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Line |
Allele |
Population |
% of individuals
that have the allele |
Allele
Frequency
(in_decimals) |
Sample
Size |
IMGT/HLA¹
Database |
Distribution² |
Haplotype³
Association |
Notesª |
901 |
B*52:05 | | Bulgaria | | 0 | | 55 | See | | | |
902 |
B*52:05 | | China North Han | | 0 | | 105 | See | | | |
903 |
B*52:05 | | China Tibet Region Tibetan | | 0 | | 158 | See | | | |
904 |
B*52:05 | | Croatia | | 0 | | 150 | See | | | |
905 |
B*52:05 | | Italy Bergamo | 0.0 | 0 | | 101 | See | | | |
906 |
B*52:05 | | Italy North pop 3 | 0.0 | 0 | | 97 | See | | | |
907 |
B*52:05 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
908 |
B*52:05 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
909 |
B*52:05 | | Switzerland Aargau-Solothurn | | 0 | | 1,838 | See | | | |
910 |
B*52:05 | | Switzerland Basel | | 0 | | 1,888 | See | | | |
911 |
B*52:05 | | Switzerland Bern | | 0 | | 3,545 | See | | | |
912 |
B*52:05 | | Switzerland Geneva pop 2 | | 0 | | 1,267 | See | | | |
913 |
B*52:05 | | Switzerland Graubunden | | 0 | | 759 | See | | | |
914 |
B*52:05 | | Switzerland Lausanne | | 0 | | 993 | See | | | |
915 |
B*52:05 | | Switzerland Lugano | | 0 | | 1,169 | See | | | |
916 |
B*52:05 | | Switzerland Luzern | | 0 | | 1,553 | See | | | |
917 |
B*52:05 | | Switzerland St Gallen | | 0 | | 2,113 | See | | | |
918 |
B*52:05 | | Switzerland Zurich | | 0 | | 4,875 | See | | | |
919 |
B*52:05 | | USA African American Bethesda | 0.0 | 0 | | 187 | See | | | |
920 |
B*52:05 | | USA Caucasian Bethesda | 0.0 | 0 | | 307 | See | | | |
921 |
B*52:05 | | USA Philadelphia Caucasian | 0.0 | 0 | | 141 | See | | | |
922 |
B*52:06 | | Sri Lanka Colombo | 0.1 | 0.0010 | | 714 | See | | |
|
923 |
B*52:06 | | Germany DKMS - Spain minority | | 0.0005 | | 1,107 | See | | | |
924 |
B*52:06 | | USA NMDP African | | 0.0000200 | | 28,557 | See | | | |
925 |
B*52:06 | | Germany DKMS - German donors | | 0.0000050 | | 3,456,066 | See | | |
|
926 |
B*52:06 | | USA NMDP South Asian Indian | | 0.0000030 | | 185,391 | See | | | |
927 |
B*52:06 | | USA NMDP European Caucasian | | 0.0000008 | | 1,242,890 | See | | | |
928 |
B*52:06 | | China Tibet Region Tibetan | | 0 | | 158 | See | | | |
929 |
B*52:06 | | Germany pop 8 | | 0.0000300 | | 39,689 | See | | | |
930 |
B*52:06 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
931 |
B*52:06 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
932 |
B*52:06:01 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
933 |
B*52:06:02 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
934 |
B*52:07 | | Panama | | 0.0011 | | 462 | See | | |
|
935 |
B*52:07 | | India South UCBB | 0.0200 | 0.0000900 | | 11,446 | See | | |
|
936 |
B*52:07 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
937 |
B*52:07 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
938 |
B*52:08 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
939 |
B*52:08 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
940 |
B*52:09 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
941 |
B*52:09 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
942 |
B*52:10 | | India Central UCBB | 0.0200 | 0.0001 | | 4,204 | See | | |
|
943 |
B*52:10 | | USA NMDP Southeast Asian | | 0.0000100 | | 27,978 | See | | | |
944 |
B*52:10 | | USA NMDP Mexican or Chicano | | 0.0000080 | | 261,235 | See | | | |
945 |
B*52:10 | | USA NMDP Hispanic South or Central American | | 0.0000070 | | 146,714 | See | | | |
946 |
B*52:10 | | USA NMDP South Asian Indian | | 0.0000050 | | 185,391 | See | | | |
947 |
B*52:10 | | USA NMDP African American pop 2 | | 0.0000010 | | 416,581 | See | | | |
948 |
B*52:10 | | USA NMDP European Caucasian | | 0.0000004 | | 1,242,890 | See | | | |
949 |
B*52:10 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
950 |
B*52:10 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
951 |
B*52:10 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
952 |
B*52:11 | | Malaysia Peninsular Indian | 0.7 | 0.0037 | | 271 | See | | |
|
953 |
B*52:11 | | Malaysia Peninsular Malay | 0.1 | 0.0005 | | 951 | See | | |
|
954 |
B*52:11 | | Japan pop 16 | | 0.0000500 | | 18,604 | See | | | |
