| Literature DB >> 34313906 |
Ying Wu1, Ping Ren2,3, Rong Chen4, Hong Xu4, Jianxing Xu5,6, Lin Zeng5,6, Donghui Wu3,7, Wentao Jiang5,6, NianSheng Tang8, Xia Liu9,10.
Abstract
Neuroimaging technique is a powerful tool to characterize the abnormality of brain networks in schizophrenia. However, the neurophysiological substrate of schizophrenia is still unclear. Here we investigated the patterns of brain functional and structural changes in female patients with schizophrenia using elastic net logistic regression analysis of resting-state functional magnetic resonance imaging data. Data from 52 participants (25 female schizophrenia patients and 27 healthy controls) were obtained. Using an elastic net penalty, the brain regions most relevant to schizophrenia pathology were defined in the models using the amplitude of low-frequency fluctuations (ALFF) and gray matter, respectively. The receiver operating characteristic analysis showed reliable classification accuracy with 85.7% in ALFF analysis, and 77.1% in gray matter analysis. Notably, our results showed eight common regions between the ALFF and gray matter analyses, including the Frontal-Inf-Orb-R, Rolandic-Oper-R, Olfactory-R, Angular-L, Precuneus-L, Precuenus-R, Heschl-L, and Temporal-Pole-Mid-R. In addition, the severity of symptoms was found positively associated with the ALFF within the Rolandic-Oper-R and Frontal-Inf-Orb-R. Our findings indicated that elastic net logistic regression could be a useful tool to identify the characteristics of schizophrenia -related brain deterioration, which provides novel insights into schizophrenia diagnosis and prediction.Entities:
Keywords: Amplitude of low frequency fluctuation; Elastic net regression; Gray matter volume; Resting-state functional magnetic resonance imaging; Schizophrenia
Mesh:
Year: 2021 PMID: 34313906 PMCID: PMC8825615 DOI: 10.1007/s11682-021-00501-z
Source DB: PubMed Journal: Brain Imaging Behav ISSN: 1931-7557 Impact factor: 3.978
Demographic and characteristics of subjects
| SZ ( | HC ( | ||
|---|---|---|---|
| Age | 33.3 ± 10.2 | 32.7 ± 10.7 | 0.8 |
| Years of education | 12.5 ± 3.0 | 14.7 ± 3.5 | 0.02* |
| PANSS-P score | 28.1 ± 7.2 | ||
| PANSS-N score | 18.0 ± 9.4 | ||
| PANSS-G score | 46.5 ± 12.6 |
Data are presented as means ± standard deviations
Abbreviations: SZ schizophrenia, HC healthy control, PANSS Positive and negative Syndrome Scale, P positive, N negative, G general
*p < 0.05
Fig. 1The parameters in logistic regression were defined using elastic net penalty. A The scatterplots show the largest AUC values obtained by using 20–30 brain regions in both ALFF and GM analyses. B The optimal λ values were determined by the minimum misclassification errors in ALFF (log(λ) = −1.42) and GM (log(λ) = −1.37), respectively. Abbreviations: AUC, area under the curve; GM, gray matter; ALFF, amplitude of low-frequency fluctuations
Brain regions associated with SZ according to elastic net logistic regression
| ALFF | GM | ||
|---|---|---|---|
| AAL No | Brain region | AAL No | Brain region |
| 2 | Precentral-R | 1 | Precentral-L |
| #16 | Frontal-Inf-Orb-R | 6 | Frontal-Sup-Orb-R |
| #18 | Rolandic-Oper-R | 7 | Frontal-Mid-L |
| 19 | Supp-Motor-Area-L | 8 | Frontal-Mid-R |
| 20 | Supp-Motor-Area-R | 14 | Frontal-Inf-Tri-R |
| #22 | Olfactory-R | #16 | Frontal-Inf-Orb-R |
| 24 | Frontal-Sup-Medial-R | #18 | Rolandic-Oper-R |
| 34 | Cingulum-Mid-R | 21 | Olfactory-L |
| 35 | Cingulum-Post-L | #22 | Olfactory-R |
| 36 | Cingulum-Post-R | 37 | Hippocampus-L |
| 38 | Hippocampus-R | 41 | Amygdala-L |
| 39 | ParaHippocampal-L | 42 | Amygdala-R |
| 48 | Lingual-R | 43 | Calcarine-L |
| 51 | Occipital-Mid-L | 45 | Cuneus-L |
| 58 | Postcentral-R | 53 | Occipital-Inf-L |
| 61 | Parietal-Inf-L | 56 | Fusiform-R |
| #65 | Angular-L | 60 | Parietal-Sup-R |
| #67 | Precuneus-L | 62 | Parietal-Inf-R |
| #68 | Precuneus-R | #65 | Angular-L |
| 71 | Caudate-L | #67 | Precuneus-L |
| 72 | Caudate-R | #68 | Precuneus-R |
| 74 | Putamen-R | 69 | Paracentral-Lobule-L |
| #79 | Heschl-L | #79 | Heschl-L |
| 80 | Heschl-R | 84 | Temporal-Pole-Sup-R |
| 81 | Temporal-Sup-L | 87 | Temporal-Pole-Mid-L |
| 85 | Temporal-Mid-L | #88 | Temporal-Pole-Mid-R |
| #88 | Temporal-Pole-Mid-R | ||
The common regions in both ALFF and GM analyses were marked with #
Abbreviations: SZ schizophrenia, ALFF amplitude of low-frequency fluctuations, GM gray matter, AAL automated anatomical labeling atlas, L left, R right
Fig. 2The validation of the models in predicting SZ. A The ROC curves show the accuracies in differentiating SZs and HCs in ALFF (85.7%) and GM (77.1%), respectively. B The accuracies in predicting SZ in test set for ALFF (3 participants misclassified) and GM (5 participants misclassified) analyses. Abbreviations: SZ, schizophrenia: HC, healthy control; ROC, received operation curve; GM, gray matter; ALFF, amplitude of low-frequency fluctuations; AUC, area under the curve
Fig. 3The brain regions contributing to SZ prediction in elastic net logistic regression. Twenty-seven regions were selected in the ALFF analysis, and 26 regions were selected in the GM analysis. There were 8 common regions in both two analysis. Abbreviations: SZ, schizophrenia; ALFF, amplitude of low-frequency fluctuations; GM, gray matter; L, left; R, right
Fig. 4The scatterplots show the relationships between ALFF and PANSS scores in SZ patients. PANSS-N was found positively correlated with the Rolandic-Oper-R, and PANSS-G was found positively correlated with the Rolandic-Oper-R and Frontal-Inf-Orb-R. Abbreviations: SZ, schizophrenia; ALFF, amplitude of low-frequency fluctuations; PANSS-N, PANSS negative scores; PANSS-G, PANSS positive scores