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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Statistical analysis of fiber bundles using multi-tensor tractography: Application to first-episode schizophrenia
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Statistical analysis of fiber bundles using multi-tensor tractography: Application to first-episode schizophrenia

机译:使用多张束线照相术对纤维束进行统计分析:在首发精神分裂症中的应用

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摘要

This work proposes a new method to detect abnormalities in fiber bundles of first-episode (FE) schizophrenia patients. Existing methods have either examined a particular region of interest or used voxel-based morphometry or used tracts generated using the single tensor model for locating statistically different fiber bundles. Further, a two-sample t test, which assumes a Gaussian distribution for each population, is the most widely used statistical hypothesis testing algorithm. In this study, we use the unscented Kalman filter based two-tensor tractography algorithm for tracing neural fiber bundles of the brain that connect 105 different cortical and subcortical regions. Next, fiber bundles with significant connectivity across the entire population were determined. Several diffusion measures derived from the two-tensor model were computed and used as features in the subsequent analysis. For each fiber bundle, an affine-invariant descriptor was computed, thus obviating the need for precise registration of patients to an atlas. A kernel-based statistical hypothesis testing algorithm, which makes no assumption regarding the distribution of the underlying population, was then used to determine the abnormal diffusion properties of all fiber bundles for 20 FE patients and 20 age-matched healthy controls. Of the 1254 fiber bundles with significant connectivity, 740 fiber bundles were found to be significantly different in at least one diffusion measure after correcting for multiple comparisons. Thus, the changes affecting first-episode patients seem to be global in nature (spread throughout the brain).
机译:这项工作提出了一种新的方法来检测精神分裂症首发患者的纤维束中的异常。现有方法已经检查了特定的目标区域,或者使用了基于体素的形态学,或者使用了使用单个张量模型生成的束来定位统计上不同的纤维束。此外,假设每个人口具有高斯分布的两样本t检验是使用最广泛的统计假设检验算法。在这项研究中,我们使用基于无味卡尔曼滤波器的两张张线描记法来追踪连接105个不同皮质和皮质下区域的大脑神经纤维束。接下来,确定在整个人口中具有显着连通性的光纤束。计算了从二张量模型导出的几个扩散度量,并将其用作后续分析的特征。对于每个纤维束,都计算了仿射不变描述符,因此无需将患者精确地注册到图集。然后,使用基于核的统计假设测试算法(不对基础人群的分布进行任何假设)来确定20名FE患者和20名年龄匹配的健康对照者所有纤维束的异常扩散特性。在校正了多个比较之后,在具有显着连通性的1254个光纤束中,发现740个光纤束在至少一种扩散度量上存在显着差异。因此,影响首发患者的变化似乎是全球性的(遍布整个大脑)。

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