955 |
B*52:11 | | USA NMDP Southeast Asian | | 0.0000200 | | 27,978 | See | | | |
956 |
B*52:11 | | USA NMDP South Asian Indian | | 0.0000110 | | 185,391 | See | | | |
957 |
B*52:11 | | USA NMDP Korean | | 0.0000060 | | 77,584 | See | | | |
958 |
B*52:11 | | USA NMDP European Caucasian | | 0.0000004 | | 1,242,890 | See | | | |
959 |
B*52:11 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
960 |
B*52:11 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
961 |
B*52:11 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
962 |
B*52:12 | | Malaysia Mandailing | 3.7 | 0.0190 | | 27 | See | | |
|
963 |
B*52:12 | | USA NMDP Chinese | | 0.0000050 | | 99,672 | See | | | |
964 |
B*52:12 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
965 |
B*52:12 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
966 |
B*52:13 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
967 |
B*52:13 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
968 |
B*52:14 | | China Tibet Region Tibetan | | 0 | | 158 | See | | | |
969 |
B*52:14 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
970 |
B*52:14 | | Netherlands Leiden | | 0 | | 1,305 | See | | | |
971 |
B*52:15 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
972 |
B*52:16 | | USA NMDP South Asian Indian | | 0.0000030 | | 185,391 | See | | | |
973 |
B*52:16 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
974 |
B*52:17 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
975 |
B*52:18 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
976 |
B*52:19 | | India South UCBB | 0.0100 | 0.0000400 | | 11,446 | See | | |
|
977 |
B*52:19 | | Morocco Settat Chaouya | 0.0 | 0 | | 98 | See | | | |
978 |
B*52:21:01 | | Brazil Barra Mansa Rio State Black | | 0.0068 | | 73 | See | | |
|
979 |
B*52:25 | | Germany DKMS - German donors | | 0.0000010 | | 3,456,066 | See | | |
|
980 |
B*52:30 | | Israel Bukhara Jews | | 0.0002 | | 2,317 | See | | |
|
981 |
B*52:30 | | Israel Ashkenazi Jews pop 3 | | 0.0001 | | 4,625 | See | | |
|
982 |
B*52:30 | | Israel Iraq Jews | | 0.0000750 | | 13,270 | See | | |
|
983 |
B*52:30 | | Israel Morocco Jews | | 0.0000680 | | 36,718 | See | | |
|
984 |
B*52:30 | | Israel Iran Jews | | 0.0000610 | | 8,153 | See | | |
|
985 |
B*52:30 | | Israel YemenJews | | 0.0000320 | | 15,542 | See | | |
|
986 |
B*52:30 | | Israel USSR Jews | | 0.0000220 | | 45,681 | See | | |
|
987 |
B*52:37 | | India South UCBB | 0.0200 | 0.0000900 | | 11,446 | See | | |
|
988 |
B*52:40 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
989 |
B*52:50 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
990 |
B*52:51 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
991 |
B*52:53 | | India East UCBB | 0.0800 | 0.0004 | | 2,403 | See | | |
|
992 |
B*52:64 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
993 |
B*52:80 | | India Central UCBB | 0.0200 | 0.0001 | | 4,204 | See | | |
|
994 |
B*52:81 | | Germany DKMS - German donors | | 0 | | 3,456,066 | See | | |
|
995 |
B*52:88 | | India East UCBB | 0.0400 | 0.0002 | | 2,403 | See | | |
|
Notes:
* Allele Frequency: Total number of copies of the allele in the population sample (Alleles / 2n) in decimal format.
Important: This field has been expanded to four decimals to better represent frequencies of large datasets (e.g. where sample size > 1000 individuals)
* % of individuals that have the allele: Percentage of individuals who have the allele in the population (Individuals / n).
* Allele Frequencies shown in
green were calculated from Phenotype Frequencies assuming Hardy-Weinberg proportions.
AF = 1-square_root(1-PF)
PF = 1-(1-AF)
2
AF = Allele Frequency; PF = Phenotype Frequency, i.e. (%) of the individuals carrying the allele.
* Allele Frequencies marked with (*) were calculated from all alleles in the corresponding
G group.
¹ IMGT/HLA Database - For more details of the allele.
² Distribution - Graphical distribution of the allele.
³ Haplotype Association - Find HLA haplotypes with this allele.
ª Notes - See notes for ambiguous combinations of alleles.
Displaying 901 to 995
(from 995) records |
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