Department of Data Analysis, Ghent University, H. Dunantlaan 1, 9000, Ghent, Belgium,
Cogn Affect Behav Neurosci. 2013 Dec;13(4):703-13. doi: 10.3758/s13415-013-0185-3.
Functional magnetic reasonance imaging (fMRI) plays an important role in pre-surgical planning for patients with resectable brain lesions such as tumors. With appropriately designed tasks, the results of fMRI studies can guide resection, thereby preserving vital brain tissue. The mass univariate approach to fMRI data analysis consists of performing a statistical test in each voxel, which is used to classify voxels as either active or inactive-that is, related, or not, to the task of interest. In cognitive neuroscience, the focus is on controlling the rate of false positives while accounting for the severe multiple testing problem of searching the brain for activations. However, stringent control of false positives is accompanied by a risk of false negatives, which can be detrimental, particularly in clinical settings where false negatives may lead to surgical resection of vital brain tissue. Consequently, for clinical applications, we argue for a testing procedure with a stronger focus on preventing false negatives. We present a thresholding procedure that incorporates information on false positives and false negatives. We combine two measures of significance for each voxel: a classical p-value, which reflects evidence against the null hypothesis of no activation, and an alternative p-value, which reflects evidence against activation of a prespecified size. This results in a layered statistical map for the brain. One layer marks voxels exhibiting strong evidence against the traditional null hypothesis, while a second layer marks voxels where activation cannot be confidently excluded. The third layer marks voxels where the presence of activation can be rejected.
功能磁共振成像(fMRI)在可切除脑病变(如肿瘤)患者的术前规划中发挥着重要作用。通过设计适当的任务, fMRI 研究的结果可以指导切除,从而保留重要的脑组织。功能磁共振数据分析的单变量方法包括在每个体素中执行统计检验,该检验用于将体素分类为活跃或不活跃,即与感兴趣的任务相关或不相关。在认知神经科学中,重点是在考虑到大脑中激活搜索的严重多重检验问题的同时,控制假阳性率。然而,严格控制假阳性率伴随着假阴性的风险,这可能是有害的,特别是在临床环境中,假阴性可能导致对重要脑组织的手术切除。因此,对于临床应用,我们主张采用更侧重于防止假阴性的测试程序。我们提出了一种包含假阳性和假阴性信息的阈值处理程序。我们为每个体素结合了两种显著性度量:反映对无激活零假设的证据的经典 p 值,以及反映对指定大小的激活的证据的替代 p 值。这导致了大脑的分层统计图。一层标记体素,这些体素强烈反对传统的零假设,而第二层标记体素,这些体素不能确定激活是否存在。第三层标记体素,其中可以拒绝激活的存在。