| Literature DB >> 29534759 |
Qi Zhu1,2, Jiashuang Huang3, Xijia Xu4.
Abstract
BACKGROUND: Schizophrenia is a clinical syndrome, and its causes have not been well determined. The objective of this study was to investigate the alteration of brain functional connectivity between schizophrenia and healthy control, and present a practical solution for accurately identifying schizophrenia at single-subject level.Entities:
Keywords: Computer aided diagnosis; Feature selection; Functional connectivity; Resting-state fMRI; Schizophrenia; Schizophrenia classification
Mesh:
Year: 2018 PMID: 29534759 PMCID: PMC5851331 DOI: 10.1186/s12938-018-0464-x
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1Flowchart of the proposed method
Demographic characteristics and clinical variables of the participants
| Diagnosis | Number | Age | Gender (F/M) | PANSS |
|---|---|---|---|---|
| Patients | 24 | 30.78 ± 9.01 | 14/10 | 97.83 ± 11.09 |
| Healthy controls | 21 | 35.29 ± 7.94 | 15/6 | Null |
Fig. 2The comparison of different norms ()
The performance of our method and the other three brain network based methods including CNC, MTNC, FSGNC and SVM
| Method | Accuracy (%) | Sensitivity (%) | Specificity (%) | PPV (%) | NPV (%) |
|---|---|---|---|---|---|
| CNC | 73.33 | 79.17 | 66.67 | 73.08 | 73.68 |
| MTNC | 82.22 | 87.50 | 76.19 | 80.77 | 84.21 |
| FSGNC | 77.78 |
| 52.38 | 70.59 |
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| SVM | 75.56 | 83.33 | 66.67 | 74.07 | 77.78 |
| Proposed method |
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The highest value of each measure is in italics
Fig. 3a Variations of accuracies of our method, CNC and FSGNC versus network threshold, b variations of accuracies of our method versus network threshold and sparsity
The accuracies of our method and several voxel based methods
| Method | Data | Accuracy (%) |
|---|---|---|
| Chyzhyk et al. [ | Resting state-fMRI (ALFF) | 87.67 |
| Chyzhyk et al. [ | Resting state-fMRI (fALFF) | 82.19 |
| Chyzhyk et al. [ | Resting state-fMRI (ReHo) | 84.19 |
| Chyzhyk et al. [ | Resting state-fMRI (VMHC) | 91.19 |
| Du et al. [ | Resting state-fMRI | 93.00 |
| Cao et al. [ | fMRI during sensorimotor task | 83.11 |
| Juneja et al. [ | fMRI during AOD task | 89.70 |
| Juneja et al. [ | fMRI during AOD task | 92.00 |
| Proposed method | Resting state-fMRI |
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The highest accuracy is in italics
Fig. 4Variations of accuracies of T-test, Lasson, Tikhonov regularization, Laplacian score and our methods versus threshold and sparsity. a Sparsity = 0.2, b sparsity = 0.25 and c sparsity = 0.3
Functional connectivity and network topological metrics for healthy controls and schizophrenia patients
| Topology metrics | Healthy controls (mean ± SD) | Schizophrenia patients (mean ± SD) |
|---|---|---|
| Connectivity strength | 6.3853 ± 2.3951 | 6.1172 ± 2.5732 |
| Connectivity diversity | 0.0138 ± 0.0087 | 0.0152 ± 0.0095 |
| Clustering coefficient | 1.1135 ± 0.0937 | 1.0690 ± 0.1059 |
| Overlap score | 0.0538 ± 0.0169 | 0.0461 ± 0.0042 |
| Weighted overlap score | 0.0118 ± 0.0060 | 0.0091 ± 0.0014 |
Fig. 5a All the discriminative abilities of the connectivities of the brain networks. (The position in ith row and jth column in a denotes the connectivity between ith brain region and jth brain region, and its weight can be judged by the corresponding color). b–d The top 10 alteration connectivities for identifying schizophrenia
Significant alteration of connectivity (SAC) between schizophrenia and healthy control
| No. | Brain area A | Brain area B | Weight score |
|---|---|---|---|
| SAC 1 | Cuneus | Superior frontal gyrus, medial orbital | 41.36 |
| SAC 2 | Paracentral lobule | Calcarine fissure and surrounding cortex | 32.57 |
| SAC 3 | Inferior temporal gyrus | Middle frontal gyrus | 31.04 |
| SAC 4 | Fusiform gyrus | Superior frontal gyrus, medial | 25.79 |
| SAC 5 | Temporal pole: superior temporal gyrus | Precentral gyrus | 19.16 |
| SAC 6 | Median cingulate and paracingulate gyri | Superior frontal gyrus, medial | 17.84 |
| SAC 7 | Anterior cingulate and paracingulate gyri | Inferior frontal gyrus, triangular part | 17.02 |
| SAC 8 | Caudate nucleus | Precentral gyrus | 15.79 |
| SAC 9 | Lenticular nucleus, pallidum | Inferior occipital gyrus | 14.57 |
| SAC 10 | Precuneus | Fusiform gyrus | 14.45 |
| SAC 11 | Precuneus | Superior parietal gyrus | 13.76 |
| SAC 12 | Hippocampus | Middle frontal gyrus | 13.53 |
| SAC 13 | Temporal pole: middle temporal gyrus | Paracentral lobule | 12.73 |
| SAC 14 | Caudate nucleus | Fusiform gyrus | 11.26 |
| SAC 15 | Precuneus | Supplementary motor area | 10.44 |
| SAC 16 | Postcentral gyrus | Inferior occipital gyrus | 9.99 |
| SAC 17 | Inferior temporal gyrus | Middle occipital gyrus | 9.57 |
| SAC 18 | Lingual gyrus | Superior frontal gyrus, medial | 9.45 |
| SAC 19 | Precuneus | Precentral gyrus | 9.26 |
| SAC 20 | Middle temporal gyrus | Inferior parietal, but supramarginal and angular gyri | 8.40 |
| SAC 21 | Precuneus | Precentral gyrus | 8.03 |
| SAC 22 | Parahippocampal gyrus | Anterior cingulate and paracingulate gyri | 7.46 |
| SAC 23 | Middle temporal gyrus | Precentral gyrus | 6.99 |
| SAC 24 | Inferior frontal gyrus, triangular part | Superior frontal gyrus, orbital part | 6.31 |
| SAC 25 | Lenticular nucleus, pallidum | Superior frontal gyrus, orbital part | 5.97 |
| SAC 26 | Lingual gyrus | Insula | 5.72 |
| SAC 27 | Thalamus | Gyrus rectus | 5.40 |
| SAC 28 | Precuneus | Rolandic operculum | 5.13 |
| SAC 29 | Heschl gyrus | Inferior occipital gyrus | 4.72 |
| SAC 30 | Supramarginal gyrus | Median cingulate and paracingulate gyri | 3.84 |