首页 | 本学科首页   官方微博 | 高级检索  
   检索      


Development of a Drug-Response Modeling Framework to Identify Cell Line Derived Translational Biomarkers That Can Predict Treatment Outcome to Erlotinib or Sorafenib
Authors:Bin Li  Hyunjin Shin  Georgy Gulbekyan  Olga Pustovalova  Yuri Nikolsky  Andrew Hope  Marina Bessarabova  Matthew Schu  Elona Kolpakova-Hart  David Merberg  Andrew Dorner  William L Trepicchio
Institution:1. Department of Translational Medicine, Takeda Pharmaceuticals International Co., 35 Landsdowne St., Cambridge, Massachusetts, 02139, United States of America.; 2. Thomson Reuters, 777 E. Eisenhower Parkway, Ann Arbor, Michigan, 48108, United States of America.; University of Queensland Diamantina Institute, AUSTRALIA,
Abstract:Development of drug responsive biomarkers from pre-clinical data is a critical step in drug discovery, as it enables patient stratification in clinical trial design. Such translational biomarkers can be validated in early clinical trial phases and utilized as a patient inclusion parameter in later stage trials. Here we present a study on building accurate and selective drug sensitivity models for Erlotinib or Sorafenib from pre-clinical in vitro data, followed by validation of individual models on corresponding treatment arms from patient data generated in the BATTLE clinical trial. A Partial Least Squares Regression (PLSR) based modeling framework was designed and implemented, using a special splitting strategy and canonical pathways to capture robust information for model building. Erlotinib and Sorafenib predictive models could be used to identify a sub-group of patients that respond better to the corresponding treatment, and these models are specific to the corresponding drugs. The model derived signature genes reflect each drug’s known mechanism of action. Also, the models predict each drug’s potential cancer indications consistent with clinical trial results from a selection of globally normalized GEO expression datasets.
Keywords:
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号