Fully Automatic Detection and Segmentation Approach for Juxta-Pleural Nodules From CT Images

Ksit Bengaluru Vijayalaxmi Mekali, India Girijamma
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引用次数: 4

Abstract

Early detection of all types of lung nodules with different characters in medical modality images using computer-aided detection is the best acceptable remedy to save the lives of lung cancer sufferers. But accuracy of different types of nodule detection rates is based on chosen segmented procedures for parenchyma and nodules. Separation of pleural from juxta-pleural nodules (JPNs) is difficult as intensity of pleural and attached nodule is similar. This research paper proposes a fully automated method to detect and segment JPNs. In the proposed method, lung parenchyma is segmented using iterative thresholding algorithm. To improve the nodules detection rate separation of connected lung lobes, an algorithm is proposed to separate connected left and right lung lobes. The new method segments JPNs based on lung boundary pixels extraction, concave points extraction, and separation of attached pleural from nodule. Validation of the proposed method was performed on LIDC-CT images. The experimental result confirms that the developed method segments the JPNs with less computational time and high accuracy.
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CT胸膜旁结节的全自动检测与分割方法
利用计算机辅助检测,早期发现医学模态图像中具有不同特征的各种类型的肺结节,是挽救肺癌患者生命的最佳可接受的补救措施。但不同类型的结节检出率的准确性是基于对实质和结节选择的分割程序。由于胸膜结节及其附着结节的强度相似,胸膜结节与近胸膜结节的分离是困难的。本文提出了一种全自动的JPNs检测和分割方法。该方法采用迭代阈值分割算法对肺实质进行分割。为了提高连通肺叶结节分离的检出率,提出了一种分离连通左右肺叶的算法。该方法基于肺边界像素提取、凹点提取和附着胸膜与结节的分离对JPNs进行分割。在lcd - ct图像上对该方法进行了验证。实验结果表明,该方法对jpn进行分割,计算时间短,准确率高。
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