Artificial intelligence-based prediction of organ involvement in Sjogren's syndrome using labial gland biopsy whole-slide images.

IF 2.9 3区 医学 Q2 RHEUMATOLOGY
Yong Ren, Wenqi Xia, Jiayun Wu, Zheng Yang, Ye Jiang, Ya Wen, Qiuquan Guo, Jieruo Gu, Jun Yang, Jun Luo, Qing Lv
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引用次数: 0

Abstract

Objectives: This study aimed to develop a deep learning-based model to predict the risk of high-risk extra-glandular organ involvement (HR-OI) in patients with Sjogren's syndrome (SS) using whole-slide images (WSI) from labial gland biopsies.

Methods: We collected WSI data from 221 SS patients. Pre-trained models, including ResNet50, InceptionV3, and EfficientNet-B5, were employed to extract image features. A classification model was constructed using multi-instance learning and ensemble learning techniques.

Results: The ensemble model achieved high area under the receiver operating characteristic (ROC) curve values on both internal and external validation sets, indicating strong predictive performance. Moreover, the model was able to identify key pathological features associated with the risk of HR-OI.

Conclusions: This study demonstrates that a deep learning-based model can effectively predict the risk of HR-OI in SS patients, providing a novel basis for clinical decision-making. Key Points 1. What is already known on this topic? • Sjogren's syndrome (SS) is a chronic autoimmune disease affecting the salivary and lacrimal glands. • Accurate prediction of high-risk extra-glandular organ involvement (HR-OI) is crucial for timely intervention and improved patient outcomes in SS. • Traditional methods for HR-OI prediction rely on clinical data and lack objectivity. 2. What this study adds? • This study proposes a novel deep learning-based model using whole-slide images (WSI) from labial gland biopsies for predicting HR-OI in SS patients. • Our model utilizes pre-trained convolutional neural networks (CNNs) and a Vision Transformer (ViT) module to extract informative features from WSI data. • The ensemble model achieves high accuracy in predicting HR-OI, outperforming traditional methods. • The model can identify key pathological features in WSI data associated with HR-OI risk. 3. How this study might affect research, practice or policy? • This study provides a novel and objective approach for predicting HR-OI in SS patients, potentially leading to improved clinical decision-making and personalized treatment strategies. • Our findings encourage further investigation into the role of deep learning and WSI analysis in SS diagnosis and risk stratification. • The development of a non-invasive and objective diagnostic tool based on WSI analysis could benefit clinical practice and inform policy decisions regarding patient care for SS.The development of a non-invasive and objective diagnostic tool based on WSI analysis could benefit clinical practice and inform policy decisions regarding patient care for SS.

基于人工智能的阴唇腺活检全切片图像预测干燥综合征器官受累。
目的:本研究旨在开发一种基于深度学习的模型,利用唇腺活检的全切片图像(WSI)预测干燥综合征(SS)患者发生高风险腺外器官累及(HR-OI)的风险。方法:收集221例SS患者的WSI数据。采用ResNet50、InceptionV3、EfficientNet-B5等预训练模型提取图像特征。采用多实例学习和集成学习技术构建分类模型。结果:集成模型在内外验证集上均获得较高的受试者工作特征(ROC)曲线下面积,具有较强的预测性能。此外,该模型能够识别与HR-OI风险相关的关键病理特征。结论:本研究表明基于深度学习的模型可以有效预测SS患者的HR-OI风险,为临床决策提供新的依据。1.重点关于这个话题我们已经知道了什么?•干燥综合征(SS)是一种影响唾液腺和泪腺的慢性自身免疫性疾病。•准确预测高风险腺外器官累及(HR-OI)对于及时干预和改善SS患者预后至关重要。•传统的HR-OI预测方法依赖于临床数据,缺乏客观性。2. 这项研究补充了什么?•本研究提出了一种新的基于深度学习的模型,该模型使用唇腺活检的全切片图像(WSI)来预测SS患者的HR-OI。•我们的模型利用预训练的卷积神经网络(cnn)和视觉变压器(ViT)模块从WSI数据中提取信息特征。•集成模型在预测HR-OI方面具有较高的准确性,优于传统方法。•该模型可以识别与HR-OI风险相关的WSI数据中的关键病理特征。3. 这项研究将如何影响研究、实践或政策?•本研究为预测SS患者的HR-OI提供了一种新颖而客观的方法,可能会改善临床决策和个性化治疗策略。•我们的研究结果鼓励进一步研究深度学习和WSI分析在SS诊断和风险分层中的作用。基于WSI分析的非侵入性和客观诊断工具的开发有利于临床实践,并为SS患者护理的政策决策提供信息。基于WSI分析的非侵入性和客观诊断工具的开发有利于临床实践,并为SS患者护理的政策决策提供信息。
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来源期刊
Clinical Rheumatology
Clinical Rheumatology 医学-风湿病学
CiteScore
6.90
自引率
2.90%
发文量
441
审稿时长
3 months
期刊介绍: Clinical Rheumatology is an international English-language journal devoted to publishing original clinical investigation and research in the general field of rheumatology with accent on clinical aspects at postgraduate level. The journal succeeds Acta Rheumatologica Belgica, originally founded in 1945 as the official journal of the Belgian Rheumatology Society. Clinical Rheumatology aims to cover all modern trends in clinical and experimental research as well as the management and evaluation of diagnostic and treatment procedures connected with the inflammatory, immunologic, metabolic, genetic and degenerative soft and hard connective tissue diseases.
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