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肺癌的计算机辅助诊断:结节异质性的效用

Computer-aided Diagnosis for Lung Cancer: Usefulness of Nodule Heterogeneity.

作者信息

Nishio Mizuho, Nagashima Chihiro

机构信息

Clinical PET Center, Institute of Biomedical Research and Innovation, 2-2 Minatojimaminamimachi, Chuo-ku, Kobe, Hyogo 650-0047, Japan.

Clinical PET Center, Institute of Biomedical Research and Innovation, 2-2 Minatojimaminamimachi, Chuo-ku, Kobe, Hyogo 650-0047, Japan.

出版信息

Acad Radiol. 2017 Mar;24(3):328-336. doi: 10.1016/j.acra.2016.11.007. Epub 2017 Jan 16.

DOI:10.1016/j.acra.2016.11.007
PMID:28110797
Abstract

RATIONALE AND OBJECTIVES

To develop a computer-aided diagnosis system to differentiate between malignant and benign nodules.

MATERIALS AND METHODS

Seventy-three lung nodules revealed on 60 sets of computed tomography (CT) images were analyzed. Contrast-enhanced CT was performed in 46 CT examinations. The images were provided by the LUNGx Challenge, and the ground truth of the lung nodules was unavailable; a surrogate ground truth was, therefore, constructed by radiological evaluation. Our proposed method involved novel patch-based feature extraction using principal component analysis, image convolution, and pooling operations. This method was compared to three other systems for the extraction of nodule features: histogram of CT density, local binary pattern on three orthogonal planes, and three-dimensional random local binary pattern. The probabilistic outputs of the systems and surrogate ground truth were analyzed using receiver operating characteristic analysis and area under the curve. The LUNGx Challenge team also calculated the area under the curve of our proposed method based on the actual ground truth of their dataset.

RESULTS

Based on the surrogate ground truth, the areas under the curve were as follows: histogram of CT density, 0.640; local binary pattern on three orthogonal planes, 0.688; three-dimensional random local binary pattern, 0.725; and the proposed method, 0.837. Based on the actual ground truth, the area under the curve of the proposed method was 0.81.

CONCLUSIONS

The proposed method could capture discriminative characteristics of lung nodules and was useful for the differentiation between malignant and benign nodules.

摘要

原理与目的

开发一种计算机辅助诊断系统,以区分恶性和良性结节。

材料与方法

分析了60套计算机断层扫描(CT)图像上显示的73个肺结节。46次CT检查进行了增强CT扫描。图像由LUNGx挑战赛提供,肺结节的真实情况不可用;因此,通过放射学评估构建了替代真实情况。我们提出的方法涉及使用主成分分析、图像卷积和池化操作的基于新补丁的特征提取。该方法与其他三种用于提取结节特征的系统进行了比较:CT密度直方图、三个正交平面上的局部二值模式和三维随机局部二值模式。使用接收器操作特征分析和曲线下面积分析系统的概率输出和替代真实情况。LUNGx挑战赛团队还根据其数据集的实际真实情况计算了我们提出的方法的曲线下面积。

结果

基于替代真实情况,曲线下面积如下:CT密度直方图为0.640;三个正交平面上的局部二值模式为0.688;三维随机局部二值模式为0.725;以及所提出的方法为0.837。基于实际真实情况,所提出方法的曲线下面积为0.81。

结论

所提出的方法可以捕捉肺结节的鉴别特征,有助于区分恶性和良性结节。

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