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Featured researches published by Taissa S. Hauser.


Psychological Science | 2012

Most Reported Genetic Associations With General Intelligence Are Probably False Positives

Christopher F. Chabris; Benjamin Hebert; Daniel J. Benjamin; Jonathan P. Beauchamp; David Cesarini; Matthijs J. H. M. van der Loos; Magnus Johannesson; Patrik K. E. Magnusson; Paul Lichtenstein; Craig S. Atwood; Jeremy Freese; Taissa S. Hauser; Robert M. Hauser; Nicholas A. Christakis; David Laibson

General intelligence (g) and virtually all other behavioral traits are heritable. Associations between g and specific single-nucleotide polymorphisms (SNPs) in several candidate genes involved in brain function have been reported. We sought to replicate published associations between g and 12 specific genetic variants (in the genes DTNBP1, CTSD, DRD2, ANKK1, CHRM2, SSADH, COMT, BDNF, CHRNA4, DISC1, APOE, and SNAP25) using data sets from three independent, well-characterized longitudinal studies with samples of 5,571, 1,759, and 2,441 individuals. Of 32 independent tests across all three data sets, only 1 was nominally significant. By contrast, power analyses showed that we should have expected 10 to 15 significant associations, given reasonable assumptions for genotype effect sizes. For positive controls, we confirmed accepted genetic associations for Alzheimer’s disease and body mass index, and we used SNP-based calculations of genetic relatedness to replicate previous estimates that about half of the variance in g is accounted for by common genetic variation among individuals. We conclude that the molecular genetics of psychology and social science requires approaches that go beyond the examination of candidate genes.


Research in Social Stratification and Mobility | 2003

AS WE AGE: A REVIEW OF THE WISCONSIN LONGITUDINAL STUDY, 1957–2001

William H. Sewell; Robert M. Hauser; Kristen W. Springer; Taissa S. Hauser

Abstract The authors review the Wisconsin Longitudinal Study (WLS) across its history of more than 40 years. The WLS began as a study of post-secondary aspirations and educational attainment among Wisconsin high school graduates of 1957, but it has become a major, long-term study of the life-course and aging. The most visible contributions of the WLS to date have been theories and models of the process of stratification. We review those findings and criticisms of them, especially the claim that we ignore social structures and their effects. These criticisms have often been vague or have lacked empirical support. In research on stratification, the concept of social structure has been more a symbolic goal than a guide to theory and research. This review brings readers up to date with the full range of work on the project and an array of future prospects as of 2003, the year in which the WLS begins its second phase of data collection as a study of aging. A full bibliography of WLS publications is appended.


BMJ Open | 2012

Multigene interactions and the prediction of depression in the Wisconsin Longitudinal Study

Nicholas S. Roetker; James A. Yonker; C. Lee; Chang; J J Basson; Carol Roan; Taissa S. Hauser; Robert M. Hauser; Craig S. Atwood

Objectives Single genetic loci offer little predictive power for the identification of depression. This study examined whether an analysis of gene–gene (G × G) interactions of 78 single nucleotide polymorphisms (SNPs) in genes associated with depression and age-related diseases would identify significant interactions with increased predictive power for depression. Design A retrospective cohort study. Setting A survey of participants in the Wisconsin Longitudinal Study. Participants A total of 4811 persons (2464 women and 2347 men) who provided saliva for genotyping; the group comes from a randomly selected sample of Wisconsin high school graduates from the class of 1957 as well as a randomly selected sibling, almost all of whom are non-Hispanic white. Primary outcome measure Depression as determine by the Composite International Diagnostic Interview–Short-Form. Results Using a classification tree approach (recursive partitioning (RP)), the authors identified a number of candidate G × G interactions associated with depression. The primary SNP splits revealed by RP (ANKK1 rs1800497 (also known as DRD2 Taq1A) in men and DRD2 rs224592 in women) were found to be significant as single factors by logistic regression (LR) after controlling for multiple testing (p=0.001 for both). Without considering interaction effects, only one of the five subsequent RP splits reached nominal significance in LR (FTO rs1421085 in women, p=0.008). However, after controlling for G × G interactions by running LR on RP-specific subsets, every split became significant and grew larger in magnitude (OR (before) → (after): men: GNRH1 novel SNP: (1.43 → 1.57); women: APOC3 rs2854116: (1.28 → 1.55), ACVR2B rs3749386: (1.11 → 2.17), FTO rs1421085: (1.32 → 1.65), IL6 rs1800795: (1.12 → 1.85)). Conclusions The results suggest that examining G × G interactions improves the identification of genetic associations predictive of depression. 4 of the SNPs identified in these interactions were located in two pathways well known to impact depression: neurotransmitter (ANKK1 and DRD2) and neuroendocrine (GNRH1 and ACVR2B) signalling. This study demonstrates the utility of RP analysis as an efficient and powerful exploratory analysis technique for uncovering genetic and molecular pathway interactions associated with disease aetiology.


