Allele Frequencies in World Populations

HLA » Allele Frequency Search

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Line Allele Population % of individuals
that have the allele
Allele
Frequency
Sample
Size
Location
1A*01:01Argentina Rosario Toba15.10.07608632_57_S_60_39_W
2A*01:01Armenia combined Regions0.125010040_11_N_44_31_E
3A*01:01Australia Cape York Peninsula Aborigine0.053010310_41_S_142_32_E
4A*01:01Australia Groote Eylandt Aborigine0.02707513_58_S_136_35_E
5A*01:01Australia New South Wales Caucasian0.187013433_0_S_146_0_E
6A*01:01Australia Yuendumu Aborigine0.008019122_15_S_131_47_E
7A*01:01Austria27.00.146020048_13_N_16_21_E
8A*01:01Azores Central Islands0.08005938_0_N_28_0_W
9A*01:01Azores Oriental Islands0.11504336_58_N_25_6_W
10A*01:01Azores Terceira Island0.109013038_44_N_27_19_W
11A*01:01Belgium29.20.15509950_50_N_4_21_E
12A*01:01Brazil Puyanawa8.70.043015010_52_S_53_5_W
13A*01:01Brazil Belo Horizonte Caucasian13.70.07909519_55_S_43_56_W
14A*01:01Brazil Mixed0.091010823_10_S_47_48_W
15A*01:01Brazil Vale do Ribeira Quilombos0.00.000014424_36_S_48_15_W
16A*01:01Bulgaria Romani0.33301342_44_N_23_20_E
17A*01:01Cameroon Baka Pygmy0.0000108_30_N_14_0_E
18A*01:01Cameroon Bamileke0.0260775_28_N_10_25_E
19A*01:01Cameroon Beti0.01101742_55_N_11_9_E
20A*01:01Cameroon Sawa0.0000134_50_N_10_0_E
21A*01:01Cameroon Yaounde0.0110923_52_N_11_31_E
22A*01:01Central African Republic Mbenzele Pygmy0.0363_32_N_16_4_E
23A*01:01Chile Mapuche0.06156637_48_S_73_23_W
24A*01:01Chile Santiago Mixed11.07033_26_S_70_39_W
25A*01:01China Beijing0.03706739_58_N_116_24_E
26A*01:01China Beijing Shijiazhuang Tianjian Han0.034061839_54_N_116_24_E
27A*01:01China Canton Han0.006026423_6_N_113_15_E
28A*01:01China Guangzhou0.010010223_6_N_113_15_E
29A*01:01China Guizhou Province Bouyei0.005010926_50_N_106_50_E
30A*01:01China Guizhou Province Miao pop 20.00008526_50_N_106_50_E
31A*01:01China Guizhou Province Shui0.000015326_50_N_106_50_E
32A*01:01China Hubei Han4.60.02293,73230_45_N_114_15_E
33A*01:01China Inner Mongolia Region0.054010236_0_N_102_0_E
34A*01:01China Jiangsu Han0.03703,23832_54_N_119_48_E
35A*01:01China Jiangsu Province Han0.017433432_54_N_119_48_E
36A*01:01China Marrow Donor Registry0.020060039_54_N_116_23_E
37A*01:01China North Han0.000010539_54_N_116_24_E
38A*01:01China Qinghai Province Hui0.055011036_0_N_102_0_E
39A*01:01China Shanxi HIV negative0.09102236_5_N_111_50_E
40A*01:01China Sichuan HIV negative0.05903430_50_N_102_49_E
41A*01:01China South Han0.005028423_1_N_113_3_E
42A*01:01China Uyghur HIV negative0.02601936_34_N_103_49_E
43A*01:01China Yunnan Province Han0.015010124_2_N_105_3_E
44A*01:01Colombia Bogotá Cord Blood12.00.06081,4634_39_N_73_52_W
45A*01:01Colombia North Chimila Amerindians0.02124710_1_N_74_13_W
46A*01:01Colombia North Wiwa El Encanto0.01925210_10_N_73_53_W
47A*01:01Croatia0.097015045_0_N_15_0_E
48A*01:01Croatia pop 40.12444,00045_48_N_15_57_E
49A*01:01Cuba Caucasian15.70.07907023_8_N_82_22_W
50A*01:01Cuba Mixed Race14.30.07104223_8_N_82_22_W
51A*01:01Czech Republic0.127010650_0_N_14_0_E
52A*01:01Czech Republic NMDR0.16075,09949_48_N_15_30_E
53A*01:01Ecuador Amerindians0.0476630_13_S_78_30_W
54A*01:01England North West38.60.208029853_0_N_3_0_W
55A*01:01Finland0.08909163_29_N_25_16_E
56A*01:01France French Bone Marrow Donor Registry0.130142,62348_51_N_2_21_E
57A*01:01France Southeast27.70.150013046_0_N_5_0_E
58A*01:01Gaza33.30.17864231_22_N_34_18_E
59A*01:01Georgia Svaneti Region Svan0.05608042_54_N_43_0_E
60A*01:01Georgia Tibilisi0.057010941_41_N_44_57_E
61A*01:01Georgia Tibilisi Kurd0.06703141_41_N_44_57_E
62A*01:01Germany DKMS - Austria minority0.15611,69848_31_N_9_3_E
63A*01:01Germany DKMS - Bosnia and Herzegovina minority0.15131,02848_31_N_9_3_E
64A*01:01Germany DKMS - China minority0.03801,28248_31_N_9_3_E
65A*01:01Germany DKMS - Croatia minority0.12132,05748_31_N_9_3_E
