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Dive into the research topics where Delilah Zabaneh is active.

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Featured researches published by Delilah Zabaneh.


European Heart Journal | 2015

Mendelian randomization of blood lipids for coronary heart disease.

Michael V. Holmes; Folkert W. Asselbergs; Tom Palmer; Fotios Drenos; Matthew B. Lanktree; Christopher P. Nelson; Caroline Dale; Sandosh Padmanabhan; Chris Finan; Daniel I. Swerdlow; Vinicius Tragante; Erik P A Van Iperen; Suthesh Sivapalaratnam; Sonia Shah; Clara C. Elbers; Tina Shah; Jorgen Engmann; Claudia Giambartolomei; Jon White; Delilah Zabaneh; Reecha Sofat; Stela McLachlan; Pieter A. Doevendans; Anthony J. Balmforth; Alistair S. Hall; Kari E. North; Berta Almoguera; Ron C. Hoogeveen; Mary Cushman; Myriam Fornage

Aims To investigate the causal role of high-density lipoprotein cholesterol (HDL-C) and triglycerides in coronary heart disease (CHD) using multiple instrumental variables for Mendelian randomization. Methods and results We developed weighted allele scores based on single nucleotide polymorphisms (SNPs) with established associations with HDL-C, triglycerides, and low-density lipoprotein cholesterol (LDL-C). For each trait, we constructed two scores. The first was unrestricted, including all independent SNPs associated with the lipid trait identified from a prior meta-analysis (threshold P < 2 × 10−6); and the second a restricted score, filtered to remove any SNPs also associated with either of the other two lipid traits at P ≤ 0.01. Mendelian randomization meta-analyses were conducted in 17 studies including 62,199 participants and 12,099 CHD events. Both the unrestricted and restricted allele scores for LDL-C (42 and 19 SNPs, respectively) associated with CHD. For HDL-C, the unrestricted allele score (48 SNPs) was associated with CHD (OR: 0.53; 95% CI: 0.40, 0.70), per 1 mmol/L higher HDL-C, but neither the restricted allele score (19 SNPs; OR: 0.91; 95% CI: 0.42, 1.98) nor the unrestricted HDL-C allele score adjusted for triglycerides, LDL-C, or statin use (OR: 0.81; 95% CI: 0.44, 1.46) showed a robust association. For triglycerides, the unrestricted allele score (67 SNPs) and the restricted allele score (27 SNPs) were both associated with CHD (OR: 1.62; 95% CI: 1.24, 2.11 and 1.61; 95% CI: 1.00, 2.59, respectively) per 1-log unit increment. However, the unrestricted triglyceride score adjusted for HDL-C, LDL-C, and statin use gave an OR for CHD of 1.01 (95% CI: 0.59, 1.75). Conclusion The genetic findings support a causal effect of triglycerides on CHD risk, but a causal role for HDL-C, though possible, remains less certain.


Diabetes | 2009

Common Genetic Variation Near Melatonin Receptor MTNR1B Contributes to Raised Plasma Glucose and Increased Risk of Type 2 Diabetes Among Indian Asians and European Caucasians

John Chambers; Weihua Zhang; Delilah Zabaneh; Joban Sehmi; Piyush Jain; Mark McCarthy; Philippe Froguel; Aimo Ruokonen; David J. Balding; Marjo-Riitta Järvelin; James Scott; Paul Elliott; Jaspal S. Kooner

