首页> 外文会议>2014 40th Annual Northeast Bioengineering Conference >Analysis of sub-cortical regions in cognitive processing using fuzzy c-means clustering and geometrical measure in autistic MR images
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Analysis of sub-cortical regions in cognitive processing using fuzzy c-means clustering and geometrical measure in autistic MR images

机译:自闭症MR图像中使用模糊c均值聚类和几何度量的认知处理中的皮质下区域分析

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摘要

Magnetic Resonance (MR) imaging is an indispensable approach for obtaining the structural information of sub-cortical regions of brain. In this work, fuzzy c-means clustering (FCM) is used to segment the sub-cortical regions of brain such as Corpus Callosum (CC) and Brain Stem (BS). The geometrical measure area is calculated from the extracted regions and correlated with the clinical Intelligent Quotient (IQ) values. The corpus callosum area gives distinct variation between control and autistic subjects (p=0.006). Also, the CC area of autistic subjects is correlated with the verbal IQ value (R=-0.37). The area of brain stem is less statistically significant (p=0.02) compared to the CC area in discriminating the subjects. Also, BS area of autistic subjects gives a correlation of R=-0.29 with the performance IQ. As the reduced CC and BS area are related with cognitive dysfunctions, this framework can be used for the automated diagnosis of autism like neural disorders.
机译:磁共振(MR)成像是获取大脑皮层下区域的结构信息必不可少的方法。在这项工作中,模糊c均值聚类(FCM)用于分割大脑的皮质下区域,如Corpus Callosum(CC)和Brain Stem(BS)。从提取的区域计算几何测量面积,并将其与临床智能商(IQ)值相关联。 call体区域在对照对象和自闭症对象之间产生明显差异(p = 0.006)。另外,自闭症对象的CC区域与口头IQ值相关(R = -0.37)。在区分受试者时,与CC区域相比,脑干区域的统计意义较小(p = 0.02)。此外,自闭症患者的BS面积与表现IQ的关系为R = -0.29。由于减少的CC和BS面积与认知功能障碍有关,因此该框架可用于自闭症(如神经疾病)的自动诊断。

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