Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method
Background/Aims: One of the most important impacts of personalized medicine is the connection between patients’ genotypes and their drug responses. Despite a series of studies exploring this relationship, the predictive ability of such analyses still needs to be strengthened. Methods: Here we presen...
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Cell Physiol Biochem Press GmbH & Co KG
2018-12-01
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doaj-1c57ec740adf4557b7182754fead16482020-11-25T02:16:47ZengCell Physiol Biochem Press GmbH & Co KGCellular Physiology and Biochemistry1015-89871421-97782018-12-015152073208410.1159/000495826495826Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression MethodHai-Hui HuangJing-Guo DaiYong LiangBackground/Aims: One of the most important impacts of personalized medicine is the connection between patients’ genotypes and their drug responses. Despite a series of studies exploring this relationship, the predictive ability of such analyses still needs to be strengthened. Methods: Here we present the Lq penalized network-constrained logistic regression (Lq-NLR) method to meet this need, in which the predictors are integrated into the gene expression data and biological network knowledge and are combined with a more aggressive penalty function. Response prediction models for two cancer targeting drugs (erlotinib and sorafenib) were developed from gene expression data and IC50 values from a large panel of cancer cell lines by utilizing the proposed approach. Then the drug responders were tested with the baseline tumor gene expression data, yielding an in vivo drug sensitivity prediction. Results: These results demonstrated the high effectiveness of this approach. One of the best results achieved by our method was a correlation of 0.841 between the cell line in vitro drug response and patient’s in vivo drug response. We then applied these two drug prediction models to develop a personalized medicine approach in which the subsequent treatment depends on each patient’s gene-expression profile. Conclusion: The proposed method is much better than the existing approach and can capture a more accurate reflection of the relationship between genotypes and phenotypes.https://www.karger.com/Article/FullText/495826Personalized medicineDrug response predictionRegularizationVariable selection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hai-Hui Huang Jing-Guo Dai Yong Liang |
spellingShingle |
Hai-Hui Huang Jing-Guo Dai Yong Liang Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method Cellular Physiology and Biochemistry Personalized medicine Drug response prediction Regularization Variable selection |
author_facet |
Hai-Hui Huang Jing-Guo Dai Yong Liang |
author_sort |
Hai-Hui Huang |
title |
Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method |
title_short |
Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method |
title_full |
Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method |
title_fullStr |
Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method |
title_full_unstemmed |
Clinical Drug Response Prediction by Using a Lq Penalized Network-Constrained Logistic Regression Method |
title_sort |
clinical drug response prediction by using a lq penalized network-constrained logistic regression method |
publisher |
Cell Physiol Biochem Press GmbH & Co KG |
series |
Cellular Physiology and Biochemistry |
issn |
1015-8987 1421-9778 |
publishDate |
2018-12-01 |
description |
Background/Aims: One of the most important impacts of personalized medicine is the connection between patients’ genotypes and their drug responses. Despite a series of studies exploring this relationship, the predictive ability of such analyses still needs to be strengthened. Methods: Here we present the Lq penalized network-constrained logistic regression (Lq-NLR) method to meet this need, in which the predictors are integrated into the gene expression data and biological network knowledge and are combined with a more aggressive penalty function. Response prediction models for two cancer targeting drugs (erlotinib and sorafenib) were developed from gene expression data and IC50 values from a large panel of cancer cell lines by utilizing the proposed approach. Then the drug responders were tested with the baseline tumor gene expression data, yielding an in vivo drug sensitivity prediction. Results: These results demonstrated the high effectiveness of this approach. One of the best results achieved by our method was a correlation of 0.841 between the cell line in vitro drug response and patient’s in vivo drug response. We then applied these two drug prediction models to develop a personalized medicine approach in which the subsequent treatment depends on each patient’s gene-expression profile. Conclusion: The proposed method is much better than the existing approach and can capture a more accurate reflection of the relationship between genotypes and phenotypes. |
topic |
Personalized medicine Drug response prediction Regularization Variable selection |
url |
https://www.karger.com/Article/FullText/495826 |
work_keys_str_mv |
AT haihuihuang clinicaldrugresponsepredictionbyusingalqpenalizednetworkconstrainedlogisticregressionmethod AT jingguodai clinicaldrugresponsepredictionbyusingalqpenalizednetworkconstrainedlogisticregressionmethod AT yongliang clinicaldrugresponsepredictionbyusingalqpenalizednetworkconstrainedlogisticregressionmethod |
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1724889057367949312 |