Improving the Post-Operative Prediction of BCR-Free Survival Time with mRNA Variables and Machine Learning

Author:

O’Donnell Autumn1ORCID,Wolsztynski Eric12ORCID,Cronin Michael1,Moghaddam Shirin3ORCID

Affiliation:

1. School of Mathematical Sciences, Western Gateway Building, Western Road, University College Cork, T12 XF62 Cork, Ireland

2. Insight SFI Centre for Data Analytics, Western Gateway Building, Western Road, University College Cork, T12 XF62 Cork, Ireland

3. Department of Mathematics and Statistics (MACSI), University of Limerick, V94 T9PX Limerick, Ireland

Abstract

Predicting the risk of, and time to biochemical recurrence (BCR) in prostate cancer patients post-operatively is critical in patient treatment decision pathways following surgical intervention. This study aimed to investigate the predictive potential of mRNA information to improve upon reference nomograms and clinical-only models, using a dataset of 187 patients that includes over 20,000 features. Several machine learning methodologies were implemented for the analysis of censored patient follow-up information with such high-dimensional genomic data. Our findings demonstrated the potential of inclusion of mRNA information for BCR-free survival prediction. A random survival forest pipeline was found to achieve high predictive performance with respect to discrimination, calibration, and net benefit. Two mRNA variables, namely ESM1 and DHAH8, were identified as consistently strong predictors with this dataset.

Funder

HEA Human Capital Initiative Pillar 1

Science Foundation Ireland

European Regional Development Fund

Publisher

MDPI AG

Subject

Cancer Research,Oncology

Reference63 articles.

1. Clinically localized prostate cancer: AUA/ASTRO/SUO guideline. Part II: Recommended approaches and details of specific care options;Sanda;J. Urol.,2018

2. Trends in treatments for prostate cancer in the United States, 2010–2015;Wang;Am. J. Cancer Res.,2021

3. John Hopkins Medicine (2022, November 30). Prostate Cancer Prognosis. Available online: https://www.hopkinsmedicine.org/health/conditions-and-diseases/prostate-cancer/prostate-cancer-prognosis.

4. Biochemical recurrence after radical prostatectomy: What does it mean?;Srougi;Int. Braz. Urol.,2018

5. Nomogram predicting the probability of early recurrence after radical prostatectomy for prostate cancer;Walz;J. Urol.,2009

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