OBJECTIVE Fasting plasma glucose and risk of type 2 diabetes are higher among Indian Asians than among European and North American Caucasians. Few studies have investigated genetic factors influencing glucose metabolism among Indian Asians. RESEARCH DESIGN AND METHODS We carried out genome-wide association studies for fasting glucose in 5,089 nondiabetic Indian Asians genotyped with the Illumina Hap610 BeadChip and 2,385 Indian Asians (698 with type 2 diabetes) genotyped with the Illumina 300 BeadChip. Results were compared with findings in 4,462 European Caucasians. RESULTS We identified three single nucleotide polymorphisms (SNPs) associated with glucose among Indian Asians at P < 5 × 10−8, all near melatonin receptor MTNR1B. The most closely associated was rs2166706 (combined P = 2.1 × 10−9), which is in moderate linkage disequilibrium with rs1387153 (r2 = 0.60) and rs10830963 (r2 = 0.45), both previously associated with glucose in European Caucasians. Risk allele frequency and effect sizes for rs2166706 were similar among Indian Asians and European Caucasians: frequency 46.2 versus 45.0%, respectively (P = 0.44); effect 0.05 (95% CI 0.01–0.08) versus 0.05 (0.03–0.07 mmol/l), respectively, higher glucose per allele copy (P = 0.84). SNP rs2166706 was associated with type 2 diabetes in Indian Asians (odds ratio 1.21 [95% CI 1.06–1.38] per copy of risk allele; P = 0.006). SNPs at the GCK, GCKR, and G6PC2 loci were also associated with glucose among Indian Asians. Risk allele frequencies of rs1260326 (GCKR) and rs560887 (G6PC2) were higher among Indian Asians compared with European Caucasians. CONCLUSIONS Common genetic variation near MTNR1B influences blood glucose and risk of type 2 diabetes in Indian Asians. Genetic variation at the MTNR1B, GCK, GCKR, and G6PC2 loci may contribute to abnormal glucose metabolism and related metabolic disturbances among Indian Asians.


Nature Genetics | 2017

Genome-wide association meta-analysis of 78,308 individuals identifies new loci and genes influencing human intelligence

Suzanne Sniekers; Sven Stringer; Kyoko Watanabe; Philip R. Jansen; Jonathan R. I. Coleman; Eva Krapohl; Erdogan Taskesen; Anke R. Hammerschlag; Aysu Okbay; Delilah Zabaneh; Najaf Amin; Gerome Breen; David Cesarini; Christopher F. Chabris; William G. Iacono; M. Arfan Ikram; Magnus Johannesson; Philipp Koellinger; James J. Lee; Patrik K. E. Magnusson; Matt McGue; Mike Miller; William Ollier; Antony Payton; Neil Pendleton; Robert Plomin; Cornelius A. Rietveld; Henning Tiemeier; Cornelia van Duijn; Danielle Posthuma

Intelligence is associated with important economic and health-related life outcomes. Despite intelligence having substantial heritability (0.54) and a confirmed polygenic nature, initial genetic studies were mostly underpowered. Here we report a meta-analysis for intelligence of 78,308 individuals. We identify 336 associated SNPs (METAL P < 5 × 10−8) in 18 genomic loci, of which 15 are new. Around half of the SNPs are located inside a gene, implicating 22 genes, of which 11 are new findings. Gene-based analyses identified an additional 30 genes (MAGMA P < 2.73 × 10−6), of which all but one had not been implicated previously. We show that the identified genes are predominantly expressed in brain tissue, and pathway analysis indicates the involvement of genes regulating cell development (MAGMA competitive P = 3.5 × 10−6). Despite the well-known difference in twin-based heritability for intelligence in childhood (0.45) and adulthood (0.80), we show substantial genetic correlation (rg = 0.89, LD score regression P = 5.4 × 10−29). These findings provide new insight into the genetic architecture of intelligence.


Molecular Psychiatry | 2016

Phenome-wide analysis of genome-wide polygenic scores

Eva Krapohl; Jack Euesden; Delilah Zabaneh; J-b Pingault; S von Stumm; Philip S. Dale; Gerome Breen; Paul F. O'Reilly; Robert Plomin

Genome-wide polygenic scores (GPS), which aggregate the effects of thousands of DNA variants from genome-wide association studies (GWAS), have the potential to make genetic predictions for individuals. We conducted a systematic investigation of associations between GPS and many behavioral traits, the behavioral phenome. For 3152 unrelated 16-year-old individuals representative of the United Kingdom, we created 13 GPS from the largest GWAS for psychiatric disorders (for example, schizophrenia, depression and dementia) and cognitive traits (for example, intelligence, educational attainment and intracranial volume). The behavioral phenome included 50 traits from the domains of psychopathology, personality, cognitive abilities and educational achievement. We examined phenome-wide profiles of associations for the entire distribution of each GPS and for the extremes of the GPS distributions. The cognitive GPS yielded stronger predictive power than the psychiatric GPS in our UK-representative sample of adolescents. For example, education GPS explained variation in adolescents’ behavior problems (~0.6%) and in educational achievement (~2%) but psychiatric GPS were associated with neither. Despite the modest effect sizes of current GPS, quantile analyses illustrate the ability to stratify individuals by GPS and opportunities for research. For example, the highest and lowest septiles for the education GPS yielded a 0.5 s.d. difference in mean math grade and a 0.25 s.d. difference in mean behavior problems. We discuss the usefulness and limitations of GPS based on adult GWAS to predict genetic propensities earlier in development.


