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3D reconstruction of pulmonary nodules in PET-CT image sequences based on a novel 3D region growing method combined with ACO

机译:基于新型3D区生长方法的PET-CT图像序列中肺结节的三维重建

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摘要

The three-dimensional visualisation is an important aid for the detection and diagnosis of pulmonary nodules. The traditional method by which clinicians restore the 3D structure of pulmonary nodules (i.e., by subjective imagination and clinical experience, which may not be intuitive or accurate) is not conducive to pulmonary nodule extraction and quantification. Therefore, we herein propose an algorithm of pulmonary nodule segmentation and 3D reconstruction based on 3D region growing in positron emission tomography-computed tomography (PET-CT) image sequences. First, k-means clustering was used for the lung parenchyma segmentation. Next, 3D surface rendering reconstruction of lung parenchyma was performed. Finally, the novel 3D region growing method optimised by ant colony optimisation (ACO) was used to segment the pulmonary nodule. Our proposed method was more efficient than traditional methods in the present study. The experimental results show that our algorithm can segment pulmonary nodules more fully with high segmentation precision and accuracy.
机译:三维可视化是对肺结节的检测和诊断的重要辅助。临床医生恢复肺结核的3D结构的传统方法(即,通过主观想象和临床经验,可能不直观或准确)不利于肺结核提取和定量。因此,我们在本文中提出了一种基于在正电子发射断层扫描层扫描(PET-CT)图像序列中生长的3D区域的肺结结分割和3D重构算法。首先,K-Means聚类用于肺实质分割。接下来,进行肺实质的3D表面呈现重建。最后,使用蚁群优化(ACO)优化的新型3D区域生长方法(ACO)来分割肺结核。我们所提出的方法比目前研究中的传统方法更有效。实验结果表明,我们的算法可以更充分地延伸肺结核,具有高分性精度和精度。

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