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Thread: Nepalese DNA

  1. #111
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    Bhai can I share some of these thakuri results on my FB page. I don't want to without your consent. It is always a good online etiquette to request.

    Sent from my Mi 10 using Tapatalk

  2. #112
    Veteran Member Sora's Avatar
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    I wonder Tharu results a lot. Cus Harappaworld say they're only 7% Mongoloid but their phenotypes look very Tibetan
    Ask Sora: https://www.theapricity.com/forum/sh...-Sora-anything

    My MyHeritage & Gedmatch results:
    https://www.theapricity.com/forum/sh...dmatch-results

    Quote Originally Posted by Dr_Maul
    Good observation Sheikh

  3. #113
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    Quote Originally Posted by Leto View Post
    I think on Harappa it's more like 12-13% but on Dodecad it should be a bit higher. The former gives a bit less North European to Central and South Asians than the latter.

    I know the thread is about Nepalese DNA but do you happen to know if the Bihar Brahmins are the same as the Uttar Pradesh ones? Specifically Maithil Brahmins.
    True indeed. The Maithil Bihari Brahmins are same as Eastern Uttar Pradesh Brahmins.

    Spoiler!


    Quote Originally Posted by Godardt View Post
    Bhai can I share some of these thakuri results on my FB page. I don't want to without your consent. It is always a good online etiquette to request.

    Sent from my Mi 10 using Tapatalk
    No problem at all. I posted these kits for all of you enthusiast guys. The Shahi kit is mixed, so better not to post the Shahi.

    Quote Originally Posted by Sora View Post
    I wonder Tharu results a lot. Cus Harappaworld say they're only 7% Mongoloid but their phenotypes look very Tibetan
    Tharus are half Tibetan half South Asian. Some are mixed with Gangetic folks, so the East Asian is reduced in them. A typical Tharu shows East Asian features a lot.

    Spoiler!



    Tharu average is 60 percent Chokhopani/Tibetan and rest 40 percent South Asian.

    Target: Tharu
    Distance: 2.7037% / 0.02703749
    60.8 NPL_Chokhopani_2700BP
    39.2 IRN_Shahr_I_Sokhta_BA3
    Last edited by Kaazi; 10-29-2021 at 01:18 PM.

  4. #114
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    Academic Tharu average for Dodecad
    Code:
    Tharu,15.85,4.64,0.19,10.28,0.34,2.39,31.17,0.00,0.13,34.60,0.41,0.00
    Quite strongly Mongoloid, basically half. I didn't know this tribe/ethnic group.

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    Chhetri (Karki)

    Kit FW5124484

    # Population Percent
    1 S-Indian 29.18
    2 NE-Asian 26.87
    3 Baloch 22.32
    4 Siberian 6.38
    5 NE-Euro 5.06
    6 SE-Asian 4.42
    7 Caucasian 2.62
    8 Mediterranean 1.52
    9 Beringian 1.03
    10 Papuan 0.6

    Single Population Sharing:

    # Population (source) Distance
    1 nepalese-c (xing) 7.54
    2 hazara (hgdp) 25.88
    3 nepalese-b (xing) 26
    4 uyghur (hgdp) 26.55
    5 bengali (harappa) 26.91
    6 burusho (hgdp) 27.55
    7 nepalese-a (xing) 27.57
    8 up-muslim (harappa) 28.22
    9 khasi (chaubey) 28.93
    10 bengali-brahmin (harappa) 28.96
    11 bihari-muslim (harappa) 29.29
    12 kashmiri (harappa) 29.3
    13 uzbek (behar) 29.82
    14 gujarati-muslim (harappa) 29.87
    15 punjabi (harappa) 30.46
    16 punjabi-jatt-muslim (harappa) 30.94
    17 kashmiri-pandit (reich) 31.01
    18 kashmiri-pahari (harappa) 31.12
    19 cochin-jew (behar) 31.22
    20 singapore-indian-c (sgvp) 31.28

    Mixed Mode Population Sharing:

