Deep learning model for automated detection of Helicobacter pylori and intestinal metaplasia on gastric biopsy digital whole slide images.

IF 1.9 4区 医学 Q2 PATHOLOGY
Li Y Khor, Calvin C Neo, Karthik Prathaban, Esther Choa, Wai K Quah, Eunice N Lum, Raphael Chen, Seow Y Heng, Valerie C Koh, Jia X Seow, Nagalakshmi Jegannathan, Ruoyu Shi, Shihleone Loong, Lee H Song, Anand Natarajan, Sudha Ravi, Kevin S Oh, Chee L Cheng
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引用次数: 0

Abstract

Objective: To develop an automated detection tool for Helicobacter pylori (HP) microorganisms (HPOrg) and intestinal metaplasia (IM) identification on gastric biopsy specimens on hematoxylin and eosin (H&E) whole-slide images (WSIs), incorporating background histopathologic features.

Methods: A total of 180 H&E gastric biopsy WSIs, archived at the Department of Anatomical Pathology, Singapore General Hospital, were used to train, validate, and test (60:20:20) a decision support tool. Eighty WSIs displayed non-HP inflammation; 100 were annotated for HP-associated gastritis, HPOrg, and IM. A 2-stage model was employed-a Vision Transformer-based model filtered artifacts after stain normalization, and then a Graph Attention Network component aggregated patch-level features, giving a prediction for each of 6 tissue sections within each WSI, with a majority vote determining the final WSI prediction.

Results: A total of 776 636 patches were used for training/validation and testing. The optimized model showed HPOrg classification (precision: 0.604, F1-score: 0.617, and top 10 micro F1-score: 0.714) and IM classification (precision: 0.905, F1-score: 0.861, and top 10 micro F1-score: 1.0). The macro average F1-score was 0.739, section-level precision was 0.981, and the F1-score was 0.945. The WSI-level precision achieved was 1.0, with a F1-score of 0.96.

Conclusions: We demonstrate a 2-stage model to detect HP and IM in gastric biopsy specimens, considering background inflammation, which more closely reflects real-world clinical diagnosis.

基于深度学习模型的胃活检数字整张图像中幽门螺杆菌和肠化生的自动检测。
目的:建立一种结合背景组织病理学特征的胃活检标本苏木精和伊红(H&E)全片图像(WSIs)上幽门螺杆菌(HP)微生物(HPOrg)和肠化生(IM)的自动检测工具。方法:在新加坡总医院解剖病理学部存档的180份H&E胃活检WSIs,用于培训、验证和测试(60:20:20)决策支持工具。80例wsi表现为非hp炎症;其中100例为hp相关性胃炎、HPOrg和IM。采用了一个两阶段模型——一个基于Vision transformer的模型在染色归一化后过滤伪像,然后一个Graph Attention Network组件聚合补丁级特征,对每个WSI中的6个组织切片进行预测,并以多数投票决定最终的WSI预测。结果:共使用了776 636个贴片进行培训/验证和测试。优化后的模型采用HPOrg分类(精度:0.604,f1得分:0.617,前10名微观f1得分:0.714)和IM分类(精度:0.905,f1得分:0.861,前10名微观f1得分:1.0)。宏观平均f1得分为0.739,断面精度为0.981,f1得分为0.945。获得的wsi级精度为1.0,f1评分为0.96。结论:考虑到背景炎症,我们建立了一个两阶段模型来检测胃活检标本中的HP和IM,这更能反映现实世界的临床诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.70
自引率
2.90%
发文量
367
审稿时长
3-6 weeks
期刊介绍: The American Journal of Clinical Pathology (AJCP) is the official journal of the American Society for Clinical Pathology and the Academy of Clinical Laboratory Physicians and Scientists. It is a leading international journal for publication of articles concerning novel anatomic pathology and laboratory medicine observations on human disease. AJCP emphasizes articles that focus on the application of evolving technologies for the diagnosis and characterization of diseases and conditions, as well as those that have a direct link toward improving patient care.
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