深度学习有助于区分自身免疫性肝炎和原发性胆管炎。

IF 9.5 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY JHEP Reports Pub Date : 2025-02-01 DOI:10.1016/j.jhepr.2024.101198
Alessio Gerussi , Oliver Lester Saldanha , Giorgio Cazzaniga , Damiano Verda , Zunamys I. Carrero , Bastian Engel , Richard Taubert , Francesca Bolis , Laura Cristoferi , Federica Malinverno , Francesca Colapietro , Reha Akpinar , Luca Di Tommaso , Luigi Terracciano , Ana Lleo , Mauro Viganó , Cristina Rigamonti , Daniela Cabibi , Vincenza Calvaruso , Fabio Gibilisco , Jakob Nikolas Kather
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引用次数: 0

摘要

背景与目的:自身免疫性肝炎(AIH)和原发性胆道胆管炎(PBC)的界面肝炎胆道异常是常见的,误解可能导致治疗错误,对患者产生负面影响。本研究探讨了使用深度学习(DL)为基础的管道诊断AIH和PBC,以帮助鉴别诊断。方法:我们在六个欧洲转诊中心进行了一项多中心研究,并建立了一个1997年至2023年数字化肝活检切片库。训练集354例(266例AIH和102例PBC)和外部验证集92例(62例AIH和30例PBC)可用于分析。一种新的DL模型,自身免疫肝脏神经估计器(ALNE),在没有人工注释的H&E染色的整片图像(wsi)上进行训练。根据临床病理诊断对ALNE模型进行了评估,并测试了普通病理学家之间的观察者间变异性。结果:ALNE模型对AIH和PBC的鉴别具有较高的准确性,经外部验证,受试者工作特征曲线下面积为0.81。注意热图显示,ALNE倾向于更多地集中在炎症增加的区域,这种模式主要与AIH相关。多变量可解释ML模型显示,被误诊为AIH的PBC患者ALP值在1倍正常上限(ULN)至2倍正常上限之间,且AST值高于1倍正常上限。在评估相同病例的随机样本时,注意到普通病理学家之间的不一致性(Fleiss kappa值0.09)。结论:ALNE模型是第一个对AIH或PBC病例进行定量和准确鉴别诊断的系统。影响和意义:本研究证明了自身免疫性肝脏神经估计器模型(一种基于变压器的深度学习系统)在使用数字化肝活检切片准确区分自身免疫性肝炎和原发性胆道炎方面的巨大潜力,而无需人工注释。这项工作的科学依据在于解决区分这些疾病的挑战,这些疾病通常具有重叠的特征,并可能导致治疗错误。此外,还需要对肝活检中嵌入的信息进行定量评估,目前这些信息是通过定性或半定量方法进行评估的。这项研究的结果对病理学家、研究人员和临床医生至关重要,它提供了一种可靠的诊断工具,减少了观察者之间的差异,提高了这些疾病的诊断准确性。考虑到潜在的方法局限性,例如扫描技术和幻灯片颜色的多样性,确保了研究结果的稳健性和普遍性。
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Deep learning helps discriminate between autoimmune hepatitis and primary biliary cholangitis

Background & Aims

Biliary abnormalities in autoimmune hepatitis (AIH) and interface hepatitis in primary biliary cholangitis (PBC) occur frequently, and misinterpretation may lead to therapeutic mistakes with a negative impact on patients. This study investigates the use of a deep learning (DL)-based pipeline for the diagnosis of AIH and PBC to aid differential diagnosis.

Methods

We conducted a multicenter study across six European referral centers, and built a library of digitized liver biopsy slides dating from 1997 to 2023. A training set of 354 cases (266 AIH and 102 PBC) and an external validation set of 92 cases (62 AIH and 30 PBC) were available for analysis. A novel DL model, the autoimmune liver neural estimator (ALNE), was trained on whole-slide images (WSIs) with H&E staining, without human annotations. The ALNE model was evaluated against clinico-pathological diagnoses and tested for interobserver variability among general pathologists.

Results

The ALNE model demonstrated high accuracy in differentiating AIH from PBC, achieving an area under the receiver operating characteristic curve of 0.81 in external validation. Attention heatmaps showed that ALNE tends to focus more on areas with increased inflammation, associating such patterns predominantly with AIH. A multivariate explainable ML model revealed that PBC cases misclassified as AIH more often had ALP values between 1 × upper limit of normal (ULN) and 2 × ULN, coupled with AST values above 1 × ULN. Inconsistency among general pathologists was noticed when evaluating a random sample of the same cases (Fleiss’s kappa value 0.09).

Conclusions

The ALNE model is the first system generating a quantitative and accurate differential diagnosis between cases with AIH or PBC.

Impact and implications

This study demonstrates the significant potential of the autoimmune liver neural estimator model, a transformer-based deep learning system, in accurately distinguishing between autoimmune hepatitis and primary biliary cholangitis using digitized liver biopsy slides without human annotation. The scientific justification for this work lies in addressing the challenge of differentiating these conditions, which often present with overlapping features and can lead to therapeutic mistakes. In addition, there is need for quantitative assessment of information embedded in liver biopsies, which are currently evaluated on qualitative or semi-quantitative methods. The results of this study are crucial for pathologists, researchers, and clinicians, providing a reliable diagnostic tool that reduces interobserver variability and improves diagnostic accuracy of these conditions. Potential methodological limitations, such as the diversity in scanning techniques and slide colorations, were considered, ensuring the robustness and generalizability of the findings.
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来源期刊
JHEP Reports
JHEP Reports GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
12.40
自引率
2.40%
发文量
161
审稿时长
36 days
期刊介绍: JHEP Reports is an open access journal that is affiliated with the European Association for the Study of the Liver (EASL). It serves as a companion journal to the highly respected Journal of Hepatology. The primary objective of JHEP Reports is to publish original papers and reviews that contribute to the advancement of knowledge in the field of liver diseases. The journal covers a wide range of topics, including basic, translational, and clinical research. It also focuses on global issues in hepatology, with particular emphasis on areas such as clinical trials, novel diagnostics, precision medicine and therapeutics, cancer research, cellular and molecular studies, artificial intelligence, microbiome research, epidemiology, and cutting-edge technologies. In summary, JHEP Reports is dedicated to promoting scientific discoveries and innovations in liver diseases through the publication of high-quality research papers and reviews covering various aspects of hepatology.
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