Age | 2013

Hypothalamic-pituitary-gonadal axis homeostasis predicts longevity

James A. Yonker; Vicky Chang; Nicholas S. Roetker; Taissa S. Hauser; Robert M. Hauser; Craig S. Atwood

The reproductive-cell cycle theory of aging posits that reproductive hormone changes associated with menopause and andropause drive senescence via altered cell cycle signaling. Using data from the Wisconsin Longitudinal Study (n = 5,034), we analyzed the relationship between longevity and menopause, including other factors that impact “ovarian lifespan” such as births, oophorectomy, and hormone replacement therapy. We found that later onset of menopause was associated with lower mortality, with and without adjusting for additional factors (years of education, smoking status, body mass index, and marital status). Each year of delayed menopause resulted in a 2.9% reduction in mortality; after including a number of additional controls, the effect was attenuated modestly but remained statistically significant (2.6% reduction in mortality). We also found that no other reproductive parameters assessed added to the prediction of longevity, suggesting that reproductive factors shown to affect longevity elsewhere may be mediated by age of menopause. Thus, surgical and natural menopause at age 40, for example, resulted in identical survival probabilities. These results support the maintenance of the hypothalamic–pituitary–gonadal axis in homeostasis in prolonging human longevity, which provides a coherent framework for understanding the relationship between reproduction and longevity.


American Journal of Public Health | 2013

Assessment of Genetic and Nongenetic Interactions for the Prediction of Depressive Symptomatology: An Analysis of the Wisconsin Longitudinal Study Using Machine Learning Algorithms

Nicholas S. Roetker; C. David Page; James A. Yonker; Vicky Chang; Carol Roan; Pamela Herd; Taissa S. Hauser; Robert M. Hauser; Craig S. Atwood

OBJECTIVES We examined depression within a multidimensional framework consisting of genetic, environmental, and sociobehavioral factors and, using machine learning algorithms, explored interactions among these factors that might better explain the etiology of depressive symptoms. METHODS We measured current depressive symptoms using the Center for Epidemiologic Studies Depression Scale (n = 6378 participants in the Wisconsin Longitudinal Study). Genetic factors were 78 single nucleotide polymorphisms (SNPs); environmental factors-13 stressful life events (SLEs), plus a composite proportion of SLEs index; and sociobehavioral factors-18 personality, intelligence, and other health or behavioral measures. We performed traditional SNP associations via logistic regression likelihood ratio testing and explored interactions with support vector machines and Bayesian networks. RESULTS After correction for multiple testing, we found no significant single genotypic associations with depressive symptoms. Machine learning algorithms showed no evidence of interactions. Naïve Bayes produced the best models in both subsets and included only environmental and sociobehavioral factors. CONCLUSIONS We found no single or interactive associations with genetic factors and depressive symptoms. Various environmental and sociobehavioral factors were more predictive of depressive symptoms, yet their impacts were independent of one another. A genome-wide analysis of genetic alterations using machine learning methodologies will provide a framework for identifying genetic-environmental-sociobehavioral interactions in depressive symptoms.


Review of economics | 2012

The Promises and Pitfalls of Genoeconomics

Daniel J. Benjamin; David Cesarini; Christopher F. Chabris; Edward L. Glaeser; David Laibson; Vilmundur Guðnason; Tamara B. Harris; Lenore J. Launer; Shaun Purcell; Albert V. Smith; Magnus Johannesson; Patrik K. E. Magnusson; Jonathan P. Beauchamp; Nicholas A. Christakis; Craig S. Atwood; Benjamin Hebert; Jeremy Freese; Robert M. Hauser; Taissa S. Hauser; Alexander Grankvist; Christina M. Hultman; Paul Lichtenstein


Archive | 2003

As We Age: The Wisconsin Longitudinal Study, 1957-2001

William H. Sewell; Robert M. Hauser; Kristen W. Springer; Taissa S. Hauser


IASSIST Quarterly | 1992

The Wisconsin Longitudinal Study: Adults As Parents And Children At Age 50

Robert M. Hauser; William H. Sewell; John Allen Logan; Taissa S. Hauser; Ryff C


Archive | 1994

The Class of 1957 After 35 Years: Overview and Preliminary Findings

Robert M. Hauser; Deborah Carr; Taissa S. Hauser; Jeffrey Hayes; Daphne Kuo; William Magee; John Presti; Diane Shinberg; Megan M. Sweeney; Theresa Thompson-Colon; John Robert Warren


Social Structure and Behavior: Essays in Honor of William H. Sewell | 1982

Stereotypes: Their Consequences for Race and Ethnic Interaction

Stanley Lieberson; Robert M. Hauser; David Mechanic; Archibald O. Haller; Taissa S. Hauser

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Robert M. Hauser

University of Wisconsin-Madison

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Craig S. Atwood

University of Wisconsin-Madison

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James A. Yonker

University of Wisconsin-Madison

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Nicholas S. Roetker

University of Wisconsin-Madison

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Carol Roan

University of Wisconsin-Madison

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Vicky Chang

University of Wisconsin-Madison

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William H. Sewell

University of Wisconsin-Madison

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Archibald O. Haller

University of Wisconsin-Madison

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