    # Primary Population (source) Secondary Population (source) Distance
    1 63.5% up-kshatriya (metspalu) + 36.5% japanese (hgdp) @ 1.98
    2 65.7% bihari-muslim (harappa) + 34.3% japanese (hgdp) @ 2.12
    3 63.9% karnataka-brahmin (harappa) + 36.1% japanese (hgdp) @ 2.44
    4 63.9% vaish (reich) + 36.1% japanese (hgdp) @ 2.46
    5 63.1% meghawal (reich) + 36.9% japanese (hgdp) @ 2.63
    6 66% bengali-brahmin (harappa) + 34% japanese (hgdp) @ 2.68
    7 63.7% maharashtrian (harappa) + 36.3% japanese (hgdp) @ 2.77
    8 61.9% up-kshatriya (metspalu) + 38.1% tu (hgdp) @ 2.88
    9 64.2% bihari-muslim (harappa) + 35.8% tu (hgdp) @ 2.93
    10 62.7% iyengar-brahmin (harappa) + 37.3% japanese (hgdp) @ 2.98
    11 61.6% karnataka-brahmin (harappa) + 38.4% xibo (hgdp) @ 3.09
    12 62.3% karnataka-brahmin (harappa) + 37.7% tu (hgdp) @ 3.11
    13 60.5% ap-brahmin (xing) + 39.5% xibo (hgdp) @ 3.14
    14 61% gujarati (harappa) + 39% xibo (hgdp) @ 3.17
    15 60.3% iyer-brahmin (harappa) + 39.7% xibo (hgdp) @ 3.2
    16 63.3% gujarati (harappa) + 36.7% japanese (hgdp) @ 3.24
    17 60.4% iyengar-brahmin (harappa) + 39.6% xibo (hgdp) @ 3.24
    18 62.8% ap-brahmin (xing) + 37.2% japanese (hgdp) @ 3.25
    19 64.5% bengali-brahmin (harappa) + 35.5% tu (hgdp) @ 3.26
    20 61.5% meghawal (reich) + 38.5% tu (hgdp) @ 3.27
    Quote Originally Posted by Dna8 View Post
    If God is an artist, the female form is his masterpiece.

  6. #116
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    Quote Originally Posted by Sora View Post
    I wonder Tharu results a lot. Cus Harappaworld say they're only 7% Mongoloid but their phenotypes look very Tibetan
    Thats why you can’t rely on any calculator for total Mongoloid.

    You’ve already seen how 23andme is able to make Turks 0 mongoloid.

    We can even make Kazakh 0 mongoloid if we want. All we have to do is make 1 component Chinese Han and the 2nd component Central Asian. We can make Kazakh score near 0 E. Asian and near 100% C. Asian

    If we want to make Kurds 0 Mongoloid all we have to do is make one component Caucasian and the other W.Asian since we know Kurds have alot of ancestry from there and will score nearly 100% Caucasian and W. Asian. This way their E. Asian will be forced to zero. If we want to make Kurds very mongoloid we don’t use any Caucasian or W. Asian. Instead we use African and W. European. This way they’ll score high E. Asian

    If we want to make Turks 0 mongoloid we should use a Balkan and W Asian and Greek components. If we want to make Turks very mongoloid we leave out Balkan, W. Asian and Greek components.

    So you may ask how do we know how mongoloid a person is? The only way I know is to do one to one comparison of person with E. Asians and Siberians and count how many genes they match with the oerson in IBS. If you do this the mystery of why some west Asians have Mongoloid phenotype but score a little mongoloid on calculators will be largely solved
    Muzh ba staso la tyaro tsakha ra wubaasu

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  7. #117
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    Quote Originally Posted by Zoro View Post
    Thats why you can’t rely on any calculator for total Mongoloid.

    You’ve already seen how 23andme is able to make Turks 0 mongoloid.

    We can even make Kazakh 0 mongoloid if we want. All we have to do is make 1 component Chinese Han and the 2nd component Central Asian. We can make Kazakh score near 0 E. Asian and near 100% C. Asian

    If we want to make Kurds 0 Mongoloid all we have to do is make one component Caucasian and the other W.Asian since we know Kurds have alot of ancestry from there and will score nearly 100% Caucasian and W. Asian. This way their E. Asian will be forced to zero. If we want to make Kurds very mongoloid we don’t use any Caucasian or W. Asian. Instead we use African and W. European. This way they’ll score high E. Asian

    If we want to make Turks 0 mongoloid we should use a Balkan and W Asian and Greek components. If we want to make Turks very mongoloid we leave out Balkan, W. Asian and Greek components.

