William Rodriguez-Cintron
University of Puerto Rico
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Featured researches published by William Rodriguez-Cintron.
American Journal of Public Health | 2005
Esteban G. Burchard; Luisa N. Borrell; Shweta Choudhry; Mariam Naqvi; Hui Ju Tsai; Jose R. Rodriguez-Santana; Rocio Chapela; Scott D. Rogers; Rui Mei; William Rodriguez-Cintron; Jose F. Arena; Rick A. Kittles; Eliseo J. Pérez-Stable; Elad Ziv; Neil Risch
Latinos are the largest minority population in the United States. Although usually classified as a single ethnic group by researchers, Latinos are heterogeneous from cultural, socioeconomic, and genetic perspectives. From a cultural and social perspective, Latinos represent a wide variety of national origins and ethnic and cultural groups, with a full spectrum of social class. From a genetic perspective, Latinos are descended from indigenous American, European, and African populations. We review the historical events that led to the formation of contemporary Latino populations and use results from recent genetic and clinical studies to illustrate the unique opportunity Latino groups offer for studying the interaction between racial, genetic, and environmental contributions to disease occurrence and drug response.
Human Genetics | 2006
Shweta Choudhry; Natasha E. Coyle; Hua Tang; Keyan Salari; Denise L. Lind; Suzanne Clark; Hui Ju Tsai; Mariam Naqvi; Angie Phong; Ngim Ung; Henry Matallana; Pedro C. Avila; Jesus Casal; Alfonso Torres; Sylvette Nazario; Richard A. Castro; Natalie C. Battle; Eliseo J. Pérez-Stable; Pui-Yan Kwok; Dean Sheppard; Mark D. Shriver; William Rodriguez-Cintron; Neil Risch; Elad Ziv; Esteban G. Burchard
In the United States, asthma prevalence and mortality are the highest among Puerto Ricans and the lowest among Mexicans. Case-control association studies are a powerful strategy for identifying genes of modest effect in complex diseases. However, studies of complex disorders in admixed populations such as Latinos may be confounded by population stratification. We used ancestry informative markers (AIMs) to identify and correct for population stratification among Mexican and Puerto Rican subjects participating in case-control studies of asthma. Three hundred and sixty-two subjects with asthma (Mexican: 181, Puerto Rican: 181) and 359 ethnically matched controls (Mexican: 181, Puerto Rican: 178) were genotyped for 44 AIMs. We observed a greater than expected degree of association between pairs of AIMs on different chromosomes in Mexicans (P<0.00001) and Puerto Ricans (P<0.00002) providing evidence for population substructure and/or recent admixture. To assess the effect of population stratification on association studies of asthma, we measured differences in genetic background of cases and controls by comparing allele frequencies of the 44 AIMs. Among Puerto Ricans but not in Mexicans, we observed a significant overall difference in allele frequencies between cases and controls (P=0.0002); of 44 AIMs tested, 8 (18%) were significantly associated with asthma. However, after adjustment for individual ancestry, only two of these markers remained significantly associated with the disease. Our findings suggest that empirical assessment of the effects of stratification is critical to appropriately interpret the results of case-control studies in admixed populations.
Science | 2014
Andres Moreno-Estrada; Christopher R. Gignoux; Juan Carlos Fernández-López; Fouad Zakharia; Martin Sikora; Alejandra V. Contreras; Victor Acuña-Alonzo; Karla Sandoval; Celeste Eng; Sandra Romero-Hidalgo; Patricia Ortiz-Tello; Victoria Robles; Eimear E. Kenny; Ismael Nuño-Arana; Rodrigo Barquera-Lozano; Gastón Macín-Pérez; Julio Granados-Arriola; Scott Huntsman; Joshua M. Galanter; Marc Via; Jean G. Ford; Rocio Chapela; William Rodriguez-Cintron; Jose R. Rodriguez-Santana; Isabelle Romieu; Juan José Luis Sienra-Monge; Blanca Estela del Río Navarro; Stephanie J. London; Andres Ruiz-Linares; Rodrigo García-Herrera
The population structure of Native Mexicans The genetics of indigenous Mexicans exhibit substantial geographical structure, some as divergent from each other as are existing populations of Europeans and Asians. By performing genome-wide analyses on Native Mexicans from differing populations, Moreno-Estrada et al. successfully recapitulated the pre-Columbian substructure of Mexico. This ancestral structure is evident among cosmopolitan Mexicans and is correlated with subcontinental origins and medically relevant aspects of lung function. These findings exemplify the importance of understanding the genetic contributions of admixed individuals. Science, this issue p. 1280 Indigenous and cosmopolitan Mexican populations are highly structured with genetic variation of medical relevance. Mexico harbors great cultural and ethnic diversity, yet fine-scale patterns of human genome-wide variation from this region remain largely uncharacterized. We studied genomic variation within Mexico from over 1000 individuals representing 20 indigenous and 11 mestizo populations. We found striking genetic stratification among indigenous populations within Mexico at varying degrees of geographic isolation. Some groups were as differentiated as Europeans are from East Asians. Pre-Columbian genetic substructure is recapitulated in the indigenous ancestry of admixed mestizo individuals across the country. Furthermore, two independently phenotyped cohorts of Mexicans and Mexican Americans showed a significant association between subcontinental ancestry and lung function. Thus, accounting for fine-scale ancestry patterns is critical for medical and population genetic studies within Mexico, in Mexican-descent populations, and likely in many other populations worldwide.