66A*01:01Germany DKMS - France minority0.13761,40648_31_N_9_3_E
67A*01:01Germany DKMS - German donors0.15373,456,06648_31_N_9_3_E
68A*01:01Germany DKMS - Greece minority0.10381,89448_31_N_9_3_E
69A*01:01Germany DKMS - Italy minority0.13301,15948_31_N_9_3_E
70A*01:01Germany DKMS - Netherlands minority0.16811,37448_31_N_9_3_E
71A*01:01Germany DKMS - Portugal minority0.11581,17648_31_N_9_3_E
72A*01:01Germany DKMS - Romania minority0.14571,23448_31_N_9_3_E
73A*01:01Germany DKMS - Spain minority0.11891,10748_31_N_9_3_E
74A*01:01Germany DKMS - Turkey minority0.10324,85648_31_N_9_3_E
75A*01:01Germany DKMS - United Kingdom minority0.18031,04348_31_N_9_3_E
76A*01:01Germany pop 60.15418,86251_6_N_10_23_E
77A*01:01Germany pop 80.150739,68948_24_N_9_58_E
78A*01:01Ghana Ga-Adangbe4.60.02291315_45_N_0_12_E
79A*01:01Greece pop 60.113624237_58_N_23_43_E
80A*01:01Greece pop 825.30.14468337_58_N_23_43_E
81A*01:01Guinea Bissau Balanta0.02104811_52_N_15_36_W
82A*01:01Guinea Bissau Bijago0.02202311_52_N_15_36_W
83A*01:01Guinea Bissau Fula0.08103111_52_N_15_36_W
84A*01:01Guinea Bissau Papel0.08002511_52_N_15_36_W
85A*01:01Hong Kong Chinese2.10.011056922_16_N_114_9_E
86A*01:01Hong Kong Chinese BMDR0.00847,59522_15_N_114_10_E
87A*01:01Hong Kong Chinese cord blood registry0.00903,89222_15_N_114_10_E
88A*01:01India Andhra Pradesh Golla0.125011117_5_N_78_5_E
89A*01:01India Delhi pop 220.00.10509028_36_N_77_13_E
90A*01:01India Khandesh Region Pawra0.05005020_54_N_74_46_E
91A*01:01India Mumbai Maratha0.12309118_58_N_72_49_E
92A*01:01India New Delhi0.03807128_37_N_77_13_E
93A*01:01India North pop 20.11507225_0_N_74_0_E
94A*01:01India Tamil Nadu0.15932,49211_32_N_78_52_E
95A*01:01India Tamil Nadu Nadar0.0900618_0_N_77_0_E
96A*01:01India UCBB_Central Indian HLA25.90.12944,20427_1_N_81_19_E
97A*01:01India West Bhil0.00005020_54_N_74_46_E
98A*01:01India West Coast Parsi0.01005018_0_N_74_0_E
99A*01:01Indonesia Java Western5.12367_30_S_111_15_E
100A*01:01Iran Gorgan0.03106436_50_N_54_43_E
101A*01:01Iran Kurd pop 20.08306036_17_N_46_17_E
102A*01:01Iran Saqqez-Baneh Kurds0.08336036_14_N_46_16_E
103A*01:01Iran Tabriz Azeris0.11869738_4_N_46_17_E
104A*01:01Iran Yazd0.08935631_53_N_54_21_E
105A*01:01Ireland Northern36.40.20201,00054_40_N_6_45_W
106A*01:01Ireland South44.80.250025053_20_N_6_15_W
107A*01:01Israel Arab Druze0.040010131_8_N_35_2_E
108A*01:01Israel Arab pop 20.164212,30132_8_N_34_52_E
109A*01:01Israel Argentina Jews0.12964,30732_8_N_34_52_E
110A*01:01Israel Ashkenazi and Non Ashkenazi Jews0.171014631_8_N_35_2_E
111A*01:01Israel Ashkenazi Jews pop 30.10784,62532_8_N_34_52_E
112A*01:01Israel Bukhara Jews0.06892,31732_8_N_34_52_E
113A*01:01Israel Druze0.08865,91432_41_N_35_17_E
114A*01:01Israel Ethiopia Jews0.03915,92832_8_N_34_52_E
115A*01:01Israel Georgia Jews0.04084,47132_10_N_34_53_E
116A*01:01Israel Iran Jews0.21808,15332_8_N_34_52_E
117A*01:01Israel Iraq Jews0.182913,27032_10_N_34_52_E
118A*01:01Israel Kavkazi Jews0.06352,84032_10_N_34_52_E
119A*01:01Israel Libya Jews0.14623,73932_10_N_34_52_E
120A*01:01Israel Morocco Jews0.197136,71832_10_N_34_52_E
121A*01:01Israel Poland Jews0.129413,87132_10_N_34_52_E
122A*01:01Israel Tunisia Jews0.17129,07032_10_N_34_52_E
123A*01:01Israel USA Jews0.13136,05832_10_N_34_52_E
124A*01:01Israel USSR Jews0.120545,68132_9_N_34_50_E
125A*01:01Israel YemenJews0.019915,54232_9_N_34_50_E
126A*01:01Italy North pop 326.90.15409743_0_N_12_0_E
127A*01:01Italy pop 50.102097545_28_N_9_11_E
128A*01:01Japan Central0.009037135_41_N_139_46_E
129A*01:01Japan Hokkaido Ainu0.00005043_0_N_142_0_E
130A*01:01Japan pop 160.004018,60435_41_N_139_46_E
131A*01:01Japan pop 30.00201,01835_41_N_139_46_E
132A*01:01Japan pop 50.018011735_41_N_139_46_E
133A*01:01Jordan Amman0.079014631_35_N_36_20_E
134A*01:01Kenya0.03101441_28_S_36_8_E
135A*01:01Kenya Luo0.07402650_0_S_34_6_E
136A*01:01Kenya Nandi0.11802400_0_S_35_0_E
137A*01:01Kenya, Nyanza Province, Luo tribe9.00.04501000_5_S_34_46_E
