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基于人工智能算法的计算机断层扫描图像特征提取及良恶性肺结节分析。

Artificial Intelligence Algorithm-Based Feature Extraction of Computed Tomography Images and Analysis of Benign and Malignant Pulmonary Nodules.

机构信息

Department of Radiology, The Third Affiliated Hospital of Wenzhou Medical University, Rui'an, Wenzhou 325200, Zhejiang, China.

出版信息

Comput Intell Neurosci. 2022 Sep 14;2022:5762623. doi: 10.1155/2022/5762623. eCollection 2022.

Abstract

This study was aimed to explore the effect of CT image feature extraction of pulmonary nodules based on an artificial intelligence algorithm and the image performance of benign and malignant pulmonary nodules. In this study, the CT images of pulmonary nodules were collected as the research object, and the lung nodule feature extraction model based on expectation maximization (EM) was used to extract the image features. The Dice similarity coefficient, accuracy, benign and malignant nodule edges, internal signs, and adjacent structures were compared and analyzed to obtain the extraction effect of this feature extraction model and the image performance of benign and malignant pulmonary nodules. The results showed that the detection sensitivity of pulmonary nodules in this model was 0.955, and the pulmonary nodules and blood vessels were well preserved in the image. The probability of burr sign detection in the malignant group was 73.09% and that in the benign group was 8.41%. The difference was statistically significant ( < 0.05). The probability of malignant component leaf sign (69.96%) was higher than that of a benign component leaf sign (0), and the difference was statistically significant ( < 0.05). The probability of cavitation signs in the malignant group (59.19%) was higher than that in the benign group (3.74%), and the probability of blood vessel collection signs in the malignant group (74.89%) was higher than that in the benign group (11.21%), with statistical significance ( < 0.05). The probability of the pleural traction sign in the malignant group was 17.49% higher than that in the benign group (4.67%), and the difference was statistically significant ( < 0.05). In summary, the feature extraction effect of CT images based on the EM algorithm was ideal. Imaging findings, such as the burr sign, lobulation sign, vacuole sign, vascular bundle sign, and pleural traction sign, can be used as indicators to distinguish benign and malignant nodules.

摘要

本研究旨在探讨基于人工智能算法的肺结节 CT 图像特征提取及其对良恶性肺结节的图像表现。本研究以肺结节 CT 图像为研究对象,采用基于期望最大化(EM)的肺结节特征提取模型提取图像特征。比较并分析了 Dice 相似系数、准确率、良恶性结节边缘、内部征象、毗邻结构等,以获得该特征提取模型的提取效果和良恶性肺结节的图像表现。结果表明,该模型对肺结节的检出灵敏度为 0.955,且图像中肺结节和血管均较好地保留。恶性组毛刺征检出概率为 73.09%,良性组为 8.41%,差异有统计学意义(<0.05)。恶性组恶性成分叶征(69.96%)检出概率高于良性组(0),差异有统计学意义(<0.05)。恶性组空洞征检出概率(59.19%)高于良性组(3.74%),恶性组血管集束征检出概率(74.89%)高于良性组(11.21%),差异均有统计学意义(<0.05)。恶性组胸膜牵拉征检出概率高于良性组(17.49%),差异有统计学意义(<0.05)。总之,基于 EM 算法的 CT 图像特征提取效果理想,毛刺征、分叶征、空泡征、血管集束征和胸膜牵拉征等影像学表现可作为鉴别良恶性结节的指标。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7773/9492375/5857c8ae44dc/CIN2022-5762623.001.jpg

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