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Efficient Computer-Aided Detection of Ground-Glass Opacity Nodules in Thoracic CT Images

机译:高效的计算机辅助检测胸廓CT图像中的覆盖玻璃散发性结节

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In this paper, an efficient compute-aided detection method is proposed for detecting Ground-Glass Opacity (GGO) nodules in thoracic CT images. GGOs represent a clinically important type of lung nodule which are ignored by many existing CAD systems. Anti-geometric diffusion is used as preprocessing to remove image noise. Geometric shape features (such as shape index and dot enhancement), are calculated for each voxel within the lung area to extract potential nodule concentrations. Rule based filtering is then applied to remove False Positive regions. The proposed method has been validated on a clinical dataset of 50 thoracic CT scans that contains 52 GGO nodules. A total of 48 nodules were correctly detected and resulted in an average detection rate of 92.3%, with the number of false positives at approximately 12.7/scan (0.07/slice). The high detection performance of the method suggested promising potential for clinical applications.
机译:在本文中,提出了一种有效的计算辅助检测方法,用于检测胸腔CT图像中的研磨玻璃不透明度(GGO)结节。 GGOS代表临床上重要类型的肺结节,这些肺结核由许多现有的CAD系统忽略。抗几何扩散用作预处理以去除图像噪声。针对肺部区域内的每个体素计算几何形状特征(如形状指数和点增强)以提取潜在的结节浓度。然后应用基于规则的滤波以删除假正区。该方法已在含有52个GGO结节的50个胸腔CT扫描的临床数据集上验证。总共48个结节被正确检测到并导致平均检出率为92.3%,误报的数量约为12.7 /扫描(0.07 /切片)。该方法的高检测性能提出了临床应用的有希望的潜力。

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