Allele Frequencies in World Populations

HLA > Haplotype Frequency Search

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Displaying 101 to 200 (from 834) records   Pages: 1 2 3 4 5 6 7 8 9 of 9  

Line Haplotype Population Frequency (%) Sample Size Distribution¹
 101  A*23:17:01-B*35:08:01-C*04:01:01-DRB1*13:02:01-DQB1*06:04:01-DPA1*01:03:01-DPB1*104:01:01  Brazil Barra Mansa Rio State Caucasian 0.3125405
 102  A*26:01:01-B*35:01:01-C*04:01:01-DRB1*13:02:01-DQB1*06:04:01-DPA1*01:03:01-DPB1*104:01:01  Brazil Barra Mansa Rio State Caucasian 0.3125405
 103  A*11-B*35-DRB1*13-DQB1*06  Mexico Oaxaca Rural 0.3080485
 104  A*24-B*35-DRB1*13-DQB1*06  Mexico Durango Rural 0.3058326
 105  A*23:01-B*35:01-C*04:01-DRB1*13:02-DQA1*01:01-DQB1*06:09-DPB1*26:01  South Africa Worcester 0.3000159
 106  A*11:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  India East UCBB 0.29962,403
 107  A*11-B*35-DRB1*13:01-DQA1*01:03-DQB1*06:03  Brazil Paraná Caucasian 0.2965641
 108  A*03-B*35-DRB1*13-DQB1*06  Mexico Veracruz, Veracruz city 0.2907171
 109  A*26:01-B*35:01-C*04:01-DRB1*13:02-DQB1*06:04  Italy pop 5 0.2900975
 110  A*01:01:01-B*35:01:01-C*06:02:01-DRB1*13:01:01-DQB1*06:03:01  India Karnataka Kannada Speaking 0.2870174
 111  A*01:01:01-B*35:03:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  India Karnataka Kannada Speaking 0.2870174
 112  A*02:01:01-B*35:03:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  India Karnataka Kannada Speaking 0.2870174
 113  A*24:02:01-B*35:01:01-C*03:02:02-DRB1*13:02:01-DQB1*06:09:01  India Karnataka Kannada Speaking 0.2870174
 114  A*24:02:01-B*35:28-C*12:02:01-DRB1*13:02:01-DQB1*06:01:08  India Karnataka Kannada Speaking 0.2870174
 115  A*32:01:01-B*35:03:01-C*07:01:01-DRB1*13:01:01-DQB1*06:01:01  India Karnataka Kannada Speaking 0.2870174
 116  A*01-B*35-DRB1*13:01-DQA1*01:03-DQB1*06:03  Brazil Paraná Caucasian 0.2779641
 117  A*29-B*35-DRB1*13-DQB1*06  Mexico Tlaxcala, Tlaxcala city 0.2762181
 118  A*33-B*35-DRB1*13-DQB1*06  Mexico Sinaloa Rural 0.2732183
 119  A*74-B*35-DRB1*13-DQB1*06  Mexico Sinaloa Rural 0.2732183
 120  A*32:01-B*35:03-C*04:01-DRB1*13:02-DQB1*06:09  USA NMDP Caribean Indian 0.271314,339
 121  A*02:01:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  India Andhra Pradesh Telugu Speaking 0.2688186
 122  A*02:09-B*35:03:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  India Andhra Pradesh Telugu Speaking 0.2688186
 123  A*68:01:01-B*35:03:01-C*14:02:01-DRB1*13:01:01-DQB1*06:03:01  India Andhra Pradesh Telugu Speaking 0.2688186
 124  A*01:01:01:01-B*35:02:01-C*06:02:01:01-DRB1*13:01:01-DQB1*06:03:01  Russia Bashkortostan, Tatars 0.2604192
 125  A*03:01:01:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  Russia Bashkortostan, Tatars 0.2604192
 126  A*01:01-B*35:55-C*04:01-DRB1*13:02-DQA1*01:02-DQB1*06:04-DPB1*02:01  USA San Diego 0.2600496
 127  A*11:01-B*35:03-C*04:01-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*02:01  USA San Diego 0.2600496
 128  A*33:03-B*35:01-C*04:01-DRB1*13:02-DQA1*01:02-DQB1*06:09-DPB1*02:01  USA San Diego 0.2600496
 129  A*68:01-B*35:01-C*04:01-DRB1*13:02-DQA1*01:02-DQB1*06:04-DPB1*04:01  USA San Diego 0.2600496
 130  A*68:01-B*35:01-C*04:01-DRB1*13:02-DQA1*01:02-DQB1*06:04-DPB1*09:01  USA San Diego 0.2600496
 131  A*24-B*35-DRB1*13:01-DQA1*01:03-DQB1*06:03  Brazil Paraná Caucasian 0.2594641
 132  A*32-B*35-DRB1*13-DQB1*06  Mexico Yucatan, Merida 0.2564192