138A*01:01Kosovo21.00.104812442_34_N_21_0_E
139A*01:01Malaysia Champa13.80.0690292_30_N_112_30_E
140A*01:01Malaysia Kelantan3.60.0180282_30_N_112_30_E
141A*01:01Malaysia Mandailing7.40.0370272_30_N_112_30_E
142A*01:01Malaysia Patani4.00.0200252_30_N_112_30_E
143A*01:01Malaysia Peninsular Chinese1.00.00521943_9_N_101_57_E
144A*01:01Malaysia Peninsular Indian28.80.16422713_9_N_101_57_E
145A*01:01Malaysia Peninsular Malay4.50.02319513_9_N_101_57_E
146A*01:01Mali Bandiagara0.007013814_4_N_3_6_W
147A*01:01Mexico Chiapas Lacandon Mayans0.002321816_54_N_92_5_W
148A*01:01Mexico Chihuahua Chihuahua City Pop 218.20.09098828_48_N_106_26_W
149A*01:01Mexico Mestizo14.60.08504119_24_N_99_9_W
150A*01:01Mexico Mexico City Mestizo pop 20.036323419_26_N_99_8_W
151A*01:01Mexico Mexico City Mestizo population0.087414319_25_N_99_7_W
152A*01:01Mexico Mexico City Tlalpan12.10.060633019_25_N_99_8_W
153A*01:01Mexico Mixtec0.01009723_57_N_103_29_W
154A*01:01Mexico Oaxaca Jamiltepec Mixtec0.01009616_25_N_97_58_W
155A*01:01Mexico Oaxaca Mixe0.01905517_5_N_96_45_W
156A*01:01Mexico Oaxaca Mixtec0.000010317_5_N_96_45_W
157A*01:01Mexico Oaxaca Zapotec0.02209017_5_N_96_45_W
158A*01:01Mexico Veracruz Xalapa3.60.01798419_32_N_96_55_W
159A*01:01Netherlands Leiden0.17501,30552_9_N_4_31_E
160A*01:01Netherlands UMCU37.50.19536452_5_N_5_10_E
161A*01:01New Zealand Maori with Admixed History12.40.062010542_0_S_174_0_E
162A*01:01New Zealand Maori with Full Ancestry8.70.04404642_0_S_174_0_E
163A*01:01New Zealand Polynesians with Admixed History11.10.05602742_0_S_174_0_E
164A*01:01New Zealand Polynesians with Full Ancestry9.50.04802142_0_S_174_0_E
165A*01:01Nicaragua Managua7.20.037433912_7_N_86_10_W
166A*01:01Oman14.40.072011822_0_N_56_0_E
167A*01:01Pakistan Baloch0.03006630_0_N_67_0_E
168A*01:01Pakistan Brahui0.063010430_0_N_67_0_E
169A*01:01Pakistan Burusho0.05409236_0_N_73_0_E
170A*01:01Pakistan Kalash0.00006932_0_N_70_0_E
171A*01:01Pakistan Karachi Parsi0.08309124_49_N_66_59_E
172A*01:01Pakistan Mixed Pathan0.128010032_0_N_70_0_E
173A*01:01Pakistan Mixed Sindhi0.133010124_0_N_68_0_E
174A*01:01Panama0.03964628_59_N_79_37_W
175A*01:01Peru Titikaka Lake Uro0.005010515_50_S_69_42_W
176A*01:01Peru Titikaka Lake Uros0.005010515_50_S_70_1_W
177A*01:01Philippines Ivatan0.00.00005020_22_N_121_56_E
178A*01:01Poland0.133020051_7_N_17_2_E
179A*01:01Poland DKMS0.137720,65352_8_N_19_23_E
180A*01:01Portugal Azores Terceira Island21.90.109613038_43_N_27_13_W
181A*01:01Portugal Center0.13005039_0_N_8_0_W
182A*01:01Portugal North0.07604641_0_N_8_0_W
183A*01:01Portugal South0.05104937_0_N_8_0_W
184A*01:01Romania23.00.122034846_0_N_25_0_E
185A*01:01Russia Bering Island Aleuts0.096210455_0_N_166_15_E
186A*01:01Russia Karelia0.10141,07563_9_N_32_59_E
187A*01:01Russia Tuva pop 20.066016951_30_N_95_5_E
188A*01:01Sao Tome Island Angolar0.0470320_20_N_6_44_E
189A*01:01Sao Tome Island Forro0.0300660_20_N_6_44_E
190A*01:01Saudi Arabia Guraiat and Hail21.60.115021327_31_N_41_41_E
191A*01:01Senegal Niokholo Mandenka0.027016512_35_N_12_9_W
192A*01:01Singapore Chinese0.70.00301491_24_N_103_45_E
193A*01:01Singapore Chinese Han0.0120941_17_N_103_51_E
194A*01:01Singapore Javaneses0.0700511_24_N_103_45_E
195A*01:01Singapore Riau Malay0.03201321_24_N_103_45_E
196A*01:01Singapore SGVP Chinese CHS0.0160961_21_N_103_50_E
197A*01:01Singapore SGVP Malay MAS0.0420891_21_N_103_50_E
198A*01:01Singapore SGVP. Indian INS0.1550861_21_N_103_50_E
199A*01:01Singapore Thai0.00501001_24_N_103_45_E
200A*01:01South Africa Natal Tamil0.17005130_0_S_31_0_E
201A*01:01South Africa Natal Zulu8.00.040010029_0_S_31_0_E
202A*01:01South Africa Worcester13.00.066015933_39_S_19_27_E
203A*01:01South Korea pop 100.01954,12837_33_N_126_58_E
204A*01:01South Korea pop 30.018048537_33_N_126_59_E
205A*01:01Spain (Catalunya, Navarra, Extremadura, Aaragón, Cantabria,18.80.09854,33541_22_N_2_11_E
