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Dive into the research topics where Laurence D. Parnell is active.

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Featured researches published by Laurence D. Parnell.


Journal of Lipid Research | 2016

Epigenome-wide association study of triglyceride postprandial responses to a high-fat dietary challenge

Chao-Qiang Lai; Mary K. Wojczynski; Laurence D. Parnell; Bertha Hidalgo; Marguerite R. Irvin; Stella Aslibekyan; Michael A. Province; Devin Absher; Donna K. Arnett; Jose M. Ordovas

Postprandial lipemia (PPL), the increased plasma TG concentration after consuming a high-fat meal, is an independent risk factor for CVD. Individual responses to a meal high in fat vary greatly, depending on genetic and lifestyle factors. However, only a few loci have been associated with TG-PPL response. Heritable epigenomic changes may be significant contributors to the unexplained inter-individual PPL variability. We conducted an epigenome-wide association study on 979 subjects with DNA methylation measured from CD4+ T cells, who were challenged with a high-fat meal as a part of the Genetics of Lipid Lowering Drugs and Diet Network study. Eight methylation sites encompassing five genes, LPP, CPT1A, APOA5, SREBF1, and ABCG1, were significantly associated with PPL response at an epigenome-wide level (P < 1.1 × 10−7), but no methylation site reached epigenome-wide significance after adjusting for baseline TG levels. Higher methylation at LPP, APOA5, SREBF1, and ABCG1, and lower methylation at CPT1A methylation were correlated with an increased TG-PPL response. These PPL-associated methylation sites, also correlated with fasting TG, account for a substantially greater amount of phenotypic variance (14.9%) in PPL and fasting TG (16.3%) when compared with the genetic contribution of loci identified by our previous genome-wide association study (4.5%). In summary, the epigenome is a large contributor to the variation in PPL, and this has the potential to be used to modulate PPL and reduce CVD.


Genes and Nutrition | 2017

Proposed guidelines to evaluate scientific validity and evidence for genotype-based dietary advice

Keith Grimaldi; Ben van Ommen; Jose M. Ordovas; Laurence D. Parnell; John C. Mathers; Igor Bendik; Lorraine Brennan; Carlos Celis-Morales; Elisa Cirillo; Hannelore Daniel; Brenda de Kok; Ahmed El-Sohemy; Susan J. Fairweather-Tait; Rosalind Fallaize; Michael Fenech; Lynnette R. Ferguson; Eileen R. Gibney; M. J. Gibney; Ingrid M.F. Gjelstad; Jim Kaput; Anette Karlsen; Silvia Kolossa; Julie A. Lovegrove; Anna L. Macready; Cyril F. M. Marsaux; J. Alfredo Martínez; Fermín I. Milagro; Santiago Navas-Carretero; Helen M. Roche; Wim H. M. Saris

Nutrigenetic research examines the effects of inter-individual differences in genotype on responses to nutrients and other food components, in the context of health and of nutrient requirements. A practical application of nutrigenetics is the use of personal genetic information to guide recommendations for dietary choices that are more efficacious at the individual or genetic subgroup level relative to generic dietary advice. Nutrigenetics is unregulated, with no defined standards, beyond some commercially adopted codes of practice. Only a few official nutrition-related professional bodies have embraced the subject, and, consequently, there is a lack of educational resources or guidance for implementation of the outcomes of nutrigenetic research. To avoid misuse and to protect the public, personalised nutrigenetic advice and information should be based on clear evidence of validity grounded in a careful and defensible interpretation of outcomes from nutrigenetic research studies. Evidence requirements are clearly stated and assessed within the context of state-of-the-art ‘evidence-based nutrition’. We have developed and present here a draft framework that can be used to assess the strength of the evidence for scientific validity of nutrigenetic knowledge and whether ‘actionable’. In addition, we propose that this framework be used as the basis for developing transparent and scientifically sound advice to the public based on nutrigenetic tests. We feel that although this area is still in its infancy, minimal guidelines are required. Though these guidelines are based on semi-quantitative data, they should stimulate debate on their utility. This framework will be revised biennially, as knowledge on the subject increases.


