首页> 外文会议>International Conference on Artificial Intelligence Applications and Technologies >Grey Level Co-occurrence Matrix (GLCM) as a Radiomics Feature for Artificial Intelligence (AI) Assisted Positron Emission Tomography (PET) Images Analysis
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Grey Level Co-occurrence Matrix (GLCM) as a Radiomics Feature for Artificial Intelligence (AI) Assisted Positron Emission Tomography (PET) Images Analysis

机译:灰度级共发生矩阵(GLCM)作为人工智能(AI)辅助正电子发射断层扫描(PET)图像分析的辐射瘤特征

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Positron Emission Tomography (PET) allows tumour microenvironment to be studied in vivo with high sensitivity and specificity.Inter-and intra-tumour morphological and phenotypic heterogeneity or pattern provided by PET images are of critical importance.The traditional practice of visual interpretation of these images are not sufficient enough to extract all the information embedded in the images.On the other hand,simultaneous development of automated and reproducible analysis methodologies makes it possible to extract large amount of quantitative features from these images which is termed as radiomics.Analysis of these radiomics feature using artificial intelligence (AI) can significantly improve individualized treatment selection and monitoring.Grey level co-occurrence matrix (GLCM),a member of texture based radiomics feature family is widely used as a biomarker of heterogeneity and can provide information of the tumour microenvironment.The GLCM can subsequently be used for artificial intelligence (AI) assisted tumour diagnosis,monitoring of progression and treatment planning as well as for monitoring response to therapeutic intervention.This aim of the study was to investigate the accuracy and robustness of PET based GLCM in varying image acquisition and analysis conditions using phantom data.It has been observed that GLCM based textural features (e.g.,correlation,entropy,homogeneity,energy contrast and dissimilarity) are not only dependent on the volume but also on the quantization level.They are also dependent on signal-to-noise ratio (SNR) and image contrast.The dependencies of these features to the varying imaging conditions are also not linear and cannot always be directly related.To use these GLCM derived textural features as biomarkers for AI assisted analysis,all the information regarding the textural features should always be included along with the changes in volumes and contrast of the PET images in the training dataset.
机译:正电子发射断层扫描(PET)允许肿瘤微环境在体内进行研究以高灵敏度和specificity.Inter-和肿瘤内的形态学和表型异质或图案由PET图像提供了这些图像的视觉解释的临界importance.The传统做法的不足以足够以提取嵌入在images.On另一方面的所有信息,自动和可重复的分析方法同步发展使得有可能从被称为这些radiomics的radiomics.Analysis这些图像中提取大量的定量特征采用人工智能(AI)可显著改善个体化治疗的选择和monitoring.Grey共生矩阵(GLCM),基于纹理radiomics的成员特征的特征家族被广泛用作异质性的生物标记物,并且可以提供在肿瘤微环境的信息.The GLCM随后可以用于人工该研究的人工智能(AI)的协助肿瘤的诊断,监测进展和治疗规划,以及用于监测响应于治疗的intervention.This目的是调查基于PET GLCM的精度和鲁棒性以不同的使用虚拟数据的图像采集和分析条件。它已经观察到,基于GLCM纹理特征(例如,相关性,熵,均一性,能量对比度和相异)不仅依赖于体积,而且还取决于量化level.They也依赖于信噪比(这些功能于变化的成像条件SNR)和图像contrast.The依赖性也不是线性的,并且可以不总是直接related.To使用这些GLCM衍生纹理特征作为生物标志物用于AI辅助分析,所有关于纹理特征的信息要经常在训练数据集在卷上的变化和对比PET图像一起被包括在内。

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