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A Machine Learning Approach for Predicting Biochemical Outcome After PSMA-PET–Guided Salvage Radiotherapy in Recurrent Prostate Cancer After Radical Prostatectomy: Retrospective Study

Authors :
Ali Janbain
Andrea Farolfi
Armelle Guenegou-Arnoux
Louis Romengas
Sophia Scharl
Stefano Fanti
Francesca Serani
Jan C Peeken
Sandrine Katsahian
Iosif Strouthos
Konstantinos Ferentinos
Stefan A Koerber
Marco E Vogel
Stephanie E Combs
Alexis Vrachimis
Alessio Giuseppe Morganti
Simon KB Spohn
Anca-Ligia Grosu
Francesco Ceci
Christoph Henkenberens
Stephanie GC Kroeze
Matthias Guckenberger
Claus Belka
Peter Bartenstein
George Hruby
Louise Emmett
Ali Afshar Omerieh
Nina-Sophie Schmidt-Hegemann
Lucas Mose
Daniel M Aebersold
Constantinos Zamboglou
Thomas Wiegel
Mohamed Shelan
Source :
JMIR Cancer, Vol 10, p e60323 (2024)
Publication Year :
2024
Publisher :
JMIR Publications, 2024.

Abstract

BackgroundSalvage radiation therapy (sRT) is often the sole curative option in patients with biochemical recurrence after radical prostatectomy. After sRT, we developed and validated a nomogram to predict freedom from biochemical failure. ObjectiveThis study aims to evaluate prostate-specific membrane antigen–positron emission tomography (PSMA-PET)–based sRT efficacy for postprostatectomy prostate-specific antigen (PSA) persistence or recurrence. Objectives include developing a random survival forest (RSF) model for predicting biochemical failure, comparing it with a Cox model, and assessing predictive accuracy over time. Multinational cohort data will validate the model’s performance, aiming to improve clinical management of recurrent prostate cancer. MethodsThis multicenter retrospective study collected data from 13 medical facilities across 5 countries: Germany, Cyprus, Australia, Italy, and Switzerland. A total of 1029 patients who underwent sRT following PSMA-PET–based assessment for PSA persistence or recurrence were included. Patients were treated between July 2013 and June 2020, with clinical decisions guided by PSMA-PET results and contemporary standards. The primary end point was freedom from biochemical failure, defined as 2 consecutive PSA rises >0.2 ng/mL after treatment. Data were divided into training (708 patients), testing (271 patients), and external validation (50 patients) sets for machine learning algorithm development and validation. RSF models were used, with 1000 trees per model, optimizing predictive performance using the Harrell concordance index and Brier score. Statistical analysis used R Statistical Software (R Foundation for Statistical Computing), and ethical approval was obtained from participating institutions. ResultsBaseline characteristics of 1029 patients undergoing sRT PSMA-PET–based assessment were analyzed. The median age at sRT was 70 (IQR 64-74) years. PSMA-PET scans revealed local recurrences in 43.9% (430/979) and nodal recurrences in 27.2% (266/979) of patients. Treatment included dose-escalated sRT to pelvic lymphatics in 35.6% (349/979) of cases. The external outlier validation set showed distinct features, including higher rates of positive lymph nodes (47/50, 94% vs 266/979, 27.2% in the learning cohort) and lower delivered sRT doses (

Details

Language :
English
ISSN :
23691999
Volume :
10
Database :
Directory of Open Access Journals
Journal :
JMIR Cancer
Publication Type :
Academic Journal
Accession number :
edsdoj.fe6bedf76bf54251ba9f5c7f7dc3ac22
Document Type :
article
Full Text :
https://doi.org/10.2196/60323