    So you may ask how do we know how mongoloid a person is? The only way I know is to do one to one comparison of person with E. Asians and Siberians and count how many genes they match with the oerson in IBS. If you do this the mystery of why some west Asians have Mongoloid phenotype but score a little mongoloid on calculators will be largely solved
    I came up with a new way to estimate the amount of Mongoloid ancestry. I'm using qpGraph to model populations as a combination of the common ancestor of two Caucasoid populations and the common ancestor of two Mongoloid populations:

    Code:
    library(admixtools)
    library(tidyverse)
    
    p1=c("Lithuanian","Sardinian")
    p2=c("Mongol","Han")
    p3=c("Tharu","Finnish","Kurd","Kazakh","Russia_HG_Karelia","Turkey_N","Italy_North_Villabruna_HG","Russia_Samara_EBA_Yamnaya","Sherpa","Newar","Bahun","Rai","Tamang","Gurung","Magar","Japanese","Enets","Nganasan","French","Uyghur")
    
    f2=f2_from_geno("v50.0_HO_public",pops=c(p1,p2,p3),maxmiss=1)
    
    res=sapply(p3,function(x){
      tree=rbind(c("R","A"),c("R","B"),c("A","C"),c("B","C"),cbind("A",p1),cbind("B",p2),c("C",x))
      gr=qpgraph(f2,tree)
      w=(gr$edges%>%filter(from=="B"&to=="C"))$weight
      list(w,gr$score)
    })%>%apply(1,unlist)
    
    res=res[order(res[,1]),]
    paste(sprintf("%.1f",100*res[,1]),rownames(res),round(res[,2]))%>%writeLines
    
    # x="Tharu"
    # tree=rbind(c("R","A"),c("R","B"),c("A","C"),c("B","C"),cbind("A",p1),cbind("B",p2),c("C",x))
    # gr=qpgraph(f2,tree)
    # plot_graph(gr$edges)
    # ggsave("1.png",width=4,height=4)
    Result:

    0.0 Turkey_N 2144
    0.0 Italy_North_Villabruna_HG 1311
    0.5 French 1616
    6.9 Finnish 1312
    8.8 Kurd 1444
    9.6 Russia_Samara_EBA_Yamnaya 1463
    19.9 Russia_HG_Karelia 1454
    39.1 Bahun 1345
    55.7 Uyghur 1303
    61.9 Newar 1949
    66.2 Tharu 1816
    70.2 Kazakh 1195
    85.7 Tamang 2273
    86.7 Magar 2257
    86.8 Enets 1531
    91.1 Gurung 2281
    93.9 Rai 2231
    97.0 Sherpa 2034
    100.0 Japanese 3110
    100.0 Nganasan 2433

    For example the model for Tharu used a graph like this:


  8. #118
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    Quote Originally Posted by Komintasavalta View Post
    I came up with a new way to estimate the amount of Mongoloid ancestry. I'm using qpGraph to model populations as a combination of the common ancestor of two Caucasoid populations and the common ancestor of two Mongoloid populations:

    Code:
    library(admixtools)
    library(tidyverse)
    
    p1=c("Lithuanian","Sardinian")
    p2=c("Mongol","Han")
    p3=c("Tharu","Finnish","Kurd","Kazakh","Russia_HG_Karelia","Turkey_N","Italy_North_Villabruna_HG","Russia_Samara_EBA_Yamnaya","Sherpa","Newar","Bahun","Rai","Tamang","Gurung","Magar","Japanese","Enets","Nganasan","French","Uyghur")
    
    f2=f2_from_geno("v50.0_HO_public",pops=c(p1,p2,p3),maxmiss=1)
    
    res=sapply(p3,function(x){
      tree=rbind(c("R","A"),c("R","B"),c("A","C"),c("B","C"),cbind("A",p1),cbind("B",p2),c("C",x))
      gr=qpgraph(f2,tree)
      w=(gr$edges%>%filter(from=="B"&to=="C"))$weight
      list(w,gr$score)
    })%>%apply(1,unlist)
    
    res=res[order(res[,1]),]
    paste(sprintf("%.1f",100*res[,1]),rownames(res),round(res[,2]))%>%writeLines
    
