基于深度学习的肾小球病理图像识别与分类

Ziyao Meng, Sijia Chen, T. Lyu, Zhigang Zhang, Xiaoxia Wang, Bin Sheng, Lijuan Mao
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引用次数: 2

摘要

病理切片中肾小球的识别和分类是诊断肾脏病变程度和类型的关键。为了解决肾小球的识别和分类问题,设计了一个完整的基于深度学习的肾小球检测和分类框架。在整个切片图像中检测并分类肾小球。该框架包括肾小球识别的四个阶段。在扫描窗口生成的第一阶段,设计了一个新的网络框架RGNet,以初步确定948计算机辅助设计与图形学学报 第 33卷 挖掘肾小球的可能位置。在检测和粗略分类的第二阶段,肾小球数据的Faster R-CNN得到了改进。在第三阶段,基于NMS算法设计了NMS-Lite算法,以合并检测到的肾小球。在精细分类的第四阶段,使用数据增强训练两个神经网络来对肾小球病变的程度进行分类。实验结果表明,本文提出的肾小球检测方法在测试集上与同类方法的检测精度相当,在一定程度上解决了同类肾小球难以检测的问题-
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Recognition and Classification of Glomerular Pathological Images Based on Deep Learning
The identification and classification of glomeruli in pathological sections is the key to diagnosing the degree and type of renal lesions. In order to solve the problem of glomerular recognition and classification, a complete glomerular detection and classification framework based on deep learning is designed. Glomeruli are detected and classified in the entire slice image. The framework includes four stages of glomerular recognition. In the first stage of scanning window generation, a new network framework, RGNet, is designed to initially deter948 计算机辅助设计与图形学学报 第 33 卷 mine the possible location of glomeruli. In the second stage of detection and coarse classification, Faster R-CNN is improved for glomerular data. In the third stage, the NMS-Lite algorithm is designed based on the NMS algorithm to merge the detected glomeruli. In the fourth stage of fine classification, two neural networks are trained using data augmentation to classify the degree of glomerular lesions. The experimental results has show that the glomerulus detection method proposed in this paper has achieved comparable accuracy on the test set with similar methods, and to a certain extent solves the problem that similar types of glomeruli are difficult to dis-
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来源期刊
计算机辅助设计与图形学学报
计算机辅助设计与图形学学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6833
期刊介绍:
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