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A new assessment model for tumor heterogeneity analysis with 18F-FDG PET images

机译:18 F-FDG PET图像用于肿瘤异质性分析的新评估模型

摘要

It has been shown that the intratumor heterogeneity can be characterized with quantitative analysis of the [18]FFDG PET image data. The existing models employ multiple parameters for feature extraction which makes it difficult to implement in clinical settings for the quantitative characterization. This article reports an easy-to-use and differential SUV based model for quantitative assessment of the intratumor heterogeneity from 3D [18]FFDG PET image data. An H index is defined to assess tumor heterogeneity by summing voxel-wise distribution of differential SUV from the [18]F-FDG PET image data. The summation is weighted by the distance of SUV difference among neighboring voxels from the center of the tumor and can thus yield increased values for tumors with peripheral sub-regions of high SUV that often serves as an indicator of augmented malignancy. Furthermore, the sign of H index is used to differentiate the rate of change for volume averaged SUV from its center to periphery. The new model with the H index has been compared with a widely-used model of gray level cooccurrence matrix (GLCM) for image texture characterization with phantoms of different configurations and the [18]F-FDG PET image data of 6 lung cancer patients to evaluate its effectiveness and feasibility for clinical uses. The comparison of the H index and GLCM parameters with the phantoms demonstrate that the H index can characterize the SUV heterogeneity in all of 6 2D phantoms while only 1 GLCM parameter can do for 1 and fail to differentiate for other 2D phantoms. For the 8 3D phantoms, the H index can clearly differentiate all of them while the 4 GLCM parameters provide complicated patterns in the characterization. Feasibility study with the PET image data from 6 lung cancer patients show that the H index provides an effective single-parameter metric to characterize tumor heterogeneity in terms of the local SUV variation, and it has higher correlation with tumor volume change after radiotherapy (R2 = 0.83) than the 4 GLCM parameters (R2 = 0.63, 0.73, 0.59 and 0.75 for Energy, Contrast, Local Homogeneity and Entropy respectively). The new model of the H index has the capacity to characterize the intratumor heterogeneity feature from 3D [18]F-FDG PET image data. As a single parameter with an intuitive definition, the H index offers potential for clinical applications.
机译:已经显示,可以通过对[18] FFDG PET图像数据进行定量分析来表征肿瘤内异质性。现有模型采用多个参数进行特征提取,这使得难以在临床环境中实现定量表征。本文报告了一种基于3D [18] FFDG PET图像数据的易于使用且基于SUV的差异模型,用于定量评估肿瘤内异质性。定义H指数,以通过从[18] F-FDG PET图像数据中总结SUV差异体素的体素分布来评估肿瘤的异质性。该总和由相邻体素之间的SUV差距肿瘤中心的距离加权,因此可以使具有高SUV外围子区域的肿瘤的值增加,这通常是恶性程度提高的指标。此外,H指数的符号用于区分体积平均SUV从其中心到外围的变化率。具有H指数的新模型已经与广泛使用的灰度共生矩阵(GLCM)模型进行了比较,该模型用于对具有不同配置的体模的图像纹理进行表征,并获得了6例肺癌患者的[18] F-FDG PET图像数据评估其在临床上的有效性和可行性。 H指数和GLCM参数与模型的比较表明,H指数可以表征所有6个2D幻象中的SUV异质性,而只有1个GLCM参数可以对1个模型进行建模,而无法区分其他2D幻象。对于8个3D体模,H指数可以清楚地区分所有它们,而4个GLCM参数在表征中提供了复杂的模式。对来自6位肺癌患者的PET图像数据进行的可行性研究表明,H指数提供了一种有效的单参数度量,可以根据局部SUV变化来表征肿瘤异质性,并且与放疗后的肿瘤体积变化具有更高的相关性(R2 = 0.83),而不是4个GLCM参数(对于能量,对比度,局部同质性和熵分别为R2 = 0.63、0.73、0.59和0.75)。 H索引的新模型具有从3D [18] F-FDG PET图像数据表征肿瘤内异质性的能力。作为具有直观定义的单个参数,H指数为临床应用提供了潜力。

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