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通过多任务深度学习网络进行多维特征重建对低分辨率全切片缩略图图像进行风险分类有助于对病理病例登记进行优先级排序。

Risk Classification of Low-Resolution Whole-Slide Thumbnail Images by Multi-dimensional Feature Reconstruction with Multi-task Deep Learning Network Helps Prioritize Pathology Case Registration.

作者信息

Liang Cher-Wei, Lee Yu-Chen, Hsu Yu-Yin, Luo Pei-Wei, Huang Guan-Lin, Chen Chiao-Min

机构信息

School of Medicine, College of Medicine, Fu Jen Catholic University, New Taipei City, 24205, Taiwan.

Department of Pathology, Fu Jen Catholic University Hospital, Fu Jen Catholic University, New Taipei City, 24352, Taiwan.

出版信息

J Imaging Inform Med. 2025 Jun 25. doi: 10.1007/s10278-025-01582-8.

DOI:10.1007/s10278-025-01582-8
PMID:40563041
Abstract

Contemporary surgical pathology workflows often prioritize slide examination based on case registry order rather than patient risk level. As a result, high-risk cases, especially those involving malignant lesions, may be unintentionally delayed, potentially affecting patient outcomes. In this study, we present an artificial intelligence (AI)-based framework designed to efficiently screen and prioritize malignant cases by analyzing hematoxylin and eosin (H&E)-stained, low-resolution thumbnail whole-slide images (TWSIs). The proposed approach includes three key components. First, image preprocessing is performed to reduce artifacts and identify the initial tissue region. Next, a multi-task deep learning network conducts both tissue segmentation and benign-versus-malignant classification. Finally, multi-dimensional feature reconstruction is utilized to improve classification accuracy. We evaluated the performance of our framework on 334 TWSI images (746 × 1632 pixels), comprising 100 benign and 234 malignant cases. The system achieved an average inference time of 2.33 ± 0.31 s per image, along with an accuracy of 91.91%, a sensitivity of 93.59%, a specificity of 88.00%, a positive predictive value of 94.84%, and a negative predictive value of 85.56%. These results correspond to a 6.41% false negative rate. The findings suggest that applying AI-driven analysis to TWSIs can effectively expedite case triage, thereby enhancing the sorting and prioritization of surgical pathology specimens and potentially improving clinical decision-making.

摘要

当代外科病理学工作流程通常根据病例登记顺序而非患者风险水平来优先进行玻片检查。因此,高风险病例,尤其是那些涉及恶性病变的病例,可能会被无意延迟,这有可能影响患者的治疗结果。在本研究中,我们提出了一个基于人工智能(AI)的框架,旨在通过分析苏木精和伊红(H&E)染色的低分辨率缩略图全玻片图像(TWSIs)来高效筛选恶性病例并对其进行优先级排序。所提出的方法包括三个关键组件。首先,进行图像预处理以减少伪影并识别初始组织区域。其次,一个多任务深度学习网络进行组织分割和良性与恶性分类。最后,利用多维度特征重建来提高分类准确性。我们在334张TWSI图像(746×1632像素)上评估了我们框架的性能,这些图像包括100例良性病例和234例恶性病例。该系统每张图像的平均推理时间为2.33±0.31秒,准确率为91.91%,灵敏度为93.59%,特异性为88.00%,阳性预测值为94.84%,阴性预测值为85.56%。这些结果对应的假阴性率为6.41%。研究结果表明,将人工智能驱动的分析应用于TWSIs可以有效地加快病例分流,从而加强外科病理标本的分类和优先级排序,并有可能改善临床决策。

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Magnifying Networks for Histopathological Images with Billions of Pixels.用于数十亿像素组织病理学图像的放大网络
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