分形理论和图像纹理特征在肺结节诊断中的应用

Academic Journal of Guangzhou Medical College(2017)

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Abstract
目的:探讨分析理论和图像纹理特征分析法在肺结节诊断中的作用.方法:收集104例经临床手术病理证实的肺结节患者,采用水平集模型自动分割、提取肺结节,用分维数和灰度共生矩阵法对良、恶性结节特征进行比较.结果:运用不同大小的"盒"计算出的分维数(DF)值不同:肺癌结节DF1=1.82±0.140,DF2=1.78±0.137,DF3=1.70±0.138,DF4=1.64±0.140.非肺癌结节:DFI=1.74±0.144,DF2=1.64±0.201,DF3=1.54±0.227,DF4=1.50±0.207;肺良性结节的能量、对比度、逆差距、相关性及熵分别为0.98415±0.01459,0.01953±0.01056,0.99965±0.00019,0.97379±0.01129,0.06176±0.04803;肺恶性结节的能量、对比度、逆差距、相关性及熵分别为0.97223±0.02215,0.02629±0.01162,0.99953±0.00020,0.95840±0.03488,0.09989±0.06519.结论:肺良恶性结节图像纹理及分维数存在差异,基于灰度共生矩阵图像纹理统计方法和分形理论对肺结节的CT诊断有重要的辅助价值.
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