206A*01:01Sri Lanka Colombo21.10.11307146_56_N_79_50_E
207A*01:01Sri Lanka Colombo Sinhalese0.10901016_56_N_79_50_E
208A*01:01Sudan Central Shaigiya Mixed27.83618_0_N_33_0_E
209A*01:01Sudan Mixed10.00.05002005_0_N_35_0_E
210A*01:01Sweden Northern Sami0.083015467_0_N_18_30_E
211A*01:01Sweden Southern Sami0.093013060_52_N_14_44_E
212A*01:01Switzerland Aargau-Solothurn0.11651,83846_48_N_8_13_E
213A*01:01Switzerland Basel0.12041,88847_33_N_7_34_E
214A*01:01Switzerland Bern0.12783,54546_57_N_7_27_E
215A*01:01Switzerland Geneva pop 20.10481,26746_12_N_6_8_E
216A*01:01Switzerland Graubunden0.072175946_42_N_9_57_E
217A*01:01Switzerland Lausanne0.132599346_31_N_6_39_E
218A*01:01Switzerland Lugano0.07441,16946_0_N_8_55_E
219A*01:01Switzerland Luzern0.09071,55347_3_N_8_18_E
220A*01:01Switzerland Sion0.114683246_15_N_7_23_E
221A*01:01Switzerland St Gallen0.12432,11347_26_N_9_21_E
222A*01:01Switzerland Zurich0.10024,87547_22_N_8_32_E
223A*01:01Taiwan Ami0.00.00009823_0_N_121_0_E
224A*01:01Taiwan Atayal0.00.000010624_0_N_121_0_E
225A*01:01Taiwan Bunun0.00.000010123_46_N_121_0_E
226A*01:01Taiwan Hakka0.00.00005524_0_N_121_0_E
227A*01:01Taiwan Han Chinese0.004050423_46_N_121_0_E
228A*01:01Taiwan Minnan pop 11.00.005010224_0_N_121_0_E
229A*01:01Taiwan Paiwan0.00.00005123_0_N_121_0_E
230A*01:01Taiwan Pazeh0.00.00005525_0_N_121_30_E
231A*01:01Taiwan pop 20.006036423_46_N_121_0_E
232A*01:01Taiwan pop 30.012021223_46_N_121_0_E
233A*01:01Taiwan Puyuma0.00.00005023_0_N_121_0_E
234A*01:01Taiwan Rukai0.00.00005023_0_N_121_0_E
235A*01:01Taiwan Saisiat0.00.00005124_0_N_121_0_E
236A*01:01Taiwan Siraya0.00.00005124_0_N_121_0_E
237A*01:01Taiwan Tao0.00.00005024_0_N_121_0_E
238A*01:01Taiwan Taroko0.00.00005524_0_N_121_0_E
239A*01:01Taiwan Thao0.00.00003024_0_N_121_0_E
240A*01:01Taiwan Tsou0.00.00005124_0_N_121_0_E
241A*01:01Taiwan Tzu Chi Morrow Donor Registry0.006946,68225_2_N_121_38_E
242A*01:01Taiwan Tzu Chi Morrow Donor Registry Aborigine0.006423325_2_N_121_38_E
243A*01:01Taiwan Tzu Chi Cord Blood Bank0.009071023_46_N_121_0_E
244A*01:01Tanzania Maasai17.90.09553363_11_S_37_4_E
245A*01:01Thailand0.028014216_7_N_102_0_E
246A*01:01Tunisia21.00.112010035_0_N_9_0_E
247A*01:01Tunisia Gabes0.11059533_53_N_10_6_E
248A*01:01Uganda Kampala0.08301610_3_N_32_6_E
249A*01:01Uganda Kampala pop 20.06601750_20_N_32_30_E
250A*01:01United Arab Emirates Abu Dhabi0.06735224_28_N_54_22_E
251A*01:01USA African American0.056025230_0_N_95_0_W
252A*01:01USA African American Bethesda14.80.074018738_0_N_78_0_W
253A*01:01USA African American pop 20.054014932_46_N_96_46_W
254A*01:01USA African American pop 40.04742,41144_58_N_93_15_W
255A*01:01USA Alaska Yupik0.004025260_48_N_161_26_W
256A*01:01USA Arizona Gila River Amerindian0.004049233_4_N_111_44_W
257A*01:01USA Arizona Pima0.006010033_0_N_113_0_W
258A*01:01USA Asian0.015035830_0_N_95_0_W
259A*01:01USA Asian pop 20.05081,77244_58_N_93_15_W
260A*01:01USA Caucasian Bethesda28.70.165030738_0_N_78_0_W
261A*01:01USA Caucasian pop 20.151026530_0_N_95_0_W
262A*01:01USA Caucasian pop 30.13608832_46_N_96_48_W
263A*01:01USA Caucasian pop 40.16821,07038_53_N_77_2_W
264A*01:01USA Hawaii Okinawa0.005010621_0_N_157_0_W
265A*01:01USA Hispanic0.060023430_0_N_95_0_W
266A*01:01USA Hispanic pop 20.06701,99944_58_N_93_15_W
267A*01:01USA NMDP African0.050628,55738_45_N_76_6_W
268A*01:01USA NMDP African American pop 20.0467416,58138_45_N_76_6_W
269A*01:01USA NMDP Alaska Native or Aleut0.10501,37638_45_N_76_6_W
270A*01:01USA NMDP American Indian South or Central America0.11905,92638_45_N_76_6_W
271A*01:01USA NMDP Caribean Black0.044933,32838_45_N_76_6_W
272A*01:01USA NMDP Caribean Hispanic0.0666115,37438_45_N_76_6_W
273A*01:01USA NMDP Caribean Indian0.063014,33938_45_N_76_6_W
274A*01:01USA NMDP Chinese0.014599,67238_45_N_76_6_W
275A*01:01USA NMDP European Caucasian0.16461,242,89038_45_N_76_6_W
276A*01:01USA NMDP Filipino0.012550,61438_45_N_76_6_W
