Exploring Classification of Histological Disease Biomarkers From Renal Biopsy Images

Puneet Mathur, Meghna P. Ayyar, R. Shah, S. Sharma
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引用次数: 9

Abstract

Identification of diseased kidney glomeruli and fibrotic regions remains subjective and time-consuming due to complete dependence on an expert kidney pathologist. In an attempt to automate the classification of glomeruli into normal and abnormal morphology and classification of fibrosis patches into mild, moderate and severe categories, we investigate three deep learning techniques: traditional transfer learning, pre-trained deep neural networks for feature extraction followed by supervised classification, and a novel Multi-Gaze Attention Network (MGANet) that uses multi-headed self-attention through parallel residual skip connections in a CNN architecture. Emperically, while the transfer learning models such as ResNet50, InceptionResNetV2, VGG19 and InceptionV3 acutely under-perform in the classification tasks, the Logistic Regression model augmented with features extracted from the InceptionResNetV2 shows promising results. Additionally, the experiments effectively ascertain that the proposed MGANet architecture outperforms both the former baseline techniques to establish the state of the art accuracy of 87.25% and 81.47% for glomerluli and fibrosis classification, respectively on the Renal Glomeruli Fibrosis Histopathological (RGFH) database.
从肾活检图像中探索组织学疾病生物标志物的分类
由于完全依赖肾脏病理学专家,病变肾小球和纤维化区域的鉴定仍然是主观和耗时的。为了自动将肾小球分为正常和异常形态,并将纤维化斑块分为轻度、中度和重度,我们研究了三种深度学习技术:传统的迁移学习、用于特征提取和监督分类的预训练深度神经网络,以及一种新型的多凝视注意网络(MGANet),该网络通过CNN架构中的并行残差跳跃连接使用多头自注意。从经验上看,虽然迁移学习模型(如ResNet50、InceptionResNetV2、VGG19和InceptionV3)在分类任务中的表现严重不足,但从InceptionResNetV2中提取的特征增强的逻辑回归模型显示出有希望的结果。此外,实验有效地确定了所提出的MGANet架构优于之前的基线技术,在肾小球纤维化组织病理学(RGFH)数据库上建立肾小球和纤维化分类的最新准确率分别为87.25%和81.47%。
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