Diabetes | 2015

Sixty-Five Common Genetic Variants and Prediction of Type 2 Diabetes

Philippa J. Talmud; Jackie A. Cooper; Richard Morris; Frank Dudbridge; Tina Shah; Jorgen Engmann; Caroline Dale; Jon White; Stela McLachlan; Delilah Zabaneh; Andrew Wong; Ken K. Ong; Tom R. Gaunt; Michael V. Holmes; Debbie A. Lawlor; Marcus Richards; Rebecca Hardy; Diana Kuh; Nicholas J. Wareham; Claudia Langenberg; Yoav Ben-Shlomo; S. Goya Wannamethee; Mark W. J. Strachan; Meena Kumari; John C. Whittaker; Fotios Drenos; Mika Kivimäki; Aroon D. Hingorani; Jacqueline F. Price; Steve E. Humphries

We developed a 65 type 2 diabetes (T2D) variant–weighted gene score to examine the impact on T2D risk assessment in a U.K.-based consortium of prospective studies, with subjects initially free from T2D (N = 13,294; 37.3% women; mean age 58.5 [38–99] years). We compared the performance of the gene score with the phenotypically derived Framingham Offspring Study T2D risk model and then the two in combination. Over the median 10 years of follow-up, 804 participants developed T2D. The odds ratio for T2D (top vs. bottom quintiles of gene score) was 2.70 (95% CI 2.12–3.43). With a 10% false-positive rate, the genetic score alone detected 19.9% incident cases, the Framingham risk model 30.7%, and together 37.3%. The respective area under the receiver operator characteristic curves were 0.60 (95% CI 0.58–0.62), 0.75 (95% CI 0.73 to 0.77), and 0.76 (95% CI 0.75 to 0.78). The combined risk score net reclassification improvement (NRI) was 8.1% (5.0 to 11.2; P = 3.31 × 10−7). While BMI stratification into tertiles influenced the NRI (BMI ≤24.5 kg/m2, 27.6% [95% CI 17.7–37.5], P = 4.82 × 10−8; 24.5–27.5 kg/m2, 11.6% [95% CI 5.8–17.4], P = 9.88 × 10−5; >27.5 kg/m2, 2.6% [95% CI −1.4 to 6.6], P = 0.20), age categories did not. The addition of the gene score to a phenotypic risk model leads to a potentially clinically important improvement in discrimination of incident T2D.


The Lancet Diabetes & Endocrinology | 2016

Plasma urate concentration and risk of coronary heart disease: a Mendelian randomisation analysis

Jon White; Reecha Sofat; Gibran Hemani; Tina Shah; Jorgen Engmann; Caroline Dale; Sonia Shah; Felix A. Kruger; Claudia Giambartolomei; Daniel I. Swerdlow; Tom Palmer; Stela McLachlan; Claudia Langenberg; Delilah Zabaneh; Ruth C. Lovering; Alana Cavadino; Barbara J. Jefferis; Chris Finan; Andrew Wong; Antoinette Amuzu; Ken K. Ong; Tom R. Gaunt; Helen R. Warren; Teri-Louise Davies; Fotios Drenos; Jackie A. Cooper; Shah Ebrahim; Debbie A. Lawlor; Philippa J. Talmud; Steve E. Humphries

