| Literature DB >> 21056961 |
Aroon D Hingorani1, Tina Shah, Meena Kumari, Reecha Sofat, Liam Smeeth.
Abstract
Entities:
Mesh:
Year: 2010 PMID: 21056961 PMCID: PMC3957319 DOI: 10.1136/bmj.c5945
Source DB: PubMed Journal: BMJ ISSN: 0959-8138

Fig 1 The spectrum of common genetic variation includes single nucleotide polymorphism, insertion and deletion polymorphism, nucleotide repeat polymorphism, and copy number variation, all of which may affect coding or non-coding regions of DNA

Fig 2 Manhattan plot from a genome-wide association study of myocardial infarction (adapted, with permission, from Samani and colleagues13). The x axis refers to points along the genome (separated by chromosome) at which each of the several hundred thousand single nucleotide polymorphisms (SNPs; represented by a dot) evaluated are located. The y axis refers to the negative logarithm of the P value for a test of association between each SNP and the binary outcome—the presence or absence of disease. For example, a −log P value of 7 (shown by the dashed red line) equates to a P value for the association of an SNP with disease of 1×10−7 or 0.0000001, and a −log P value of 7.3 equates to 5×10−8
Recently identified genetic variants associated with disease*
| Disease | Examples of research consortiums | Examples of associated genes | Insight on mechanism |
|---|---|---|---|
| Crohn’s disease | WTCCC | Autophagy, immunity | |
| Type 2 diabetes | DIAGRAM WTCCC DGI | Insulin secretion unknown | |
| Myocardial infarction and coronary heart disease | CARDIOGRAM WTCCC | Low density lipoprotein-cholesterol pathway unknown | |
| Age related macular disease | Complement pathway, high density lipoprotein-cholesterol pathway? | ||
| Breast cancer | Asia Breast Cancer Consortium | DNA and cell repair, tumour suppression pathway | |
| Meningococcal disease | International Meningococcal Genetics Consortium | Complement pathway | |
| Tuberculosis | African Tuberculosis Genetics Consortium and WTCCC | GATA6, CTAGE1, RBBP8, CABLES1 | As yet unknown |
*The variants vary in their strength of effect. Some variants (such as BRCA1 in breast cancer and CFH in age related macular disease) are strongly associated with disease risk and thus highly predictive of disease risk, whereas others (such as those listed for myocardial infarction and coronary heart disease) are only weakly associated with disease risk and provide little predictive power.

Fig 3 Association between the population frequency distribution of type 2 diabetes risk alleles (bars) and risk of incident diabetes (red line) in the Whitehall II study (adapted from Talmud and colleagues19)

Fig 4 Conceptual parallels between a randomised controlled trial and a Mendelian randomisation experiment to judge the causal relevance of a biomarker associated with risk of cardiovascular disease (adapted from Casas and colleagues28)