Longevity Variant Database

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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
    HinfI347 APOA4 0.05 71 vs 100 Italian mean102.3 years Candidate Region/Gene 9622284
    - TH 0.045 202 vs 170 vs 82 Italian 100-105 (oldest of 3 age groups, see notes) Candidate Region/Gene 11053670
    3' 28-base pair variable number tandem repeat (HRAS1 3'VNTR) HRAS 1.13 0.002 234 vs 467 Italian centenarians a3 allele (see notes) Candidate Region/Gene 11943467
    APOA1-MspI-RFLP (−75) APOA1 0.016 229 vs 571 Calabrian 81–109 (median 101) A (=Absence) Candidate Region/Gene 12556235
    rs147610191 APOA4 0.05 229 vs 571 Calabrian 81–109 (median 101) Candidate Region/Gene 12556235
    rs1815739 ACTN3 1.03 0.1 59 vs 283 Caucasian, Spaniard centenarians (aged 100–108 years) Candidate Region/Gene 21407828
    rs739401 CARS 0.00154 1173 vs 570 American 85-100 C Genome-Wide Association Study 22533364
    rs651922 DCPS 1.19 4.75e-05 801 vs 914 Caucasian Median age 104 A G Genome-Wide Association Study 22279548
    rs1470196 KIAA1377 1.33 0.000498694 801 vs 914 Caucasian Median age 104 A G Genome-Wide Association Study 22279548
    rs216493 PLEKHA7 1.10 0.001543457 801 vs 914 Caucasian Median age 104 A G Genome-Wide Association Study 22279548
    rs7127390 IGSF4 1.13 0.001091248 801 vs 914 Caucasian Median age 104 A G Genome-Wide Association Study 22279548
    rs4237774 OR56A1 1.18 0.000637699 801 vs 914 Caucasian Median age 104 A G Genome-Wide Association Study 22279548
    rs894558 NAV2 1.13 0.004524209 801 vs 914 Caucasian Median age 104 G A Genome-Wide Association Study 22279548
    rs4755936 SYT13 1.19 0.003578524 801 vs 914 Caucasian Median age 104 G A Genome-Wide Association Study 22279548
    rs610932 MS4A6A 0.176 1364 American, British Age range 50-108; mean age at death 80.2 C A Candidate Region/Gene 22445811
    rs3851179 PICALM 0.227 1364 American, British Age range 50-108; mean age at death 80.2 G A Candidate Region/Gene 22445811
    rs680109 GRIA4 2.52e-05 1364 American, British Age range 50-108; mean age at death 80.2 C A Genome-Wide Association Study 22445811
    rs7103504 CNTN5 4.39e-05 1364 American, British Age range 50-108; mean age at death 80.2 A G Genome-Wide Association Study 22445811
    rs7952321 OR5AS1 4.68e-05 1364 American, British Age range 50-108; mean age at death 80.2 T G Genome-Wide Association Study 22445811
    rs2073586 ABCC8 0.48 8.15e-05 410 vs 553 Italian 90–109 Genome-Wide Association Study 21612516
    rs4938180 IGSF4 1.91 2.16e-05 410 vs 553 Italian 90–109 Genome-Wide Association Study 21612516
    rs2542052 APOC3 0.0001 Centenarians (n = 213) their offspring (n = 216) vs 258 Ashkenazi Jewish Mean age 98.2 A 16602826
    rs2542052 APOC3 0.0001 213 old vs 216 offspring vs 258 controls Ashkenazi Jewish 100+ A Candidate Region/Gene 16602826
    HUMTHO1.STR TH 0.85 0.005 210 vs 755 Italian 100+ 10* (imperfect allele 10) Candidate Region/Gene 12297342
    rs2060793 CYP2R1 0.04 1038 vs 461 Dutch 59.5 years (offspring of nonagerians) A Candidate Region/Gene 23128285

    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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