Summary Background Increased circulating plasma urate concentration is associated with an increased risk of coronary heart disease, but the extent of any causative effect of urate on risk of coronary heart disease is still unclear. In this study, we aimed to clarify any causal role of urate on coronary heart disease risk using Mendelian randomisation analysis. Methods We first did a fixed-effects meta-analysis of the observational association of plasma urate and risk of coronary heart disease. We then used a conventional Mendelian randomisation approach to investigate the causal relevance using a genetic instrument based on 31 urate-associated single nucleotide polymorphisms (SNPs). To account for potential pleiotropic associations of certain SNPs with risk factors other than urate, we additionally did both a multivariable Mendelian randomisation analysis, in which the genetic associations of SNPs with systolic and diastolic blood pressure, HDL cholesterol, and triglycerides were included as covariates, and an Egger Mendelian randomisation (MR-Egger) analysis to estimate a causal effect accounting for unmeasured pleiotropy. Findings In the meta-analysis of 17 prospective observational studies (166 486 individuals; 9784 coronary heart disease events) a 1 SD higher urate concentration was associated with an odds ratio (OR) for coronary heart disease of 1·07 (95% CI 1·04–1·10). The corresponding OR estimates from the conventional, multivariable adjusted, and Egger Mendelian randomisation analysis (58 studies; 198 598 individuals; 65 877 events) were 1·18 (95% CI 1·08–1·29), 1·10 (1·00–1·22), and 1·05 (0·92–1·20), respectively, per 1 SD increment in plasma urate. Interpretation Conventional and multivariate Mendelian randomisation analysis implicates a causal role for urate in the development of coronary heart disease, but these estimates might be inflated by hidden pleiotropy. Egger Mendelian randomisation analysis, which accounts for pleiotropy but has less statistical power, suggests there might be no causal effect. These results might help investigators to determine the priority of trials of urate lowering for the prevention of coronary heart disease compared with other potential interventions. Funding UK National Institute for Health Research, British Heart Foundation, and UK Medical Research Council.


International Journal of Epidemiology | 2016

Adult height, coronary heart disease and stroke: a multi-locus Mendelian randomization meta-analysis

Eveline Nüesch; Caroline Dale; Tom Palmer; Jon White; Brendan J. Keating; E P van Iperen; Anuj Goel; Sandosh Padmanabhan; Folkert W. Asselbergs; W. M. M. Verschuren; Cisca Wijmenga; Y. T. van der Schouw; N. C. Onland-Moret; Leslie A. Lange; Gerald K. Hovingh; Suthesh Sivapalaratnam; Richard Morris; Peter H. Whincup; G S Wannamethe; Tom R. Gaunt; Shah Ebrahim; Laura Steel; Nikhil Nair; Alex P. Reiner; Charles Kooperberg; James F. Wilson; Jennifer L. Bolton; Stela McLachlan; Jacqueline F. Price; Mark W. J. Strachan

Abstract Background: We investigated causal effect of completed growth, measured by adult height, on coronary heart disease (CHD), stroke and cardiovascular traits, using instrumental variable (IV) Mendelian randomization meta-analysis. Methods: We developed an allele score based on 69 single nucleotide polymorphisms (SNPs) associated with adult height, identified by the IBCCardioChip, and used it for IV analysis against cardiovascular risk factors and events in 21 studies and 60 028 participants. IV analysis on CHD was supplemented by summary data from 180 height-SNPs from the GIANT consortium and their corresponding CHD estimates derived from CARDIoGRAMplusC4D. Results: IV estimates from IBCCardioChip and GIANT-CARDIoGRAMplusC4D showed that a 6.5-cm increase in height reduced the odds of CHD by 10% [odds ratios 0.90; 95% confidence intervals (CIs): 0.78 to 1.03 and 0.85 to 0.95, respectively],which agrees with the estimate from the Emerging Risk Factors Collaboration (hazard ratio 0.93; 95% CI: 0.91 to 0.94). IV analysis revealed no association with stroke (odds ratio 0.97; 95% CI: 0.79 to 1.19). IV analysis showed that a 6.5-cm increase in height resulted in lower levels of body mass index (P < 0.001), triglycerides (P < 0.001), non high-density (non-HDL) cholesterol (P < 0.001), C-reactive protein (P = 0.042), and systolic blood pressure (P = 0.064) and higher levels of forced expiratory volume in 1 s and forced vital capacity (P < 0.001 for both). Conclusions: Taller individuals have a lower risk of CHD with potential explanations being that taller people have a better lung function and lower levels of body mass index, cholesterol and blood pressure.


