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2017 GTC San Jose

S7788 - CANDLE: Predicting Tumor Cell Response to Drug Treatments

Session Speakers
Session Description

We'll focus on one of the three pilots of the DOE and NCI partnership on precision oncology and the Cancer Moonshot, namely predicting tumor cell response to drug treatments with deep learning. Predicting tumor cell response to drug treatments is a critical challenge for accomplishing the promise of precision medicine in oncology. As part of a joint project between DOE and NCI to develop advanced computing solutions for caner, we are developing a deep learning-based framework for modeling tumor-drug interaction and predicting dose response in pre-clinical screening.


Additional Session Information
Intermediate
Talk
Computational Biology Deep Learning and AI
Government / National Labs Healthcare & Life Sciences
25 minutes
Session Schedule