From the Department of Electrical and Computer Engineering (Dov, Assaad, Syedibrahim, Bell, Carin), Duke University, Durham, North Carolina.
From the Department of Pathology (Bell, Huang, Madden, Bentley, McCall, Foo), Duke University Medical Center, Durham, North Carolina.
Arch Pathol Lab Med. 2022 Jun 1;146(6):727-734. doi: 10.5858/arpa.2020-0850-OA.
CONTEXT.—: Prostate cancer is a common malignancy, and accurate diagnosis typically requires histologic review of multiple prostate core biopsies per patient. As pathology volumes and complexity increase, new tools to improve the efficiency of everyday practice are keenly needed. Deep learning has shown promise in pathology diagnostics, but most studies silo the efforts of pathologists from the application of deep learning algorithms. Very few hybrid pathologist-deep learning approaches have been explored, and these typically require complete review of histologic slides by both the pathologist and the deep learning system.
OBJECTIVE.—: To develop a novel and efficient hybrid human-machine learning approach to screen prostate biopsies.
DESIGN.—: We developed an algorithm to determine the 20 regions of interest with the highest probability of malignancy for each prostate biopsy; presenting these regions to a pathologist for manual screening limited the initial review by a pathologist to approximately 2% of the tissue area of each sample. We evaluated this approach by using 100 biopsies (29 malignant, 60 benign, 11 other) that were reviewed by 4 pathologists (3 urologic pathologists, 1 general pathologist) using a custom-designed graphical user interface.
RESULTS.—: Malignant biopsies were correctly identified as needing comprehensive review with high sensitivity (mean, 99.2% among all pathologists); conversely, most benign prostate biopsies (mean, 72.1%) were correctly identified as needing no further review.
CONCLUSIONS.—: This novel hybrid system has the potential to efficiently triage out most benign prostate core biopsies, conserving time for the pathologist to dedicate to detailed evaluation of malignant biopsies.
前列腺癌是一种常见的恶性肿瘤,通常需要对每位患者的多个前列腺核心活检进行组织学检查才能做出准确诊断。随着病理工作量和复杂性的增加,迫切需要新的工具来提高日常工作的效率。深度学习在病理诊断中显示出了很大的潜力,但大多数研究都将病理学家的工作与深度学习算法分开。很少有混合病理学家-深度学习的方法被探索,这些方法通常需要病理学家和深度学习系统对组织切片进行全面检查。
开发一种新颖而高效的混合人机学习方法来筛选前列腺活检。
我们开发了一种算法来确定每个前列腺活检中具有最高恶性概率的 20 个感兴趣区域;将这些区域呈现给病理学家进行手动筛选,使病理学家对每个样本组织面积的初步检查限制在大约 2%。我们使用 100 个活检(29 个恶性、60 个良性、11 个其他)进行了评估,这些活检由 4 位病理学家(3 位泌尿科病理学家和 1 位普通病理学家)使用定制的图形用户界面进行了评估。
恶性活检被正确识别为需要全面审查,具有很高的敏感性(所有病理学家的平均值为 99.2%);相反,大多数良性前列腺活检(平均值为 72.1%)被正确识别为不需要进一步审查。
这种新的混合系统有可能有效地筛选出大多数良性前列腺核心活检,为病理学家专注于恶性活检的详细评估节省时间。