Deep learning of drug sensitivity and genetic dependency of pediatric cancer cells
Project Number5R00CA248944-05
Former Number4K99CA248944-03
Contact PI/Project LeaderCHIU, YU-CHIAO
Awardee OrganizationUNIVERSITY OF PITTSBURGH AT PITTSBURGH
Description
Abstract Text
Summary/Abstract
The development of novel therapies for pediatric cancers, the second leading cause of death in children, is
challenging due to the lack of comprehensive pharmacogenomics resources, unlike the well-established ones in
adult cancers. However, breakthroughs in deep learning methods allow learning of intricate pharmacogenomics
patterns with unprecedented performance. With a uniquely cross-disciplinary background, the candidate for this
proposed K99/R00 has already, as a postdoctoral fellow, (i) developed and published several deep learning
models that accurately predicted adult cancer cells’ drug sensitivity and genetic dependency using high-
throughput genomics profiles, and (ii) demonstrated the feasibility of transferring the model to predict tumors by
a ‘transfer learning’ design. The candidate will extend this research to study pediatric cancers and test the central
hypothesis that deep learning extracts genomics signatures to predict the responses of pediatric cancer cells to
chemical and genetic perturbations. The proposed study will develop novel deep learning models for predicting
drug sensitivity and/or genetic dependency for (Aim 1) currently un-screened pediatric cancer cell lines by
learning from screens of adult cells, and (Aim 2) pediatric tumors by learning from adult and/or pediatric cells.
Prediction results will be validated by in vitro experiments and data collected from patient-derived xenografts.
The proposed study is the first attempt to employ modern computational methods to advance
pharmacogenomics studies of pediatric cancer, which would be difficult and costly to pursue via biological assays.
Findings will shed light on the optimal drugs and novel therapeutic targets for pediatric malignancies, leading to
an optimal and efficient design of preclinical tests. The candidate has a remarkable track record of bioinformatics
studies of adult cancer genomics. The focus of this K99 training plan is to develop in-depth understanding of
pediatric cancer and preclinical treatment models, and strengthen multifaceted components needed for a
successful research career in cancer bioinformatics. The primary mentor, Dr. Peter Houghton, is a renowned
leader in pediatric cancer research and preclinical drug testing programs. The candidate also has assembled an
outstanding mentor team: Dr. Yidong Chen (co-mentor), a cancer genomics expert and pioneer in bioinformatics
analysis of high-throughput technologies; Dr. Jinghui Zhang (collaborator), a computational biologist and leader
in integrative genomics studies of major pediatric cancer genome consortiums; Dr. Yufei Huang (collaborator),
an expert in state-of-the-art deep learning methods; and two highly knowledgeable consultants with relevant
expertise. With this team’s guidance and structured training activities in an ideal training environment, the
candidate will strengthen his skills in grant writing and lab management, teaching and mentoring, and broad
connections. Overall, the K99/R00 award will be an indispensable support for a timely transition of the candidate
to a successful career as a multifaceted, cross-disciplinary investigator in cancer bioinformatics.
Public Health Relevance Statement
Narrative
Pediatric cancer is the second leading cause of death in children, and genetic studies to inform new drug
therapies have been challenging. The proposal will utilize deep learning bioinformatics methods to transfer
well-established pharmacogenomics knowledge for adult cancers to the study of pediatric cancers. The
findings will facilitate the optimal usage of existing drugs and the development of novel therapies for pediatric
cancer, and will facilitate the candidate’s transition to an independent research career as an expert in this area.
No Sub Projects information available for 5R00CA248944-05
Publications
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