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A multiple kernel learning approach to perform classification of groups from complex-valued fMRI data analysis: Application to schizophrenia

机译:一种从复杂值fMRI数据分析中对组进行分类的多核学习方法:在精神分裂症中的应用

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摘要

FMRI data are acquired as complex-valued spatiotemporal images. Despite the fact that several studies have identified the presence of novel information in the phase images, they are usually discarded due to their noisy nature. Several approaches have been devised to incorporate magnitude and phase data, but none of them has performed between-group inference or classification. Multiple kernel learning (MKL) is a powerful field of machine learning that finds an automatic combination of kernel functions that can be applied to multiple data sources. By analyzing this combination of kernels, the most informative data sources can be found, hence providing a better understanding of the analyzed learning task. This paper presents a methodology based on a new MKL algorithm (ν-MKL) capable of achieving a tunable sparse selection of features' sets (brain regions' patterns) that improves the classification accuracy rate of healthy controls and schizophrenia patients by 5% when phase data is included. In addition, the proposed method achieves accuracy rates that are equivalent to those obtained by the state of the art lp-norm MKL algorithm on the schizophrenia dataset and we argue that it better identifies the brain regions that show discriminative activation between groups. This claim is supported by the more accurate detection achieved by ν-MKL of the degree of information present on regions of spatial maps extracted from a simulated fMRI dataset. In summary, we present an MKL-based methodology that improves schizophrenia characterization by using both magnitude and phase fMRI data and is also capable of detecting the brain regions that convey most of the discriminative information between patients and controls.
机译:FMRI数据作为复值时空图像获取。尽管有一些研究已经发现相图像中存在新信息,但由于其嘈杂的性质,通常将其丢弃。已经设计了几种方法来合并幅度和相位数据,但是它们都没有执行组间推断或分类。多重内核学习(MKL)是机器学习的强大领域,可发现可应用于多个数据源的内核功能的自动组合。通过分析内核的这种组合,可以找到最有用的数据源,从而可以更好地理解所分析的学习任务。本文提出了一种基于新MKL算法(ν-MKL)的方法,该方法能够实现特征集(大脑区域模式)的可调稀疏选择,从而将健康对照和精神分裂症患者的分类准确率提高了5%。数据包括在内。此外,该方法所达到的准确率与精神分裂症数据集上最新的lp-norm MKL算法所获得的准确率相当,我们认为该方法可以更好地识别出在组之间具有区别性激活作用的大脑区域。 ν-MKL对从模拟fMRI数据集提取的空间图区域中存在的信息程度进行更准确的检测,从而支持了此主张。总而言之,我们提出了一种基于MKL的方法,该方法通过使用幅度和相位fMRI数据来改善精神分裂症的特征,并且还能够检测在患者和对照之间传达大多数区分性信息的大脑区域。

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