Deep Learning and High-Resolution Anoscopy: Development of an Interoperable Algorithm for the Detection and Differentiation of Anal Squamous Cell Carcinoma Precursors—A Multicentric Study

Cancers Pub Date : 2024-05-17 DOI:10.3390/cancers16101909
M. Saraiva, L. Spindler, T. Manzione, T. Ribeiro, N. Fathallah, Miguel Martins, P. Cardoso, F. Mendes, Joana Fernandes, João Ferreira, Guilherme Macedo, Sidney R. Nadal, V. de Parades
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Abstract

High-resolution anoscopy (HRA) plays a central role in the detection and treatment of precursors of anal squamous cell carcinoma (ASCC). Artificial intelligence (AI) algorithms have shown high levels of efficiency in detecting and differentiating HSIL from low-grade squamous intraepithelial lesions (LSIL) in HRA images. Our aim was to develop a deep learning system for the automatic detection and differentiation of HSIL versus LSIL using HRA images from both conventional and digital proctoscopes. A convolutional neural network (CNN) was developed based on 151 HRA exams performed at two volume centers using conventional and digital HRA systems. A total of 57,822 images were included, 28,874 images containing HSIL and 28,948 LSIL. Partial subanalyses were performed to evaluate the performance of the CNN in the subset of images acetic acid and lugol iodine staining and after treatment of the anal canal. The overall accuracy of the CNN in distinguishing HSIL from LSIL during the testing stage was 94.6%. The algorithm had an overall sensitivity and specificity of 93.6% and 95.7%, respectively (AUC 0.97). For staining with acetic acid, HSIL was differentiated from LSIL with an overall accuracy of 96.4%, while for lugol and after therapeutic manipulation, these values were 96.6% and 99.3%, respectively. The introduction of AI algorithms to HRA may enhance the early diagnosis of ASCC precursors, and this system was shown to perform adequately across conventional and digital HRA interfaces.
深度学习与高分辨率肛门镜检查:开发用于检测和区分肛门鳞状细胞癌前兆的可互操作算法--一项多中心研究
高分辨率肛门镜(HRA)在检测和治疗肛门鳞状细胞癌(ASCC)前兆方面发挥着核心作用。人工智能(AI)算法在检测和区分HRA图像中的HSIL和低级别鳞状上皮内病变(LSIL)方面表现出很高的效率。我们的目标是开发一种深度学习系统,利用传统和数字直肠镜的 HRA 图像自动检测和区分 HSIL 和 LSIL。我们根据两个量子中心使用传统和数字 HRA 系统进行的 151 次 HRA 检查开发了一个卷积神经网络 (CNN)。共包含 57,822 张图像,其中 28,874 张包含 HSIL,28,948 张包含 LSIL。为了评估 CNN 在醋酸和鲁戈碘染色以及肛管治疗后图像子集中的性能,进行了部分子分析。在测试阶段,CNN 区分 HSIL 和 LSIL 的总体准确率为 94.6%。该算法的总体灵敏度和特异度分别为 93.6% 和 95.7%(AUC 0.97)。用醋酸染色时,区分 HSIL 和 LSIL 的总体准确率为 96.4%,而鲁戈尔染色和治疗操作后的准确率分别为 96.6% 和 99.3%。在HRA中引入人工智能算法可提高ASCC前体的早期诊断率,而且该系统在传统和数字HRA界面中均表现出色。
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