    # x="Tharu"
    # tree=rbind(c("R","A"),c("R","B"),c("A","C"),c("B","C"),cbind("A",p1),cbind("B",p2),c("C",x))
    # gr=qpgraph(f2,tree)
    # plot_graph(gr$edges)
    # ggsave("1.png",width=4,height=4)
    Result:

    0.0 Turkey_N 2144
    0.0 Italy_North_Villabruna_HG 1311
    0.5 French 1616
    6.9 Finnish 1312
    8.8 Kurd 1444
    9.6 Russia_Samara_EBA_Yamnaya 1463
    19.9 Russia_HG_Karelia 1454
    39.1 Bahun 1345
    55.7 Uyghur 1303
    61.9 Newar 1949
    66.2 Tharu 1816
    70.2 Kazakh 1195
    85.7 Tamang 2273
    86.7 Magar 2257
    86.8 Enets 1531
    91.1 Gurung 2281
    93.9 Rai 2231
    97.0 Sherpa 2034
    100.0 Japanese 3110
    100.0 Nganasan 2433

    For example the model for Tharu used a graph like this:

    I like your open thinking and skills but to be fair to our E. European friends since they also have some Siberian and E. Asian ancestry I wouldn’t use Lithuanians as proxy for W. Eurasian. Use something that you’re more sure that doesn’t have any Siberian or E. Asian. Maybe some W. African population as non mongoloid proxy

    To be even more fair also use Siberian as Mongoloid and use a couple of different W. and E. Asian proxies and average the results

    You can also try Basque as a W. Eurasian proxy. You can also do one run with 1000G only, the other with Simmons only since results will be different because they use different SNPs.

    Ideally you want to use whole genomes to reduce bias but I don’t know if you can find whole genomes for many ethnicities
    Last edited by Zoro; 10-30-2021 at 12:02 AM.

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    Quote Originally Posted by Zoro View Post
    I like your open thinking and skills but to be fair to our E. European friends since they also have some Siberian and E. Asian ancestry I wouldn’t use Lithuanians as proxy for W. Eurasian. Use something that you’re more sure that doesn’t have any Siberian or E. Asian. Maybe some W. African population as non mongoloid proxy

    To be even more fair also use Siberian as Mongoloid and use a couple of different W. and E. Asian proxies and average the results

    You can also try Basque as a W. Eurasian proxy. You can also do one run with 1000G only, the other with Simmons only since results will be different because they use different SNPs.

    Ideally you want to use whole genomes to reduce bias but I don’t know if you can find whole genomes for many ethnicities
    The results don't change that much if you add more references. I also tried to use Serbia_IronGates_Mesolithic and Turkey_N as the Caucasoid references, but for some reason it caused Finns to get only 3% Mongoloid ancestry.

    Another dead simple method to estimate the percentage of Mongoloid ancestry of is to first do a PCA of Eurasian populations, and to then apply min-max scaling to PC1 so the smallest value becomes 0 and the largest value becomes 100. It gave the figure of 66% for Tharu, which is exactly the same as the result of my qpGraph model:

