基于深度学习的炎症性肠病活动在结肠组织病理学整张幻灯片图像中的分类。

IF 4.7 2区 医学 Q1 PATHOLOGY American Journal of Pathology Pub Date : 2025-01-10 DOI:10.1016/j.ajpath.2024.12.010
Amit Das, Tanmay Shukla, Naofumi Tomita, Ryland Richards, Laura Vidis, Bing Ren, Saeed Hassanpour
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引用次数: 0

摘要

使用标准化的组织病理学评分系统对炎症性肠病(IBD)进行分级仍然具有挑战性,因为具有IBD专业知识的病理学家的可用性有限,并且观察者之间的可变性。在这项研究中,开发了一种深度学习模型,用于对IBD患者苏木精和伊红染色的全切片图像(WSIs)的活动等级进行分类,为普通病理学家提供了一种强大的方法。该研究利用2018年和2019年在达特茅斯-希区柯克医疗中心就诊的636名患者的2077张wsi,以40倍放大镜(0.25 μm/像素)扫描。经委员会认证的胃肠病理学家将wsi分为四类:不活动、轻度活动、中度活动和严重活动。开发了一个基于变压器的模型,并使用五次交叉验证来对IBD活动进行分类。使用HoVerNet,检查中性粒细胞在活动等级之间的分布。该模型的注意图突出了有助于其预测的区域。该模型对IBD活动进行分类,曲线下面积的加权平均值为0.871[95%可信区间(CI): 0.860-0.883],精确度为0.695 [95% CI: 0.674-0.715],召回率为0.697 [95% CI: 0.678-0.716], f1评分为0.695 [95% CI: 0.674-0.714]。中性粒细胞分布在不同活动班间差异显著。一位胃肠病理学家对注意图的定性评价表明,注意图的可解释性可能得到改善。该模型具有稳健的诊断性能,可以提高IBD活动性评估的一致性和效率。
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Deep Learning for Classification of Inflammatory Bowel Disease Activity in Whole Slide Images of Colonic Histopathology.

Grading activity of inflammatory bowel disease (IBD) using standardized histopathological scoring systems remains challenging due to limited availability of pathologists with IBD expertise and interobserver variability. In this study, a deep learning model was developed to classify activity grades in hematoxylin and eosin-stained whole slide images (WSIs) from patients with IBD, offering a robust approach for general pathologists. This study utilized 2077 WSIs from 636 patients who visited Dartmouth-Hitchcock Medical Center in 2018 and 2019, scanned at ×40 magnification (0.25 μm/pixel). Board-certified gastrointestinal pathologists categorized the WSIs into four activity classes: inactive, mildly active, moderately active, and severely active. A transformer-based model was developed and validated using five-fold cross-validation to classify IBD activity. Using HoVer-Net, neutrophil distribution across activity grades was examined. Attention maps from the model highlighted areas contributing to its prediction. The model classified IBD activity with weighted averages of 0.871 (95% CI, 0.860-0.883) for the area under the curve, 0.695 (95% CI, 0.674-0.715) for precision, 0.697 (95% CI, 0.678-0.716) for recall, and 0.695 (95% CI, 0.674-0.714) for F1 score. Neutrophil distribution was significantly different across activity classes. Qualitative evaluation of attention maps by a gastrointestinal pathologist suggested their potential for improved interpretability. The model demonstrates robust diagnostic performance and could enhance consistency and efficiency in IBD activity assessment.

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来源期刊
CiteScore
11.40
自引率
0.00%
发文量
178
审稿时长
30 days
期刊介绍: The American Journal of Pathology, official journal of the American Society for Investigative Pathology, published by Elsevier, Inc., seeks high-quality original research reports, reviews, and commentaries related to the molecular and cellular basis of disease. The editors will consider basic, translational, and clinical investigations that directly address mechanisms of pathogenesis or provide a foundation for future mechanistic inquiries. Examples of such foundational investigations include data mining, identification of biomarkers, molecular pathology, and discovery research. Foundational studies that incorporate deep learning and artificial intelligence are also welcome. High priority is given to studies of human disease and relevant experimental models using molecular, cellular, and organismal approaches.
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