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Brain Decoding-Classification of Hand Written Digits from fMRI Data Employing Bayesian Networks

机译:使用贝叶斯网络的fMRI数据对手写数字进行大脑解码分类

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摘要

We are frequently exposed to hand written digits 0–9 in today's modern life. Success in decoding-classification of hand written digits helps us understand the corresponding brain mechanisms and processes and assists seriously in designing more efficient brain–computer interfaces. However, all digits belong to the same semantic category and similarity in appearance of hand written digits makes this decoding-classification a challenging problem. In present study, for the first time, augmented naïve Bayes classifier is used for classification of functional Magnetic Resonance Imaging (fMRI) measurements to decode the hand written digits which took advantage of brain connectivity information in decoding-classification. fMRI was recorded from three healthy participants, with an age range of 25–30. Results in different brain lobes (frontal, occipital, parietal, and temporal) show that utilizing connectivity information significantly improves decoding-classification and capability of different brain lobes in decoding-classification of hand written digits were compared to each other. In addition, in each lobe the most contributing areas and brain connectivities were determined and connectivities with short distances between their endpoints were recognized to be more efficient. Moreover, data driven method was applied to investigate the similarity of brain areas in responding to stimuli and this revealed both similarly active areas and active mechanisms during this experiment. Interesting finding was that during the experiment of watching hand written digits, there were some active networks (visual, working memory, motor, and language processing), but the most relevant one to the task was language processing network according to the voxel selection.
机译:在当今的现代生活中,我们经常遇到手写数字0–9。手写数字解码成功的分类有助于我们理解相应的大脑机制和过程,并在设计更有效的大脑计算机接口方面提供了认真的帮助。然而,所有数字都属于相同的语义类别,并且手写数字的外观相似使得这种解码分类成为具有挑战性的问题。在本研究中,首次将增强朴素贝叶斯分类器用于功能性磁共振成像(fMRI)测量的分类,以解码手写数字,该数字在解码分类中利用了大脑的连通性信息。记录了三名年龄在25至30岁的健康参与者的功能磁共振成像。不同脑叶(额叶,枕叶,顶叶和颞叶)的结果表明,利用连通性信息可以显着改善解码分类,并且将不同脑叶在手写数字的解码分类中的能力进行了比较。此外,在每个肺叶中,确定了贡献最大的区域和大脑的连通性,并且认为端点之间距离短的连通性更为有效。此外,数据驱动的方法被用于研究大脑区域在响应刺激时的相似性,这揭示了在这个实验中相似的活动区域和活动机制。有趣的发现是,在观看手写数字的实验中,存在一些活动的网络(视觉,工作记忆,运动和语言处理),但是与任务最相关的一个是根据体素选择的语言处理网络。

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