 133  A*02-B*35-DRB1*13-DQB1*06  Mexico Sonora Rural 0.2538197
 134  A*24-B*35-DRB1*13-DQB1*06  Mexico Jalisco, Guadalajara city 0.25131,189
 135  A*11-B*35-C*04-DRB1*13-DQB1*06-DPB1*04  Norway ethnic Norwegians 0.25004,510
 136  A*02-B*35-DRB1*13-DQB1*06  Ecuador Andes Mixed Ancestry 0.2427824
 137  A*29-B*35-DRB1*13-DQB1*06  Mexico Tlaxcala Rural 0.2410830
 138  A*31:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India South UCBB 0.235611,446
 139  A*02:01:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  Spain, Canary Islands, Gran canaria island 0.2300215
 140  A*23:01:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  Spain, Canary Islands, Gran canaria island 0.2300215
 141  A*29:02:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  Spain, Canary Islands, Gran canaria island 0.2300215
 142  A*30:02:01-B*35:01:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01  Spain, Canary Islands, Gran canaria island 0.2300215
 143  A*31:01:02-B*35:02:01-C*02:02:02-DRB1*13:01:01-DQB1*06:03:01  Spain, Canary Islands, Gran canaria island 0.2300215
 144  A*29-B*35-DRB1*13-DQB1*06  Mexico Coahuila Rural 0.2294216
 145  A*24:02-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India Tamil Nadu 0.22722,492
 146  A*02-B*35-DRB1*13-DQB1*06  Mexico Nuevo Leon, Monterrey city 0.2212226
 147  A*11:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  India South UCBB 0.216811,446
 148  A*02:01-B*35:01-C*04:01-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*04:02  Nicaragua Managua 0.2165339
 149  A*68-B*35-DRB1*13-DQB1*06  Ecuador Coast Mixed Ancestry 0.2101238
 150  A*03-B*35-DRB1*13-DQB1*06  Mexico Chihuahua Rural 0.2092236
 151  A*30-B*35-DRB1*13-DQB1*06  Mexico Chihuahua Rural 0.2092236
 152  A*24:02-B*35:03-C*12:03-DRB1*13:01-DQB1*06:03  India North UCBB 0.20755,849
 153  A*24:02-B*35:03-C*12:03-DRB1*13:01-DQB1*06:03  India South UCBB 0.205711,446
 154  A*03:01-B*35:03-C*04:01-DRB1*13:02-DQB1*06:04  USA NMDP Caribean Indian 0.204714,339
 155  A*11:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  India Central UCBB 0.20124,204
 156  A*11:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  India West UCBB 0.19995,829
 157  A*03:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India Central UCBB 0.19744,204
 158  A*02:01:01-B*35:08:01-C*04:01:01-DRB1*13:01:01-DQB1*06:03:01-DPA1*01:03:01-DPB1*02:01:02  Brazil Rio de Janeiro Caucasian 0.1946521
 159  A*02:05:01-B*35:03:01-C*04:01:01-DRB1*13:05:01-DQB1*06:04:01-DPA1*01:03:01-DPB1*02:01:02  Brazil Rio de Janeiro Caucasian 0.1946521
 160  A*24:02:01-B*35:08:01-C*16:01:01-DRB1*13:01:01-DQB1*06:03:01-DPA1*01:03:01-DPB1*03:01:01  Brazil Rio de Janeiro Caucasian 0.1946521
 161  A*02:01-B*35:01-C*16:01-DRB1*13:01-DQB1*06:03-DPB1*01:01  Panama 0.1900462
 162  A*02:01-B*35:43-C*03:04-DRB1*13:02-DQB1*06:04-DPB1*03:01  Panama 0.1900462
 163  A*01-B*35-DRB1*13-DQB1*06  Mexico Zacatecas Rural 0.1859266
 164  A*01:03-B*35:03-C*12:03-DRB1*13:01-DQB1*06:03  Malaysia Peninsular Indian 0.1845271
 165  A*03:01-B*35:01-C*07:08-DRB1*13:01-DQB1*06:03  Malaysia Peninsular Indian 0.1845271
 166  A*03:01-B*35:03-C*12:03-DRB1*13:01-DQB1*06:03  Malaysia Peninsular Indian 0.1845271
 167  A*24:02-B*35:04-C*04:01-DRB1*13:02-DQB1*06:09  Malaysia Peninsular Indian 0.1845271
 168  A*24:15-B*35:03-C*12:03-DRB1*13:01-DQB1*06:03  Malaysia Peninsular Indian 0.1845271
 169  A*11:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India West UCBB 0.18325,829
