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首页> 外文期刊>Human brain mapping >The bootstrap and cross-validation in neuroimaging applications: estimation of the distribution of extrema of random fields for single volume tests, with an application to ADC maps.
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The bootstrap and cross-validation in neuroimaging applications: estimation of the distribution of extrema of random fields for single volume tests, with an application to ADC maps.

机译:在神经成像应用中的自举和交叉验证:针对单个体积测试的随机场极值分布的估计,并应用于ADC映射。

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We discuss the assessment of signal change in single magnetic resonance images (MRI) based on quantifying significant departure from a reference distribution estimated from a large sample of normal subjects. The parametric approach is to build a test based on the expected distribution of extrema in random fields. However, in conditions where the variance is not uniform across the volume and the smoothness of the images is moderate to low, this test may be rather conservative. Furthermore, parametric tests are limited to datasets for which distributional assumptions hold. This paper investigates resampling methods that improve statistical tests for signal changes in single images in such adverse conditions, and that can be used for the assessment of images taken for clinical purposes. Two methods, the bootstrap and cross-validation, are compared. It is shown that the bootstrap may fail to provide a good estimate of the distribution of extrema of parametric maps. In contrast, calibration of the significance threshold by means of cross-validation (or related sampling without replacement techniques) address three issues at once: improved power, better voxel-by-voxel estimate of variance by local pooling, and adaptation to departures from ideal distributional assumptions on the signal. We apply the cross-validated tests to apparent diffusion coefficient maps, a type of MRI capable of detecting changes in the microstructural organization of brain parenchyma. We show that deviations from parametric assumptions are strong enough to cast doubt on the correctness of parametric tests for these images. As case studies, we present parametric maps of lesions in patients suffering from stroke and glioblastoma at different stages of evolution.
机译:我们讨论基于量化从正常受试者的大量样本估计的参考分布的显着偏离,来评估单个磁共振图像(MRI)中信号变化的评估。参数化方法是根据随机场中极值的预期分布来构建测试。但是,在整个体积的方差不均匀且图像的平滑度为中等到较低的情况下,此测试可能相当保守。此外,参数测试仅限于分布假设成立的数据集。本文研究了重采样方法,这些方法改进了在此类不利条件下对单个图像信号变化进行统计测试的统计方法,并且可用于评估为临床目的拍摄的图像。比较了两种方法,即引导和交叉验证。结果表明,引导程序可能无法很好地估计参数图的极值分布。相反,通过交叉验证(或相关抽样而不使用替代技术)对显着性阈值进行校准可立即解决三个问题:提高的功效,通过局部合并更好地逐像素估计方差,以及适应偏离理想的情况信号的分布假设。我们将交叉验证的测试应用于表观扩散系数图,这是一种能够检测脑实质的微结构组织变化的MRI类型。我们表明,与参数假设的偏差足够大,足以质疑这些图像的参数测试的正确性。作为案例研究,我们介绍了处于不同发展阶段的中风和胶质母细胞瘤患者的病变参数图。

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