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An Innovative Neural Network Framework for Glomerulus Classification Based on Morphological and Texture Features Evaluated in Histological Images of Kidney Biopsy

机译:基于形态学和纹理特征的肾脏活检组织学图像中肾小球分类创新神经网络框架

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Medical Imaging Computer Aided Diagnosis (CAD) systems could support physicians in several fields and recently arc also applied in histopathol-ogy. The goal of this work is to design and test a novel CAD system module for the discrimination between glomeruli with a sclerotic and non-sclerotic condition, through the elaboration of histological images. The dataset was constituted by 26 kidney biopsies coming from 19 donors with Periodic Acid Schiff (PAS) staining. Preparation, digital acquisition and glomeruli annotations have been conducted by experts from the Department of Emergency and Organ Transplantation (DETO) of the University of Bari Aldo Moro (Italy). Starting from the annotated Regions Of Interest (ROls), several feature extraction techniques were evaluated. Feature reduction and shallow artificial neural network were used for discriminating between the glomeruli classes. The mean and the best performances of the best ANN architecture were evaluated on an independent dataset. Metric comparison and analysis were performed to face the unbalanced dataset problem. Results on the test set asses that the proposed workflow, from the feature extraction to the supervised ANN approach, is consistent and reveals good performance in discriminating sclerotic and non-sclerotic glomeruli.
机译:医学影像计算机辅助诊断(CAD)系统可以支持几个领域的医生,最近也适用于组织养殖者-OGY。这项工作的目标是通过制定组织学图像来设计和测试新的CAD系统模块,用于肾小球与硬化和非硬化条件之间的歧视。该数据集由来自19个捐助者的26个肾脏活检构成,具有周期性酸Schiff(PAS)染色。准备,数字收购和Glomeruli注释由Bari Aldo Moro大学(意大利)的紧急和器官移植部(DETO)进行专家进行。从注释的感兴趣区域(ROL)开始,评估了几种特征提取技术。特征减少和浅人工神经网络用于歧视肾小球等级。在独立数据集上评估最佳ANN架构的均值和最佳性能。进行度量比较和分析以面对不平衡的数据集问题。结果在测试集合暗示中,从特征提取到监督ANN方法的建议工作流程是一致的,揭示了识别硬化和非硬化性肾小球的良好表现。

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