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A Phantom Study to Investigate Robustness and Reproducibility of Grey Level Co-Occurrence Matrix (GLCM)-Based Radiomics Features for PET

机译:一种幻影研究,以研究灰级共生矩阵(GLCM)的鲁棒性和再现性的宠物

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摘要

Quantification and classification of heterogeneous radiotracer uptake in Positron Emission Tomography (PET) using textural features (termed as radiomics) and artificial intelligence (AI) has the potential to be used as a biomarker of diagnosis and prognosis. However, textural features have been predicted to be strongly correlated with volume, segmentation and quantization, while the impact of image contrast and noise has not been assessed systematically. Further continuous investigations are required to update the existing standardization initiatives. This study aimed to investigate the relationships between textural features and these factors with 18F filled torso NEMA phantom to yield different contrasts and reconstructed with different durations to represent varying levels of noise. The phantom was also scanned with heterogeneous spherical inserts fabricated with 3D printing technology. All spheres were delineated using: (1) the exact boundaries based on their known diameters; (2) 40% fixed; and (3) adaptive threshold. Six textural features were derived from the gray level co-occurrence matrix (GLCM) using different quantization levels. The results indicate that homogeneity and dissimilarity are the most suitable for measuring PET tumor heterogeneity with quantization 64 provided that the segmentation method is robust to noise and contrast variations. To use these textural features as prognostic biomarkers, changes in textural features between baseline and treatment scans should always be reported along with the changes in volumes.
机译:使用纹理特征(称为辐射瘤称为)和人工智能(AI)的正电子放射断裂层(PET)的量化和分类具有诸如诊断和预后的生物标志物。然而,预计纹理特征与体积,分割和量化强烈相关,而图像对比度和噪声的影响尚未系统地评估。进一步的持续调查需要更新现有的标准化举措。本研究旨在调查纹理特征与18F填充躯干NEMA幻像之间的关系,以产生不同的对比度并用不同的持续时间重建,以表示不同水平的噪声。还扫描了用3D印刷技术制造的异质球形刀片扫描。所有球体都会使用:(1)基于其已知直径的精确边界; (2)固定40%; (3)自适应阈值。使用不同量化水平的灰度共发生矩阵(GLCM)导出六种纹理特征。结果表明,均匀性和异化性是最适合于用量化64测量PET肿瘤异质性64,条件是分段方法对噪声和对比变化稳健。为了使用这些纹理特征作为预后生物标志物,应始终报告基线和治疗扫描之间的纹理特征的变化以及卷的变化。

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  • 作者

    Mahbubunnabi Tamal;

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  • 年度 2021
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  • 原文格式 PDF
  • 正文语种 eng
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