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The Effect of the Normalization Strategy on Voxel-Based Analysis of DTI Images: A Pattern Recognition Based Assessment

机译:归一化策略对基于体素的DTI图像分析的影响:基于模式识别的评估

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Quantitative analysis on diffusion tensor imaging (DTI) has shown be useful in the study of disease-related degeneration. More and more studies perform voxel-by-voxel comparisons of fractional anisotropy (FA) values, aiming at detecting white matter alterations. Overall, there is no agreement about how the normalization stage should be performed. The purpose of this study was to evaluate the effect of the normalization strategy on voxel-based analysis of DTI images, using the performance of a classification approach as objective measure of normalization quality. This is achieved by using a Support Vector Machine (SVM) which constructs a decision surface that allows binary classification with two types of regions, generated after a statistical evaluation of the grey level values of regions detected as statistically significant in a FA analysis.
机译:扩散张量成像(DTI)的定量分析已显示在疾病相关变性研究中很有用。越来越多的研究进行分数各向异性(FA)值的逐像素比较,旨在检测白质变化。总体而言,关于如何执行标准化阶段尚无共识。这项研究的目的是使用归类方法的性能作为归一化质量的客观衡量指标,来评估归一化策略对基于体素的DTI图像分析的效果。这是通过使用支持向量机(SVM)来实现的,该支持向量机构建了一个决策面,该决策面允许对两种类型的区域进行二进制分类,这是在对FA分析中检测到的具有统计意义的区域的灰度值进行统计评估之后生成的。

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