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Hermine H. Maes

Bio: Hermine H. Maes is an academic researcher from Virginia Commonwealth University. The author has contributed to research in topics: Twin study & Heritability. The author has an hindex of 56, co-authored 177 publications receiving 13085 citations. Previous affiliations of Hermine H. Maes include Argonne National Laboratory & Katholieke Universiteit Leuven.


Papers
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Journal ArticleDOI
TL;DR: Data from the Virginia 30,000, including twins and their parents, siblings, spouses, and children, were analyzed using a structural equation model (Stealth) and no evidence was found for a special MZ twin environment, thereby supporting the equal environment assumption.
Abstract: We review the literature on the familial resemblance of body mass index (BMI) and other adiposity measures and find strikingly convergent results for a variety of relationships. Results from twin studies suggest that genetic factors explain 50 to 90% of the variance in BMI. Family studies generally report estimates of parent–offspring and sibling correlations in agreement with heritabilities of 20 to 80%. Data from adoption studies are consistent with genetic factors accounting for 20 to 60% of the variation in BMI. Based on data from more than 25,000 twin pairs and 50,000 biological and adoptive family members, the weighted mean correlations are .74 for MZ twins, .32 for DZ twins, .25 for siblings, .19 for parent–offspring pairs, .06 for adoptive relatives, and .12 for spouses. Advantages and disadvantages of twin, family, and adoption studies are reviewed. Data from the Virginia 30,000, including twins and their parents, siblings, spouses, and children, were analyzed using a structural equation model (Stealth) which estimates additive and dominance genetic variance, cultural transmission, assortative mating, nonparental shared environment, and special twin and MZ twin environmental variance. Genetic factors explained 67% of the variance in males and females, of which half is due to dominance. A small proportion of the genetic variance was attributed to the consequences of assortative mating. The remainder of the variance is accounted for by unique environmental factors, of which 7% is correlated across twins. No evidence was found for a special MZ twin environment, thereby supporting the equal environment assumption. These results are consistent with other studies in suggesting that genetic factors play a significant role in the causes of individual differences in relative body weight and human adiposity.

