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Artificial Intelligence Predictive Model for Hormone Therapy Use in Prostate Cancer

Authors :
Daniel E Spratt
Siyi Tang
Yilun Sun
Huei-Chung Huang
Emmalyn Chen
Osama Mohamad
Andrew J Armstrong
Jonathan D Tward
Paul L Nguyen
Joshua M Lang
Jingbin Zhang
Akinori Mitani
Jeffry P Simko
Sandy DeVries
Douwe van der Wal
Hans Pinckaers
Jedidiah M Monson
Holly A Campbell
James Wallace
Michelle J Ferguson
Jean-Paul Bahary
Edward M Schaeffer
NRG Prostate Cancer AI Consortium
Howard M Sandler
Phuoc T Tran
Joseph P Rodgers
Andre Esteva
Rikiya Yamashita
Felix Y Feng
Publication Year :
2023
Publisher :
Research Square Platform LLC, 2023.

Abstract

Background Androgen deprivation therapy (ADT) with radiotherapy can benefit patients with localized prostate cancer. However, ADT can negatively impact quality of life and there remain no validated predictive models to guide its use. Methods Digital pathology image and clinical data from pre-treatment prostate tissue from 5,727 patients enrolled on five phase III randomized trials treated with radiotherapy +/- ADT were used to develop and validate an artificial intelligence (AI)-derived predictive model to assess ADT benefit with the primary endpoint of distant metastasis. After the model was locked, validation was performed on NRG/RTOG 9408 (n = 1,594) that randomized men to radiotherapy +/- 4 months of ADT. Fine-Gray regression and restricted mean survival times were used to assess the interaction between treatment and predictive model and within predictive model positive and negative subgroup treatment effects. Results In the NRG/RTOG 9408 validation cohort (14.9 years of median follow-up), ADT significantly improved time to distant metastasis (subdistribution hazard ratio [sHR] = 0.64, 95%CI [0.45–0.90], p = 0.01). The predictive model-treatment interaction was significant (p-interaction = 0.01). In predictive model positive patients (n = 543, 34%), ADT significantly reduced the risk of distant metastasis compared to radiotherapy alone (sHR = 0.34, 95%CI [0.19–0.63], p

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........24a545351768abb49f6993bac6b0e284