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



    LVDB_word_cloud.png
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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
    IL10 haplotypes IL10 0.05 237 vs 90 Turkish Age range: 65-99 −1082G, −819C, −592C Candidate Region/Gene 21299522
    −1082 G/A IL10 0.025 190 vs 260 Italian >99 years old G Candidate Region/Gene 11857058
    rs1801133 MTHFR 0.727 130 vs 135 Jordanian Mean age 90.01 Candidate Region/Gene 20003469
    rs2275075 LMNA 0.54 873 vs 443 New England Centenarian Study: 545 vs 193; French: 557 vs 546; Southern Italian Centenarian Study: 455 vs 450; Ashkenazi Jewish: 354 vs 348 American, Caucasian Mean age 101.5 Candidate Region/Gene 22340368
    rs8191979 SHC1 0.38 230 vs 180 Japanese Mean age 100.8 +/- 1.5 Candidate Region/Gene 14530863
    rs3753645 SHC1 1.28 0.64 230 vs 180 Japanese Mean age 100.8 +/- 1.5 T Candidate Region/Gene 14530863
    rs3753644 SHC1 1.28 0.64 230 vs 180 Japanese Mean age 100.8 +/- 1.5 T Candidate Region/Gene 14530863
    rs3215173 SHC1 1.60 0.15 230 vs 180 Japanese Mean age 100.8 +/- 1.5 G/- Candidate Region/Gene 14530863
    --1082G-->A IL10 0.0001 109 (oldest old men) vs 263 (healthy controls) Italian >95 A Candidate Region/Gene 15466015
    M/T235 AGT 0.67 0.53 187 vs 201 Danish centenarians T Candidate Region/Gene 11602206
    IVS2nt-124 FASLG 0.315 50 vs 86 Italian 100.8 ± 1.8 (100 to 106) Candidate Region/Gene 11965496
    IVS3nt-167 FASLG 0.462 50 vs 86 Italian 100.8 ± 1.8 (100 to 106) Candidate Region/Gene 11965496
    - GSTM1 0.54 66 vs 150 Italian 100.19±2.2 (95-105) Candidate Region/Gene 15195682
    rs28969505 YTHDF2 2.19 0.023 137 vs 412 Italian age 99–109,years, mean age 101 years; 26 men, 111 women Candidate Region/Gene 16799135
    rs1801274 FCGR2A 0.05 408 vs 446 vs 454 German 100–110/ mean101.3 (SNP is His/Arg) Candidate Region/Gene 16893392
    rs1800896 IL-10 3.00 0.0003 142 vs 153 Italian Mean age 67 AA GG Candidate Region/Gene 15466015
    rs1801133 MTHFR 0.029 (150 m, 74 f) vs (121 m, 320 f) Ashkenazi Jewish Mean age 75 C Candidate Region/Gene 15621215
    - F5 0.045 (150 m, 74 f) vs (121 m, 320 f) Ashkenazi Jewish Mean age 75 A Candidate Region/Gene 15621215
    rs28969505 YTHDF2 0.047 136 vs 275 Italian Mean age 101 15-15 (205 bp) Candidate Region/Gene 16799135
    rs1764391 GJA4 0.0035 56 vs 196 (males) Italian >99 CC Candidate Region/Gene 16970956
    rs1061170 CFH 1.78 0.005 491 with follow-up during 4 years Finn >90 TT Candidate Region/Gene 19000922
    rs11585393 FOXO6 1.04 0.531 1447 vs 1029 (German) 166 vs 216 (Italian) German Mean age 98.8 Candidate Region/Gene 21388494
    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

    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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