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Dive into the research topics where Dan Davison is active.

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Featured researches published by Dan Davison.


Nature | 2015

The fine-scale genetic structure of the British population

Stephen Leslie; Bruce Winney; Garrett Hellenthal; Dan Davison; Abdelhamid Boumertit; Tammy Day; Katarzyna Hutnik; Ellen C. Royrvik; Barry Cunliffe; Daniel John Lawson; Daniel Falush; Colin Freeman; Matti Pirinen; Simon Myers; Mark S. Robinson; Peter Donnelly; Walter F. Bodmer

Fine-scale genetic variation between human populations is interesting as a signature of historical demographic events and because of its potential for confounding disease studies. We use haplotype-based statistical methods to analyse genome-wide single nucleotide polymorphism (SNP) data from a carefully chosen geographically diverse sample of 2,039 individuals from the United Kingdom. This reveals a rich and detailed pattern of genetic differentiation with remarkable concordance between genetic clusters and geography. The regional genetic differentiation and differing patterns of shared ancestry with 6,209 individuals from across Europe carry clear signals of historical demographic events. We estimate the genetic contribution to southeastern England from Anglo-Saxon migrations to be under half, and identify the regions not carrying genetic material from these migrations. We suggest significant pre-Roman but post-Mesolithic movement into southeastern England from continental Europe, and show that in non-Saxon parts of the United Kingdom, there exist genetically differentiated subgroups rather than a general ‘Celtic’ population.


BMC Medical Genomics | 2008

Worldwide population differentiation at disease-associated SNPs

Sean Myles; Dan Davison; Jeffrey C. Barrett; Mark Stoneking; Nicholas J. Timpson

BackgroundRecent genome-wide association (GWA) studies have provided compelling evidence of association between genetic variants and common complex diseases. These studies have made use of cases and controls almost exclusively from populations of European ancestry and little is known about the frequency of risk alleles in other populations. The present study addresses the transferability of disease associations across human populations by examining levels of population differentiation at disease-associated single nucleotide polymorphisms (SNPs).MethodsWe genotyped ~1000 individuals from 53 populations worldwide at 25 SNPs which show robust association with 6 complex human diseases (Crohns disease, type 1 diabetes, type 2 diabetes, rheumatoid arthritis, coronary artery disease and obesity). Allele frequency differences between populations for these SNPs were measured using Fst. The Fst values for the disease-associated SNPs were compared to Fst values from 2750 random SNPs typed in the same set of individuals.ResultsOn average, disease SNPs are not significantly more differentiated between populations than random SNPs in the genome. Risk allele frequencies, however, do show substantial variation across human populations and may contribute to differences in disease prevalence between populations. We demonstrate that, in some cases, risk allele frequency differences are unusually high compared to random SNPs and may be due to the action of local (i.e. geographically-restricted) positive natural selection. Moreover, some risk alleles were absent or fixed in a population, which implies that risk alleles identified in one population do not necessarily account for disease prevalence in all human populations.ConclusionAlthough differences in risk allele frequencies between human populations are not unusually large and are thus likely not due to positive local selection, there is substantial variation in risk allele frequencies between populations which may account for differences in disease prevalence between human populations.


European Journal of Human Genetics | 2012

People of the British Isles: preliminary analysis of genotypes and surnames in a UK-control population

Bruce Winney; Abdelhamid Boumertit; Tammy Day; Dan Davison; Chikodi Echeta; I Evseeva; Katarzyna Hutnik; Stephen Leslie; Ellen C. Royrvik; Susan Tonks; Xiaofeng Yang; James Cheshire; Pa Longley; Pablo Mateos; Alexandra Groom; Caroline L Relton; D. Tim Bishop; Kathryn Black; Emma Northwood; Louise Parkinson; Timothy M. Frayling; Anna M. Steele; Julian Roy Sampson; Turi E. King; Ron Dixon; Derek Middleton; Ba Jennings; Rory Bowden; Peter Donnelly; Walter F. Bodmer

There is a great deal of interest in a fine-scale population structure in the UK, both as a signature of historical immigration events and because of the effect population structure may have on disease association studies. Although population structure appears to have a minor impact on the current generation of genome-wide association studies, it is likely to have a significant part in the next generation of studies designed to search for rare variants. A powerful way of detecting such structure is to control and document carefully the provenance of the samples involved. In this study, we describe the collection of a cohort of rural UK samples (The People of the British Isles), aimed at providing a well-characterised UK-control population that can be used as a resource by the research community, as well as providing a fine-scale genetic information on the British population. So far, some 4000 samples have been collected, the majority of which fit the criteria of coming from a rural area and having all four grandparents from approximately the same area. Analysis of the first 3865 samples that have been geocoded indicates that 75% have a mean distance between grandparental places of birth of 37.3 km, and that about 70% of grandparental places of birth can be classed as rural. Preliminary genotyping of 1057 samples demonstrates the value of these samples for investigating a fine-scale population structure within the UK, and shows how this can be enhanced by the use of surnames.


Journal of Magnetic Resonance Imaging | 2009

Fast left ventricular mass and volume assessment in mice with three-dimensional guide-point modeling.

Alistair A. Young; Hannah Barnes; Dan Davison; Stefan Neubauer; Jürgen E. Schneider

To investigate the accuracy (vs. standard manual analysis) and precision (scan–rescan reproducibility) of three‐dimensional guide‐point modeling (GPM) for the assessment of left ventricular (LV) function in mice.


Mammalian Biology | 2011

Female teat size is a reliable indicator of annual breeding success in European badgers: Genetic validation

Hannah L. Dugdale; Dan Davison; Sandra E. Baker; Stephen A. Ellwood; Chris Newman; Christina D. Buesching; David W. Macdonald


Faculty of Health; Institute of Health and Biomedical Innovation | 2009

Genome-wide association study of ulcerative colitis identifies three new susceptibility loci, including the HNF4A region

Jeffrey C. Barrett; James C. Lee; Charles W. Lees; Natalie J. Prescott; Carl A. Anderson; Anne Phillips; Emma Wesley; K. Parnell; Hu Zhang; Hazel E. Drummond; Elaine R. Nimmo; Dunecan Massey; Katarzyna Blaszczyk; Tim Elliott; L Cotterill; Helen Dallal; Alan J. Lobo; Craig Mowat; J Sanderson; Derek P. Jewell; William G. Newman; Cathryn Edwards; Tariq Ahmad; John C. Mansfield; J Satsangi; Miles Parkes; Christopher G. Mathew; Peter Donnelly; Leena Peltonen; Jenefer M. Blackwell

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Jeffrey C. Barrett

Wellcome Trust Sanger Institute

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