Predicting prostate cancer grade reclassification on active surveillance using a deep Learning-Based grading algorithm.

Chien-Kuang C Ding, Zhuo Tony Su, Erik Erak,Lia DePaula Oliveira,Daniela C Salles, Yuezhou Jing,Pranab Samanta, Saikiran Bonthu, Uttara Joshi, Chaith Kondragunta,Nitin Singhal, Angelo M De Marzo,Bruce J Trock,Christian P Pavlovich,Claire M de la Calle,Tamara L Lotan

Journal of the National Cancer Institute(2024)

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Abstract
Deep learning (DL)-based algorithms to determine prostate cancer (PCa) Grade Group (GG) on biopsy slides have not been validated by comparison to clinical outcomes. We used a DL-based algorithm, AIRAProstate, to re-grade initial prostate biopsies in two independent PCa active surveillance (AS) cohorts. In a cohort initially diagnosed with GG1 PCa using only systematic biopsies (n = 138), upgrading of the initial biopsy to ≥GG2 by AIRAProstate was associated with rapid or extreme grade reclassification on AS (odds ratio 3.3, p = .04), whereas upgrading of the initial biopsy by contemporary uropathologist reviews was not associated with this outcome. In a contemporary validation cohort that underwent prostate magnetic resonance imaging before initial biopsy (n = 169), upgrading of the initial biopsy (all contemporary GG1 by uropathologist grading) by AIRAProstate was associated with grade reclassification on AS (hazard ratio 1.7, p = .03). These results demonstrate the utility of a DL-based grading algorithm in PCa risk stratification for AS.
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