The New England Journal of Medicine | 2010
Rajesh Kumar; Max A. Seibold; Melinda C. Aldrich; L. Keoki Williams; Alex P. Reiner; Laura A. Colangelo; Joshua M. Galanter; Christopher R. Gignoux; Donglei Hu; Saunak Sen; Shweta Choudhry; Edward L. Peterson; Jose R. Rodriguez-Santana; William Rodriguez-Cintron; Michael A. Nalls; Tennille S. Leak; Ellen S. O'Meara; Bernd Meibohm; Stephen B. Kritchevsky; Rongling Li; Tamara B. Harris; Deborah A. Nickerson; Myriam Fornage; Paul L. Enright; Elad Ziv; Lewis J. Smith; Kiang Liu; Esteban G. Burchard
BACKGROUND Self-identified race or ethnic group is used to determine normal reference standards in the prediction of pulmonary function. We conducted a study to determine whether the genetically determined percentage of African ancestry is associated with lung function and whether its use could improve predictions of lung function among persons who identified themselves as African American. METHODS We assessed the ancestry of 777 participants self-identified as African American in the Coronary Artery Risk Development in Young Adults (CARDIA) study and evaluated the relation between pulmonary function and ancestry by means of linear regression. We performed similar analyses of data for two independent cohorts of subjects identifying themselves as African American: 813 participants in the Health, Aging, and Body Composition (HABC) study and 579 participants in the Cardiovascular Health Study (CHS). We compared the fit of two types of models to lung-function measurements: models based on the covariates used in standard prediction equations and models incorporating ancestry. We also evaluated the effect of the ancestry-based models on the classification of disease severity in two asthma-study populations. RESULTS African ancestry was inversely related to forced expiratory volume in 1 second (FEV(1)) and forced vital capacity in the CARDIA cohort. These relations were also seen in the HABC and CHS cohorts. In predicting lung function, the ancestry-based model fit the data better than standard models. Ancestry-based models resulted in the reclassification of asthma severity (based on the percentage of the predicted FEV(1)) in 4 to 5% of participants. CONCLUSIONS Current predictive equations, which rely on self-identified race alone, may misestimate lung function among subjects who identify themselves as African American. Incorporating ancestry into normative equations may improve lung-function estimates and more accurately categorize disease severity. (Funded by the National Institutes of Health and others.)
PLOS Genetics | 2012
Joshua M. Galanter; Juan Carlos Fernández-López; Christopher R. Gignoux; Jill S. Barnholtz-Sloan; Ceres Fernandez-Rozadilla; Marc Via; Alfredo Hidalgo-Miranda; Alejandra V. Contreras; Laura Uribe Figueroa; Paola Raska; Gerardo Jimenez-Sanchez; Irma Silva Zolezzi; M.D. Torres; Clara Ruiz–Ponte; Y. Ruiz; Antonio Salas; Elizabeth A. Nguyen; Celeste Eng; Lisbeth Borjas; William Zabala; Guillermo Barreto; Fernando Rondóo González; A. Ibarra; Patricia Taboada; L. Porras; Fabián Moreno; Abigail W. Bigham; Gerardo Gutiérrez; Tom D. Brutsaert; Fabiola León-Velarde
Most individuals throughout the Americas are admixed descendants of Native American, European, and African ancestors. Complex historical factors have resulted in varying proportions of ancestral contributions between individuals within and among ethnic groups. We developed a panel of 446 ancestry informative markers (AIMs) optimized to estimate ancestral proportions in individuals and populations throughout Latin America. We used genome-wide data from 953 individuals from diverse African, European, and Native American populations to select AIMs optimized for each of the three main continental populations that form the basis of modern Latin American populations. We selected markers on the basis of locus-specific branch length to be informative, well distributed throughout the genome, capable of being genotyped on widely available commercial platforms, and applicable throughout the Americas by minimizing within-continent heterogeneity. We then validated the panel in samples from four admixed populations by comparing ancestry estimates based on the AIMs panel to estimates based on genome-wide association study (GWAS) data. The panel provided balanced discriminatory power among the three ancestral populations and accurate estimates of individual ancestry proportions (R2>0.9 for ancestral components with significant between-subject variance). Finally, we genotyped samples from 18 populations from Latin America using the AIMs panel and estimated variability in ancestry within and between these populations. This panel and its reference genotype information will be useful resources to explore population history of admixture in Latin America and to correct for the potential effects of population stratification in admixed samples in the region.