The American Journal of Clinical Nutrition | 2018

Epigenomics and metabolomics reveal the mechanism of the APOA2-saturated fat intake interaction affecting obesity

Chao-Qiang Lai; Caren E. Smith; Laurence D. Parnell; Yu-Chi Lee; Dolores Corella; Paul N. Hopkins; Bertha Hidalgo; Stella Aslibekyan; Michael A. Province; Devin Absher; Donna K. Arnett; Katherine L. Tucker; Jose M. Ordovas

BackgroundnThe putative functional variant -265T>C (rs5082) within the APOA2 promoter has shown consistent interactions with saturated fatty acid (SFA) intake to influence the risk of obesity.nnnObjectivenThe aim of this study was to implement an integrative approach to characterize the molecular basis of this interaction.nnnDesignnWe conducted an epigenome-wide scan on 80 participants carrying either the rs5082 CC or TT genotypes and consuming either a low-SFA (<22 g/d) or high-SFA diet (≥22 g/d), matched for age, sex, BMI, and diabetes status in the Boston Puerto Rican Health Study (BPRHS). We then validated the findings in selected participants in the Genetics of Lipid Lowering Drugs and Diet Network (GOLDN) Study (nxa0=xa0379) and the Framingham Heart Study (FHS) (nxa0=xa0243). Transcription and metabolomics analyses were conducted to determine the relation between epigenetic status, APOA2 mRNA expression, and blood metabolites.nnnResultsnIn the BPRHS, we identified methylation site cg04436964 as exhibiting significant differences between CC and TT participants consuming a high-SFA diet, but not among those consuming low-SFA. Similar results were observed in the GOLDN Study and the FHS. Additionally, in the FHS, cg04436964 methylation was negatively correlated with APOA2 expression in the blood of participants consuming a high-SFA diet. Furthermore, when consuming a high-SFA diet, CC carriers had lower APOA2 expression than those with the TT genotype. Lastly, metabolomic analysis identified 4 pathways as overrepresented by metabolite differences between CC and TT genotypes with high-SFA intake, including tryptophan and branched-chain amino acid (BCAA) pathways. Interestingly, these pathways were linked to rs5082-specific cg04436964 methylation differences in high-SFA consumers.nnnConclusionsnThe epigenetic status of the APOA2 regulatory region is associated with SFA intake and APOA2 -265T>C genotype, promoting an APOA2 expression difference between APOA2 genotypes on a high-SFA diet, and modulating BCAA and tryptophan metabolic pathways. These findings identify potential mechanisms by which this highly reproducible gene-diet interaction influences obesity risk, and contribute new insights to ongoing investigations of the relation between SFA and human health. This study was registered at clinicaltrials.gov as NCT03452787.


Frontiers in Genetics | 2017

A Review of Pathway-Based Analysis Tools That Visualize Genetic Variants

Elisa Cirillo; Laurence D. Parnell; Chris T. Evelo

Pathway analysis is a powerful method for data analysis in genomics, most often applied to gene expression analysis. It is also promising for single-nucleotide polymorphism (SNP) data analysis, such as genome-wide association study data, because it allows the interpretation of variants with respect to the biological processes in which the affected genes and proteins are involved. Such analyses support an interactive evaluation of the possible effects of variations on function, regulation or interaction of gene products. Current pathway analysis software often does not support data visualization of variants in pathways as an alternate method to interpret genetic association results, and specific statistical methods for pathway analysis of SNP data are not combined with these visualization features. In this review, we first describe the visualization options of the tools that were identified by a literature review, in order to provide insight for improvements in this developing field. Tool evaluation was performed using a computational epistatic dataset of gene–gene interactions for obesity risk. Next, we report the necessity to include in these tools statistical methods designed for the pathway-based analysis with SNP data, expressly aiming to define features for more comprehensive pathway-based analysis tools. We conclude by recognizing that pathway analysis of genetic variations data requires a sophisticated combination of the most useful and informative visual aspects of the various tools evaluated.


The American Journal of Clinical Nutrition | 2016

Interaction of an S100A9 gene variant with saturated fat and carbohydrates to modulate insulin resistance in 3 populations of different ancestries

Ruth Blanco-Rojo; Javier Delgado-Lista; Yu-Chi Lee; Chao-Qiang Lai; Pablo Perez-Martinez; Oriol A. Rangel-Zuñiga; Caren E. Smith; Bertha Hidalgo; Juan F. Alcala-Diaz; Francisco Gomez-Delgado; Laurence D. Parnell; Donna K. Arnett; Katherine L. Tucker; Jose Lopez-Miranda; Jose M. Ordovas

