Dose-response modeling in high-throughput cancer drug screenings: An end-to-end approach Journal Article


Authors: Tansey, W.; Li, K.; Zhang, H.; Linderman, S. W.; Rabadan, R.; Blei, D. M.; Wiggins, C. H.
Article Title: Dose-response modeling in high-throughput cancer drug screenings: An end-to-end approach
Abstract: Personalized cancer treatments based on the molecular profile of a patient's tumor are an emerging and exciting class of treatments in oncology. As genomic tumor profiling is becoming more common, targeted treatments for specific molecular alterations are gaining traction. To discover new potential therapeutics that may apply to broad classes of tumors matching some molecular pattern, experimentalists and pharmacologists rely on high-throughput, in vitro screens of many compounds against many different cell lines. We propose a hierarchical Bayesian model of how cancer cell lines respond to drugs in these experiments and develop a method for fitting the model to real-world high-throughput screening data. Through a case study, the model is shown to capture nontrivial associations between molecular features and drug response, such as requiring both wild type TP53 and overexpression of MDM2 to be sensitive to Nutlin-3(a). In quantitative benchmarks, the model outperforms a standard approach in biology, with $\approx20\%$ lower predictive error on held out data. When combined with a conditional randomization testing procedure, the model discovers markers of therapeutic response that recapitulate known biology and suggest new avenues for investigation. All code for the article is publicly available at https://github.com/tansey/deep-dose-response. © The Author 2021. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.
Keywords: genetics; antineoplastic agents; antineoplastic agent; neoplasm; neoplasms; bayes theorem; high throughput screening; drug discovery; drug evaluation, preclinical; high-throughput screening assays; early detection of cancer; personalized medicine; high-throughput screening; procedures; empirical bayes; preclinical study; humans; human; deep learning; early cancer diagnosis; dose–response modeling
Journal Title: Biostatistics
Volume: 23
Issue: 2
ISSN: 1465-4644
Publisher: Oxford University Press  
Date Published: 2022-04-01
Start Page: 643
End Page: 665
Language: English
DOI: 10.1093/biostatistics/kxaa047
PUBMED: 33417699
PROVIDER: scopus
PMCID: PMC9007438
DOI/URL:
Notes: Article -- Export Date: 2 May 2022 -- Source: Scopus
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  1. Wesley Tansey
    15 Tansey