    Code:
    $ wget https://reichdata.hms.harvard.edu/pub/datasets/amh_repo/curated_releases/V50/V50.0/SHARE/public.dir/v50.0_HO_public.{anno,ind,snp,geno}
    $ f=v50.0_HO_public;convertf -p <(printf %s\\n genotypename:\ $f.geno snpname:\ $f.snp indivname:\ $f.ind outputformat:\ PACKEDPED genotypeoutname:\ $f.bed snpoutname:\ $f.bim indivoutname:\ $f.fam)
    $ igno()(grep -Ev '\.REF|rel\.|fail\.|\.contam|Ignore_|_dup|_contam|_lc|_father|_mother|_son|_daughter|_brother|_sister|_relative|_sibling|_twin|Neanderthal|Denisova|Vindija_light|Gorilla|Macaque|Marmoset|Orangutan|Primate_Chimp|hg19ref')
    $ printf %s\\n AA Aleut Algerian Australian BantuKenya BantuSA BantuSA_Ovambo Biaka Bolivian Canary_Islander Datog Egyptian Eritrea Esan Ethiopia_BetaIsrael Gambian Hadza1 IBS_CanaryIslands Jew_Ethiopian Jew_Moroccan Jew_Tunisian Ju_hoan_North Karitiana Khomani Kikuyu Libyan Luhya Luo Malawi_Chewa Malawi_Ngoni Malawi_Tumbuka Malawi_Yao Mandenka Masai Mayan Mbuti Mende Mixe Mixtec Moroccan Mozabite Namibia_Bantu_Herero Nasioi Papuan Piapoco Pima Quechua Saharawi Somali Surui Tlingit Tunisian YRI Yemeni Yemeni_Desert2 Yoruba Zapotec>noneurasia
    $ x=eurasia;awk -F\\t '$5==0&&$7!~/\./{print$2,$7}' v50.0_HO_public.anno|igno|grep -v _o|awk 'NR==FNR{a[$0];next}!($2 in a)' noneurasia ->$x.pick
    $ plink --bfile v50.0_HO_public --keep <(awk 'NR==FNR{a[$1];next}$2 in a' $x.pick v50.0_HO_public.fam) --make-bed --out $x
    $ plink --bfile $x --indep-pairwise 50 10 .1 --maf --out $x;plink --bfile $x --extract $x.prune.in --make-bed --out $x.p
    $ plink --bfile $x.p --pca 20 --out $x
    $ awk 'NR==FNR{a[$1]=$2;next}{p=a[$2];s[p]+=$3;n[p]++}END{for(i in s)print s[i]/n[i],i}' $x.{pick,eigenvec}|awk '{if(NR==1||$1>max)max=$1;if(NR==1||min>$1)min=$1;a[NR]=$1;n[NR]=$2}END{for(i=1;i<=NR;i++)print 100*(a[i]-min)/(max-min),n[i]}'|sort -n|awk '{$1=sprintf("%.0f",$1)}1'
    0 Sardinian
    0 Italian_Sardinian
    2 Spanish_Lleida
    2 Spanish_North
    2 Basque
    3 Italian_North
    3 Cypriot
    3 Spanish
    3 Sicilian
    3 Jew_Turkish
    3 Italian_South
    3 BedouinB
    3 Jew_Libyan
    3 Lebanese_Christian
    3 Jew_Yemenite
    3 Greek
    4 Jew_Iraqi
    4 Druze
    4 Maltese
    4 French
    4 English
    4 Albanian
    4 Yemeni_Northwest
    4 Yemeni_Highlands
    4 Yemeni_Desert
    4 Armenian_Hemsheni
    4 Saudi
    4 Croatian
    4 Jew_Ashkenazi
    4 Armenian
    4 Moldavian
    5 Lebanese_Muslim
    5 Romanian
    5 Bulgarian
    5 Palestinian
    5 Scottish
    5 Assyrian
    5 Orcadian
    5 Gagauz
    5 Icelandic
    5 Georgian
    5 Czech
    5 Norwegian
    5 Jew_Iranian
    5 Jew_Georgian
    5 BedouinA
    6 Jordanian
    6 Lebanese
    6 Hungarian
    6 Syrian
    6 Lithuanian
    6 Yemeni_Highlands_Raymah
