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The effect of spatial resolution on decoding accuracy in fMRI multivariate pattern analysis

机译:fMRI多元模式分析中空间分辨率对解码精度的影响

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Multivariate pattern analysis (MVPA) in fMRI has been used to extract information from distributed cortical activation patterns, which may go undetected in conventional univariate analysis. However, little is known about the physical and physiological underpinnings of MVPA in fMRI as well as about the effect of spatial smoothing on its performance. Several studies have addressed these issues, but their investigation was limited to the visual cortex at 3 T with conflicting results. Here, we used ultra-high field (7 T) fMRI to investigate the effect of spatial resolution and smoothing on decoding of speech content (vowels) and speaker identity from auditory cortical responses. To that end, we acquired high-resolution (1.1 mm isotropic) fMRI data and additionally reconstructed them at 2.2 and 3.3 mm in-plane spatial resolutions from the original k-space data. Furthermore, the data at each resolution were spatially smoothed with different 3D Gaussian kernel sizes (i.e. no smoothing or 1.1, 2.2, 3.3, 4.4, or 8.8 mm kernels). For all spatial resolutions and smoothing kernels, we demonstrate the feasibility of decoding speech content (vowel) and speaker identity at 7 T using support vector machine (SVM) MVPA. In addition, we found that high spatial frequencies are informative for vowel decoding and that the relative contribution of high and low spatial frequencies is different across the two decoding tasks. Moderate smoothing (up to 2.2 mm) improved the accuracies for both decoding of vowels and speakers, possibly due to reduction of noise (e.g. residual motion artifacts or instrument noise) while still preserving information at high spatial frequency. In summary, our results show that - even with the same stimuli and within the same brain areas-the optimal spatial resolution for MVPA in fMRI depends on the specific decoding task of interest. (C) 2016 Elsevier Inc. All rights reserved.
机译:fMRI中的多元模式分析(MVPA)已用于从分布式皮质激活模式中提取信息,而在传统的单变量分析中可能无法检测到这种信息。但是,对于功能磁共振成像中MVPA的物理和生理基础以及空间平滑对其性能的影响知之甚少。一些研究已经解决了这些问题,但是他们的研究仅限于3 T时的视觉皮层,其结果相互矛盾。在这里,我们使用超高场(7 T)功能磁共振成像来研究空间分辨率和平滑度对听觉皮层反应中语音内容(元音)和说话人身份解码的影响。为此,我们获取了高分辨率(各向同性的1.1 mm)fMRI数据,并从原始k空间数据中分别以2.2和3.3 mm的面内空间分辨率对其进行了重建。此外,使用不同的3D高斯核大小(即不进行平滑处理或对1.1、2.2、3.3、4.4或8.8 mm核进行平滑处理)对每种分辨率下的数据进行空间平滑处理。对于所有空间分辨率和平滑内核,我们演示了使用支持向量机(SVM)MVPA在7 T解码语音内容(元音)和说话人身份的可行性。此外,我们发现高空间频率对于元音解码很有用,并且在两个解码任务中,高空间频率和低空间频率的相对贡献是不同的。适度平滑(最大2.2毫米)可改善元音和扬声器解码的准确性,这可能是由于降低了噪声(例如残留运动伪影或乐器噪声)而同时仍以高空间频率保留信息的缘故。总而言之,我们的结果表明-即使在相同的刺激下和相同的大脑区域内,fMRI中MVPA的最佳空间分辨率也取决于感兴趣的特定解码任务。 (C)2016 Elsevier Inc.保留所有权利。

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