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用于肺结节恶性风险区分的混合 CNN 特征模型。

A hybrid CNN feature model for pulmonary nodule malignancy risk differentiation.

机构信息

North China University of Technology, School of Electrical Information, Beijing, China.

School of Software Engineering, Beihang University, Beijing, China.

出版信息

J Xray Sci Technol. 2018;26(2):171-187. doi: 10.3233/XST-17302.

DOI:10.3233/XST-17302
PMID:29036877
Abstract

The malignancy risk differentiation of pulmonary nodule is one of the most challenge tasks of computer-aided diagnosis (CADx). Most recently reported CADx methods or schemes based on texture and shape estimation have shown relatively satisfactory on differentiating the risk level of malignancy among the nodules detected in lung cancer screening. However, the existing CADx schemes tend to detect and analyze characteristics of pulmonary nodules from a statistical perspective according to local features only. Enlightened by the currently prevailing learning ability of convolutional neural network (CNN), which simulates human neural network for target recognition and our previously research on texture features, we present a hybrid model that takes into consideration of both global and local features for pulmonary nodule differentiation using the largest public database founded by the Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI). By comparing three types of CNN models in which two of them were newly proposed by us, we observed that the multi-channel CNN model yielded the best discrimination in capacity of differentiating malignancy risk of the nodules based on the projection of distributions of extracted features. Moreover, CADx scheme using the new multi-channel CNN model outperformed our previously developed CADx scheme using the 3D texture feature analysis method, which increased the computed area under a receiver operating characteristic curve (AUC) from 0.9441 to 0.9702.

摘要

肺结节的恶性风险区分是计算机辅助诊断(CADx)最具挑战性的任务之一。最近报道的基于纹理和形状估计的 CADx 方法或方案已经在区分肺癌筛查中检测到的结节的恶性风险水平方面显示出了相对令人满意的结果。然而,现有的 CADx 方案往往仅从统计角度根据局部特征来检测和分析肺结节的特征。受卷积神经网络(CNN)当前流行的学习能力的启发,该网络模拟了人类神经网络来进行目标识别,以及我们之前对纹理特征的研究,我们提出了一种混合模型,该模型考虑了使用由 Lung Image Database Consortium 和 Image Database Resource Initiative(LIDC-IDRI)建立的最大公共数据库来对肺结节进行区分的全局和局部特征。通过比较三种类型的 CNN 模型,其中两种是我们新提出的,我们观察到多通道 CNN 模型在基于提取特征的分布投影来区分结节恶性风险的能力方面具有最佳的区分能力。此外,使用新的多通道 CNN 模型的 CADx 方案优于我们之前使用 3D 纹理特征分析方法开发的 CADx 方案,这将计算得到的接收器工作特征曲线(AUC)下面积从 0.9441 增加到 0.9702。

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