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Intensity normalisation for large-scale fMRI brain decoding

机译:大规模fMRI脑解码的强度归一化

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Among the long-term goals of the fairly new area of brain decoding is the exploitation of the results for the creation of advanced brain-computer interfaces, which can potentially establish a solid communication channel with people in vegetative state. Recent attempts for large-scale brain decoding form a both powerful and promising foundation towards that goal, since they aim to extract accurate representations of certain stimuli within the human brain, given a large number of different studies. An inherent problem with across-study brain decoding is that the classification algorithms end up discriminating among studies instead among stimuli. This is due to study-specific nuisance effects, which cannot be removed by standard preprocessing methodologies, and which may cause two volumes representing different stimuli within a single study to be closer to one another than two volumes representing similar stimuli across different studies. Considering that a large number of previous studies suggest that across-subject and across-session decoding works, we have come to believe that the problem of degraded across-study accuracy is introduced by differing stimuli activation values across studies, originating from study-specific and not subject-specific idiosyncrasies. Therefore, the problem of correct stimuli classification across studies is reduced to the one of consistent intensity normalisation across studies, in order to provide persistent representations of stimuli in the brain. In this work, we provide a thorough discussion on the performance of four different intensity normalisation techniques, in order to evaluate their applicability as a pre-processing step for large-scale brain decoding.
机译:相当新的大脑解码领域的长期目标之一是开发高级大脑计算机接口的结果,从而可以与处于营养状态的人们建立牢固的沟通渠道。最近进行的大规模大脑解码的尝试为实现该目标奠定了强大而有前途的基础,因为经过大量不同的研究,它们的目的是提取人脑中某些刺激的准确表示。跨研究型大脑解码的一个固有问题是,分类算法最终会在研究之间进行区分,而不是在刺激之间进行区分。这是由于特定于研究的干扰效应所致,这些效应无法通过标准的预处理方法消除,并且可能导致代表单个研究中的两个刺激的两个体积比代表不同研究中的相似刺激的两个体积更接近。考虑到大量先前的研究表明跨学科和跨会话解码工作有效,我们已经认为跨学科准确性下降的问题是由跨学科的不同刺激激活值引起的,这些激励激活值源自特定于研究的和不是特定于主题的特质。因此,跨研究的正确刺激分类问题被简化为跨研究的一致强度归一化问题,以便提供大脑中刺激的持久性表示。在这项工作中,我们对四种不同强度归一化技术的性能进行了详尽的讨论,以评估它们作为大规模大脑解码的预处理步骤的适用性。

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