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Harnessing AI for Kidney Glomeruli Classification

机译:利用AI进行肾小球分类

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A key challenge in renal diagnosis using digital pathology has been the scarcity of reliable annotated datasets that can act as a benchmark for histological investigations. This paper uses a novel medical image dataset, titled Glomeruli Classification Database (GCDB), consisting of renal glomeruli images bifurcated into binary classes of normal and abnormal morphology. Based on this dataset, we direct our pioneering efforts to explore suitable deep neural network techniques related to kidney tissue slide imaging so as to establish a state of the art in this relatively unexplored domain. The paper focuses on classifying normal and abnormal categories of glomeruli which are the vital blood filtration units of the kidney. The results obtained using publicly available transfer learning models are held in comparison with supervised classifiers configured with image features extracted from the last layers of pre-trained image classifiers. Contrary to popular belief, transfer learning models such as ResNet50 and InceptionV3 are empirically proved to under-perform for this particular task whereas the Logistic Regression model augmented with features from the InceptionResNetV2 show the most promising results on the GCDB dataset.
机译:使用数字病理学进行肾脏诊断的一个关键挑战是缺乏可作为组织学研究基准的可靠的注释数据集。本文使用了一个名为“肾小球分类数据库”(GCDB)的新型医学图像数据集,该数据集由分为两类正常形态和异常形态的肾小球图像组成。基于此数据集,我们将指导我们的开拓性工作,以探索与肾脏组织玻片成像相关的合适的深度神经网络技术,以便在这个相对未开发的领域中建立起最先进的技术。本文着重对肾小球的正常和异常类别进行分类,肾小球是肾脏的重要血液过滤单位。与使用从预训练图像分类器的最后一层提取的图像特征配置的监督分类器相比,保留了使用公开可用的转移学习模型获得的结果。与流行的看法相反,经验证明,诸如ResNet50和InceptionV3之类的迁移学习模型在完成此特定任务方面表现不佳,而采用InceptionResNetV2的功能增强的Logistic回归模型在GCDB数据集上显示出最有希望的结果。

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