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Predicting Male vs. Female from Task-fMRI Brain Connectivity

机译:从任务-FMRI脑连接中预测雄性与女性

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A number of behavioral and cognitive functions of brain differ between male and female. Occurrences of psychiatric disorders, e.g., attention deficit hyperactivity disorder, autism, depression and schizophrenia also vary from male to female. Understanding the unique cognitive expressions in gender-specific brain functions may lead to insights into the risks and associated responses for a certain external simulation or medications. Previously resting-state functional magnetic resonance imaging (r-fMRI) has been used extensively to understand gender differences using functional network connectivity analysis. However, how the brain functional network changes during a cognitive task for different genders is relatively unknown. This paper makes use of a large data set to test whether task-fMRI functional connectivity can be utilized to predict male vs. female. In addition, it also identifies functional connectivity features that are most predictive of gender. The cognitive task-fMRI data consisting 475 healthy controls is taken from the Human Connectome Project (HCP) database. Pearson correlation coefficients are extracted using mean time-series from anatomical brain regions. Partial least squares (PLS) regression with feature selection on the correlation coefficients achieves a classification accuracy of 0.88 for classifying male vs. female using emotion task data. In addition it is found that inter hemispheric connectivity is most important for predicting gender from task-fMRI.
机译:雄性和女性之间大脑的许多行为和认知功能。精神病疾病的发生,例如注意力缺陷多动障碍,自闭症,抑郁和精神分裂症也因男性而异。了解性别特异性大脑功能中的独特认知表达可能导致对某种外部模拟或药物的风险和相关响应有所了解。先前休息状态功能磁共振成像(R-FMRI)已广泛使用,以了解使用功能网络连接分析的性别差异。但是,在不同性别的认知任务中,大脑功能网络如何发生变化相对未知。本文利用大型数据集来测试是否可以使用任务-FMRI功能连接来预测雄性与女性。此外,它还识别了最预测性别的功能连接功能。组成475个健康控制的认知任务-FMRI数据来自人类连接项目(HCP)数据库。使用来自解剖学脑区的平均时间序列提取Pearson相关系数。在相关系数上具有特征选择的局部最小二乘(PLS)回归达到分类精度为0.88,用于使用情感任务数据进行分类。此外,发现跨半球连通性对于从任务-FMRI预测性别最重要。

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