277A*01:01USA NMDP Hawaiian or other Pacific Islander0.044711,49938_45_N_76_6_W
278A*01:01USA NMDP Hispanic South or Central American0.0726146,71438_45_N_76_6_W
279A*01:01USA NMDP Japanese0.010024,58238_45_N_76_6_W
280A*01:01USA NMDP Korean0.020877,58438_45_N_76_6_W
281A*01:01USA NMDP Mexican or Chicano0.0735261,23538_45_N_76_6_W
282A*01:01USA NMDP Middle Eastern or North Coast of Africa0.135070,89038_45_N_76_6_W
283A*01:01USA NMDP North American Amerindian0.120235,79138_45_N_76_6_W
284A*01:01USA NMDP South Asian Indian0.1545185,39138_45_N_76_6_W
285A*01:01USA NMDP Southeast Asian0.114727,97838_45_N_76_6_W
286A*01:01USA NMDP Vietnamese0.033243,54038_45_N_76_6_W
287A*01:01USA North American Native0.075018730_0_N_95_0_W
288A*01:01USA Philadelphia Caucasian21.50.119014139_56_N_75_10_W
289A*01:01USA San Antonio Caucasian0.150622229_23_N_98_33_W
290A*01:01USA San Diego20.00.106049632_50_N_117_15_W
291A*01:01USA San Francisco Caucasian0.160022037_46_N_122_25_W
292A*01:01USA South Dakota Lakota Sioux0.012030244_30_N_100_0_W
293A*01:01USA South Texas Hispanic0.060019429_0_N_98_0_W
294A*01:01Venezuela Perja Mountain Bari0.0110559_49_N_72_49_W
295A*01:01Vietnam Hanoi Kinh pop 20.038017021_2_N_105_51_E
296A*01:01Zambia Lusaka0.03504415_25_S_28_17_E
297A*01:01Zimbabwe Harare Shona0.004023017_51_S_31_1_E
298A*01:01:01Brazil Barra Mansa Rio State Black0.08227322_32_S_44_10_W
299A*01:01:01Brazil Barra Mansa Rio State Caucasian0.117340522_32_S_44_10_W
300A*01:01:01Brazil Rio de Janeiro Black0.05156822_54_S_43_12_W
301A*01:01:01Brazil Rio de Janeiro Caucasian0.098852122_54_S_43_12_W
302A*01:01:01Brazil Rio de Janeiro Parda0.079417022_54_S_43_12_W
303A*01:01:01Bulgaria0.07305542_0_N_23_0_E
304A*01:01:01Cape Verde Northwestern Islands0.04806216_0_N_24_0_W
305A*01:01:01Cape Verde Southeastern Islands0.04806216_0_N_24_0_W
306A*01:01:01China Jingpo Minority2.90.014510525_0_N_102_0_E
307A*01:01:01China North Han0.071010539_54_N_116_24_E
308A*01:01:01China Tibet Region Tibetan0.022015829_39_N_91_7_E
309A*01:01:01China Zhejiang Han0.01531,73427_2_N_118_1_E
310A*01:01:01Costa Rica African -Caribbean (G)8.80.04401029_59_N_83_1_W
311A*01:01:01Costa Rica Amerindians (G)4.80.02401259_34_N_83_25_W
312A*01:01:01Costa Rica Central Valley Mestizo (G)15.30.07902219_55_N_84_5_W
313A*01:01:01Costa Rica Guanacaste Mestizo (G)9.20.046011010_16_N_85_37_W
314A*01:01:01England Blood Donors of Mixed Ethnicity37.40.206251952_21_N_1_10_W
315A*01:01:01Guinea Bissau0.04606512_0_N_15_0_W
316A*01:01:01Hong Kong Chinese HKBMDR HLA 11 loci2.00.01035,26622_25_N_114_17_E
317A*01:01:01India Andhra Pradesh Telugu Speaking28.50.147918613_4_N_80_14_E
318A*01:01:01India Karnataka Kannada Speaking30.50.158017412_57_N_77_36_E
319A*01:01:01India Kerala Malayalam speaking16.30.085735613_1_N_80_15_E
320A*01:01:01Iran Baloch0.017010029_29_N_60_52_E
321A*01:01:01Japan Okinawa Ryukyuan0.004014326_4_N_127_8_E
322A*01:01:01Madeira0.059018532_44_N_16_58_W
323A*01:01:01Mexico Guadalajara Mestizo pop 20.068010320_40_N_103_21_W
324A*01:01:01Mexico Hidalgo Mezquital Valley/ Otomi8.30.05567220_28_N_99_13_W
325A*01:01:01Mongolia Buryat0.114014147_6_N_118_6_E
326A*01:01:01Morocco Atlantic Coast Chaouya0.12809830_22_N_7_22_W
327A*01:01:01Morocco Nador Metalsa pop 20.13707335_10_N_2_56_W
328A*01:01:01Morocco Settat Chaouya25.60.12809833_0_N_7_36_W
329A*01:01:01Nicaragua Mestizo (G)5.80.029015512_40_N_85_13_W
330A*01:01:01Poland BMR25.60.137223,59552_0_N_19_22_E
331A*01:01:01Russia Belgorod region19.00.094815350_46_N_37_27_E
332A*01:01:01Russia Bashkortostan, Bashkirs0.80.008312054_0_N_55_0_E
333A*01:01:01Russia Bashkortostan, Tatars0.50.002619254_13_N_56_9_E
334A*01:01:01Russia Nizhny Novgorod, Russians1.00.00501,51056_19_N_43_59_E
335A*01:01:01Russian Federation Vologda Region20.20.105011959_13_N_39_54_E
336A*01:01:01Saudi Arabia pop 6 (G)0.071228,92723_52_N_45_4_E
