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Volume Calculation of CT lung Lesions based on Halton Low-discrepancy Sequences

机译:基于Halton低差异序列的CT肺病变的体积计算

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Volume calculation from the Computed Tomography (CT) lung lesions data is a significant parameter for clinical diagnosis. The volume is widely used to assess the severity of the lung nodules and track its progression, however, the accuracy and efficiency of previous studies are not well achieved for clinical uses. It remains to be a challenging task due to its tight attachment to the lung wall, inhomogeneous background noises and large variations in sizes and shape. In this paper, we employ Halton low-discrepancy sequences to calculate the volume of the lung lesions. The proposed method directly compute the volume without the procedure of three-dimension (3D) model reconstruction and surface triangulation, which significantly improves the efficiency and reduces the complexity. The main steps of the proposed method are: (1) generate a certain number of random points in each slice using Halton low-discrepancy sequences and calculate the lesion area of each slice through the proportion; (2) obtain the volume by integrating the areas in the sagittal direction. In order to evaluate our proposed method, the experiments were conducted on the sufficient data sets with different size of lung lesions. With the uniform distribution of random points, our proposed method achieves more accurate results compared with other methods, which demonstrates the robustness and accuracy for the volume calculation of CT lung lesions. In addition, our proposed method is easy to follow and can be extensively applied to other applications, e.g., volume calculation of liver tumor, atrial wall aneurysm, etc.
机译:从计算机断层扫描(CT)肺病灶数据的体积计算是临床诊断的重要参数。该体积广泛用于评估肺结节的严重程度并跟踪其进展,然而,对于临床用途,对先前研究的准确性和效率并不妥善达到。由于其对肺墙紧密,不均匀的背景噪音和尺寸和形状的大变化,因此仍有一个具有挑战性的任务。在本文中,我们采用Halton低差异序列来计算肺病变的体积。所提出的方法直接计算体积,而无需三维(3D)模型重建和表面三角测量的过程,这显着提高了效率并降低了复杂性。所提出的方法的主要步骤是:(1)使用Halton低差异序列产生每片中的一定数量的随机点,并通过比例计算每个切片的病变区域; (2)通过将区域集成在矢状方向上获得体积。为了评估我们所提出的方法,在具有不同大小的肺病变的足够数据集上进行实验。随着随机点的均匀分布,与其他方法相比,我们提出的方法达到了更准确的结果,这证明了CT肺病变的体积计算的鲁棒性和准确性。此外,我们的提出方法易于遵循,可以广泛地应用于其他应用,例如肝肿瘤,心房壁动脉瘤等的体积计算。

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