| Literature DB >> 18466562 |
Armin Szegedi1, Christian Scharfetter2, Hans H Stassen2.
Abstract
Significant alterations of T-cell function, along with activation of the inflammatory response system, appear to be linked not only to treatment-resistant schizophrenia, but also to functional psychoses and mood disorders. Because there is a relatively high comorbidity between rheumatoid arthritis (RA), schizophrenia and major depression, the question arises whether there is a common, genetically modulated inflammatory process involved in these disorders. On the basis of three family studies from the U.S. and Europe which were ascertained through an index case suffering from RA (599 nuclear families, 1868 subjects), we aimed to predict the inter-individual variation of autoantibody IgM levels, as an unspecific indicator of inflammatory processes, through molecular-genetic factors. In a three-stage strategy, we first used nonparametric linkage (NPL) analysis to construct an initial configuration of genomic loci showing a sufficiently high NPL score in all three populations. This initial configuration was then modified by iteratively adding or removing genomic loci such that genotype-phenotype correlations were improved. Finally, neural network analysis (NNA) was applied to derive classifiers that predicted the phenotype from the multidimensional genotype. Our analysis led to an activation model that predicted individual IgM levels from the subjects' multidimensional genotypes very reliably. This allowed us to use the activation model for an analysis of the DNA of an existing sample of 1003 psychiatric patients in order to test, in a first approach, whether a deviant, genetically modulated inflammatory process is involved in the pathogenesis of major psychiatric disorders.Entities:
Year: 2007 PMID: 18466562 PMCID: PMC2367555 DOI: 10.1186/1753-6561-1-s1-s61
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Figure 1NPL analysis. NPL analyses carried out separately for the three populations: NARAC screen1 (green), NARAC screen2 (red), and French samples (blue) yielded several candidate regions which showed significant NPL scores across the three samples under investigation.
Figure 2Projection of 926 subjects onto the plane defined by the two largest eigenvectors of a genetic vector space spanned by 16 polymorphisms. The projections revealed differences on the genotype level between IgM-related groups: circles, normal subjects (0 ≤ IgM < 13.5; n = 576; 100% correctly classified by subsequent NNA); triangles, subjects with low IgM levels (13.5 ≤ IgM < 50; n = 237; 77.6% correctly classified by subsequent NNA); squares, subjects with elevated IgM levels (n = 113; 98.2% correctly classified by subsequent NNA).
Genotype-based classification of subjects with respect to IgM levels
| IgM level | Prevalence | Normal | Low | Elevated | Sensitivity | Specificity | |
| Normal | 576 | 62.2% | 0 | 0 | 0.988 | 0.997 | |
| Low | 237 | 25.6% | 1 | 52 | 0.776 | 0.987 | |
| Elevated | 113 | 12.2% | 0 | 2 | 0.982 | 0.936 |
Neural Network Analysis yielded weights that enabled re-classification of 926 subjects with respect to IgM levels through genotype-based classifiers at a sensitivity and specificity of >90% (with the exception of 23.4% of low IgM level subjects who were classified as subjects with elevated IgM levels).
aBold text indicates correctly re-classified subjects prior to k-fold cross-validation.