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肿瘤形状、分叶状的复杂性与肿瘤放射组学形状特征相关。

The complexity of tumor shape, spiculatedness, correlates with tumor radiomic shape features.

机构信息

Gustave Roussy, Université Paris-Saclay, Department of Radiotherapy, F-94805, Villejuif, France.

U1030 Radiothérapie Moléculaire, Université Paris-Sud, Gustave Roussy, Inserm, Université Paris-Saclay, 94800, Villejuif, France.

出版信息

Sci Rep. 2019 Mar 13;9(1):4329. doi: 10.1038/s41598-019-40437-5.

Abstract

Radiomics extracts high-throughput quantitative data from medical images to contribute to precision medicine. Radiomic shape features have been shown to correlate with patient outcomes. However, how radiomic shape features vary in function of tumor complexity and tumor volume, as well as with method used for meshing and voxel resampling, remains unknown. The aims of this study are to create tumor models with varying degrees of complexity, or spiculatedness, and evaluate their relationship with quantitatively extracted shape features. Twenty-eight tumor models were mathematically created using spherical harmonics with the spiculatedness degree d being increased by increments of 3 (d = 11 to d = 92). Models were 3D printed with identical bases of 5 cm, imaged with a CT scanner with two different slice thicknesses, and semi-automatically delineated. Resampling of the resulting masks on a 1 × 1 × 1 mm grid was performed, and the voxel size of each model was then calculated to eliminate volume differences. Four MATLAB-based algorithms (isosurface (M1), isosurface filter (M2), isosurface remeshing (M3), and boundary (M4)) were used to extract nine 3D features (Volume, Surface area, Surface-to-volume, Compactness1, Compactness2, Compactness3, Spherical Disproportion, Sphericity and Fractional Concavity). To quantify the impact of 3D printing, acquisition, segmentation and meshing, features were computed directly from the stereolithography (STL) file format that was used for 3D printing, and compared to those computed. Changes in feature values between 0.6 and 2 mm slice acquisitions were also compared. Spearman's rank-order correlation coefficients were computed to determine the relationship of each shape feature with spiculatedness for each of the four meshing algorithms. Percent changes were calculated between shape features extracted from the original and resampled contoured images to evaluate the influence of spatial resampling. Finally, the percent change in shape features when the volume was changed from 25% to 150% of their original volume was quantified for three distinct tumor models and compared to the percent change observed when modifying the spiculatedness of the model from d = 11 to d = 92. Values extracted using isosurface remeshing method are the closest to the STL reference ones, with mean differences less than 10.8% (Compactness2) for all features. Seven of the eight features had strong significant correlations with tumor model complexity irrespective of the meshing algorithm (r > 0.98, p < 10), with fractional concavity having the lowest correlation coefficient (r = 0.83, p < 10, M2). Comparisons of features extracted from the 0.6 and 2 mm slice thicknesses showed that mean differences were from 2.1% (Compactness3) to 12.7% (Compactness2) for the isosurface remeshing method. Resampling on a 1 × 1 × 1 mm grid resulted in between 1.3% (Compactness3) to 9.5% (Fractional Concavity) mean changes in feature values. Compactness2, Compactness3, Spherical Disproportion, Sphericity and Fractional Concavity were the features least affected by volume changes. Compactness1 had a 90.4% change with volume, which was greater than the change between the least and most spiculated models. This is the first methodological study that directly demonstrates the relationship of tumor spiculatedness with radiomic shape features, that also produced 3D tumor models, which may serve as reference phantoms for future radiomic studies. Surface Area, Surface-to-volume, and Spherical Disproportion had direct relationships with spiculatedness while the three formulas for Compactness, Sphericity and Fractional Concavity had inverse relationships. The features Compactness2, Compactness3, Spherical Disproportion, and Sphericity should be prioritized as these have minimal variations with volume changes, slice thickness and resampling.

摘要

从医学图像中提取高通量定量数据有助于精准医疗。放射组形状特征已被证明与患者预后相关。然而,肿瘤复杂性和肿瘤体积的变化以及用于网格划分和体素重采样的方法如何影响放射组形状特征,目前尚不清楚。本研究的目的是创建具有不同程度复杂性或刺状的肿瘤模型,并评估它们与定量提取的形状特征的关系。使用球谐函数创建了 28 个肿瘤模型,通过每次增加 3 度来增加刺状程度(d=11 至 d=92)。使用相同的 5cm 基底 3D 打印模型,使用两种不同的切片厚度进行 CT 扫描成像,并半自动勾勒边界。对生成的掩模进行 1×1×1mm 网格重采样,并计算每个模型的体素大小以消除体积差异。使用四种基于 MATLAB 的算法(等表面(M1)、等表面滤波(M2)、等表面重采样(M3)和边界(M4))提取九个 3D 特征(体积、表面积、表面积与体积比、紧致度 1、紧致度 2、紧致度 3、球形失配、球形度和部分凹陷度)。为了量化 3D 打印、采集、分割和网格划分的影响,特征直接从用于 3D 打印的立体光刻(STL)文件格式中计算,并与计算结果进行比较。还比较了 0.6 和 2mm 切片采集之间特征值的变化。计算了 Spearman 秩相关系数,以确定每个网格算法的每种形状特征与刺状的关系。计算了从原始轮廓图像和重采样图像中提取的形状特征之间的百分比变化,以评估空间重采样的影响。最后,量化了三个不同肿瘤模型的体积从原始体积的 25%变化到 150%时形状特征的变化百分比,并将其与模型从 d=11 变化到 d=92 时观察到的变化百分比进行比较。使用等表面重采样方法提取的值与 STL 参考值最接近,所有特征的平均差异小于 10.8%(紧致度 2)。八个特征中有七个与肿瘤模型的复杂性具有很强的显著相关性,与网格算法无关(r>0.98,p<10),其中部分凹陷度的相关系数最低(r=0.83,p<10,M2)。比较 0.6 和 2mm 切片厚度提取的特征,等表面重采样方法的平均差异为 2.1%(紧致度 3)至 12.7%(紧致度 2)。在 1×1×1mm 网格上重采样导致特征值的平均变化在 1.3%(紧致度 3)至 9.5%(部分凹陷度)之间。紧致度 2、紧致度 3、球形失配、球形度和部分凹陷度是受体积变化影响最小的特征。紧致度 1 的体积变化为 90.4%,大于最不尖锐和最尖锐模型之间的变化。这是第一项直接证明肿瘤刺状与放射组形状特征之间关系的方法学研究,该研究还生成了 3D 肿瘤模型,可作为未来放射组研究的参考体模。表面积、表面积与体积比和球形失配与刺状有直接关系,而紧致度的三个公式、球形度和部分凹陷度有相反的关系。紧致度 2、紧致度 3、球形失配和球形度应该优先考虑,因为它们与体积变化、切片厚度和重采样的变化最小。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5e35/6416263/ef41466a7fa1/41598_2019_40437_Fig1_HTML.jpg

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