337A*01:01:01South Africa Caucasians0.200010230_0_S_25_0_E
338A*01:01:01South African Black5.60.028214229_9_S_24_39_E
339A*01:01:01South African Indian population24.00.13005029_22_S_24_31_E
340A*01:01:01South African Mixed ancestry24.00.12005029_22_S_24_31_E
341A*01:01:01South Korea pop 30.000048537_33_N_126_59_E
342A*01:01:01Spain, Canary Islands, Gran canaria island20.00.104721527_57_N_15_36_W
343A*01:01:01USA African American pop 30.044056438_53_N_77_2_W
344A*01:01:01USA Arizona Gila River Pima0.00093,00033_4_N_111_43_W
345A*01:01:01USA Eastern European0.142055838_53_N_77_2_W
346A*01:01:01USA San Francisco Caucasian0.160022037_46_N_122_25_W
347A*01:01:01Vietnam Kinh3.00.014910114_5_N_108_27_E
348A*01:01:01:01Bolivia/Chile Aymara NA-DHS_13 (G)5.00.02502022_0_S_70_0_W
349A*01:01:01:01Canada Chipewyan NA-DHS_2 (G)8.00.04002559_36_N_107_20_W
350A*01:01:01:01Canada Cree NA-DHS_3 (G)11.10.05561850_20_N_102_30_W
351A*01:01:01:01Canada Ojibwa NA-DHS_4 (G)20.00.10001646_0_N_81_0_W
352A*01:01:01:01Chile Huilliche NA-DHS_14 (G)10.00.05002041_0_S_73_0_W
353A*01:01:01:01China Guangdong Province Meizhou Han0.015010024_27_N_116_7_E
354A*01:01:01:01Colombia Inga NA-DHS_11 (G)6.70.0333161_0_N_77_0_W
355A*01:01:01:01Colombia Wayuu NA-DHS_15 (G)6.70.03331511_0_N_73_0_W
356A*01:01:01:01Indonesia Java pop 20.0280366_8_S_106_10_E
357A*01:01:01:01Indonesia Sundanese and Javanese0.02502016_8_S_106_10_E
358A*01:01:01:01Libya Cyrenaica0.114011832_7_N_20_4_E
359A*01:01:01:01Mexico Mixe NA-DHS_6 (G)5.00.02502017_0_N_96_0_W
360A*01:01:01:01Russia Bashkortostan, Bashkirs16.70.087512054_0_N_55_0_E
361A*01:01:01:01Russia Bashkortostan, Tatars23.40.127619254_13_N_56_9_E
362A*01:01:01:01Russia Nizhny Novgorod, Russians22.60.11621,51056_19_N_43_59_E
363A*01:01:01:01Saudi Arabia pop 54.40.022215824_38_N_46_43_E
364A*01:01:01:01USA Italy Ancestry0.152027338_0_N_77_0_W
365A*01:01:01:01USA Mexican American Mestizo0.082055338_53_N_77_2_W
366A*01:01:01:01USA San Francisco Caucasian0.160022037_46_N_122_25_W
367A*01:01:01:01USA Spain Ancestry0.075027938_0_N_77_0_W
368A*01:01:01:02NPoland BMR0.00.000023,59552_0_N_19_22_E
369A*01:01:02Bulgaria0.00005542_0_N_23_0_E
370A*01:01:02China North Han0.000010539_54_N_116_24_E
371A*01:01:02Morocco Nador Metalsa pop 20.00007335_10_N_2_56_W
372A*01:01:02Saudi Arabia pop 51.30.006315824_38_N_46_43_E
373A*01:01:02South Korea pop 30.000048537_33_N_126_59_E
374A*01:01:03Poland BMR0.00.000023,59552_0_N_19_22_E
375A*01:01:33Russia Nizhny Novgorod, Russians0.10.00031,51056_19_N_43_59_E
376A*01:01:38LMorocco Settat Chaouya0.00.00009833_0_N_7_36_W
377A*01:02Argentina Rosario Toba1.20.00608632_57_S_60_39_W
378A*01:02Brazil Barra Mansa Rio State Caucasian0.001240522_32_S_44_10_W
379A*01:02Brazil Belo Horizonte Caucasian0.00.00009519_55_S_43_56_W
380A*01:02Brazil Rio de Janeiro Caucasian0.001052122_54_S_43_12_W
381A*01:02Brazil Vale do Ribeira Quilombos0.00.000014424_36_S_48_15_W
382A*01:02Bulgaria0.00005542_0_N_23_0_E
383A*01:02Cameroon Baka Pygmy0.0000108_30_N_14_0_E
384A*01:02Cameroon Bamileke0.0000775_28_N_10_25_E
385A*01:02Cameroon Beti0.00301742_55_N_11_9_E
386A*01:02Cameroon Sawa0.0000134_50_N_10_0_E
387A*01:02Cape Verde Northwestern Islands0.00006216_0_N_24_0_W
388A*01:02Cape Verde Southeastern Islands0.01606216_0_N_24_0_W
389A*01:02Central African Republic Mbenzele Pygmy0.0363_32_N_16_4_E
390A*01:02China Jiangsu Province Han0.001833432_54_N_119_48_E
391A*01:02China North Han0.000010539_54_N_116_24_E
392A*01:02China Tibet Region Tibetan0.000015829_39_N_91_7_E
393A*01:02Colombia Bogotá Cord Blood0.50.00271,4634_39_N_73_52_W
394A*01:02Costa Rica African -Caribbean (G)2.00.01001029_59_N_83_1_W
395A*01:02Costa Rica Amerindians (G)1.60.00801259_34_N_83_25_W
396A*01:02Croatia0.000015045_0_N_15_0_E
397A*01:02Croatia pop 40.00014,00045_48_N_15_57_E
398A*01:02Cuba Caucasian0.00.00007023_8_N_82_22_W
399A*01:02Cuba Mixed Race0.00.00004223_8_N_82_22_W
