Novel Clinical-Grade Prostate Cancer Detection and Grading Model: Development and Prospective Validation Using Real World Data, with Performance Assessment on IHC Requested Cases
Artificial intelligence may assist healthcare systems in meeting increasing demand for pathology services while maintaining diagnostic quality and reducing turnaround time and costs. We aimed to investigate the performance of an institutionally developed system for prostate cancer detection, grading...
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Zusammenfassung: | Artificial intelligence may assist healthcare systems in meeting increasing
demand for pathology services while maintaining diagnostic quality and reducing
turnaround time and costs. We aimed to investigate the performance of an
institutionally developed system for prostate cancer detection, grading, and
workflow optimization and to contrast this with commercial alternatives. From
August 2021 to March 2023, we scanned 21,396 slides from 1,147 patients with
positive biopsies. We developed models for cancer detection, grading, and
screening of equivocal cases for IHC ordering. We compared a task-specific
model trained using the PANDA dataset of prostate cancer biopsies with one
built using features extracted by the general-purpose histology foundation
model, UNI and compare their performance in an unfiltered prospectively
collected dataset that reflects our patient population (1737 slides,95
patients). We evaluated the contributions of a bespoke model designed to
improve sensitivity in detecting small cancer foci and scoring of broader
patterns observed at lower resolution. We found high concordance between the
developed systems and pathologist reference in detection (AUC 98.5, sensitivity
95.0, and specificity 97.8), ISUP grading (quadratic Cohen's kappa 0.869),
grade group 3 or higher (AUC 97.5, sensitivity 94.9, specificity 96.6) and
comparable to published data from commercial systems. Screening could reduce
IHC ordering for equivocal cases by 44.5% with an overall error rate of 1.8%
(1.4% false positive, 0.4% false negative rates). Institutions like academic
medical centers that have high scanning volumes and report abstraction
capabilities can develop accurate computational pathology models for internal
use. These models have the potential to aid in quality control role and to
improve workflow in the pathology lab to help meet future challenges in
prostate cancer diagnosis. |
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DOI: | 10.48550/arxiv.2410.23642 |