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Biologically informed deep neural network for prostate cancer discovery

Authors :
Elmarakeby, Haitham A.
Hwang, Justin
Arafeh, Rand
Crowdis, Jett
Gang, Sydney
Liu, David
AlDubayan, Saud H.
Salari, Keyan
Kregel, Steven
Richter, Camden
Arnoff, Taylor E.
Park, Jihye
Hahn, William C.
M. Van Allen, Eliezer
Source :
Nature; 20210101, Issue: Preprints p1-5, 5p
Publication Year :
2021

Abstract

The determination of molecular features that mediate clinically aggressive phenotypes in prostate cancer remains a major biological and clinical challenge1,2. Recent advances in interpretability of machine learning models as applied to biomedical problems may enable discovery and prediction in clinical cancer genomics3–5. Here we developed P-NET—a biologically informed deep learning model—to stratify patients with prostate cancer by treatment-resistance state and evaluate molecular drivers of treatment resistance for therapeutic targeting through complete model interpretability. We demonstrate that P-NET can predict cancer state using molecular data with a performance that is superior to other modelling approaches. Moreover, the biological interpretability within P-NET revealed established and novel molecularly altered candidates, such as MDM4and FGFR1, which were implicated in predicting advanced disease and validated in vitro. Broadly, biologically informed fully interpretable neural networks enable preclinical discovery and clinical prediction in prostate cancer and may have general applicability across cancer types.

Details

Language :
English
ISSN :
00280836 and 14764687
Issue :
Preprints
Database :
Supplemental Index
Journal :
Nature
Publication Type :
Periodical
Accession number :
ejs57892906
Full Text :
https://doi.org/10.1038/s41586-021-03922-4