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Wavelet-based approaches for multiple hypothesis testing in activation mapping of functional magnetic resonance images of the human brain

机译:基于小波的方法在人脑功能磁共振图像的激活图中进行多重假设测试

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Wavelet-based methods for multiple hypothesis testing are described and their potential for activation mapping of human functional magnetic resonance imaging (fMRI) data is investigated. In this approach, we emphasize convergence between methods of wavelet thresholding or shrinkage and the problem of multiple hypothesis testing in both classical and Bayesian contexts. Specifically, our interest will be focused on ensuring a trade off between type I probability error control and power dissipation. We describe a technique for controlling the false discovery rate at an arbitrary level of type 1 error in testing multiple wavelet coefficients generated by a 2D discrete wavelet transform (DWT) of spatial maps of fMRI time series statistics. We also describe and apply recursive testing methods that can be used to define a threshold unique to each level and orientation of the 2D-DWT. Bayesian methods, incorporating a formal model for the anticipated sparseness of wavelet coefficients representing the signal or true image, are also tractable. These methods are comparatively evaluated by analysis of "null" images (acquired with the subject at rest), in which case the number of positive tests should be exactly as predicted under the hull hypothesis, and an experimental dataset acquired from 5 normal volunteers during an event-related finger movement task. We show that all three wavelet-based methods of multiple hypothesis testing have good type 1 error control (the FDR method being most conservative) and generate plausible brain activation maps.
机译:描述了基于小波的多种假设检验方法,并研究了其对人体功能磁共振成像(fMRI)数据进行激活映射的潜力。在这种方法中,我们强调小波阈值化或收缩方法与经典和贝叶斯环境中的多重假设检验问题之间的收敛。具体而言,我们的兴趣将集中在确保在I类概率误差控制和功耗之间进行权衡。我们描述了一种在测试由fMRI时间序列统计的空间图的二维离散小波变换(DWT)生成的多个小波系数时,在1类错误的任意级别上控制错误发现率的技术。我们还描述并应用了可用于定义2D-DWT的每个级别和方向唯一的阈值的递归测试方法。贝叶斯方法,结合用于表示信号或真实图像的小波系数的预期稀疏性的形式模型,也是易于处理的。通过分析“零”图像(在静止状态下获得的受试者)来对这些方法进行比较评估,在这种情况下,阳性试验的数量应与船体假设条件下的预测完全相同,并在实验过程中从5名正常志愿者那里获得实验数据集。事件相关的手指运动任务。我们显示,所有三种基于小波的多重假设检验方法都具有良好的1型错误控制(FDR方法最为保守)并生成了合理的大脑激活图。

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