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肺结节识别方法研究:改进的随机游走肺实质分割与融合多特征VGG16结节分类

Study on Identification Method of Pulmonary Nodules: Improved Random Walk Pulmonary Parenchyma Segmentation and Fusion Multi-Feature VGG16 Nodule Classification.

作者信息

Zhang Yanrong, Meng Lingyue

机构信息

Heilongjiang Key Laboratory of Electronic Commerce and Information Processing, Computer and Information Engineering College, Harbin University of Commerce, Harbin, China.

出版信息

Front Oncol. 2022 Mar 16;12:822827. doi: 10.3389/fonc.2022.822827. eCollection 2022.

Abstract

PURPOSE

The purpose of this study was to realize automatic segmentation of lung parenchyma based on random walk algorithm to ensure the accuracy of lung parenchyma segmentation. The explicable features of pulmonary nodules were added into VGG16 neural network to improve the classification accuracy of pulmonary nodules.

MATERIALS AND METHODS

LIDC-IDRI, a public dataset containing lung Computed Tomography images/pulmonary nodules, was used as experimental data. In lung parenchyma segmentation, the maximum Between-Class Variance method (OTSU), corrosion and expansion methods were used to automatically obtain the foreground and background seed points of random walk algorithm in lung parenchyma region. The shortest distance between point sets was added as one of the criteria of prospect probability in the calculation of random walk weight function to achieve accurate segmentation of pulmonary parenchyma. According to the location of the nodules marked by the doctor, the nodules were extracted. The texture features and grayscale features were extracted by Volume Local Direction Ternary Pattern (VLDTP) method and gray histogram. The explicable features were input into VGG16 network in series mode and fused with depth features to achieve accurate classification of nodules. Intersection of Union (IOU) and false positive rate (FPR) were used to measure the segmentation results. Accuracy, Sensitivity, Specificity, Accuracy and F1 score were used to evaluate the results of nodule classification.

RESULTS

The automatic random walk algorithm is effective in lung parenchyma segmentation, and its segmentation efficiency is improved obviously. In VGG16 network, the accuracy of nodular classification is 0.045 higher than that of single depth feature classification.

CONCLUSION

The method proposed in this paper can effectively and accurately achieve automatic segmentation of lung parenchyma. In addition, the fusion of multi-feature VGG16 network is effective in the classification of pulmonary nodules, which can improve the accuracy of nodular classification.

摘要

目的

本研究旨在基于随机游走算法实现肺实质的自动分割,以确保肺实质分割的准确性。将肺结节的可解释特征添加到VGG16神经网络中,以提高肺结节的分类准确率。

材料与方法

使用包含肺部计算机断层扫描图像/肺结节的公共数据集LIDC-IDRI作为实验数据。在肺实质分割中,采用最大类间方差法(OTSU)、腐蚀和膨胀方法自动获取肺实质区域随机游走算法的前景和背景种子点。在随机游走权重函数计算中,添加点集之间的最短距离作为前景概率的标准之一,以实现肺实质的准确分割。根据医生标记的结节位置,提取结节。采用体积局部方向三元模式(VLDTP)方法和灰度直方图提取纹理特征和灰度特征。将可解释特征以串联模式输入VGG16网络,并与深度特征融合,以实现结节的准确分类。使用交并比(IOU)和假阳性率(FPR)来衡量分割结果。使用准确率、灵敏度、特异性、精确率和F1分数来评估结节分类结果。

结果

自动随机游走算法在肺实质分割中有效,其分割效率明显提高。在VGG16网络中,结节分类的准确率比单一深度特征分类高0.045。

结论

本文提出的方法能够有效、准确地实现肺实质的自动分割。此外,多特征VGG16网络融合在肺结节分类中有效,可提高结节分类的准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/50c4/8966585/6dc44de10dc6/fonc-12-822827-g001.jpg

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