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Lung Parenchyma Segmentation: Fully Automated and Accurate Approach for Thoracic CT Scan Images

机译:肺实质分割:胸廓CT扫描图像的全自动化和准确方法

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摘要

Computer-aided detection and diagnosis (CAD) of lung-related diseases will be helpful for early detection. Lung parenchyma segmentation is considered as a prerequisite for most of CAD systems. The available traditional methods for lung parenchyma segmentation are not accurate because the nodules that adhere to the lung pleura are recognized as fat. This paper proposes an automated lung parenchyma segmentation for accurate detection of lung nodules, mainly juxtapleural nodules. The proposed method includes the bidirectional chain code to improve the segmentation, and the support vector machine classifier is used to avoid false inclusion of regions. The proposed method is verified on various datasets for robustness of the algorithm. This automated method provides an accuracy of 97% in segmentation compared to ground truth results obtained by experts, which drastically reduces the complexity and intervention of a radiologist.
机译:肺相关疾病的计算机辅助检测和诊断(CAD)将有助于早期检测。肺实质分割被认为是大多数CAD系统的先决条件。可用的肺实质分割方法是不准确的,因为粘附在肺胸膜上的结节被认为是脂肪。本文提出了一种用于精确检测肺结核的自动肺实质分段,主要是果实结节。该提出的方法包括双向链条代码来改善分割,并且支持向量机分类器用于避免误报的区域。该方法在各种数据集上验证了算法的鲁棒性。与专家获得的地面真理结果相比,这种自动化方法提供了97%的细分,这使得显着降低放射科学家的复杂性和干预。

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