Advancing Automatic Gastritis Diagnosis

IF 4.7 2区 医学 Q1 PATHOLOGY
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引用次数: 0

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.

Abstract Image

Abstract Image

推进胃炎自动诊断:用于同时评估多个指标的可解释多标签深度学习框架
对炎症、胃萎缩和肠化生等形态特征的评估对于诊断胃炎至关重要。然而,针对胃炎等非肿瘤性疾病的人工智能(AI)分析却很有限。以往的深度学习模型遗漏了重要的形态学指标,无法同时诊断胃炎指标或提供可解释的标签。为了解决这个问题,我们开发了一种基于注意力的多实例多标签学习网络(AMMNet),只需使用幻灯片级别的弱标签,就能同时实现活动、萎缩和肠化生的多标签诊断。为了评估 AMMNet 在现实世界中的表现,我们设计了一个诊断测试,以观察初级病理学家在有 AMMNet 辅助和没有 AMMNet 辅助的情况下诊断准确率和效率的提高情况。在这项对来自 7 个独立医疗中心的 1,096 名患者进行的研究中,AMMNet 在评估活动度(曲线下面积 (AUC):0.93)、萎缩(AUC:0.97)和肠化生(AUC:0.93)。这些指标的假阴性率(FNR)分别仅为 0.04、0.08 和 0.18,初级病理学家在模型辅助下的假阴性率更低(0.15 对 0.10)。此外,AMMNet 还将每张全切片图像(WSI)所需的时间从 5.46 分钟减少到 2.85 分钟,提高了诊断效率。在块级聚类分析中,AMMNet 有效地可视化了 WSI 中与任务相关的斑块,提高了可解释性。这些发现凸显了AMMNet在多中心数据集上准确评估胃炎形态指标的有效性。利用多实例多标签学习策略支持常规病理诊断值得进一步评估。
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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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