首页> 外文会议>Computer-Aided Diagnosis pt.1; Progress in Biomedical Optics and Imaging; vol.8,no.33; Proceedings of SPIE-The International Society for Optical Engineering; vol.6514 pt.1 >Computer Aided Characterization of Solitary Pulmonary Nodules (SPNs) Using Structural 3D, Texture and Functional Dynamic Contrast Features
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Computer Aided Characterization of Solitary Pulmonary Nodules (SPNs) Using Structural 3D, Texture and Functional Dynamic Contrast Features

机译:使用结构3D,纹理和功能动态对比度特征的孤立性肺结节(SPN)的计算机辅助表征

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The purpose of this paper was to investigate the effects of integrating nodule 3D morphological features, texture features and functional dynamic contrast-enhanced features in differentiating between benign and malignant solitary pulmonary nodules (SPNs). In this study, 42 cases with solitary lung nodules were examined in this study. The dynamic CT helical scans were acquired image at five time intervals: prior to contrast injection (baseline) and then at 45, 90, 180, 300 seconds after administrating the contrast agent. The nodule boundaries were contoured by radiologists on all series. Using these boundaries, several types of nodule features were computed, including: 3D morphology and Shape Index of the nodule contrast intensity surface; Dynamic contrast related features; 3D texture features. AdaBoost was performed to select the best features. Logistic Regression Analysis (LRA) and AdaBoost were used to analyze the diagnostic accuracy of features in each feature category. The performance when integrating all feature types was also evaluated. For 42 patients, when using only six SI and 3D structural features, the accuracy of AdaBoost was 81.4%, with accuracies of AdaBoost using functional contrast related features (include 8 features) and texture features(include 18 features) were 65.1% and 69.1% respectively. After combining all types' features together, the overall accuracy was improved to over 88%. In conclusion: Combining 3D structural, textural and functional contrast features can provide a more comprehensive examination of the SPNs by coupling dynamic CT scan techniques with image processing to quantify multiple properties that relate to tumor geometry and tumor angiogenesis. This integration may assist radiologists in characterizing SPNs more accurately.
机译:本文的目的是研究整合结节3D形态特征,纹理特征和功能动态对比度增强特征在区分良性和恶性孤立性肺结节(SPN)中的作用。在这项研究中,本研究检查了42例孤立性肺结节。在五个时间间隔获取动态CT螺旋扫描图像:在注入对比剂之前(基线),然后在注入对比剂后45、90、180、300秒。放射线医师在所有系列中均对结节边界进行了轮廓处理。使用这些边界,可以计算出几种类型的结节特征,包括:3D形态学和结节对比强度表面的形状指数;以及动态对比度相关功能; 3D纹理功能。执行AdaBoost是为了选择最佳功能。逻辑回归分析(LRA)和AdaBoost用于分析每个特征类别中特征的诊断准确性。还评估了集成所有功能类型时的性能。对于42例患者,仅使用6个SI和3D结构特征时,AdaBoost的准确性为81.4%,使用功能性对比相关特征(包括8个特征)和纹理特征(包括18个特征)的AdaBoost的准确度分别为65.1%和69.1%分别。将所有类型的功能组合在一起后,整体精度提高到88%以上。结论:通过将动态CT扫描技术与图像处理相结合以量化与肿瘤几何形状和肿瘤血管生成有关的多种属性,将3D结构,纹理和功能对比特征相结合可以对SPN进行更全面的检查。这种集成可以帮助放射科医生更准确地表征SPN。

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