1,567 citations

Journal ArticleDOI
Helena Furberg1, Yunjung Kim1, Jennifer Dackor1, Eric Boerwinkle2, Nora Franceschini1, Diego Ardissino, Luisa Bernardinelli3, Luisa Bernardinelli4, Pier Mannuccio Mannucci5, Francesco Mauri, Piera Angelica Merlini, Devin Absher, Themistocles L. Assimes6, Stephen P. Fortmann6, Carlos Iribarren7, Joshua W. Knowles6, Thomas Quertermous6, Luigi Ferrucci8, Toshiko Tanaka8, Joshua C. Bis9, Curt D. Furberg10, Talin Haritunians11, Barbara McKnight9, Bruce M. Psaty9, Bruce M. Psaty12, Kent D. Taylor11, Evan L. Thacker9, Peter Almgren13, Leif Groop13, Claes Ladenvall13, Michael Boehnke14, Anne U. Jackson14, Karen L. Mohlke1, Heather M. Stringham14, Jaakko Tuomilehto15, Jaakko Tuomilehto16, Emelia J. Benjamin17, Shih-Jen Hwang8, Daniel Levy17, Sarah R. Preis8, Ramachandran S. Vasan17, Jubao Duan18, Pablo V. Gejman18, Douglas F. Levinson6, Alan R. Sanders18, Jianxin Shi8, Esther H. Lips19, James McKay19, Antonio Agudo, Luigi Barzan, Vladimir Bencko20, Simone Benhamou21, Simone Benhamou22, Xavier Castellsagué, Cristina Canova23, David I. Conway24, Eleonora Fabianova, Lenka Foretova, Vladimir Janout25, Claire M. Healy26, Ivana Holcatova20, Kristina Kjærheim, Pagona Lagiou27, Jolanta Lissowska, Ray Lowry28, Tatiana V. Macfarlane29, Dana Mates, Lorenzo Richiardi30, Peter Rudnai, Neonilia Szeszenia-Dabrowska31, David Zaridze32, Ariana Znaor, Mark Lathrop, Paul Brennan19, Stefania Bandinelli, Timothy M. Frayling33, Jack M. Guralnik8, Yuri Milaneschi, John R. B. Perry33, David Altshuler34, David Altshuler35, Roberto Elosua, S. Kathiresan35, S. Kathiresan34, Gavin Lucas, Olle Melander13, Christopher J. O'Donnell8, Veikko Salomaa15, Stephen M. Schwartz9, Benjamin F. Voight36, Brenda W.J.H. Penninx37, Johannes H. Smit37, Nicole Vogelzangs37, Dorret I. Boomsma37, Eco J. C. de Geus37, Jacqueline M. Vink37, Gonneke Willemsen37, Stephen J. Chanock8, Fangyi Gu35, Susan E. Hankinson35, David J. Hunter35, Albert Hofman38, Henning Tiemeier38, André G. Uitterlinden38, Cornelia M. van Duijn38, Stefan Walter38, Daniel I. Chasman35, Brendan M. Everett35, Guillaume Paré35, Paul M. Ridker35, Ming D. Li39, Hermine H. Maes40, Janet Audrain-McGovern41, Danielle Posthuma37, Laura M. Thornton1, Caryn Lerman41, Jaakko Kaprio16, Jaakko Kaprio15, Jed E. Rose42, John P. A. Ioannidis43, John P. A. Ioannidis44, Peter Kraft35, Danyu Lin1, Patrick F. Sullivan1 
TL;DR: A meta-analyses of several smoking phenotypes within cohorts of the Tobacco and Genetics Consortium found the strongest association was a synonymous 15q25 SNP in the nicotinic receptor gene CHRNA3, and three loci associated with number of cigarettes smoked per day were identified.
Abstract: Consistent but indirect evidence has implicated genetic factors in smoking behavior1,2. We report meta-analyses of several smoking phenotypes within cohorts of the Tobacco and Genetics Consortium (n = 74,053). We also partnered with the European Network of Genetic and Genomic Epidemiology (ENGAGE) and Oxford-GlaxoSmithKline (Ox-GSK) consortia to follow up the 15 most significant regions (n > 140,000). We identified three loci associated with number of cigarettes smoked per day. The strongest association was a synonymous 15q25 SNP in the nicotinic receptor gene CHRNA3 (rs1051730[A], b = 1.03, standard error (s.e.) = 0.053, beta = 2.8 x 10(-73)). Two 10q25 SNPs (rs1329650[G], b = 0.367, s. e. = 0.059, beta = 5.7 x 10(-10); and rs1028936[A], b = 0.446, s. e. = 0.074, beta = 1.3 x 10(-9)) and one 9q13 SNP in EGLN2 (rs3733829[G], b = 0.333, s. e. = 0.058, P = 1.0 x 10(-8)) also exceeded genome-wide significance for cigarettes per day. For smoking initiation, eight SNPs exceeded genome-wide significance, with the strongest association at a nonsynonymous SNP in BDNF on chromosome 11 (rs6265[C], odds ratio (OR) = 1.06, 95% confidence interval (Cl) 1.04-1.08, P = 1.8 x 10(-8)). One SNP located near DBH on chromosome 9 (rs3025343[G], OR = 1.12, 95% Cl 1.08-1.18, P = 3.6 x 10(-8)) was significantly associated with smoking cessation.

1,104 citations

Journal ArticleDOI
TL;DR: The OpenMx data structures are introduced—these novel structures define the user interface framework and provide new opportunities for model specification and a discussion of directions for future development.
Abstract: OpenMx is free, full-featured, open source, structural equation modeling (SEM) software. OpenMx runs within the R statistical programming environment on Windows, Mac OS–X, and Linux computers. The rationale for developing OpenMx is discussed along with the philosophy behind the user interface. The OpenMx data structures are introduced—these novel structures define the user interface framework and provide new opportunities for model specification. Two short example scripts for the specification and fitting of a confirmatory factor model are next presented. We end with an abbreviated list of modeling applications available in OpenMx 1.0 and a discussion of directions for future development.

1,045 citations

Journal ArticleDOI
TL;DR: Ease-of-use improvements include helper functions to standardize model parameters and compute their Jacobian-based standard errors, access to model components through standard R $ mechanisms, and improved tab completion from within the R Graphical User Interface.
Abstract: The new software package OpenMx 2.0 for structural equation and other statistical modeling is introduced and its features are described. OpenMx is evolving in a modular direction and now allows a mix-and-match computational approach that separates model expectations from fit functions and optimizers. Major backend architectural improvements include a move to swappable open-source optimizers such as the newly written CSOLNP. Entire new methodologies such as item factor analysis and state space modeling have been implemented. New model expectation functions including support for the expression of models in LISREL syntax and a simplified multigroup expectation function are available. Ease-of-use improvements include helper functions to standardize model parameters and compute their Jacobian-based standard errors, access to model components through standard R $ mechanisms, and improved tab completion from within the R Graphical User Interface.

