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A Selective CutMix Approach Improves Generalizability of Deep Learning-Based Grading and Risk Assessment of Prostate Cancer

Journal of Pathology Informatics(2024)

Artificial Intelligence Resource | Joint Pathology Center | Laboratory of Pathology | Center for Prostate Disease Research | Urologic Oncology Branch

Cited 0|Views31
Abstract
The Gleason score is an important predictor of prognosis in prostate cancer. However, its subjective nature can result in over- or under-grading. Our objective was to train an artificial intelligence (AI)-based algorithm to grade prostate cancer in specimens from patients who underwent radical prostatectomy (RP) and to assess the correlation of AI-estimated proportions of different Gleason patterns with biochemical recurrence-free survival (RFS), metastasis-free survival (MFS), and overall survival (OS). Training and validation of algorithms for cancer detection and grading were completed with three large datasets containing a total of 580 whole-mount prostate slides from 191 RP patients at two centers and 6218 annotated needle biopsy slides from the publicly available Prostate Cancer Grading Assessment dataset. A cancer detection model was trained using MobileNetV3 on 0.5 mm × 0.5 mm cancer areas (tiles) captured at 10× magnification. For cancer grading, a Gleason pattern detector was trained on tiles using a ResNet50 convolutional neural network and a selective CutMix training strategy involving a mixture of real and artificial examples. This strategy resulted in improved model generalizability in the test set compared with three different control experiments when evaluated on both needle biopsy slides and whole-mount prostate slides from different centers. In an additional test cohort of RP patients who were clinically followed over 30 years, quantitative Gleason pattern AI estimates achieved concordance indexes of 0.69, 0.72, and 0.64 for predicting RFS, MFS, and OS times, outperforming the control experiments and International Society of Urological Pathology system (ISUP) grading by pathologists. Finally, unsupervised clustering of test RP patient specimens into low-, medium-, and high-risk groups based on AI-estimated proportions of each Gleason pattern resulted in significantly improved RFS and MFS stratification compared with ISUP grading. In summary, deep learning-based quantitative Gleason scoring using a selective CutMix training strategy may improve prognostication after prostate cancer surgery.
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Prostate cancer,Digital pathology,Gleason grading,Artificial intelligence
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要点】:本研究提出了一种选择性的CutMix训练策略,用于提升深度学习算法在前列腺癌分级和风险评估中的泛化性,实现了对预后预测的改善。

方法】:使用ResNet50卷积神经网络在切片瓦片上训练Gleason模式检测器,并结合了真实与合成样本混合的选择性CutMix训练策略。

实验】:在两个中心收集的191名患者共580张完整前列腺切片和6218张公开的Prostate Cancer Grading Assessment数据集的注解细针穿刺切片上完成了算法的训练和验证。结果在30年的临床随访测试队列中,AI估计的Gleason模式量化指标在预测无生化复发生存期、无转移生存期和总生存期方面,一致性指数分别达到了0.69、0.72和0.64。