Circulation | 2017

Causal Associations of Adiposity and Body Fat Distribution with Coronary Heart Disease, Stroke Subtypes, and Type 2 Diabetes Mellitus: A Mendelian Randomization Analysis

Caroline Dale; Ghazaleh Fatemifar; Tom Palmer; Jon White; David Prieto-Merino; Delilah Zabaneh; Engmann Jel.; T Shah; Andrew Wong; Helen R. Warren; Stela McLachlan; Stella Trompet; Max Moldovan; Richard Morris; Reecha Sofat; Meena Kumari; Elina Hyppönen; Barbara J. Jefferis; Tom R. Gaunt; Yoav Ben-Shlomo; Ang Zhou; Aleksandra Gentry-Maharaj; Andy Ryan; Renée de Mutsert; Raymond Noordam; Mark J. Caulfield; J.W. Jukema; Bradford B. Worrall; Patricia B. Munroe; Usha Menon

Background: The implications of different adiposity measures on cardiovascular disease etiology remain unclear. In this article, we quantify and contrast causal associations of central adiposity (waist-to-hip ratio adjusted for body mass index [WHRadjBMI]) and general adiposity (body mass index [BMI]) with cardiometabolic disease. Methods: Ninety-seven independent single-nucleotide polymorphisms for BMI and 49 single-nucleotide polymorphisms for WHRadjBMI were used to conduct Mendelian randomization analyses in 14 prospective studies supplemented with coronary heart disease (CHD) data from CARDIoGRAMplusC4D (Coronary Artery Disease Genome-wide Replication and Meta-analysis [CARDIoGRAM] plus The Coronary Artery Disease [C4D] Genetics; combined total 66 842 cases), stroke from METASTROKE (12 389 ischemic stroke cases), type 2 diabetes mellitus from DIAGRAM (Diabetes Genetics Replication and Meta-analysis; 34 840 cases), and lipids from GLGC (Global Lipids Genetic Consortium; 213 500 participants) consortia. Primary outcomes were CHD, type 2 diabetes mellitus, and major stroke subtypes; secondary analyses included 18 cardiometabolic traits. Results: Each one standard deviation (SD) higher WHRadjBMI (1 SD≈0.08 U) associated with a 48% excess risk of CHD (odds ratio [OR] for CHD, 1.48; 95% confidence interval [CI], 1.28–1.71), similar to findings for BMI (1 SD≈4.6 kg/m2; OR for CHD, 1.36; 95% CI, 1.22–1.52). Only WHRadjBMI increased risk of ischemic stroke (OR, 1.32; 95% CI, 1.03–1.70). For type 2 diabetes mellitus, both measures had large effects: OR, 1.82 (95% CI, 1.38–2.42) and OR, 1.98 (95% CI, 1.41–2.78) per 1 SD higher WHRadjBMI and BMI, respectively. Both WHRadjBMI and BMI were associated with higher left ventricular hypertrophy, glycemic traits, interleukin 6, and circulating lipids. WHRadjBMI was also associated with higher carotid intima-media thickness (39%; 95% CI, 9%–77% per 1 SD). Conclusions: Both general and central adiposity have causal effects on CHD and type 2 diabetes mellitus. Central adiposity may have a stronger effect on stroke risk. Future estimates of the burden of adiposity on health should include measures of central and general adiposity.


Circulation-cardiovascular Genetics | 2012

Identification of the BCAR1-CFDP1-TMEM170A Locus as a Determinant of Carotid Intima-Media Thickness and Coronary Artery Disease Risk

Karl Gertow; Bengt Sennblad; Rona J. Strawbridge; John Öhrvik; Delilah Zabaneh; Sonia Shah; Fabrizio Veglia; Cristiano Fava; Maryam Kavousi; Stela McLachlan; Mika Kivimäki; Jennifer L. Bolton; Lasse Folkersen; Bruna Gigante; Karin Leander; Max Vikström; Malin Larsson; Angela Silveira; John Deanfield; Benjamin F. Voight; Pierre Fontanillas; Maria Sabater-Lleal; Gualtiero I. Colombo; Meena Kumari; Claudia Langenberg; Nicholas J. Wareham; André G. Uitterlinden; Anders Gabrielsen; Ulf Hedin; Anders Franco-Cereceda

