Tissue-guided LASSO for prediction of clinical drug response using preclinical samples.
Prediction of clinical drug response (CDR) of cancer patients, based on their clinical and molecular profiles obtained prior to administration of the drug, can play a significant role in individualized medicine. Machine learning models have the potential to address this issue but training them requi...
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doaj-f5f68c2ab426446b9220523402df8df42021-04-21T15:15:53ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-01-01161e100760710.1371/journal.pcbi.1007607Tissue-guided LASSO for prediction of clinical drug response using preclinical samples.Edward W HuangAmeya BhopeJing LimSaurabh SinhaAmin EmadPrediction of clinical drug response (CDR) of cancer patients, based on their clinical and molecular profiles obtained prior to administration of the drug, can play a significant role in individualized medicine. Machine learning models have the potential to address this issue but training them requires data from a large number of patients treated with each drug, limiting their feasibility. While large databases of drug response and molecular profiles of preclinical in-vitro cancer cell lines (CCLs) exist for many drugs, it is unclear whether preclinical samples can be used to predict CDR of real patients. We designed a systematic approach to evaluate how well different algorithms, trained on gene expression and drug response of CCLs, can predict CDR of patients. Using data from two large databases, we evaluated various linear and non-linear algorithms, some of which utilized information on gene interactions. Then, we developed a new algorithm called TG-LASSO that explicitly integrates information on samples' tissue of origin with gene expression profiles to improve prediction performance. Our results showed that regularized regression methods provide better prediction performance. However, including the network information or common methods of including information on the tissue of origin did not improve the results. On the other hand, TG-LASSO improved the predictions and distinguished resistant and sensitive patients for 7 out of 13 drugs. Additionally, TG-LASSO identified genes associated with the drug response, including known targets and pathways involved in the drugs' mechanism of action. Moreover, genes identified by TG-LASSO for multiple drugs in a tissue were associated with patient survival. In summary, our analysis suggests that preclinical samples can be used to predict CDR of patients and identify biomarkers of drug sensitivity and survival.https://doi.org/10.1371/journal.pcbi.1007607 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Edward W Huang Ameya Bhope Jing Lim Saurabh Sinha Amin Emad |
spellingShingle |
Edward W Huang Ameya Bhope Jing Lim Saurabh Sinha Amin Emad Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. PLoS Computational Biology |
author_facet |
Edward W Huang Ameya Bhope Jing Lim Saurabh Sinha Amin Emad |
author_sort |
Edward W Huang |
title |
Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. |
title_short |
Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. |
title_full |
Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. |
title_fullStr |
Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. |
title_full_unstemmed |
Tissue-guided LASSO for prediction of clinical drug response using preclinical samples. |
title_sort |
tissue-guided lasso for prediction of clinical drug response using preclinical samples. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2020-01-01 |
description |
Prediction of clinical drug response (CDR) of cancer patients, based on their clinical and molecular profiles obtained prior to administration of the drug, can play a significant role in individualized medicine. Machine learning models have the potential to address this issue but training them requires data from a large number of patients treated with each drug, limiting their feasibility. While large databases of drug response and molecular profiles of preclinical in-vitro cancer cell lines (CCLs) exist for many drugs, it is unclear whether preclinical samples can be used to predict CDR of real patients. We designed a systematic approach to evaluate how well different algorithms, trained on gene expression and drug response of CCLs, can predict CDR of patients. Using data from two large databases, we evaluated various linear and non-linear algorithms, some of which utilized information on gene interactions. Then, we developed a new algorithm called TG-LASSO that explicitly integrates information on samples' tissue of origin with gene expression profiles to improve prediction performance. Our results showed that regularized regression methods provide better prediction performance. However, including the network information or common methods of including information on the tissue of origin did not improve the results. On the other hand, TG-LASSO improved the predictions and distinguished resistant and sensitive patients for 7 out of 13 drugs. Additionally, TG-LASSO identified genes associated with the drug response, including known targets and pathways involved in the drugs' mechanism of action. Moreover, genes identified by TG-LASSO for multiple drugs in a tissue were associated with patient survival. In summary, our analysis suggests that preclinical samples can be used to predict CDR of patients and identify biomarkers of drug sensitivity and survival. |
url |
https://doi.org/10.1371/journal.pcbi.1007607 |
work_keys_str_mv |
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