400A*01:02Czech Republic0.000010650_0_N_14_0_E
401A*01:02Czech Republic NMDR0.00015,09949_48_N_15_30_E
402A*01:02France French Bone Marrow Donor Registry0.007342,62348_51_N_2_21_E
403A*01:02Germany DKMS - Croatia minority0.00022,05748_31_N_9_3_E
404A*01:02Germany DKMS - German donors0.00013,456,06648_31_N_9_3_E
405A*01:02Germany DKMS - Greece minority0.00031,89448_31_N_9_3_E
406A*01:02Germany DKMS - Italy minority0.00221,15948_31_N_9_3_E
407A*01:02Germany DKMS - Portugal minority0.00131,17648_31_N_9_3_E
408A*01:02Germany DKMS - Spain minority0.00271,10748_31_N_9_3_E
409A*01:02Germany DKMS - Turkey minority0.00024,85648_31_N_9_3_E
410A*01:02Germany DKMS - United Kingdom minority0.00101,04348_31_N_9_3_E
411A*01:02Germany pop 60.00028,86251_6_N_10_23_E
412A*01:02Germany pop 80.000139,68948_24_N_9_58_E
413A*01:02Guinea Bissau0.00806512_0_N_15_0_W
414A*01:02Guinea Bissau Balanta0.02104811_52_N_15_36_W
415A*01:02Guinea Bissau Bijago0.00002311_52_N_15_36_W
416A*01:02Guinea Bissau Fula0.00003111_52_N_15_36_W
417A*01:02Guinea Bissau Papel0.02002511_52_N_15_36_W
418A*01:02Hong Kong Chinese0.00.000056922_16_N_114_9_E
419A*01:02India Delhi pop 26.70.03309028_36_N_77_13_E
420A*01:02Iran Gorgan0.04706436_50_N_54_43_E
421A*01:02Iran Kurd pop 20.02506036_17_N_46_17_E
422A*01:02Iran Saqqez-Baneh Kurds0.02506036_14_N_46_16_E
423A*01:02Iran Tabriz Azeris0.06199738_4_N_46_17_E
424A*01:02Ireland Northern0.00.00001,00054_40_N_6_45_W
425A*01:02Israel Arab pop 20.000012,30132_8_N_34_52_E
426A*01:02Israel Argentina Jews0.00014,30732_8_N_34_52_E
427A*01:02Israel Bukhara Jews0.00012,31732_8_N_34_52_E
428A*01:02Israel Georgia Jews0.00014,47132_10_N_34_53_E
429A*01:02Israel Iran Jews0.00008,15332_8_N_34_52_E
430A*01:02Israel Iraq Jews0.000013,27032_10_N_34_52_E
431A*01:02Israel Morocco Jews0.000136,71832_10_N_34_52_E
432A*01:02Israel Poland Jews0.000213,87132_10_N_34_52_E
433A*01:02Israel Tunisia Jews0.00009,07032_10_N_34_52_E
434A*01:02Israel USA Jews0.00026,05832_10_N_34_52_E
435A*01:02Israel USSR Jews0.000145,68132_9_N_34_50_E
436A*01:02Israel YemenJews0.000115,54232_9_N_34_50_E
437A*01:02Italy North pop 30.00.00009743_0_N_12_0_E
438A*01:02Italy pop 50.003097545_28_N_9_11_E
439A*01:02Kenya Luo0.00402650_0_S_34_6_E
440A*01:02Kenya Nandi0.02702400_0_S_35_0_E
441A*01:02Madeira0.008018532_44_N_16_58_W
442A*01:02Mali Bandiagara0.011013814_4_N_3_6_W
443A*01:02Mexico Mestizo0.00.00004119_24_N_99_9_W
444A*01:02Mexico Mexico City Mestizo pop 20.004323419_26_N_99_8_W
445A*01:02Morocco Atlantic Coast Chaouya0.00709830_22_N_7_22_W
446A*01:02Morocco Nador Metalsa pop 20.00007335_10_N_2_56_W
447A*01:02Morocco Settat Chaouya1.40.00709833_0_N_7_36_W
448A*01:02Netherlands Leiden0.00001,30552_9_N_4_31_E
449A*01:02Nicaragua Managua0.30.001533912_7_N_86_10_W
450A*01:02Oman0.00.000011822_0_N_56_0_E
451A*01:02Pakistan Baloch0.00006630_0_N_67_0_E
452A*01:02Pakistan Brahui0.000010430_0_N_67_0_E
453A*01:02Pakistan Burusho0.00009236_0_N_73_0_E
454A*01:02Pakistan Kalash0.00006932_0_N_70_0_E
455A*01:02Pakistan Karachi Parsi0.00009124_49_N_66_59_E
456A*01:02Pakistan Mixed Pathan0.000010032_0_N_70_0_E
457A*01:02Panama0.00454628_59_N_79_37_W
458A*01:02Philippines Ivatan0.00.00005020_22_N_121_56_E
459A*01:02Poland BMR0.00.000123,59552_0_N_19_22_E
460A*01:02Romania0.00.000034846_0_N_25_0_E
461A*01:02Russia Nizhny Novgorod, Russians0.10.00031,51056_19_N_43_59_E
462A*01:02Russia Tuva pop 20.003016951_30_N_95_5_E
463A*01:02Saudi Arabia pop 51.30.006315824_38_N_46_43_E
464A*01:02Saudi Arabia pop 6 (G)0.000628,92723_52_N_45_4_E
465A*01:02Senegal Niokholo Mandenka0.016016512_35_N_12_9_W
466A*01:02Singapore Chinese0.00.00001491_24_N_103_45_E
467A*01:02South Africa Natal Zulu0.00.000010029_0_S_31_0_E
468A*01:02South Korea pop 100.00014,12837_33_N_126_58_E
469A*01:02South Korea pop 30.000048537_33_N_126_59_E
470A*01:02Spain (Catalunya, Navarra, Extremadura, Aaragón, Cantabria,0.60.00294,33541_22_N_2_11_E
