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Title: Identification of Protein Markers Predictive of Drug-Specific Survival Outcome in Cancers
Novel discoveries of biomarkers predictive of drug-specific responses not only play a pivotal role in revealing the drug mechanisms in cancers, but are also critical to personalized medicine. In this study, we identified drug-specific biomarkers by integrating protein expression data, drug treatment data and survival outcome of 7076 patients from The Cancer Genome Atlas (TCGA). We first defined cancer-drug groups, where each cancer-drug group contains patients with the same cancer and treated with the same drug. For each protein, we stratified the patients in each cancer-drug group by high or low expression of the protein, and applied log-rank test to examine whether the stratified patients show significant survival difference. We examined 336 proteins in 98 cancer-drug groups and identified 65 protein-cancer-drug combinations involving 55 unique proteins, where the protein expression levels are predictive of drug-specific survival outcomes. Some of the identified proteins were supported by published literature. Using the gene expression data from TCGA, we found the mRNA expression of ∼11% of the drug-specific proteins also showed significant correlation with drug-specific survival, and most of these drug-specific proteins and their corresponding genes are strongly correlated.  more » « less
Award ID(s):
2007029 1552784
NSF-PAR ID:
10354322
Author(s) / Creator(s):
; ; ; ; ;
Editor(s):
Wei, Yanjie; Li, Min; Skums, Pavel; Cai, Zhipeng
Date Published:
Journal Name:
In: Wei, Y., Li, M., Skums, P., Cai, Z. (eds) Bioinformatics Research and Applications. ISBRA 2021. Lecture Notes in Computer Science
Volume:
13064
Page Range / eLocation ID:
58-67
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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