    6 Ukrainian_North
    6 Ukrainian
    7 Abkhasian
    7 Belarusian
    7 Russia_Abkhasian
    8 Estonian
    8 Kurd
    8 Kaitag
    8 Ezid
    8 Kubachinian
    9 Darginian
    9 Chechen
    9 Tabasaran
    9 Lezgin
    9 Avar
    9 Lak
    9 Russian
    10 Ingushian
    10 Adygei
    10 Iranian
    10 Turkish
    11 Kumyk
    11 Azeri
    11 Ossetian
    12 Circassian
    12 Finnish
    12 Russia_NorthOssetian
    12 Mordovian
    12 Balkar
    13 Karachai
    13 Iranian_Bandari
    13 Karelian
    13 Russian_Archangelsk_Krasnoborsky
    13 Kabardinian
    13 Abazin
    14 Veps
    15 Makrani
    16 Russian_Archangelsk_Pinezhsky
    17 Brahui
    17 Turkish_Balikesir
    17 Balochi
    18 Russian_Archangelsk_Leshukonsky
    19 Tatar_Mishar
    20 Kalash
    22 Pathan
    22 Tajik
    23 Tatar_Kazan
    24 Sindhi_Pakistan
    25 GujaratiA
    25 Jew_Cochin
    25 Chuvash
    26 Besermyan
    27 Nogai_Karachay_Cherkessia
    29 GujaratiB
    29 Udmurt
    30 Burusho
    31 GujaratiC
    32 GujaratiD
    34 Punjabi
    34 Bashkir
    36 Turkmen
    39 Uzbek
    41 BEB
    42 Bahun
    45 Yukagir_Forest
    46 Tatar_Siberian
    47 Nogai_Stavropol
    49 Tatar_Siberian_Zabolotniye
    50 Mansi
    52 Nogai_Astrakhan
    52 Uyghur
    53 Hazara
    53 Karakalpak
    54 Altaian_Chelkan
    58 Tubalar
    59 Shor_Mountain
    60 Shor_Khakassia
    60 Kazakh
    62 Selkup
    63 Newar
    63 Even
    63 Khakass
    63 Kyrgyz_Tajikistan
    64 Ket
    65 Kyrgyz_Kyrgyzstan
    66 Tharu
    67 Kyrgyz_China
    69 Khakass_Kachin
    69 Altaian
    70 Enets
    71 Kazakh_China
    73 Kusunda
    77 Kalmyk
    78 Tuvinian
    78 Evenk_FarEast
    78 Tofalar
    80 Dolgan
    80 Todzin
    81 Mongol
    81 Eskimo_Naukan
    81 Tamang
    81 Buryat
    82 Eskimo_ChaplinSireniki
    82 Yakut
    82 Burmese
    83 Eskimo_Sireniki
    83 Dongxiang
    83 Magar
    83 Malay
    83 Chukchi
    83 Khamnegan
    83 Thai
    84 Chukchi1
    84 Dungan
    84 Itelmen
    85 Cambodian
    85 Koryak
    86 Yukagir_Tundra
    86 Gurung
    86 Salar
    87 Evenk_Transbaikal
    87 Nganasan
    88 Tagalog
    89 Tu
    89 Visayan
    90 Rai
    91 Bonan
    91 Mongola
    91 Sherpa
    91 Daur
    92 Dusun
    92 Oroqen
    92 Xibo
    92 Tibetan
    92 Yugur
    92 Ilocano
    93 Hezhen
    93 Murut
    93 Tibetan_Yunnan
    93 Ulchi
    93 Nivh
    93 China_Lahu
    93 Negidal
    93 Kinh
    94 Naxi
    94 Vietnamese
    94 Dai
    94 Nanai
    94 Yi
    94 Atayal
    94 Japanese
    95 Ami
    95 Kankanaey
    95 Zhuang
    95 Miao
    95 Gelao
    96 Han
    96 Tujia
    96 Korean
    96 She
    96 Qiang
    96 Maonan
    98 Dong
    98 Mulam
    100 Li
    Last edited by Komintasavalta; 10-30-2021 at 12:46 AM.