Bioinformatics | 2012
Yael Baran; Bogdan Pasaniuc; Sriram Sankararaman; Dara G. Torgerson; Christopher R. Gignoux; Celeste Eng; William Rodriguez-Cintron; Rocio Chapela; Jean G. Ford; Pedro C. Avila; Jose R. Rodriguez-Santana; Esteban G. Burchard; Eran Halperin
MOTIVATION It is becoming increasingly evident that the analysis of genotype data from recently admixed populations is providing important insights into medical genetics and population history. Such analyses have been used to identify novel disease loci, to understand recombination rate variation and to detect recent selection events. The utility of such studies crucially depends on accurate and unbiased estimation of the ancestry at every genomic locus in recently admixed populations. Although various methods have been proposed and shown to be extremely accurate in two-way admixtures (e.g. African Americans), only a few approaches have been proposed and thoroughly benchmarked on multi-way admixtures (e.g. Latino populations of the Americas). RESULTS To address these challenges we introduce here methods for local ancestry inference which leverage the structure of linkage disequilibrium in the ancestral population (LAMP-LD), and incorporate the constraint of Mendelian segregation when inferring local ancestry in nuclear family trios (LAMP-HAP). Our algorithms uniquely combine hidden Markov models (HMMs) of haplotype diversity within a novel window-based framework to achieve superior accuracy as compared with published methods. Further, unlike previous methods, the structure of our HMM does not depend on the number of reference haplotypes but on a fixed constant, and it is thereby capable of utilizing large datasets while remaining highly efficient and robust to over-fitting. Through simulations and analysis of real data from 489 nuclear trio families from the mainland US, Puerto Rico and Mexico, we demonstrate that our methods achieve superior accuracy compared with published methods for local ancestry inference in Latinos.
American Journal of Human Genetics | 2007
Hua Tang; Shweta Choudhry; Rui Mei; Martin Morgan; William Rodriguez-Cintron; Esteban G. Burchard; Neil Risch
Recent studies have used dense markers to examine the human genome in ancestrally homogeneous populations for hallmarks of selection. No genomewide studies have focused on recently admixed groups--populations that have experienced admixing among continentally divided ancestral populations within the past 200-500 years. New World admixed populations are unique in that they represent the sudden confluence of geographically diverged genomes with novel environmental challenges. Here, we present a novel approach for studying selection by examining the genomewide distribution of ancestry in the genetically admixed Puerto Ricans. We find strong statistical evidence of recent selection in three chromosomal regions, including the human leukocyte antigen region on chromosome 6p, chromosome 8q, and chromosome 11q. Two of these regions harbor genes for olfactory receptors. Interestingly, all three regions exhibit deficiencies in the European-ancestry proportion.
Human Genetics | 2005
Hui-Ju Tsai; Shweta Choudhry; Mariam Naqvi; William Rodriguez-Cintron; Esteban G. Burchard; Elad Ziv
Population stratification may confound the results of genetic association studies among unrelated individuals from admixed populations. Several methods have been proposed to estimate the ancestral information in admixed populations and used to adjust the population stratification in genetic association tests. We evaluate the performances of three different methods: maximum likelihood estimation, ADMIXMAP and Structure through various simulated data sets and real data from Latino subjects participating in a genetic study of asthma. All three methods provide similar information on the accuracy of ancestral estimates and control type I error rate at an approximately similar rate. The most important factor in determining accuracy of the ancestry estimate and in minimizing type I error rate is the number of markers used to estimate ancestry. We demonstrate that approximately 100 ancestry informative markers (AIMs) are required to obtain estimates of ancestry that correlate with correlation coefficients more than 0.9 with the true individual ancestral proportions. In addition, after accounting for the ancestry information in association tests, the excess of type I error rate is controlled at the 5% level when 100 markers are used to estimate ancestry. However, since the effect of admixture on the type I error rate worsens with sample size, the accuracy of ancestry estimates also needs to increase to make the appropriate correction. Using data from the Latino subjects, we also apply these methods to an association study between body mass index and 44 AIMs. These simulations are meant to provide some practical guidelines for investigators conducting association studies in admixed populations.
