| Literature DB >> 32063840 |
Linqiong Sang1, Chen Liu2, Li Wang1, Jingna Zhang1, Ye Zhang1, Pengyue Li1, Liang Qiao1, Chuanming Li3, Mingguo Qiu1.
Abstract
The alteration of the functional topological organization in subcortical ischemic vascular cognitive impairment with no dementia (SIVCIND) patients has been illuminated by previous neuroimaging studies. However, in regard to the changes in the structural connectivity of brain networks, little has been reported. In this study, a total of 27 subjects, consisting of 13 SIVCIND patients, and 14 normal controls, were recruited. Each of the structural connectivity networks was constructed by diffusion tensor tractography. Subsequently, graph theory, and network-based statistics (NBS) were employed to analyze the whole-brain mean factional anisotropy matrix. After removing the factor of age, gender, and duration of formal education, the clustering coefficients (C p ) and global efficiency (E glob ) were significantly decreased and the mean path length (L p ) was significantly increased in SIVCIND patients compared with normal controls. Using the combination of four network topological parameters as the classification feature, a classification accuracy of 78% was obtained by leave-one-out cross-validation for all subjects with a sensitivity of 69% and a specificity of 86%. Moreover, we also found decreased structural connections in the SIVCIND patients, which mainly concerned fronto-occipital, fronto-subcortical, and tempo-occipital connections (NBS corrected, p < 0.01). Additionally, significantly altered nodal centralities were found in several brain regions of the SIVCIND patients, mainly located in the prefrontal, subcortical, and temporal cortices. These results suggest that cognitive impairment in SIVCIND patients is associated with disrupted topological organization and provide structural evidence for developing reliable biomarkers related to cognitive decline in SIVCIND.Entities:
Keywords: brain structural network; graph theoretical analysis; network-based statistic; subcortical ischemic vascular cognitive impairment with no dementia; topological organization
Year: 2020 PMID: 32063840 PMCID: PMC7000429 DOI: 10.3389/fnagi.2020.00006
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
FIGURE 1The sparsity of each subject’s brain structural connectivity network.
Demographics and clinical characteristics of the subjects.
| Gender (male/female) | 8/6 | 7/6 | 0.564a |
| Age (years) | 58–76 (65.1 ± 5.0) | 47–83 (68.3 ± 9.8) | 0.285b |
| Education (years) | 0–16 (10.4 ± 4.1) | 1–16 (8.5 ± 4.1) | 0.246b |
| MMSE | 22–30 (28.4 ± 2.2) | 18–26 (23.5 ± 2.3) | < 0.001b |
| MoCA | 21–30 (27.1 ± 2.3) | 8–22 (14.7 ± 3.8) | < 0.001b |
| HIS | – | 7–14 (8.7 ± 1.4) | |
| GDS | – | 3–5 (3.7 ± 0.5) | |
| CDR | – | 0.5–1 (0.6 ± 0.1) |
FIGURE 2Network topological parameters of structural brain network as a function of sparsity ranging from 5 to 14%. Error bars denote standard deviations.
FIGURE 3Brain regions show significant alterations of nodal efficiency in SIVCIND patients compared with normal controls (p < 0.05, FDR-corrected). The results were visualized using BrainNet Viewer (NKLCNL, Beijing Normal University). Three-dimensional maps show the significant differences in nodal global efficiency (A) and nodal local efficiency (B) between the SIVCIND patients and normal controls. Red/blue spheres denote regions where nodal efficiency are increased/decreased in SIVCIND patients. Detailed brain region information corresponding to the anatomical labels can be found in AAL.
Brain regions showing abnormal nodal efficiency in SIVCIND patients compared with normal controls (FDR-corrected p < 0.05 shown in bold font).
| Right precentral gyrus | 0.231 | |
| Left middle frontal gyrus | 0.874 | |
| Left inferior frontal gyrus, operculum part | 0.197 | |
| Left inferior frontal gyrus, triangular part | 0.413 | |
| Left Rolandic operculum | 0.316 | |
| Left supplementary motor area | 0.183 | |
| Right superior frontal gyrus, orbital media part | 0.363 | |
| Left insula | 0.075 | |
| Right hippocampal gyrus | 0.334 | |
| Left parahippocampal gyrus | 0.789 | |
| Left calcarine cortices | 0.553 | |
| Left superior occipital gyrus | 0.795 | |
| Right fusiform gyrus | 0.481 | |
| Right inferior parietal gyrus | ||
| Right supramarginal gyrus | 0.591 | |
| Left angular gyrus | 0.1 | |
| Right angular gyrus | 0.227 | |
| Right precuneus | 0.569 | |
| Left paracentral lobule | 0.849 | |
| Left caudate nucleus | 0.512 | |
| Left putamen | 0.056 | |
| Left pallidum | 0.227 | |
| Left thalamus | 0.337 | |
| Right thalamus | 0.654 | |
| Left superior temporal gyrus | ||
| Left superior temporal gyrus, pole part | 0.271 | |
| Left middle temporal gyrus | ||
| Right middle temporal gyrus | 0.282 | |
| Left inferior temporal gyrus | 0.283 | |
| Left olfactory cortex | 0.775 |
FIGURE 4Connectograms show the decreased structural connections in SIVCIND patients compared to NCs (NBS corrected, p < 0.01). Links are colored by connection type as follows: left intrahemispheric (blue), interhemispheric (red) and right intrahemispheric (green). ROIs were grouped according to Salvador (Salvador et al., 2005) (i.e., frontal, temporal, parietal, medial temporal, occipital, and subcortical).
FIGURE 5The correlations between each AUC network metric value and MMSE score (p < 0.05). Cp, clustering coefficient; Lp, mean path length.
Significant structural connectivity differences between SIVCIND patients and normal controls (p < 0.01, NBS corrected).
| NC vs. SIVCIND | ||
| Right | Hippocampal gyrus Precuneus Calcarine cortices | |
| Left | Inferior frontal gyrus, triangular part Superior frontal gyrus, orbital media part Insula | |
| Lingual gyrus Precuneus Middle occipital gyrus Paracentral lobule Caudate nucleus Putamen Thalamus Middle temporal gyrus |