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    Quote Originally Posted by Komintasavalta View Post
    The results don't change that much if you add more references. I also tried to use Serbia_IronGates_Mesolithic and Turkey_N as the Caucasoid references, but for some reason it caused Finns to get only 3% Mongoloid ancestry.

    Another dead simple method to estimate the percentage of Mongoloid ancestry of is to first do a PCA of Eurasian populations, and to then apply min-max scaling to PC1 so the smallest value becomes 0 and the largest value becomes 100. It gave the figure of 66% for Tharu, which is exactly the same as the result of my qpGraph model:

    Code:
    $ wget https://reichdata.hms.harvard.edu/pub/datasets/amh_repo/curated_releases/V50/V50.0/SHARE/public.dir/v50.0_HO_public.{anno,ind,snp,geno}
    $ f=v50.0_HO_public;convertf -p <(printf %s\\n genotypename:\ $f.geno snpname:\ $f.snp indivname:\ $f.ind outputformat:\ PACKEDPED genotypeoutname:\ $f.bed snpoutname:\ $f.bim indivoutname:\ $f.fam)
    $ igno()(grep -Ev '\.REF|rel\.|fail\.|\.contam|Ignore_|_dup|_contam|_lc|_father|_mother|_son|_daughter|_brother|_sister|_relative|_sibling|_twin|Neanderthal|Denisova|Vindija_light|Gorilla|Macaque|Marmoset|Orangutan|Primate_Chimp|hg19ref')
    $ printf %s\\n AA Aleut Algerian Australian BantuKenya BantuSA BantuSA_Ovambo Biaka Bolivian Canary_Islander Datog Egyptian Eritrea Esan Ethiopia_BetaIsrael Gambian Hadza1 IBS_CanaryIslands Jew_Ethiopian Jew_Moroccan Jew_Tunisian Ju_hoan_North Karitiana Khomani Kikuyu Libyan Luhya Luo Malawi_Chewa Malawi_Ngoni Malawi_Tumbuka Malawi_Yao Mandenka Masai Mayan Mbuti Mende Mixe Mixtec Moroccan Mozabite Namibia_Bantu_Herero Nasioi Papuan Piapoco Pima Quechua Saharawi Somali Surui Tlingit Tunisian YRI Yemeni Yemeni_Desert2 Yoruba Zapotec>noneurasia
    $ x=eurasia;awk -F\\t '$5==0&&$7!~/\./{print$2,$7}' v50.0_HO_public.anno|igno|grep -v _o|awk 'NR==FNR{a[$0];next}!($2 in a)' noneurasia ->$x.pick
    $ plink --bfile v50.0_HO_public --keep <(awk 'NR==FNR{a[$1];next}$2 in a' $x.pick v50.0_HO_public.fam) --make-bed --out $x
    $ plink --bfile $x --indep-pairwise 50 10 .1 --maf --out $x;plink --bfile $x --extract $x.prune.in --make-bed --out $x.p
    $ plink --bfile $x.p --pca 20 --out $x
    $ awk 'NR==FNR{a[$1]=$2;next}{p=a[$2];s[p]+=$3;n[p]++}END{for(i in s)print s[i]/n[i],i}' $x.{pick,eigenvec}|awk '{if(NR==1||$1>max)max=$1;if(NR==1||min>$1)min=$1;a[NR]=$1;n[NR]=$2}END{for(i=1;i<=NR;i++)print 100*(a[i]-min)/(max-min),n[i]}'|sort -n|awk '{$1=sprintf("%.0f",$1)}1'
    0 Sardinian
    0 Italian_Sardinian
    2 Spanish_Lleida
    2 Spanish_North
    2 Basque
    3 Italian_North
    3 Cypriot
    3 Spanish
    3 Sicilian
    3 Jew_Turkish
    3 Italian_South
    3 BedouinB
    3 Jew_Libyan
    3 Lebanese_Christian
    3 Jew_Yemenite
    3 Greek
    4 Jew_Iraqi
    4 Druze
    4 Maltese
    4 French
    4 English
    4 Albanian
    4 Yemeni_Northwest
    4 Yemeni_Highlands
    4 Yemeni_Desert
    4 Armenian_Hemsheni
    4 Saudi
    4 Croatian
    4 Jew_Ashkenazi
    4 Armenian
    4 Moldavian
    5 Lebanese_Muslim
    5 Romanian
    5 Bulgarian
    5 Palestinian
    5 Scottish
    5 Assyrian
    5 Orcadian
    5 Gagauz
    5 Icelandic
    5 Georgian
    5 Czech
    5 Norwegian
    5 Jew_Iranian
    5 Jew_Georgian
    5 BedouinA
    6 Jordanian
    6 Lebanese
    6 Hungarian
    6 Syrian
    6 Lithuanian
