[Automatic classification of immune-mediated glomerular diseases based on multi-modal multi-instance learning].

Q3 Medicine
K Long, D Weng, J Geng, Y Lu, Z Zhou, L Cao
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引用次数: 0

Abstract

Objective: To develop a multi-modal deep learning method for automatic classification of immune-mediated glomerular diseases based on images of optical microscopy (OM), immunofluorescence microscopy (IM), and transmission electron microscopy (TEM).

Methods: We retrospectively collected the pathological images from 273 patients and constructed a multi-modal multi- instance model for classification of 3 immune-mediated glomerular diseases, namely immunoglobulin A nephropathy (IgAN), membranous nephropathy (MN), and lupus nephritis (LN). This model adopts an instance-level multi-instance learning (I-MIL) method to select the TEM images for multi-modal feature fusion with the OM images and IM images of the same patient. By comparing this model with unimodal and bimodal models, we explored different combinations of the 3 modalities and the optimal methods for modal feature fusion.

Results: The multi-modal multi-instance model combining OM, IM, and TEM images had a disease classification accuracy of (88.34±2.12)%, superior to that of the optimal unimodal model [(87.08±4.25)%] and that of the optimal bimodal model [(87.92±3.06)%].

Conclusion: This multi- modal multi- instance model based on OM, IM, and TEM images can achieve automatic classification of immune-mediated glomerular diseases with a good classification accuracy.

[基于多模态多实例学习的免疫介导肾小球疾病自动分类]。
目的开发一种基于光学显微镜(OM)、免疫荧光显微镜(IM)和透射电子显微镜(TEM)图像的多模态深度学习方法,用于免疫介导的肾小球疾病的自动分类:我们回顾性地收集了273名患者的病理图像,并构建了一个多模态多实例模型,用于对免疫球蛋白A肾病(IgAN)、膜性肾病(MN)和狼疮性肾炎(LN)这3种免疫介导的肾小球疾病进行分类。该模型采用实例级多实例学习(I-MIL)方法,选择 TEM 图像与同一患者的 OM 图像和 IM 图像进行多模态特征融合。通过将该模型与单模态和双模态模型进行比较,我们探索了三种模态的不同组合以及模态特征融合的最佳方法:结合 OM、IM 和 TEM 图像的多模态多实例模型的疾病分类准确率为 (88.34±2.12)%,优于最佳单模态模型[(87.08±4.25)%]和最佳双模态模型[(87.92±3.06)%]:这种基于OM、IM和TEM图像的多模态多实例模型可实现免疫介导的肾小球疾病的自动分类,且分类准确率较高。
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
CiteScore
1.50
自引率
0.00%
发文量
208
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