Abstract
ABSTRACT
Accurate and robust prediction of patient-specific responses to drug
treatments is critical for drug development and personalized medicine. However,
patient data are often too scarce to train a generalized machine learning model.
Although many methods have been developed to utilize cell line data, few of them
can reliably predict individual patient clinical responses to new drugs due to
data distribution shift and confounding factors. We develop a novel
Context-aware Deconfounding Autoencoder (CODE-AE) that can extract common
biological signals masked by context-specific patterns and confounding factors.
Extensive studies demonstrate that CODE-AE effectively alleviates the
out-of-distribution problem for the model generalization, significantly improves
accuracy and robustness over state-of-the-art methods in both predicting
patient-specific ex vivo and in
vivo drug responses purely from in
vitro screens and disentangling intrinsic biological signals
from confounding factors. Using CODE-AE, we screened 50 drugs for 9,808 cancer
patients and discovered novel personalized anti-cancer therapies and
drug-response biomarkers.
Contact:lxie@iscb.org
Publisher
Cold Spring Harbor Laboratory
Cited by
2 articles.
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