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Machine learning on genome-wide association studies to predict the risk of radiation-associated contralateral breast cancer in the WECARE Study

Authors :
Jung Hun Oh
Meghan Woods
Joseph O. Deasy
John D. Boice
Patrick Concannon
Anne S. Reiner
Sangkyu Lee
Leslie Bernstein
Xiaolin Liang
Charles F. Lynch
Jonine L. Bernstein
Source :
PLoS ONE, PLoS ONE, Vol 15, Iss 2, p e0226157 (2020)
Publication Year :
2020
Publisher :
Public Library of Science, 2020.

Abstract

The purpose of this study was to identify germline single nucleotide polymorphisms (SNPs) that optimally predict radiation-associated contralateral breast cancer (RCBC) and to provide new biological insights into the carcinogenic process. Fifty-two women with contralateral breast cancer and 153 women with unilateral breast cancer were identified within the Women's Environmental Cancer and Radiation Epidemiology (WECARE) Study who were at increased risk of RCBC because they were ≤ 40 years of age at first diagnosis of breast cancer and received a scatter radiation dose > 1 Gy to the contralateral breast. A previously reported algorithm, preconditioned random forest regression, was applied to predict the risk of developing RCBC. The resulting model produced an area under the curve (AUC) of 0.62 (p = 0.04) on hold-out validation data. The biological analysis identified the cyclic AMP-mediated signaling and Ephrin-A as significant biological correlates, which were previously shown to influence cell survival after radiation in an ATM-dependent manner. The key connected genes and proteins that are identified in this analysis were previously identified as relevant to breast cancer, radiation response, or both. In summary, machine learning/bioinformatics methods applied to genome-wide genotyping data have great potential to reveal plausible biological correlates associated with the risk of RCBC.

Details

Language :
English
ISSN :
19326203
Volume :
15
Issue :
2
Database :
OpenAIRE
Journal :
PLoS ONE
Accession number :
edsair.doi.dedup.....c47d306419ffceb037491cc3467c92f3