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Karen N. Conneely

Researcher at Emory University

Publications -  146
Citations -  13236

Karen N. Conneely is an academic researcher from Emory University. The author has contributed to research in topics: DNA methylation & Epigenetics. The author has an hindex of 45, co-authored 135 publications receiving 11190 citations. Previous affiliations of Karen N. Conneely include Cincinnati Children's Hospital Medical Center & University of Michigan.

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Epigenetic Signatures of Cigarette Smoking

Roby Joehanes, +86 more
TL;DR: Cigarette smoking has a broad impact on genome-wide methylation that, at many loci, persists many years aftersmoking cessation, indicating a pattern of persistent altered methylation, with attenuation, after smoking cessation.
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Childhood maltreatment is associated with distinct genomic and epigenetic profiles in posttraumatic stress disorder

TL;DR: The findings that nonoverlapping biological pathways seem to be affected in the two PTSD groups and that changes in DNA methylation appear to have a much greater impact in the childhood-abuse group might reflect differences in the pathophysiology of PTSD, in dependence of exposure to childhood maltreatment.
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The transcriptional landscape of age in human peripheral blood

Marjolein J. Peters, +158 more
TL;DR: Differences between transcriptomic age and chronological age are associated with biological features linked to ageing, such as blood pressure, cholesterol levels, fasting glucose, and body mass index and the transcriptomic prediction model adds biological relevance and complements existing epigenetic prediction models.
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So many correlated tests, so little time! Rapid adjustment of P values for multiple correlated tests.

TL;DR: A method of computing P values adjusted for correlated tests (P(ACT)) that attains the accuracy of permutation or simulation-based tests in much less computation time is presented and it is shown that the method applies to many common association tests that are based on multiple traits, markers, and genetic models.