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自适应平滑作为推理策略:针对大小不同或相邻区域具有更高的特异性。

Adaptive smoothing as inference strategy: more specificity for unequally sized or neighbouring regions.

机构信息

Department of Data Analysis, Ghent University, Ghent, Belgium,

出版信息

Neuroinformatics. 2013 Oct;11(4):435-45. doi: 10.1007/s12021-013-9196-z.

Abstract

Although spatial smoothing of fMRI data can serve multiple purposes, increasing the sensitivity of activation detection is probably its greatest benefit. However, this increased detection power comes with a loss of specificity when non-adaptive smoothing (i.e. the standard in most software packages) is used. Simulation studies and analysis of experimental data was performed using the R packages neuRosim and fmri. In these studies, we systematically investigated the effect of spatial smoothing on the power and number of false positives in two particular cases that are often encountered in fMRI research: (1) Single condition activation detection for regions that differ in size, and (2) multiple condition activation detection for neighbouring regions. Our results demonstrate that adaptive smoothing is superior in both cases because less false positives are introduced by the spatial smoothing process compared to standard Gaussian smoothing or FDR inference of unsmoothed data.

摘要

虽然 fMRI 数据的空间平滑可以有多种用途,但提高激活检测的灵敏度可能是其最大的优势。然而,当使用非自适应平滑(即大多数软件包中的标准)时,特异性会降低。使用 R 包 neuRosim 和 fmri 进行了模拟研究和实验数据分析。在这些研究中,我们系统地研究了空间平滑对两种常见情况的 fMRI 研究中激活检测的功效和假阳性数量的影响:(1)大小不同的区域的单条件激活检测,(2)相邻区域的多条件激活检测。我们的结果表明,自适应平滑在这两种情况下都更优,因为与标准高斯平滑或未平滑数据的 FDR 推断相比,空间平滑过程引入的假阳性更少。

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