Background—Carotid intima-media thickness (cIMT) is a widely accepted marker of subclinical atherosclerosis. To date, large-scale investigations of genetic determinants of cIMT are sparse. Methods and Results—To identify cIMT-associated genes and genetic variants, a discovery analysis using the Illumina 200K CardioMetabochip was conducted in 3430 subjects with detailed ultrasonographic determinations of cIMT from the IMPROVE (Carotid Intima Media Thickness [IMT] and IMT-Progression as Predictors of Vascular Events in a High Risk European Population) study. Segment-specific IMT measurements of common carotid, bifurcation, and internal carotid arteries, and composite IMT variables considering the whole carotid tree (IMTmean, IMTmax, and IMTmean-max), were analyzed. A replication stage investigating 42 single-nucleotide polymorphisms for association with common carotid IMT was undertaken in 5 independent European cohorts (total n=11 590). A locus on chromosome 16 (lead single-nucleotide polymorphism rs4888378, intronic in CFDP1) was associated with cIMT at significance levels passing multiple testing correction at both stages (array-wide significant discovery P=6.75×10−7 for IMTmax; replication P=7.24×10−6 for common cIMT; adjustments for sex, age, and population substructure where applicable; minor allele frequency 0.43 and 0.41, respectively). The protective minor allele was associated with lower carotid plaque score in a replication cohort (P=0.04, n=2120) and lower coronary artery disease risk in 2 case-control studies of subjects with European ancestry (odds ratio [95% confidence interval] 0.83 [0.77–0.90], P=6.53×10−6, n=13 591; and 0.95 [0.92–0.98], P=1.83×10−4, n=82 297, respectively). Queries of human biobank data sets revealed associations of rs4888378 with nearby gene expression in vascular tissues (n=126–138). Conclusions—This study identified rs4888378 in the BCAR1-CFDP1-TMEM170A locus as a novel genetic determinant of cIMT and coronary artery disease risk in individuals of European descent.


PLOS ONE | 2013

Population Genomics of Cardiometabolic Traits: Design of the University College London-London School of Hygiene and Tropical Medicine-Edinburgh-Bristol (UCLEB) Consortium

Tina Shah; Jorgen Engmann; Caroline Dale; Sonia Shah; Jon White; Claudia Giambartolomei; Stela McLachlan; Delilah Zabaneh; Alana Cavadino; Chris Finan; Andrew K. C. Wong; Antoinette Amuzu; Ken K. Ong; Tom R. Gaunt; Michael V. Holmes; Helen R. Warren; Teri-Louise Davies; Fotios Drenos; Jackie A. Cooper; Reecha Sofat; Mark J. Caulfield; Shah Ebrahim; Debbie A. Lawlor; Philippa J. Talmud; Steve E. Humphries; Christine Power; Elina Hyppönen; Marcus Richards; Rebecca Hardy; Diana Kuh

Substantial advances have been made in identifying common genetic variants influencing cardiometabolic traits and disease outcomes through genome wide association studies. Nevertheless, gaps in knowledge remain and new questions have arisen regarding the population relevance, mechanisms, and applications for healthcare. Using a new high-resolution custom single nucleotide polymorphism (SNP) array (Metabochip) incorporating dense coverage of genomic regions linked to cardiometabolic disease, the University College-London School-Edinburgh-Bristol (UCLEB) consortium of highly-phenotyped population-based prospective studies, aims to: (1) fine map functionally relevant SNPs; (2) precisely estimate individual absolute and population attributable risks based on individual SNPs and their combination; (3) investigate mechanisms leading to altered risk factor profiles and CVD events; and (4) use Mendelian randomisation to undertake studies of the causal role in CVD of a range of cardiovascular biomarkers to inform public health policy and help develop new preventative therapies.

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Tina Shah

Queen Mary University of London

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Sonia Shah

University of Queensland

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Jon White

University College London

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Mika Kivimäki

University College London

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Reecha Sofat

University College London

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