Classification of Lung Tissue with Cystic Fibrosis Lung Disease via Deep Convolutional Neural Networks

Xi Jiang, Hualei Shen
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引用次数: 3

Abstract

Quantitative classification of disease regions contained in lung tissues obtained from Computed Tomography (CT) scans is one of the key steps to evaluate lesion degrees of Cystic Fibrosis Lung Disease (CFLD). In this paper, we propose a deep Convolutional Neural Network-based (CNN) framework for automatic classification of lung tissues with CFLD. Core of the framework is the integration of deep CNNs into the classification workflow. To train and validate performance of deep CNNs, we build datasets for inspiration CT scans and expiration CT scans, respectively. We employ transfer learning techniques to fine tune parameters of deep CNNs. Specifically, we train Resnet-18 and Resnet-34 and validate the performance on the built datasets. Experimental results in terms of average precision and receiver operating characteristic curve demonstrate effectiveness of deep CNNs for classification of lung tissue with CFLD.
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基于深度卷积神经网络的囊性纤维化肺病肺组织分类
计算机断层扫描(CT)获得肺组织中包含的疾病区域的定量分类是评估囊性纤维化肺病(CFLD)病变程度的关键步骤之一。在本文中,我们提出了一个基于深度卷积神经网络(CNN)的肺组织CFLD自动分类框架。该框架的核心是将深度cnn集成到分类工作流中。为了训练和验证深度cnn的性能,我们分别建立了灵感CT扫描和过期CT扫描的数据集。我们采用迁移学习技术对深度cnn的参数进行微调。具体来说,我们训练了Resnet-18和Resnet-34,并在构建的数据集上验证了性能。从平均精度和接受者工作特征曲线两方面的实验结果表明,深度cnn对CFLD肺组织分类是有效的。
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