471A*01:02Switzerland Aargau-Solothurn0.00001,83846_48_N_8_13_E
472A*01:02Switzerland Basel0.00001,88847_33_N_7_34_E
473A*01:02Switzerland Bern0.00003,54546_57_N_7_27_E
474A*01:02Switzerland Geneva pop 20.00001,26746_12_N_6_8_E
475A*01:02Switzerland Graubunden0.000075946_42_N_9_57_E
476A*01:02Switzerland Lausanne0.000099346_31_N_6_39_E
477A*01:02Switzerland Lugano0.00931,16946_0_N_8_55_E
478A*01:02Switzerland Luzern0.00001,55347_3_N_8_18_E
479A*01:02Switzerland Sion0.000083246_15_N_7_23_E
480A*01:02Switzerland St Gallen0.00002,11347_26_N_9_21_E
481A*01:02Switzerland Zurich0.00004,87547_22_N_8_32_E
482A*01:02Taiwan Ami0.00.00009823_0_N_121_0_E
483A*01:02Taiwan Atayal0.00.000010624_0_N_121_0_E
484A*01:02Taiwan Bunun0.00.000010123_46_N_121_0_E
485A*01:02Taiwan Hakka0.00.00005524_0_N_121_0_E
486A*01:02Taiwan Minnan pop 10.00.000010224_0_N_121_0_E
487A*01:02Taiwan Paiwan0.00.00005123_0_N_121_0_E
488A*01:02Taiwan Pazeh0.00.00005525_0_N_121_30_E
489A*01:02Taiwan Puyuma0.00.00005023_0_N_121_0_E
490A*01:02Taiwan Rukai0.00.00005023_0_N_121_0_E
491A*01:02Taiwan Saisiat0.00.00005124_0_N_121_0_E
492A*01:02Taiwan Siraya0.00.00005124_0_N_121_0_E
493A*01:02Taiwan Tao0.00.00005024_0_N_121_0_E
494A*01:02Taiwan Taroko0.00.00005524_0_N_121_0_E
495A*01:02Taiwan Thao0.00.00003024_0_N_121_0_E
496A*01:02Taiwan Tsou0.00.00005124_0_N_121_0_E
497A*01:02Tanzania Maasai1.20.00603363_11_S_37_4_E
498A*01:02Tunisia2.00.010010035_0_N_9_0_E
499A*01:02Uganda Kampala0.00301610_3_N_32_6_E
500A*01:02Uganda Kampala pop 20.00601750_20_N_32_30_E
501A*01:02USA African American0.006025230_0_N_95_0_W
502A*01:02USA African American Bethesda0.00.000018738_0_N_78_0_W
503A*01:02USA African American pop 30.007056438_53_N_77_2_W
504A*01:02USA African American pop 40.00652,41144_58_N_93_15_W
505A*01:02USA Alaska Yupik0.000025260_48_N_161_26_W
506A*01:02USA Asian0.000035830_0_N_95_0_W
507A*01:02USA Asian pop 20.00001,77244_58_N_93_15_W
508A*01:02USA Caucasian Bethesda0.00.000030738_0_N_78_0_W
509A*01:02USA Caucasian pop 20.000026530_0_N_95_0_W
510A*01:02USA Caucasian pop 40.00091,07038_53_N_77_2_W
511A*01:02USA Hispanic0.006023430_0_N_95_0_W
512A*01:02USA Hispanic pop 20.00301,99944_58_N_93_15_W
513A*01:02USA NMDP African0.003128,55738_45_N_76_6_W
514A*01:02USA NMDP African American pop 20.0042416,58138_45_N_76_6_W
515A*01:02USA NMDP Caribean Black0.003333,32838_45_N_76_6_W
516A*01:02USA NMDP Caribean Hispanic0.0021115,37438_45_N_76_6_W
517A*01:02USA NMDP Caribean Indian0.002014,33938_45_N_76_6_W
518A*01:02USA NMDP European Caucasian0.00011,242,89038_45_N_76_6_W
519A*01:02USA NMDP Filipino0.000050,61438_45_N_76_6_W
520A*01:02USA NMDP Hawaiian or other Pacific Islander0.000111,49938_45_N_76_6_W
521A*01:02USA NMDP Hispanic South or Central American0.0014146,71438_45_N_76_6_W
522A*01:02USA NMDP Mexican or Chicano0.0012261,23538_45_N_76_6_W
523A*01:02USA NMDP Middle Eastern or North Coast of Africa0.000370,89038_45_N_76_6_W
524A*01:02USA NMDP North American Amerindian0.000235,79138_45_N_76_6_W
525A*01:02USA NMDP South Asian Indian0.0000185,39138_45_N_76_6_W
526A*01:02USA NMDP Southeast Asian0.000027,97838_45_N_76_6_W
527A*01:02USA North American Native0.000018730_0_N_95_0_W
528A*01:02USA Philadelphia Caucasian0.00.000014139_56_N_75_10_W
529A*01:02USA San Antonio Caucasian0.000022229_23_N_98_33_W
530A*01:02USA South Texas Hispanic0.000019429_0_N_98_0_W
531A*01:02USA Spain Ancestry0.002027938_0_N_77_0_W
532A*01:02Zambia Lusaka0.00004415_25_S_28_17_E



   

Allele frequency net database (AFND) 2020 update: gold-standard data classification, open access genotype data and new query tools
Gonzalez-Galarza FF, McCabe A, Santos EJ, Jones J, Takeshita LY, Ortega-Rivera ND, Del Cid-Pavon GM, Ramsbottom K, Ghattaoraya GS, Alfirevic A, Middleton D and Jones AR Nucleic Acid Research 2020, 48:D783-8.
Liverpool, U.K.

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