Rush University Medical Center, Chicago, IL, USA.
Hunter Holmes McGuire Veterans Affairs Medical Center, Richmond, VA, USA.
Sci Rep. 2021 Mar 3;11(1):5086. doi: 10.1038/s41598-021-84510-4.
Probe-based confocal laser endomicroscopy (pCLE) allows for real-time diagnosis of dysplasia and cancer in Barrett's esophagus (BE) but is limited by low sensitivity. Even the gold standard of histopathology is hindered by poor agreement between pathologists. We deployed deep-learning-based image and video analysis in order to improve diagnostic accuracy of pCLE videos and biopsy images. Blinded experts categorized biopsies and pCLE videos as squamous, non-dysplastic BE, or dysplasia/cancer, and deep learning models were trained to classify the data into these three categories. Biopsy classification was conducted using two distinct approaches-a patch-level model and a whole-slide-image-level model. Gradient-weighted class activation maps (Grad-CAMs) were extracted from pCLE and biopsy models in order to determine tissue structures deemed relevant by the models. 1970 pCLE videos, 897,931 biopsy patches, and 387 whole-slide images were used to train, test, and validate the models. In pCLE analysis, models achieved a high sensitivity for dysplasia (71%) and an overall accuracy of 90% for all classes. For biopsies at the patch level, the model achieved a sensitivity of 72% for dysplasia and an overall accuracy of 90%. The whole-slide-image-level model achieved a sensitivity of 90% for dysplasia and 94% overall accuracy. Grad-CAMs for all models showed activation in medically relevant tissue regions. Our deep learning models achieved high diagnostic accuracy for both pCLE-based and histopathologic diagnosis of esophageal dysplasia and its precursors, similar to human accuracy in prior studies. These machine learning approaches may improve accuracy and efficiency of current screening protocols.
基于探针的共聚焦激光内窥镜检查(pCLE)可实时诊断巴雷特食管(BE)中的异型增生和癌症,但敏感性有限。即使是组织病理学的金标准也受到病理学家之间一致性差的阻碍。我们部署了基于深度学习的图像和视频分析,以提高 pCLE 视频和活检图像的诊断准确性。盲法专家将活检和 pCLE 视频分类为鳞状、非异型增生 BE 或异型增生/癌症,然后训练深度学习模型将数据分类为这三个类别。活检分类采用两种不同的方法进行-斑块级模型和全切片图像级模型。从 pCLE 和活检模型中提取梯度加权类激活图(Grad-CAMs),以确定模型认为相关的组织结构。使用 1970 个 pCLE 视频、897931 个活检斑块和 387 个全切片图像来训练、测试和验证模型。在 pCLE 分析中,模型对异型增生具有很高的敏感性(71%),对所有类别总体准确率为 90%。对于斑块级别的活检,模型对异型增生的敏感性为 72%,总体准确率为 90%。全切片图像级模型对异型增生的敏感性为 90%,总体准确率为 94%。所有模型的 Grad-CAMs 均显示在医学相关组织区域激活。我们的深度学习模型在基于 pCLE 和组织病理学诊断食管异型增生及其前体方面取得了很高的诊断准确性,与之前研究中的人类准确性相似。这些机器学习方法可能会提高当前筛查方案的准确性和效率。