Zhang Fengqing, Wang Ji-Ping, Kim Jieun, Parrish Todd, Wong Patrick C M
Department of Statistics, Northwestern University, Evanston, Illinois, United States of America; Department of Psychology, Drexel University, Philadelphia, Pennsylvania, United States of America.
Department of Statistics, Northwestern University, Evanston, Illinois, United States of America.
PLoS One. 2015 Feb 18;10(2):e0117303. doi: 10.1371/journal.pone.0117303. eCollection 2015.
Perception of sound categories is an important aspect of auditory perception. The extent to which the brain's representation of sound categories is encoded in specialized subregions or distributed across the auditory cortex remains unclear. Recent studies using multivariate pattern analysis (MVPA) of brain activations have provided important insights into how the brain decodes perceptual information. In the large existing literature on brain decoding using MVPA methods, relatively few studies have been conducted on multi-class categorization in the auditory domain. Here, we investigated the representation and processing of auditory categories within the human temporal cortex using high resolution fMRI and MVPA methods. More importantly, we considered decoding multiple sound categories simultaneously through multi-class support vector machine-recursive feature elimination (MSVM-RFE) as our MVPA tool. Results show that for all classifications the model MSVM-RFE was able to learn the functional relation between the multiple sound categories and the corresponding evoked spatial patterns and classify the unlabeled sound-evoked patterns significantly above chance. This indicates the feasibility of decoding multiple sound categories not only within but across subjects. However, the across-subject variation affects classification performance more than the within-subject variation, as the across-subject analysis has significantly lower classification accuracies. Sound category-selective brain maps were identified based on multi-class classification and revealed distributed patterns of brain activity in the superior temporal gyrus and the middle temporal gyrus. This is in accordance with previous studies, indicating that information in the spatially distributed patterns may reflect a more abstract perceptual level of representation of sound categories. Further, we show that the across-subject classification performance can be significantly improved by averaging the fMRI images over items, because the irrelevant variations between different items of the same sound category are reduced and in turn the proportion of signals relevant to sound categorization increases.
声音类别的感知是听觉感知的一个重要方面。大脑中声音类别的表征在专门的子区域中编码还是分布在听觉皮层中,目前尚不清楚。最近使用大脑激活的多变量模式分析(MVPA)的研究为大脑如何解码感知信息提供了重要见解。在现有的大量使用MVPA方法进行大脑解码的文献中,关于听觉领域多类别分类的研究相对较少。在这里,我们使用高分辨率功能磁共振成像(fMRI)和MVPA方法研究了人类颞叶皮层内听觉类别的表征和处理。更重要的是,我们将通过多类别支持向量机递归特征消除(MSVM-RFE)同时解码多个声音类别作为我们的MVPA工具。结果表明,对于所有分类,模型MSVM-RFE能够学习多个声音类别与相应诱发空间模式之间的功能关系,并对未标记的声音诱发模式进行显著高于随机水平的分类。这表明不仅在个体内部而且在个体之间解码多个声音类别的可行性。然而,个体间的差异比个体内的差异对分类性能的影响更大,因为个体间分析的分类准确率明显更低。基于多类别分类识别了声音类别选择性脑图谱,并揭示了颞上回和颞中回中大脑活动的分布式模式。这与先前的研究一致,表明空间分布式模式中的信息可能反映了声音类别的更抽象的感知表征水平。此外,我们表明,通过对项目的fMRI图像求平均值,可以显著提高个体间的分类性能,因为同一声音类别的不同项目之间的无关差异减少了,反过来与声音分类相关的信号比例增加了。