Abidin Anas Zainul, D'Souza Adora M, Nagarajan Mahesh B, Wismüller Axel
Departments of Imaging Sciences & Biomedical Engineering, University of Rochester, New York, United States.
Department of Electrical Engineering, University of Rochester Medical Center, NY, USA.
Proc SPIE Int Soc Opt Eng. 2016;9788. doi: 10.1117/12.2217315. Epub 2016 Mar 29.
The use of functional Magnetic Resonance Imaging (fMRI) has provided interesting insights into our understanding of the brain. In clinical setups these scans have been used to detect and study changes in the brain network properties in various neurological disorders. A large percentage of subjects infected with HIV present cognitive deficits, which are known as HIV associated neurocognitive disorder (HAND). In this study we propose to use our novel technique named Mutual Connectivity Analysis (MCA) to detect differences in brain networks in subjects with and without HIV infection. Resting state functional MRI scans acquired from 10 subjects (5 HIV+ and 5 HIV-) were subject to standard pre-processing routines. Subsequently, the average time-series for each brain region of the Automated Anatomic Labeling (AAL) atlas are extracted and used with the MCA framework to obtain a graph characterizing the interactions between them. The network graphs obtained for different subjects are then compared using Network-Based Statistics (NBS), which is an approach to detect differences between graphs edges while controlling for the family-wise error rate when mass univariate testing is performed. Applying this approach on the graphs obtained yields a single network encompassing 42 nodes and 65 edges, which is significantly different between the two subject groups. Specifically connections to the regions in and around the basal ganglia are significantly decreased. Also some nodes corresponding to the posterior cingulate cortex are affected. These results are inline with our current understanding of pathophysiological mechanisms of HIV associated neurocognitive disease (HAND) and other HIV based fMRI connectivity studies. Hence, we illustrate the applicability of our novel approach with network-based statistics in a clinical case-control study to detect differences connectivity patterns.
功能磁共振成像(fMRI)的应用为我们理解大脑提供了有趣的见解。在临床环境中,这些扫描已被用于检测和研究各种神经系统疾病中大脑网络属性的变化。很大一部分感染艾滋病毒的受试者存在认知缺陷,这被称为与艾滋病毒相关的神经认知障碍(HAND)。在本研究中,我们建议使用我们名为相互连接分析(MCA)的新技术来检测感染和未感染艾滋病毒的受试者大脑网络的差异。从10名受试者(5名艾滋病毒阳性和5名艾滋病毒阴性)获取的静息态功能磁共振成像扫描数据经过标准的预处理程序。随后,提取自动解剖标记(AAL)图谱中每个脑区的平均时间序列,并与MCA框架一起使用,以获得一个表征它们之间相互作用的图。然后使用基于网络的统计(NBS)方法比较不同受试者获得的网络图,这是一种在进行大规模单变量测试时控制家族性错误率的同时检测图边差异的方法。将此方法应用于获得的图上,得到一个包含42个节点和65条边的单一网络,这在两个受试者组之间有显著差异。具体而言,与基底神经节及其周围区域的连接显著减少。此外,一些对应于后扣带回皮质的节点也受到影响。这些结果与我们目前对与艾滋病毒相关的神经认知疾病(HAND)的病理生理机制以及其他基于艾滋病毒的功能磁共振成像连接性研究的理解一致。因此,我们在一项临床病例对照研究中说明了我们基于网络统计的新方法在检测连接模式差异方面的适用性。