756 citations

Journal ArticleDOI
TL;DR: This study replicates a recent report of a genotype-environment interaction that predicts individual variation in risk for antisocial behavior in boys and finds that low monoamine oxidase A activity increased risk for conduct disorder only in the presence of an adverse childhood environment.
Abstract: Background Very little is known about how different sets of risk factors interact to influence risk for psychiatric disorder. Objective To replicate a recent report of a genotype-environment interaction that predicts risk for antisocial behavior in boys. Design Characterizing risk for conduct disorder in boys in association with monoamine oxidase A genotype and exposure to familial adversity, defined by interparental violence, parental neglect, and inconsistent discipline. Setting A community-based sample of twin boys. Participants Five hundred fourteen male twins aged 8 to 17 years. Main Outcome Measure Conduct disorder. Results There was a main effect of adversity but not of monoamine oxidase A on risk for conduct disorder. Low monoamine oxidase A activity increased risk for conduct disorder only in the presence of an adverse childhood environment. Neither a passive nor an evocative genotype-environment correlation accounted for the interaction. Conclusion This study replicates a recent report of a genotype-environment interaction that predicts individual variation in risk for antisocial behavior in boys.

517 citations


Cited by
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TL;DR: The aims behind the development of the lavaan package are explained, an overview of its most important features are given, and some examples to illustrate how lavaan works in practice are provided.
Abstract: Structural equation modeling (SEM) is a vast field and widely used by many applied researchers in the social and behavioral sciences. Over the years, many software packages for structural equation modeling have been developed, both free and commercial. However, perhaps the best state-of-the-art software packages in this field are still closed-source and/or commercial. The R package lavaan has been developed to provide applied researchers, teachers, and statisticians, a free, fully open-source, but commercial-quality package for latent variable modeling. This paper explains the aims behind the development of the package, gives an overview of its most important features, and provides some examples to illustrate how lavaan works in practice.

14,401 citations

Journal Article
TL;DR: For the next few weeks the course is going to be exploring a field that’s actually older than classical population genetics, although the approach it’ll be taking to it involves the use of population genetic machinery.
Abstract: So far in this course we have dealt entirely with the evolution of characters that are controlled by simple Mendelian inheritance at a single locus. There are notes on the course website about gametic disequilibrium and how allele frequencies change at two loci simultaneously, but we didn’t discuss them. In every example we’ve considered we’ve imagined that we could understand something about evolution by examining the evolution of a single gene. That’s the domain of classical population genetics. For the next few weeks we’re going to be exploring a field that’s actually older than classical population genetics, although the approach we’ll be taking to it involves the use of population genetic machinery. If you know a little about the history of evolutionary biology, you may know that after the rediscovery of Mendel’s work in 1900 there was a heated debate between the “biometricians” (e.g., Galton and Pearson) and the “Mendelians” (e.g., de Vries, Correns, Bateson, and Morgan). Biometricians asserted that the really important variation in evolution didn’t follow Mendelian rules. Height, weight, skin color, and similar traits seemed to

9,847 citations

Journal ArticleDOI
22 Jan 2009-Nature
TL;DR: The faecal microbial communities of adult female monozygotic and dizygotic twin pairs concordant for leanness or obesity, and their mothers are characterized to address how host genotype, environmental exposure and host adiposity influence the gut microbiome.
Abstract: The human distal gut harbours a vast ensemble of microbes (the microbiota) that provide important metabolic capabilities, including the ability to extract energy from otherwise indigestible dietary polysaccharides. Studies of a few unrelated, healthy adults have revealed substantial diversity in their gut communities, as measured by sequencing 16S rRNA genes, yet how this diversity relates to function and to the rest of the genes in the collective genomes of the microbiota (the gut microbiome) remains obscure. Studies of lean and obese mice suggest that the gut microbiota affects energy balance by influencing the efficiency of calorie harvest from the diet, and how this harvested energy is used and stored. Here we characterize the faecal microbial communities of adult female monozygotic and dizygotic twin pairs concordant for leanness or obesity, and their mothers, to address how host genotype, environmental exposure and host adiposity influence the gut microbiome. Analysis of 154 individuals yielded 9,920 near full-length and 1,937,461 partial bacterial 16S rRNA sequences, plus 2.14 gigabases from their microbiomes. The results reveal that the human gut microbiome is shared among family members, but that each person's gut microbial community varies in the specific bacterial lineages present, with a comparable degree of co-variation between adult monozygotic and dizygotic twin pairs. However, there was a wide array of shared microbial genes among sampled individuals, comprising an extensive, identifiable 'core microbiome' at the gene, rather than at the organismal lineage, level. Obesity is associated with phylum-level changes in the microbiota, reduced bacterial diversity and altered representation of bacterial genes and metabolic pathways. These results demonstrate that a diversity of organismal assemblages can nonetheless yield a core microbiome at a functional level, and that deviations from this core are associated with different physiological states (obese compared with lean).

