anticancer drug sensitivity can enhance the ability to individualize patient treatment, thus making development of cancer therapies more effective and safe. In this paper, we present a new network flow-based method, which utilizes the topological structure of pathways, for predicting anticancer drug sensitivities. Mutations and copy number alterations of cancer-related genes are assumed to change the pathway activity, and pathway activity difference before and after drug treatment is used as a measure of drug response. In our model, Contributions from different genetic alterations are considered as free parameters, which are optimized by the drug response data from the Cancer Genome Project (CGP). 10-fold cross validation on CGP data set showed that our model achieved comparable prediction results with existing elastic net model using much less input features.

SUBMITTER: Qin Y 

PROVIDER: S-EPMC4436355 | biostudies-literature | 2015

REPOSITORIES: biostudies-literature

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A network flow-based method to predict anticancer drug sensitivity.

Qin Yufang Y   Chen Ming M   Wang Haiyun H   Zheng Xiaoqi X  

PloS one 20150518 5


Predicting anticancer drug sensitivity can enhance the ability to individualize patient treatment, thus making development of cancer therapies more effective and safe. In this paper, we present a new network flow-based method, which utilizes the topological structure of pathways, for predicting anticancer drug sensitivities. Mutations and copy number alterations of cancer-related genes are assumed to change the pathway activity, and pathway activity difference before and after drug treatment is  ...[more]

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