American Journal of Respiratory and Critical Care Medicine | 2013
Katherine K. Nishimura; Joshua M. Galanter; Lindsey A. Roth; Sam S. Oh; Neeta Thakur; Elizabeth A. Nguyen; Shannon Thyne; Harold J. Farber; Denise Serebrisky; Rajesh Kumar; Emerita Brigino-Buenaventura; Adam Davis; Michael LeNoir; Kelley Meade; William Rodriguez-Cintron; Pedro C. Avila; Luisa N. Borrell; Kirsten Bibbins-Domingo; Jose R. Rodriguez-Santana; Śaunak Sen; Fred Lurmann; John R. Balmes; Esteban G. Burchard
RATIONALE Air pollution is a known asthma trigger and has been associated with short-term asthma symptoms, airway inflammation, decreased lung function, and reduced response to asthma rescue medications. OBJECTIVES To assess a causal relationship between air pollution and childhood asthma using data that address temporality by estimating air pollution exposures before the development of asthma and to establish the generalizability of the association by studying diverse racial/ethnic populations in different geographic regions. METHODS This study included Latino (n = 3,343) and African American (n = 977) participants with and without asthma from five urban regions in the mainland United States and Puerto Rico. Residential history and data from local ambient air monitoring stations were used to estimate average annual exposure to five air pollutants: ozone, nitrogen dioxide (NO₂), sulfur dioxide, particulate matter not greater than 10 μm in diameter, and particulate matter not greater than 2.5 μm in diameter. Within each region, we performed logistic regression to determine the relationship between early-life exposure to air pollutants and subsequent asthma diagnosis. A random-effects model was used to combine the region-specific effects and generate summary odds ratios for each pollutant. MEASUREMENTS AND MAIN RESULTS After adjustment for confounders, a 5-ppb increase in average NO₂ during the first year of life was associated with an odds ratio of 1.17 for physician-diagnosed asthma (95% confidence interval, 1.04-1.31). CONCLUSIONS Early-life NO₂ exposure is associated with childhood asthma in Latinos and African Americans. These results add to a growing body of evidence that traffic-related pollutants may be causally related to childhood asthma.
American Journal of Respiratory and Critical Care Medicine | 2013
Luisa N. Borrell; Elizabeth A. Nguyen; Lindsey A. Roth; Sam S. Oh; Haig Tcheurekdjian; Saunak Sen; Adam Davis; Harold J. Farber; Pedro C. Avila; Emerita Brigino-Buenaventura; Michael LeNoir; Fred Lurmann; Kelley Meade; Denise Serebrisky; William Rodriguez-Cintron; Rajesh Kumar; Jose R. Rodriguez-Santana; Shannon Thyne; Esteban G. Burchard
RATIONALE Obesity is associated with increased asthma morbidity, lower drug responsiveness to inhaled corticosteroids, and worse asthma control. However, most prior investigations on obesity and asthma control have not focused on pediatric populations, considered environmental exposures, or included minority children. OBJECTIVES To examine the association between body mass index categories and asthma control among boys and girls; and whether these associations are modified by age and race/ethnicity. METHODS Children and adolescents ages 8-19 years (n = 2,174) with asthma were recruited from the Genes-environments and Admixture in Latino Americans (GALA II) Study and the Study of African Americans, Asthma, Genes, and Environments (SAGE II). Ordinal logistic regression was used to estimate odds ratios (OR) and their confidence intervals (95% CI) for worse asthma control. MEASUREMENTS AND MAIN RESULTS In adjusted analyses, boys who were obese had a 33% greater chance of having worse asthma control than their normal-weight counterparts (OR, 1.33; 95% CI, 1.04-1.71). However, for girls this association varied with race and ethnicity (P interaction = 0.008). When compared with their normal-weight counterparts, obese African American girls (OR, 0.65; 95% CI, 0.41-1.05) were more likely to have better controlled asthma, whereas Mexican American girls had a 1.91 (95% CI, 1.12-3.28) greater odds of worse asthma control. CONCLUSIONS Worse asthma control is uniformly associated with increased body mass index in boys. Among girls, the direction of this association varied with race/ethnicity.