 170  A*11:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  USA Asian pop 2 0.17801,772
 171  A*02-B*35-DRB1*13-DQB1*06  Mexico Puebla, Puebla city 0.17541,994
 172  A*01:01-B*35:03-C*04:01-DRB1*13:02-DQB1*06:04  Germany DKMS - Italy minority 0.17501,159
 173  A*24:03-B*35:01-C*04:01-DRB1*13:02-DQB1*06:04  Germany DKMS - Italy minority 0.17301,159
 174  A*03-B*35-DRB1*13-DQB1*06  Mexico Jalisco Rural 0.1706585
 175  A*02-B*35-DRB1*13-DQB1*06  Ecuador Mixed Ancestry 0.17051,173
 176  A*31:12-B*35:03-C*04:03-DRB1*13:01-DQB1*06:03  India Northeast UCBB 0.1689296
 177  A*03:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India Tamil Nadu 0.16832,492
 178  A*01-B*35-C*04-DRB1*13-DQA1*01-DQB1*06  Spain, Castilla y Leon, Northwest, 0.16801,743
 179  A*01:01-B*35:03-C*04:01-DRB1*13:02-DQB1*06:04  Germany DKMS - Turkey minority 0.16204,856
 180  A*11:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India Central UCBB 0.16204,204
 181  A*24:02-B*35:02-C*04:18-DRB1*13:02-DQB1*06:04-DPB1*30:01  Tanzania Maasai 0.1597336
 182  A*03:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03-DPB1*04:01  Russia Karelia 0.15781,075
 183  A*03-B*35-DRB1*13-DQB1*06  Mexico Durango Rural 0.1529326
 184  A*11:01-B*35:03-C*04:01-DRB1*13:01-DQB1*06:03  India South UCBB 0.152511,446
 185  A*01:01-B*35:01-DRB1*13:02-DQB1*06:04  Mexico Mexico City Tlalpan 0.1515330
 186  A*11:01-B*35:01-DRB1*13:02-DQB1*06:09  Mexico Mexico City Tlalpan 0.1515330
 187  A*24:02-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  Germany DKMS - Turkey minority 0.15004,856
 188  A*02:01-B*35:01-C*16:01-DRB1*13:02-DQB1*06:09  USA NMDP Black South or Central American 0.14744,889
 189  A*24:02:01-B*35:08-C*04:01:01-DRB1*13:02:01-DQB1*06:04:01-DPB1*02:01:02  Saudi Arabia pop 6 (G) 0.146028,927
 190  A*68:01-B*35:01-C*04:01-DRB1*13:01-DQB1*06:03  India East UCBB 0.14492,403
 191  A*11-B*35-DRB1*13-DQB1*06  Mexico Michoacan Rural 0.1433348
 192  A*68-B*35-DRB1*13-DQB1*06  Mexico Michoacan Rural 0.1433348
 193  A*02:01-B*35:03-C*04:01-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*02:01  Sri Lanka Colombo 0.1401714
 194  A*03:01-B*35:03-C*12:03-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*02:01  Sri Lanka Colombo 0.1401714
 195  A*24:02-B*35:01-C*04:01-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*13:01  Sri Lanka Colombo 0.1401714
 196  A*33:03-B*35:03-C*12:03-DRB1*13:01-DQA1*01:03-DQB1*06:03-DPB1*04:01  Sri Lanka Colombo 0.1401714
 197  A*01:01-B*35:03-C*04:01-DRB1*13:02-DQB1*06:04  USA Hispanic pop 2 0.14001,999
 198  A*02:01:01-B*35:03:01-C*12:03:01-DRB1*13:01:01-DQB1*06:03:01  India Kerala Malayalam speaking 0.1400356
 199  A*02:01-B*35:08-C*04:01-DRB1*13:01-DQB1*06:03  Italy pop 5 0.1400975
 200  A*02:01-B*35:08-C*04:01-DRB1*13:02-DQB1*06:04  Italy pop 5 0.1400975

Notes:

* Haplotype Frequencies: Total number of copies of the haplotype in the population sample (Haplotypes / 2n) shown in percentages (%).
   Important: This field has been expanded to two decimals to better represent frequencies of large datasets (e.g. where sample size > 1000 individuals)
¹ Distribution - Shows the geographic distribution in overlaid maps of the complete haplotype (left icon) or the input alleles if low level resolution was entered (right icon).


Displaying 101 to 200 (from 834) records   Pages: 1 2 3 4 5 6 7 8 9 of 9  


   

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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