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利用不确定类别的肺部 CT 图像提高肺结节诊断准确性。

Improved lung nodule diagnosis accuracy using lung CT images with uncertain class.

机构信息

Sino-Dutch Biomedical & Information Engineering School, Northeastern University, China.

School of Computer Science & Engineering, Key Laboratory of Big Data Management and Analytics (Liaoning Province), Northeastern University, China.

出版信息

Comput Methods Programs Biomed. 2018 Aug;162:197-209. doi: 10.1016/j.cmpb.2018.05.028. Epub 2018 May 18.

Abstract

BACKGROUND AND OBJECTIVE

Among all malignant tumors, lung cancer ranks in the top in mortality rate. Pulmonary nodule is the early manifestation of lung cancer, and plays an important role in its discovery, diagnosis and treatment. The technology of medical imaging has encountered a rapid development in recent years, thus the amount of pulmonary nodules can be discovered are on the raise, which means even tiny or minor changes in lung can be recorded by the CT images. This paper proposes a pulmonary nodule computer aided diagnosis (CAD) based on semi-supervised extreme learning machine(SS-ELM).

METHODS

First, the feature model based on the pulmonary nodules regions of lung CT images is established. After that, the same feature data sets have been put into ELM, support vector machine (SVM) methods, probabilistic neural network (PNN) and multilayer perceptron (MLP) so as to compare the performance of the methods. ELM turned out to have better performance in training time and testing accuracy compared with SVM, PNN and MLP. Then, we propose a pulmonary nodules computer aided diagnosis algorithm based on semi-supervised ELM (SS-ELM), which enables both certain class feature sets with labels and unlabeled feature sets to be input for training and computer aided diagnosing. This algorithm has provided a solution for the using of uncertain class data and improve the testing accuracy of benign and malignant diagnosis.

RESULTS

1018 sets of thoracic CT images from the Lung Database Consortium and Image Database Resource Initiative (LIDC-IDRI) have been used in experiment in order to test the effectiveness of the algorithm. Compared with ELM, the pulmonary nodules CAD based on SS-ELM has better testing accuracy performance.

CONCLUSIONS

We have proposed a pulmonary nodule CAD system based on SS-ELM, which achieving better generalization performance at faster learning speed and higher testing accuracy than ELM, SVM, PNN and MLP. The SS-ELM based pulmonary nodules CAD has been proposed to solve the problem of uncertain class data using.

摘要

背景与目的

在所有恶性肿瘤中,肺癌的死亡率最高。肺部结节是肺癌的早期表现,对其发现、诊断和治疗具有重要作用。近年来,医学影像技术发展迅速,因此可发现的肺部结节数量呈上升趋势,这意味着即使是肺部的微小或轻微变化也可以通过 CT 图像记录下来。本文提出了一种基于半监督极限学习机(SS-ELM)的肺部结节计算机辅助诊断(CAD)方法。

方法

首先,建立基于肺部 CT 图像肺部结节区域的特征模型。然后,将相同的特征数据集分别放入极限学习机(ELM)、支持向量机(SVM)、概率神经网络(PNN)和多层感知机(MLP)中,以比较这些方法的性能。ELM 在训练时间和测试准确性方面的性能均优于 SVM、PNN 和 MLP。然后,我们提出了一种基于半监督 ELM(SS-ELM)的肺部结节计算机辅助诊断算法,该算法允许同时输入带标签的特定类特征集和未标记的特征集进行训练和计算机辅助诊断。该算法为使用不确定类数据提供了一种解决方案,并提高了良性和恶性诊断的测试准确性。

结果

实验中使用了来自肺数据库联盟和图像数据库资源倡议(LIDC-IDRI)的 1018 组胸部 CT 图像,以测试算法的有效性。与 ELM 相比,基于 SS-ELM 的肺部结节 CAD 具有更好的测试准确性性能。

结论

我们提出了一种基于 SS-ELM 的肺部结节 CAD 系统,该系统在更快的学习速度和更高的测试准确性方面实现了比 ELM、SVM、PNN 和 MLP 更好的泛化性能。基于 SS-ELM 的肺部结节 CAD 已被提出,旨在解决不确定类数据的使用问题。

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