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.):


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    Populations | Study Types | Variant Types



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    variants.jpg
    polymorphism factor odds ratio pvalue initial number replication number Population age of cases shorter lived allele longer lived allele study type reference
    rs2267723 GHRHR 0.70 0.0001 1089 vs 736 1613 vs 1104 Danish 92.2–93.8 (mean age 93.2) G Candidate Region/Gene 22406557
    rs11571461 RAD52 2.23 0.0001 1089 vs 736 1613 vs 1104 Danish 92.2–93.8 (mean age 93.2) A Candidate Region/Gene 22406557
    rs2542052 APOC3 0.0001 213 old vs 216 offspring vs 258 controls Ashkenazi Jewish A Candidate Region/Gene 16602826
    rs2701858, rs9486902 3.23 0.0001 1088 Danish 92+ Candidate Region/Gene 23607278
    rs4746720 SIRT1 2.10 0.0001 223 vs 277 Chinese Average age 93 CC, TT CT Candidate Region/Gene 23450480
    rs3803304 AKT1 0.48 0.00016 294 vs 603;279 vs 797;383 vs 363 Caucasian Mean age 95.3; 94.5; 97.7 C G Candidate Region/Gene 19489743
    rs13251813 WRN 1.84 0.0002 1089 vs 736 1613 vs 1104 Danish 92-93 years old G A Candidate Region/Gene 22406557
    HLA-DQB1 haplotypes HLA-DQB1 0.0002 120 vs 129 Okinawan Mean age 102.3 +/- 1.9 years non-DQB1*0503 alleles DQB1*0503 Candidate Region/Gene 9389323
    rs8052394 MT1a 2.16 0.0002 151 vs 100 Italian Mean age 91.4 +/- 4.1 A Candidate Region/Gene 16955215
    rs2764264 FOXO3 0.0002 213 vs 402 Japanese minimum 95; mean 97.9 T Candidate Region/Gene 18765803
    rs3800231 FOXO3 1.42 0.0002 388 vs 371 535 vs 553 German mean age 98.4 years Candidate Region/Gene 19196970
    rs13251813 WRN 1.84 0.0002 1089 vs 736 1613 vs 1104 Danish 92.2–93.8 (mean age 93.2 G Candidate Region/Gene 22406557
    rs1800896 IL10 3.10 0.0003 142 vs 153 Mean age 67 AA GG Candidate Region/Gene 15466015
    rs1805097 IRS2 2.03 0.0003 144 vs 418 Italian 85-100 years old non-AA AA Candidate Region/Gene 19887537
    rs1800896 IL-10 3.00 0.0003 142 vs 153 Italian Mean age 67 AA GG Candidate Region/Gene 15466015
    rs3220637 XRCC1 0.0005 430 (case) vs 290 British Mean age 70 16 Candidate Region/Gene 16518718
    SI000565Q APOB 0.0005 191 (case) vs 53 (initial) Chinese > 90 baseline, Mean age 97 +/- 3 Short Long Candidate Region/Gene 17393087
    rs429358, rs7412 APOE 0.0005 318 vs 350 376 vs 506 American, Caucasian Mean age 100,8 e4 e2 Candidate Region/Gene 18034366
    rs2075650 APOE 0.000527 1364 American, British Age range 50-108; mean age at death 80.2 C T Candidate Region/Gene 22445811
    rs16928120 0.00057 1600 samples (cases and controls combined) German, Italian Candidate Region/Gene 19367319
    G/A-IGF1R, Gly/Asp-IRS2, and Ala/Val-UCP2 allele combination 3.19 0.0006 208 vs 514 Italian Mean age 96 non-AAV allele combi AAV allele combinati Candidate Region/Gene 21340542
    rs429358, rs7412 APOE 0.43 0.0006 114 vs 2071 Irish >90 e4 e2 Candidate Region/Gene 11470126
    rs13217795 FOXO3 0.0006 213 vs 402 Japanese minimum 95; mean 97.9 T Candidate Region/Gene 18765803
    rs9400239 FOXO3 1.38 0.0007 388 vs 371 535 vs 553 German mean age 98.4 years Candidate Region/Gene 19196970
    rs5882 CETP 3.56 0.001 213 vs 258 Ashkenazi Jewish 98,2 +/- 5,3 non-GG GG Candidate Region/Gene 14559957

    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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