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Application of Haralick texture features in brain [18F]-florbetapir positron emission tomography without reference region normalization

机译:Haralick纹理特征在大脑中的应用[ 18 f] -florbetapir正电子发射断层扫描而没有参考区域标准化

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Objectives: Semi-quantitative image analysis methods in Alzheimer’s Disease (AD) require normalization of positron emission tomography (PET) images. However, recent studies have found variabilities associated with reference region selection of amyloid PET images. Haralick features (HFs) generated from the Gray Level Co-occurrence Matrix (GLCM) quantify spatial characteristics of amyloid PET radiotracer uptake without the need for intensity normalization. The objective of this study is to calculate several HFs in different diagnostic groups and determine the group differences. Methods: All image and metadata were acquired through the Alzheimer’s Disease Neuroimaging Initiative database. Subjects were grouped in three ways: by clinical diagnosis, by APOE e4 allele, and by Alzheimer’s Disease Assessment Scale-cognitive subscale (ADAS-Cog) score. Several GLCM matrices were calculated for different direction and distances (1–4 mm) from multiple regions on PET images. The HFs, contrast, correlation, dissimilarity, energy, entropy, and homogeneity, were calculated from these GLCMs. Wilcoxon tests and Student t -tests were performed on Haralick features and standardized uptake value ratio (SUVR) values, respectively, to determine group differences. In addition to statistical testing, receiver operating characteristic (ROC) curves were generated to determine the discrimination performance of the selected regional HFs and the SUVR values. Results: Preliminary results from statistical testing indicate that HFs were capable of distinguishing groups at baseline and follow-up (false discovery rate corrected p <0.05) in particular regions at much higher occurrences than SUVR (81 of 252). Conversely, we observed nearly no significant differences between all groups within ROIs at baseline or follow-up utilizing SUVR. From the ROC analysis, we found that the Energy and Entropy offered the best performance to distinguish Normal versus mild cognitive impairment and ADAS-Cog negative versus ADAS-Cog positive groups. Conclusion: These results suggest that this technique could improve subject stratification in AD drug trials and help to evaluate the disease progression and treatment effects longitudinally without the disadvantages associated with intensity normalization.
机译:目的:阿尔茨海默病中的半定量图像分析方法(AD)需要正电子发射断层扫描(PET)图像的标准化。然而,最近的研究发现了与参考区域选择相关的淀粉样蛋白PET图像相关的变形性。从灰度共发生矩阵(GLCM)产生的Haralick特征(HFS)量化淀粉样蛋白宠物放射性机构吸收的空间特征,而无需强度标准化。本研究的目的是在不同诊断组中计算几个HFS并确定组差异。方法:通过阿尔茨海默病神经影像倡议数据库获取所有图像和元数据。受试者以三种方式分组:通过Apoe E4等位基因,通过Alzheimer的疾病评估规模 - 认知次级(ADAS-COG)得分。针对来自PET图像上的多个区域的不同方向和距离(1-4毫米)计算几个GLCM矩阵。从这些GLCMS计算HFS,对比度,相关性,不相似性,能量,熵和均匀性。 Wilcoxon测试和学生T -Test分别进行了Haralick特征和标准化的摄取价值(SUVR)值,以确定组差异。除了统计测试之外,生成接收器操作特征(ROC)曲线以确定所选区域HFS和SUVR值的辨别性能。结果:统计检测的初步结果表明,HFS能够以比SUVR(81的252个)在更高的地区以基线和随访(假发现率校正P <0.05)以基线和后续地区进行跟踪(假发现率校正P <0.05)。相反,我们观察到在基线或利用SUVR的后续行动的rois内的所有群体之间几乎没有显着差异。从ROC分析中,我们发现能量和熵提供了区分正常的与轻度认知障碍和Adas-Cog阴性群体的最佳性能。结论:这些结果表明,该技术可以改善AD药物试验中的主题分层,并有助于纵向评估疾病进展和治疗效果,而没有与强度标准化相关的缺点。

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