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An MRI-pathology foundation model for noninvasive diagnosis and grading of prostate cancer.

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Nature cancer 📖 저널 OA 44.2% 2024: 1/1 OA 2025: 7/18 OA 2026: 11/24 OA 2024~2026 2025 Vol.6(10) p. 1621-1637
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Shao L, Liang C, Yan Y, Zhu H, Jiang X, Bao M, Zang P, Huang X, Zhou H, Nie P, Wang L, Li J, Zhang S, Ren S

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Prostate cancer is a leading health concern for men, yet current clinical assessments of tumor aggressiveness rely on invasive procedures that often lead to inconsistencies.

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APA Shao L, Liang C, et al. (2025). An MRI-pathology foundation model for noninvasive diagnosis and grading of prostate cancer.. Nature cancer, 6(10), 1621-1637. https://doi.org/10.1038/s43018-025-01041-x
MLA Shao L, et al.. "An MRI-pathology foundation model for noninvasive diagnosis and grading of prostate cancer.." Nature cancer, vol. 6, no. 10, 2025, pp. 1621-1637.
PMID 40897909 ↗

Abstract

Prostate cancer is a leading health concern for men, yet current clinical assessments of tumor aggressiveness rely on invasive procedures that often lead to inconsistencies. There remains a critical need for accurate, noninvasive diagnosis and grading methods. Here we developed a foundation model trained on multiparametric magnetic resonance imaging (MRI) and paired pathology data for noninvasive diagnosis and grading of prostate cancer. Our model, MRI-based Predicted Transformer for Prostate Cancer (MRI-PTPCa), was trained under contrastive learning on nearly 1.3 million image-pathology pairs from over 5,500 patients in discovery, modeling, external and prospective cohorts. During real-world testing, prediction of MRI-PTPCa demonstrated consistency with pathology and superior performance (area under the curve above 0.978; grading accuracy 89.1%) compared with clinical measures and other prediction models. This work introduces a scalable, noninvasive approach to prostate cancer diagnosis and grading, offering a robust tool to support clinical decision-making while reducing reliance on biopsies.

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