Longevity Variant Database

Narrow results by variant, study, or associated fields (e.g. gene symbol ADRB2):

Use ontology terms to further narrow results (e.g. aging, insulin, etc.):


  • Variant type: + -

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    Populations | Study Types | Variant Types



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    polymorphism factor odds ratio pvalue initial number replication number Population age of cases shorter lived allele longer lived allele study type reference
    rs2866164 MTTP 1.18 0.34 666 vs 540 1033 vs 359 German <100 G C Candidate Region/Gene 15911777
    rs2866164 MTTP 1.21 0.28 373 vs 540 1033 vs 359 German Centenarians G C Candidate Region/Gene 15911777
    rs1776180 EXO1 1.39 0.01 395 vs 411 455 vs 109 French, German Mean age 101.3 G C Candidate Region/Gene 19698732
    rs4073591 DEAF1 0.002618 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs4073590 DEAF1 0.004259 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs11040489 KRTAP5-6 0.005869 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs4930001 DEAF1 0.010851 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs800140 TSPAN32 0.0081 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs16928120 0.00057 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    rs4986790 TLR4 0.61 273 vs 594 German Mean age 97.9 Candidate Region/Gene 17493663
    56 SNPs - CYP2C gene family CYP2C gene family: CYP2C8, CYP2C9, CYP2C18, CYP2C19 1.0 1,384 vs 945 German Mean age 98.8 Candidate Region/Gene 21798861
    rs11188059 CYP2C 0.04 616 centenarians versus control group of 945 younger individuals German Candidate Region/Gene 21798861
    rs3758391 SIRT1 1.0 386 vs 640 vs 547 German Mean age 101 Candidate Region/Gene 16257164
    rs1885472 SIRT1 1.0 386 vs 640 vs 547 German Mean age 101 Candidate Region/Gene 16257164
    rs2273773 SIRT1 1.0 386 vs 640 vs 547 German Mean age 101 Candidate Region/Gene 16257164
    rs10997870 SIRT1 1.0 386 vs 640 vs 547 German Mean age 101 Candidate Region/Gene 16257164
    rs2234975 SIRT1 1.0 386 vs 640 vs 547 German Mean age 101 Candidate Region/Gene 16257164
    rs7539614 FOXO6 1.02 0.739 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs7547654 FOXO6 1.08 0.2 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs11581271 FOXO6 0.91 0.131 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs1317558 FOXO6 1.11 0.257 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs1317557 FOXO6 1.04 0.824 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs6693260 FOXO6 0.98 0.824 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs4660532 FOXO6 0.93 0.224 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    rs6690527 FOXO6 1.01 0.867 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    • Page 1 of 5
    • 25 of 102 variants

    The Longevity Variant Database (LVDB) is a collaborative effort to catalogue all published genetic variants relevant to human longevity.

    The project is directed by the Health Extension Research Foundation [http://www.healthextension.co/about/], and the online content is managed by the members of the Global Computing Initiative.

    LVDB is driven by an international collaboration of scientists, programmers, and volunteers, including Joe Betts-LaCroix, Kristen Fortney, Daniel Wuttke, Eric K. Morgen, Nick Schaum, John M. Adams, Jessica Choi, Barry Goldberg, Amir Levine, Maria Litovchenko, Aiste Narkeviciute, Emily Quist, Navneet Ramesh, Justin Rebo, Dmitri Shytikov, and Jimi Vyas. o


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