Advancing Automatic Gastritis Diagnosis: An Interpretable Multilabel Deep Learning Framework for the Simultaneous Assessment of Multiple Indicators.

Am J Pathol

Department of Pathology, Fudan University Shanghai Cancer Center, Shanghai, China; Department of Oncology, Fudan University Shanghai Medical College, Shanghai, China; Institute of Pathology, Fudan University, Shanghai, China. Electronic address:

Published: August 2024

AI Article Synopsis

  • The importance of evaluating morphologic features like inflammation and gastric atrophy for diagnosing gastritis is emphasized, but traditional AI methods have limitations in this area.
  • A new model, called AMMNet, was created to diagnose multiple gastritis indicators simultaneously using weak labels, demonstrating a high performance in assessing activity, atrophy, and intestinal metaplasia in a study with 1096 patients.
  • AMMNet improved junior pathologists' accuracy and efficiency, reducing false-negative rates and diagnostic time, and also provided a better visualization of the relevant features in whole slide images.

Article Abstract

The evaluation of morphologic features, such as inflammation, gastric atrophy, and intestinal metaplasia, is crucial for diagnosing gastritis. However, artificial intelligence analysis for nontumor diseases like gastritis is limited. Previous deep learning models have omitted important morphologic indicators and cannot simultaneously diagnose gastritis indicators or provide interpretable labels. To address this, an attention-based multi-instance multilabel learning network (AMMNet) was developed to simultaneously achieve the multilabel diagnosis of activity, atrophy, and intestinal metaplasia with only slide-level weak labels. To evaluate AMMNet's real-world performance, a diagnostic test was designed to observe improvements in junior pathologists' diagnostic accuracy and efficiency with and without AMMNet assistance. In this study of 1096 patients from seven independent medical centers, AMMNet performed well in assessing activity [area under the curve (AUC), 0.93], atrophy (AUC, 0.97), and intestinal metaplasia (AUC, 0.93). The false-negative rates of these indicators were only 0.04, 0.08, and 0.18, respectively, and junior pathologists had lower false-negative rates with model assistance (0.15 versus 0.10). Furthermore, AMMNet reduced the time required per whole slide image from 5.46 to 2.85 minutes, enhancing diagnostic efficiency. In block-level clustering analysis, AMMNet effectively visualized task-related patches within whole slide images, improving interpretability. These findings highlight AMMNet's effectiveness in accurately evaluating gastritis morphologic indicators on multicenter data sets. Using multi-instance multilabel learning strategies to support routine diagnostic pathology deserves further evaluation.

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Source
http://dx.doi.org/10.1016/j.ajpath.2024.04.007DOI Listing

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