BACKGROUNDnS100 calcium-binding protein A9 (S100A9) has previously been identified as a type 2 diabetes (T2D) gene. However, this finding requires independent validation and more in-depth analyses in other populations and ancestries.nnnOBJECTIVESnWe aimed to replicate the associations between an S100A9 variant and insulin resistance and T2D and to initiate an investigation of potential interactions with the habitual diet in several independent populations.nnnDESIGNnWe investigated the association of the S100A9 variant rs3014866 with insulin resistance and T2D risk and its interactions with diet in 3 diverse populations as follows: the CORDIOPREV (Coronary Diet Intervention with Olive Oil and Cardiovascular Prevention; n = 711), which consisted of Spanish white adults; the GOLDN (Genetics of Lipids Lowering Drugs and Diet Network; n = 818), which involved North American non-Hispanic white adults; and Hispanic adults who participated in the BPRHS (Boston Puerto Rican Health Study; n = 1155).nnnRESULTSnMeta-analysis indicated that T carriers presented a lower risk of T2D than CC carriers (pooled OR: 0.714; 95% CI: 0.584, 0.845; P = 0.002). In all 3 populations (CORDIOPREV, GOLDN, and BPRHS), we showed a significant interaction between the rs3014866 single nucleotide polymorphism and dietary SFA:carbohydrate ratio intake for the homeostasis model assessment of insulin resistance (HOMA-IR) (P = 0.028, P = 0.017, and P = 0.026, respectively). CC carriers had a significantly higher HOMA-IR only when SFA:carbohydrate intake was high (P = 0.045 for the CORDIOPREV, P = 0.033 for the GOLDN, and P = 0.046 for the BPRHS) but not when SFA:carbohydrate ratio intake was low.nnnCONCLUSIONSnThe minor allele (T) of the S100A9 variant rs3014866 is associated with lower T2D risk in 3 populations of different ancestries. Note that individuals with the high-risk CC genotype may be more likely to benefit from a low SFA:carbohydrate ratio intake to improve insulin resistance as evaluated with the use of the HOMA-IR. These trials were registered at clinicaltrials.gov as NCT00924937 (CORDIOPREV), NCT00083369 (GOLDN), and NCT01231958 (BPRHS).


PLOS ONE | 2018

From SNPs to pathways: Biological interpretation of type 2 diabetes (T2DM) genome wide association study (GWAS) results

Elisa Cirillo; Martina Kutmon; Manuel Hernández; Tom Hooimeijer; Michiel E. Adriaens; Lars Eijssen; Laurence D. Parnell; Susan L. Coort; Chris T. Evelo

Genome-wide association studies (GWAS) have become a common method for discovery of gene-disease relationships, in particular for complex diseases like Type 2 Diabetes Mellitus (T2DM). The experience with GWAS analysis has revealed that the genetic risk for complex diseases involves cumulative, small effects of many genes and only some genes with a moderate effect. In order to explore the complexity of the relationships between T2DM genes and their potential function at the process level as effected by polymorphism effects, a secondary analysis of a GWAS meta-analysis is presented. Network analysis, pathway information and integration of different types of biological information such as eQTLs and gene-environment interactions are used to elucidate the biological context of the genetic variants and to perform an analysis based on data visualization. We selected a T2DM dataset from a GWAS meta-analysis, and extracted 1,971 SNPs associated with T2DM. We mapped 580 SNPs to 360 genes, and then selected 460 pathways containing these genes from the curated collection of WikiPathways. We then created and analyzed SNP-gene and SNP-gene-pathway network modules in Cytoscape. A focus on genes with robust connections to pathways permitted identification of many T2DM pertinent pathways. However, numerous genes lack literature evidence of association with T2DM. We also speculate on the genes in specific network structures obtained in the SNP-gene network, such as gene-SNP-gene modules. Finally, we selected genes relevant to T2DM from our SNP-gene-pathway network, using different sources that reveal gene-environment interactions and eQTLs. We confirmed functions relevant to T2DM for many genes and have identified some—LPL and APOB—that require further validation to clarify their involvement in T2DM.


Archive | 2010

Apolipoprotein B genetic variants modify the response to fenofi brate: a GOLDN study

Mary K. Wojczynski; Guimin Gao; Ingrid B. Borecki; Paul N. Hopkins; Laurence D. Parnell; Chao-Qiang Lai; Jose M. Ordovas; B. Hong Chung; Donna K. Arnett; Jean Mayer-US


Atherosclerosis Supplements | 2010

MS327 CLUSTERING BY PLASMA LIPOPROTEIN PROFILE REVEALS LARGE FENOFIBRATE RESPONDER SUBGROUP

D.B. van Schalkwijk; K. van Bochove; Laurence D. Parnell; Chao-Qiang Lai; Jose M. Ordovas; A. de Graaf; B. van Ommen; Donna K. Arnett


Archive | 2016

Interacción de los compuestos fenólicos del aceite de oliva virgen con las rutas de secelular

Antonio Camargo; Juan Ruano; Juan Marcelo Fernández; Laurence D. Parnell; Anabel Jiménez; Mónica Santos-González; Carmen Marin; Pablo Perez-Martinez; Marino Uceda; Jose Lopez-Miranda; Francisco Perez-Jimenez


Archive | 2016

Haplotypes of CpG-related SNPs and associations with DNA methylation patterns

Yiyi Ma; Caren E. Smith; Yu-Chi Lee; Laurence D. Parnell; Chao-Qiang Lai; Jose M. Ordovas; Krishnarao Appasani

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Bertha Hidalgo

University of Alabama at Birmingham

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Caren E. Smith

United States Department of Agriculture

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Katherine L. Tucker

University of Massachusetts Lowell

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