AI RESEARCH

Validation of an AI-based end-to-end model for prostate pathology using long-term archived routine samples

arXiv CS.CV

ArXi:2605.02614v1 Announce Type: new Artificial intelligence (AI) is becoming a clinical tool for prostate pathology, but generalization across variations in sample preparation and preservation over prolonged time periods remains poorly understood. We evaluated GleasonAI, an end-to-end attention-based multiple instance learning model, on an independent validation cohort comprising 10,366 biopsy cores from 1,028 patients across 14 Swedish regions, using archival diagnostic specimens from the ProMort cohorts collected between 1998-2015.