Predicting the germline dependence of hematuria risk in prostate cancer radiotherapy patients Journal Article


Authors: Oh, J. H.; Lee, S.; Thor, M.; Rosenstein, B. S.; Tannenbaum, A.; Kerns, S.; Deasy, J. O.
Article Title: Predicting the germline dependence of hematuria risk in prostate cancer radiotherapy patients
Abstract: Background and purpose: Late radiation-induced hematuria can develop in prostate cancer patients undergoing radiotherapy and can negatively impact the quality-of-life of survivors. If a genetic component of risk could be modeled, this could potentially be the basis for modifying treatment for high-risk patients. We therefore investigated whether a previously developed machine learning-based modeling method using genome-wide common single nucleotide polymorphisms (SNPs) can stratify patients in terms of the risk of radiation-induced hematuria. Materials and methods: We applied a two-step machine learning algorithm that we previously developed for genome-wide association studies called pre-conditioned random forest regression (PRFR). PRFR includes a pre-conditioning step, producing adjusted outcomes, followed by random forest regression modeling. Data was from germline genome-wide SNPs for 668 prostate cancer patients treated with radiotherapy. The cohort was stratified only once, at the outset of the modeling process, into two groups: a training set (2/3 of samples) for modeling and a validation set (1/3 of samples). Post-modeling bioinformatics analysis was conducted to identify biological correlates plausibly associated with the risk of hematuria. Results: The PRFR method achieved significantly better predictive performance compared to other alternative methods (all p < 0.05). The odds ratio between the high and low risk groups, each of which consisted of 1/3 of samples in the validation set, was 2.87 (p = 0.029), implying a clinically useful level of discrimination. Bioinformatics analysis identified six key proteins encoded by CTNND2, GSK3B, KCNQ2, NEDD4L, PRKAA1, and TXNL1 genes as well as four statistically significant biological process networks previously shown to be associated with the bladder and urinary tract. Conclusion: The risk of hematuria is significantly dependent on common genetic variants. The PRFR algorithm resulted in a stratification of prostate cancer patients at differential risk levels of post-radiotherapy hematuria. Bioinformatics analysis identified important biological processes involved in radiation-induced hematuria. © 2023 The Author(s)
Keywords: single nucleotide polymorphism; radiotherapy; hematuria; machine learning; genome-wide association studies
Journal Title: Radiotherapy and Oncology
Volume: 185
ISSN: 0167-8140
Publisher: Elsevier Inc.  
Date Published: 2023-08-01
Start Page: 109723
Language: English
DOI: 10.1016/j.radonc.2023.109723
PUBMED: 37244355
PROVIDER: scopus
PMCID: PMC10524941
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledged in the PubMed record and PDF. Corresponding author is MSK author Jung Hun Oh -- Source: Scopus
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MSK Authors
  1. Jung Hun Oh
    187 Oh
  2. Joseph Owen Deasy
    524 Deasy
  3. Maria Elisabeth Thor
    148 Thor
  4. Sang Kyu Lee
    18 Lee