THE CONSTRUCTION OF THE FEATURE VECTOR IN THE DIAGNOSIS OF SARCOIDOSIS BASED ON THE FRACTAL ANALYSIS OF CT CHEST IMAGES

Zbigniew Omiotek, P. Prokop
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引用次数: 5

Abstract

CT images corresponding to the cross-sections of the patients’ upper torso were analysed. The data set included the healthy class and 3 classes of cases affected by sarcoidosis. It was a state involving only the trachea – Sick(1), a state including trachea and lung parenchyma – Sick(2) and a state involving only lung parenchyma – Sick(3). Based on a fractal analysis and a feature selection by linear stepwise regression, 4 descriptors were obtained, which were later used in the classification process. These were 2 fractal dimensions calculated by the variation and box counting methods, lacunarity calculated also with the box counting method and the intercept parameter calculated using the power spectral density method. Two descriptors were obtained as a result of a gray image analysis, and 2 more were the effect of a binary image analysis. The effectiveness of the descriptors was verified using 8 popular classification methods. In the process of classifier testing, the overall classification accuracy was 90.97%, and the healthy cases were detected with the accuracy of 100%. In turn, the accuracy of recognition of the sick cases was: Sick(1) – 92.50%, Sick(2) – 87.50% and Sick(3) – 90.00%. In the classification process, the best results were obtained with the support vector machine and the naive Bayes classifier. The results of the research have shown the high efficiency of a fractal analysis as a tool for the feature vector extraction in the computer aided diagnosis of sarcoidosis.
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基于ct胸部图像分形分析的结节病诊断特征向量构建
分析了与患者上半身横截面相对应的CT图像。数据集包括健康类和3类结节病病例。这是一种只涉及气管的状态——生病(1),一种包括气管和肺实质的状态——患病(2),以及一种只包括肺实质的情况——生病(3)。基于分形分析和线性逐步回归的特征选择,获得了4个描述符,这些描述符后来用于分类过程。分别用变分法和盒计数法计算了2个分形维数,用盒计数法也计算了空隙度,用功率谱密度法计算了截距参数。作为灰度图像分析的结果,获得了两个描述符,另外两个描述符是二值图像分析的效果。使用8种流行的分类方法验证了描述符的有效性。在分类器测试过程中,总体分类准确率为90.97%,健康病例的准确率为100%。反过来,对患病病例的识别准确率为:sick(1)–92.50%,sick(2)–87.50%和sick(3)–90.00%。在分类过程中,使用支持向量机和朴素贝叶斯分类器获得了最好的结果。研究结果表明,在结节病的计算机辅助诊断中,分形分析作为特征向量提取的工具是高效的。
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CiteScore
0.90
自引率
0.00%
发文量
40
审稿时长
10 weeks
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