6,970 citations

Journal ArticleDOI
TL;DR: March 5, 2019 e1 WRITING GROUP MEMBERS Emelia J. Virani, MD, PhD, FAHA, Chair Elect On behalf of the American Heart Association Council on Epidemiology and Prevention Statistics Committee and Stroke Statistics Subcommittee.
Abstract: March 5, 2019 e1 WRITING GROUP MEMBERS Emelia J. Benjamin, MD, ScM, FAHA, Chair Paul Muntner, PhD, MHS, FAHA, Vice Chair Alvaro Alonso, MD, PhD, FAHA Marcio S. Bittencourt, MD, PhD, MPH Clifton W. Callaway, MD, FAHA April P. Carson, PhD, MSPH, FAHA Alanna M. Chamberlain, PhD Alexander R. Chang, MD, MS Susan Cheng, MD, MMSc, MPH, FAHA Sandeep R. Das, MD, MPH, MBA, FAHA Francesca N. Delling, MD, MPH Luc Djousse, MD, ScD, MPH Mitchell S.V. Elkind, MD, MS, FAHA Jane F. Ferguson, PhD, FAHA Myriam Fornage, PhD, FAHA Lori Chaffin Jordan, MD, PhD, FAHA Sadiya S. Khan, MD, MSc Brett M. Kissela, MD, MS Kristen L. Knutson, PhD Tak W. Kwan, MD, FAHA Daniel T. Lackland, DrPH, FAHA Tené T. Lewis, PhD Judith H. Lichtman, PhD, MPH, FAHA Chris T. Longenecker, MD Matthew Shane Loop, PhD Pamela L. Lutsey, PhD, MPH, FAHA Seth S. Martin, MD, MHS, FAHA Kunihiro Matsushita, MD, PhD, FAHA Andrew E. Moran, MD, MPH, FAHA Michael E. Mussolino, PhD, FAHA Martin O’Flaherty, MD, MSc, PhD Ambarish Pandey, MD, MSCS Amanda M. Perak, MD, MS Wayne D. Rosamond, PhD, MS, FAHA Gregory A. Roth, MD, MPH, FAHA Uchechukwu K.A. Sampson, MD, MBA, MPH, FAHA Gary M. Satou, MD, FAHA Emily B. Schroeder, MD, PhD, FAHA Svati H. Shah, MD, MHS, FAHA Nicole L. Spartano, PhD Andrew Stokes, PhD David L. Tirschwell, MD, MS, MSc, FAHA Connie W. Tsao, MD, MPH, Vice Chair Elect Mintu P. Turakhia, MD, MAS, FAHA Lisa B. VanWagner, MD, MSc, FAST John T. Wilkins, MD, MS, FAHA Sally S. Wong, PhD, RD, CDN, FAHA Salim S. Virani, MD, PhD, FAHA, Chair Elect On behalf of the American Heart Association Council on Epidemiology and Prevention Statistics Committee and Stroke Statistics Subcommittee

5,739 citations

01 Jan 2016
TL;DR: The modern applied statistics with s is universally compatible with any devices to read, and is available in the digital library an online access to it is set as public so you can download it instantly.
Abstract: Thank you very much for downloading modern applied statistics with s. As you may know, people have search hundreds times for their favorite readings like this modern applied statistics with s, but end up in harmful downloads. Rather than reading a good book with a cup of coffee in the afternoon, instead they cope with some harmful virus inside their laptop. modern applied statistics with s is available in our digital library an online access to it is set as public so you can download it instantly. Our digital library saves in multiple countries, allowing you to get the most less latency time to download any of our books like this one. Kindly say, the modern applied statistics with s is universally compatible with any devices to read.

5,249 citations