    6 Yemeni_Highlands_Raymah
    6 Ukrainian_North
    6 Ukrainian
    7 Abkhasian
    7 Belarusian
    7 Russia_Abkhasian
    8 Estonian
    8 Kurd
    8 Kaitag
    8 Ezid
    8 Kubachinian
    9 Darginian
    9 Chechen
    9 Tabasaran
    9 Lezgin
    9 Avar
    9 Lak
    9 Russian
    10 Ingushian
    10 Adygei
    10 Iranian
    10 Turkish
    11 Kumyk
    11 Azeri
    11 Ossetian
    12 Circassian
    12 Finnish
    12 Russia_NorthOssetian
    12 Mordovian
    12 Balkar
    13 Karachai
    13 Iranian_Bandari
    13 Karelian
    13 Russian_Archangelsk_Krasnoborsky
    13 Kabardinian
    13 Abazin
    14 Veps
    15 Makrani
    16 Russian_Archangelsk_Pinezhsky
    17 Brahui
    17 Turkish_Balikesir
    17 Balochi
    18 Russian_Archangelsk_Leshukonsky
    19 Tatar_Mishar
    20 Kalash
    22 Pathan
    22 Tajik
    23 Tatar_Kazan
    24 Sindhi_Pakistan
    25 GujaratiA
    25 Jew_Cochin
    25 Chuvash
    26 Besermyan
    27 Nogai_Karachay_Cherkessia
    29 GujaratiB
    29 Udmurt
    30 Burusho
    31 GujaratiC
    32 GujaratiD
    34 Punjabi
    34 Bashkir
    36 Turkmen
    39 Uzbek
    41 BEB
    42 Bahun
    45 Yukagir_Forest
    46 Tatar_Siberian
    47 Nogai_Stavropol
    49 Tatar_Siberian_Zabolotniye
    50 Mansi
    52 Nogai_Astrakhan
    52 Uyghur
    53 Hazara
    53 Karakalpak
    54 Altaian_Chelkan
    58 Tubalar
    59 Shor_Mountain
    60 Shor_Khakassia
    60 Kazakh
    62 Selkup
    63 Newar
    63 Even
    63 Khakass
    63 Kyrgyz_Tajikistan
    64 Ket
    65 Kyrgyz_Kyrgyzstan
    66 Tharu
    67 Kyrgyz_China
    69 Khakass_Kachin
    69 Altaian
    70 Enets
    71 Kazakh_China
    73 Kusunda
    77 Kalmyk
    78 Tuvinian
    78 Evenk_FarEast
    78 Tofalar
    80 Dolgan
    80 Todzin
    81 Mongol
    81 Eskimo_Naukan
    81 Tamang
    81 Buryat
    82 Eskimo_ChaplinSireniki
    82 Yakut
    82 Burmese
    83 Eskimo_Sireniki
    83 Dongxiang
    83 Magar
    83 Malay
    83 Chukchi
    83 Khamnegan
    83 Thai
    84 Chukchi1
    84 Dungan
    84 Itelmen
    85 Cambodian
    85 Koryak
    86 Yukagir_Tundra
    86 Gurung
    86 Salar
    87 Evenk_Transbaikal
    87 Nganasan
    88 Tagalog
    89 Tu
    89 Visayan
    90 Rai
    91 Bonan
    91 Mongola
    91 Sherpa
    91 Daur
    92 Dusun
    92 Oroqen
    92 Xibo
    92 Tibetan
    92 Yugur
    92 Ilocano
    93 Hezhen
    93 Murut
    93 Tibetan_Yunnan
    93 Ulchi
    93 Nivh
    93 China_Lahu
    93 Negidal
    93 Kinh
    94 Naxi
    94 Vietnamese
    94 Dai
    94 Nanai
    94 Yi
    94 Atayal
    94 Japanese
    95 Ami
    95 Kankanaey
    95 Zhuang
    95 Miao
    95 Gelao
    96 Han
    96 Tujia
    96 Korean
    96 She
    96 Qiang
    96 Maonan
    98 Dong
    98 Mulam
    100 Li
    Although you’re on the right track you’re still far from the truth. To get to the truth you can’t use PCA programs or Admixture, you have to use gene to gene IBS comparison?

    How do I know you’re still far away from the truth? Simply because I’ve done IBS and when I did Baloch and Kalash had less similarity with Mongols than Kurds. Whereas here you show Kurds 8.1 and Kalash 20.0

    Try Plink IBS (—genome flag) one to one with Mongol and post list


    Once you do IBS list you can normalize results by assigning top pop Han or Mongol 100% and bottom pop Yoruba as 0
    Last edited by Zoro; 10-30-2021 at 01:09 AM.

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