| Literature DB >> 25784871 |
Cota Navin Gupta1, Jiayu Chen1, Jingyu Liu2, Eswar Damaraju1, Carrie Wright3, Nora I Perrone-Bizzozero4, Godfrey Pearlson5, Li Luo6, Andrew M Michael1, Jessica A Turner7, Vince D Calhoun8.
Abstract
It is becoming a consensus that white matter integrity is compromised in schizophrenia (SZ), however the underlying genetics remains elusive. Evidence suggests a polygenic basis of the disorder, which involves various genetic variants with modest individual effect sizes. In this work, we used a multivariate approach, parallel independent component analysis (P-ICA), to explore the genetic underpinnings of white matter abnormalities in SZ. A pre-filtering step was first applied to locate 6527 single nucleotide polymorphisms (SNPs) discriminating patients from controls with a nominal uncorrected p-value of 0.01. These potential susceptibility loci were then investigated for associations with fractional anisotropy (FA) images in a cohort consisting of 73 SZ patients and 87 healthy controls (HC). A significant correlation (r = -0.37, p = 1.25 × 10(-6)) was identified between one genetic factor and one FA component after controlling for scanning site, ethnicity, age, and sex. The identified FA-SNP association remained stable in a 10-fold validation. A 5000-run permutation test yielded a p-value of 2.00 × 10(-4). The FA component reflected decreased white matter integrity in the forceps major for SZ patients. The SNP component was overrepresented in genes whose products are involved in corpus callosum morphology (e.g., CNTNAP2, NPAS3, and NFIB) as well as canonical pathways of synaptic long term depression and protein kinase A signaling. Taken together, our finding delineates a part of genetic architecture underlying SZ-related FA reduction, emphasizing the important role of genetic variants involved in neural development.Entities:
Keywords: diffusion tension imaging (DTI); fractional anisotropy (FA); parallel independent component analysis (P-ICA); schizophrenia; single nucleotide polymorphisms (SNPs)
Year: 2015 PMID: 25784871 PMCID: PMC4347454 DOI: 10.3389/fnhum.2015.00100
Source DB: PubMed Journal: Front Hum Neurosci ISSN: 1662-5161 Impact factor: 3.169
Demographic information of patients with schizophrenia and healthy controls.
| Sex | Male | 54 | 51 |
| Female | 19 | 36 | |
| Age | Mean ± SD | 34 ± 11 | 32 ± 11 |
| Ethnicity | Caucasian | 53 | 81 |
| Asian | 5 | 3 | |
| American Indian or Alaska Native | 1 | 0 | |
| African-American | 14 | 3 | |
DTI acquisition parameters at four sites for MCIC study.
| Scanner (Tesla) | Siemens (1.5) | GE Signa (1.5) | Siemens Trio (3) | Siemens (1.5) |
| TR (ms) | 9500 | 8900 | 10,500 | 9800 |
| TE (ms) | 90 | 80 | 98 | 86 |
| Voxel dimensions (mm) | 2 × 2 × 2 | 2 ×2 × 2 | 2 × 2 × 2 | 2 × 2 × 2 |
| Diffusion directions | 6 | 60 | 12 | 12 |
| 0/1000 | 0/700 | 0/1000 | 0/1000 | |
| NEX | 4 | 1 | 2 | 4 |
| Bandwidth (Hz/pixel) | 1954 | 1860 | 1342 | 1502 |
TR, repetition time; TE, echo time; NEX, number of excitations.
Figure 1(A) FA component corresponding to Top P-ICA pair. (B) Scatter plots of FA and SNP loadings (both SZ and HC participants) from P-ICA with the regression line. The group mean directionality being HC > SZ. (C) Z-scored SNP component corresponding to Top P-ICA pair. Horizontal lines indicate the threshold to obtain the top 5% SNPS.
Summary of clinical information.
| 73 | 95.89 | 11.18 ± 10.5 | 97.26 | 15.94 ± 4.9 | 97.26 | 16.06 ± 4.9 | 91.78% | 653.52 ± 684.14 |
Ingenuity pathway analysis on the SNP component.
| Abnormal morphology of brain | 6.96E-03 | CNTNAP2, FA2H, GRID2, LRRTM4, NPAS3, NFIB |
| Abnormal morphology of corpus callosum | 2.78E-04 | CNTNAP2, NPAS3, NFIB |
| Abnormal morphology of hippocampus | 5.11E-03 | LRRTM4, NPAS3, NFIB |
| Morphology of brain cells | 6.59E-03 | FA2H, GRID2, NFIB |
| Synaptic long term depression | 8.71E-04 | GRID2, RYR3, RYR2, PRKCB |
| Protein kinase A signaling | 1.02E-03 | PTPRD, RYR3, RYR2, CREB5, PTPRM, PRKCB |
| Gαs signaling | 4.79E-03 | RYR3, RYR2, CREB5 |
| Hepatic cholestasis | 8.71E-03 | SLCO3A1, FABP6, PRKCB |
| CREB signaling in neurons | 1.58E-02 | GRID2, CREB5, PRKCB |
| Calcium signaling | 1.74E-02 | RYR3, RYR2, CREB5 |