Classification of salivary gland biopsies in Sjögren's syndrome by a convolutional neural network using an auto-machine learning platform.

IF 2.1 Q3 RHEUMATOLOGY
Jorge Álvarez Troncoso, Elena Ruiz-Bravo, Clara Soto Abánades, Alexandre Dumusc, Álvaro López-Janeiro, Thomas Hügle
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引用次数: 0

Abstract

Background: The histopathological analysis of minor salivary gland biopsies, particularly through the quantification of the Focus Score (FS), is pivotal in the diagnostic workflow for Sjögren's Syndrome (SS). AI-based image recognition using deep learning models has demonstrated potential in enhancing diagnostic accuracy and efficiency in preclinical research.

Objectives: The primary aim of this investigation was to utilize an auto-machine learning (autoML) platform for the automated segmentation and quantification of FS on histopathological slides, aiming to augment diagnostic precision and speed in SS.

Methods: A cohort comprising 86 patients with sicca syndrome (37 diagnosed with SS based on the 2016 ACR/EULAR Classification Criteria and 49 non-SS) was selected for an in-depth histological examination. A repository of 172 slides (two per patient) was assembled, encompassing 74 slides meeting the classificatory thresholds for SS (FS ≥ 1, indicative of lymphocytic infiltration) and 98 slides showcasing normal salivary gland histology. The autoML platform utilized (Giotto, L2F, Lausanne Switzerland) employed a Convolutional Neural Network (CNN) architecture (ResNet-152) for the training and validation phases, using a dataset of 172 slides.

Results: The developed model exhibited a reliability score of 0.88, proficiently distinguishing SS cases, with a sensitivity of 89.47% (95% CI: 66.86% to 98.70%) and a specificity of 88.24% (95% CI: 63.56% to 98.54%). The model found histological slides of suboptimal quality (e.g., those compromised during fixation or staining processes) to be the most challenging for accurate classification.

Conclusion: AutoML platforms offer a rapid and flexible approach to developing machine learning models, even with smaller datasets, as demonstrated in this study for SS. These platforms hold significant potential for enhancing diagnostic precision and efficiency in both clinical and research settings. Multicentric studies with larger patient cohorts are essential for thorough evaluation and validation of this innovative diagnostic approach.

利用自动机器学习平台的卷积神经网络对斯约戈伦综合征的唾液腺活检样本进行分类。
背景:对唾液腺小切片进行组织病理学分析,特别是通过量化病灶评分(FS),是诊断斯约格伦综合征(SS)工作流程的关键。在临床前研究中,使用深度学习模型进行基于人工智能的图像识别在提高诊断准确性和效率方面已显示出潜力:本研究的主要目的是利用自动机器学习(autoML)平台对组织病理切片上的FS进行自动分割和量化,以提高SS的诊断精度和速度:选取了86名筛查综合征患者(37名根据2016年ACR/EULAR分类标准诊断为筛查综合征,49名非筛查综合征)进行深入的组织学检查。共收集了 172 张切片(每位患者两张),其中 74 张切片符合 SS 的分类阈值(FS ≥ 1,表明淋巴细胞浸润),98 张切片显示正常唾液腺组织学。使用的 autoML 平台(Giotto,L2F,瑞士洛桑)采用卷积神经网络(CNN)架构(ResNet-152)进行训练和验证,使用的数据集为 172 张幻灯片:所开发模型的可靠度为 0.88,能有效区分 SS 病例,灵敏度为 89.47%(95% CI:66.86% 至 98.70%),特异度为 88.24%(95% CI:63.56% 至 98.54%)。该模型发现,质量不佳的组织学切片(如在固定或染色过程中受损的切片)最难进行准确分类:AutoML 平台为开发机器学习模型提供了一种快速灵活的方法,即使是较小的数据集也不例外。这些平台在提高临床和研究环境中的诊断精度和效率方面具有巨大潜力。要对这种创新诊断方法进行全面评估和验证,必须对更大的患者群体进行多中心研究。
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
BMC Rheumatology
BMC Rheumatology Medicine-Rheumatology
CiteScore
3.80
自引率
0.00%
发文量
73
审稿时长
15 weeks
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