Construction of the model for the Genetic Analysis Workshop 14 simulated data: genotype-phenotype relationships, gene interaction, linkage, association, disequilibrium, and ascertainment effects for a complex phenotype.
- Authors
- Greenberg, David A; Zhang, Junying; Shmulewitz, Dvora; Strug, Lisa J; Zimmerman, Regina; Singh, Veena; Marathe, Sudhir
- Year
- 2005
- Journal
- BMC genetics
- PMID
- 16451639
- DOI
- 10.1186/1471-2156-6-S1-S3
- PMCID
- PMC1866756
The Genetic Analysis Workshop 14 simulated dataset was designed 1) To test the ability to find genes related to a complex disease (such as alcoholism). Such a disease may be given a variety of definitions by different investigators, have associated endophenotypes that are common in the general population, and is likely to be not one disease but a heterogeneous collection of clinically similar, but genetically distinct, entities. 2) To observe the effect on genetic analysis and gene discovery of a complex set of gene x gene interactions. 3) To allow comparison of microsatellite vs. large-scale single-nucleotide polymorphism (SNP) data. 4) To allow testing of association to identify the disease gene and the effect of moderate marker x marker linkage disequilibrium. 5) To observe the effect of different ascertainment/disease definition schemes on the analysis. Data was distributed in two forms. Data distributed to participants contained about 1,000 SNPs and 400 microsatellite markers. Internet-obtainable data consisted of a finer 10,000 SNP map, which also contained data on controls. While disease characteristics and parameters were constant, four "studies" used varying ascertainment schemes based on differing beliefs about disease characteristics. One of the studies contained multiplex two- and three-generation pedigrees with at least four affected members. The simulated disease was a psychiatric condition with many associated behaviors (endophenotypes), almost all of which were genetic in origin. The underlying disease model contained four major genes and two modifier genes. The four major genes interacted with each other to produce three different phenotypes, which were themselves heterogeneous. The population parameters were calibrated so that the major genes could be discovered by linkage analysis in most datasets. The association evidence was more difficult to calibrate but was designed to find statistically significant association in 50% of datasets. We also simulated some marker x marker linkage disequilibrium around some of the genes and also in areas without disease genes. We tried two different methods to simulate the linkage disequilibrium.
No figures extracted from this document.
| # | Section | Preview |
|---|---|---|
| 60 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | 2. Behavioral-related |
| 61 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | a. Fascination with automobiles |
| 62 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | b. Aversion to walking |
| 63 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | c. Uncommunicative, contentless speech patterns |
| 64 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | d. Fiscal irresponsibility |
| 65 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | Still others focus on the anxiety-related symptoms: |
| 66 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | 3. Anxiety-related |
| 67 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | a. Morbid anger/fear/terror concerning rain/snow |
| 68 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | b. Reluctance to wear clothing appropriate for subjective temperature |
| 69 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | c. Body-image concerns/mild body dysmorphic disorder. |
| 70 | Background — Description of clinical characteristics of KPD and how the family data were collected and classified | As noted above, the syndrome appears common in certain geographical locations and rare in others, or… |
| 71 | Background — Where and how the data were collected | The data that were available for analysis at GAW14 included data collections from four different… |
| 72 | Background — Where and how the data were collected | 1. The group from the country of Aipotu, a populous semi-tropical, semi-desert country, has a high… |
| 73 | Background — Where and how the data were collected | 2. The country of Karangar, on the other hand, is a highly industrialized, mostly urban island. This… |
| 74 | Background — Where and how the data were collected | 3. The community of Danacaa is one of the poorest in the world, despite the extremely high… |
| 75 | Background — Where and how the data were collected | 4. A fourth group is located in New York City. KPD is virtually unknown in New York, indicating the… |
| 76 | Background — Where and how the data were collected | In all four data collection efforts, family members not meeting criteria for KDP were tested using… |
| 77 | Background — Where and how the data were collected | The prevalences of KPD and the traits in the three population-based studies are listed in Table 4. |
| 78 | Abbreviations | GAW: Genetic Analysis Workshop |
| 79 | Abbreviations | KPD: Kofendrerd Personality Disorder |
No entities extracted from this document yet.
No uploaded files.
| Citation | PMID | DOI | Status |
|---|---|---|---|
| Matheson, R, Collected Stories, 1959, The creeping terror | — | — | — |
In this knowledge base
| Title | Year | PMID |
|---|---|---|
| Genetic Analysis Workshop 14: microsatellite and single-nucleotide polymorphism marker loci for genome-wide scans. | 2005 | 16451554 |
External
| Title | Authors | Journal | Year | Link |
|---|---|---|---|---|
| Accurate phenotyping: Reconciling approaches through Bayesian model averaging. | Chen CC et al. | — | 2017 | → |
| Computer simulation is an undervalued tool for genetic analysis: a historical view and presentation of SHIMSHON--a Web-based genetic simulation package. | Greenberg DA | — | 2011 | → |
| A novel analytical framework for dissecting the genetic architecture of behavioral symptoms in neuropsychiatric disorders. | Deo AJ et al. | — | 2010 | → |
| Computation of the posterior probability of linkage using 'high effect' genetic model priors. | Logue MW et al. | — | 2008 | → |
| A power study of bivariate LOD score analysis of a complex trait and fear/discomfort with strangers. | Ji F et al. | — | 2005 | → |
| Application of family-based association testing to assess the genotype-phenotype association involved in complex traits using single-nucleotide polymorphisms. | Wang MH et al. | — | 2005 | → |
| Assessment and implications of linkage disequilibrium in genome-wide single-nucleotide polymorphism and microsatellite panels. | Goode EL et al. | — | 2005 | → |
| Bias of allele-sharing linkage statistics in the presence of intermarker linkage disequilibrium. | Goode EL et al. | — | 2005 | → |
| Comparison of single-nucleotide polymorphisms and microsatellite markers for linkage analysis in the COGA and simulated data sets for Genetic Analysis Workshop 14: Presentation Groups 1, 2, and 3. | Wilcox MA et al. | — | 2005 | → |
| Dissection of heterogeneous phenotypes for quantitative trait mapping. | Bickeböller H et al. | — | 2005 | → |
| Genetic Analysis Workshop 14: microsatellite and single-nucleotide polymorphism marker loci for genome-wide scans. | Bailey-Wilson JE et al. | — | 2005 | → |
| Methods for detecting gene x gene interaction in multiplex extended pedigrees. | Brock GN et al. | — | 2005 | → |
| Summary of contributions to GAW Group 5: linkage mapping methods, Problem 2. | Cordell HJ | — | 2005 | → |