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Cluster ID
stringlengths
15
22
Length
int64
11
50
Identity
float64
0.9
0.9
Reference sequence
stringlengths
11
50
UniRef90_A0A009GNA4
39
0.9
MPIKDSELVHIILDQCIEAAELSNSGKVLVREPKNQDND
UniRef90_A0A009GT83
37
0.9
MEPDVGILDLVLSLQLMCYVYKMLLLNRINYFDGRLI
UniRef90_A0A009GTH4
41
0.9
MVLLIVIKNHTFNQCFATCLNLWELIFSCVNQFAFTPKFTP
UniRef90_A0A009GUF6
40
0.9
MQNLVFPSGLSVQRAKKRAKELVKSEQAVYHTQNLPPISL
UniRef90_A0A009GYD0
50
0.9
MNIHAYCIFMKTLEQNLATTYHCLCFMHQLIFFSWQRNLDETSTDPSIVA
UniRef90_A0A009GYJ2
41
0.9
MHLILNMHKLHICMNIYRLITAFFTHNIELNKEDQIKQRMR
UniRef90_A0A009GZ51
37
0.9
MKRMSFVTFAHSKVRHYLYNYNLSDRGICGRAVNLYR
UniRef90_A0A009GZT5
42
0.9
MFIGKDKDLLLTTVTYDESFQNQNMKAIQNRHIFEATNGLLK
UniRef90_A0A009H0X5
41
0.9
MVTALFTVRLATSGATNSHGVTGGVYKARERIHRGILIRDY
UniRef90_A0A009H2S6
38
0.9
MLQRNCFFLEIFNNNFNDRKYLNNKINKSVNYRFLIYL
UniRef90_A0A009H339
44
0.9
MTHWQSFSIIFQTRLSFKDEIYDKAVHINYGLYEKNCYRPDFGL
UniRef90_A0A009H4A1
49
0.9
MLACLIYGSDQTTCIGYLNMDLVIGLFAAFAVLFGLSYVFKIVLRLMGF
UniRef90_A0A009H4Q8
47
0.9
MALILILNHCGIICIDDLIIHSHDKNTMLIAPERNVRKANFVENKYT
UniRef90_A0A009H590
40
0.9
MITNITQDTLLSICNSKINKKKILILTKLGTLIFKAEETC
UniRef90_A0A009H904
39
0.9
MIVKNIQFRPYSNESKTNGNDISNLSYDFYKALSQNSKN
UniRef90_A0A009HAL1
50
0.9
MNDKIKVEVSQSSNIKKTSKIKGRYAICGKCPIVLGIMIESKTIIFYLEG
UniRef90_A0A009HB06
37
0.9
MSQPHKNVVSKLFPLFQKWRLFRAPFVWMIFFNIAFD
UniRef90_A0A009HBH5
46
0.9
MNLAKVAELTKVSPRMLRYYESLGLIQPLRASNNYRSYTQKDIEKY
UniRef90_A0A009HDR9
44
0.9
MNFNTVIICHNFLTGIKKAPLKELWRNKKALQMQGFKNHLWQIT
UniRef90_A0A009HDZ1
50
0.9
MLSQGMIVPPLPNKPAFIALSCSGPLDPTPTDILTVQITLPHSKAEIGLK
UniRef90_A0A009HGX2
33
0.9
MQTTSSFDIALIIIERISYSEYKLAVCCTRLDE
UniRef90_A0A009HIG5
47
0.9
MPLIMPAKAKTTIIIAKKVTVYLRFLKGYATEKTGTALFLFLGVGLN
UniRef90_A0A009HJ75
46
0.9
MVLKKSENFVEFDSFWLIFDNGFFDKQNMHQKQKVAITNLETIFLF
UniRef90_A0A009HJN0
41
0.9
MRHVAELFFTVKLFEQESCQHPALPYSGYTSGEIAVPAEYV
UniRef90_A0A009HJR4
45
0.9
MTIGILKLKNLTGLSEDQIESLANGTAEISTDEIESIYKALSEGA
UniRef90_A0A009HK36
42
0.9
MQFSDWVQLVFMVFLTLAIIIKFTVSFHRDLRNQQDDEQYIP
UniRef90_A0A009HK96
41
0.9
MQTIWLVGYGEWTGMTSATLIGVSRTARAVVDEIVVYLAID
UniRef90_A0A009HKX1
47
0.9
MVIYTNLDFVTFSSLGGAMKEKFKNSNLKGMNSKKPELDRAVRIKTD
UniRef90_A0A009HKX7
37
0.9
MAIFLYVPSKDELDEHRVDMTILKNIRYKSKSVMEKY
UniRef90_A0A009HKY3
37
0.9
MGLFRLGRVLHLMEGGVTFLSEEVIKAMGFSRVSYYD
UniRef90_A0A009HKY6
44
0.9
MVTQGKERLLLVYDPTCGSGYLLLWVKNEGNNRKLKKSGRIFEI
UniRef90_A0A009HLE4
39
0.9
MYINININDLKIIITQKISKKSILKQVGFFMSCFGMFCQ
UniRef90_A0A009HM39
47
0.9
MMRTIRIILFFNLLFYINLIFSISFLVTSLSTTNITCKISETAALGI
UniRef90_A0A009HM82
45
0.9
MQKQVKRGDAWRITVRYLGKHYTATRDTASECEQWAAKKLLELQS
UniRef90_A0A009HMB0
40
0.9
MIAEISITTPKEGKILGNIVPRQENKTLKILGCSRTIILF
UniRef90_A0A009HMJ6
47
0.9
MQAFFIKFLIYLSGIFSYCFDYKYKTSLDLIITQQFLYLEYLAWFAS
UniRef90_A0A009HNZ8
44
0.9
MGESTIWNKVRSGDFPQPIRLSTRLTVWRIEDIEEWIKSKELGV
UniRef90_A0A009HP02
40
0.9
MLWNENNMTEWKNKCNNIDIKYRCAVFYLCFLNIFSQFLI
UniRef90_A0A009HP79
38
0.9
MSAHQFYSTIHEFPLFIIPSIYCMKAKKQEGKWFKFCK
UniRef90_A0A009HPX1
38
0.9
MSRILVAIHPMVESEARVKLPDLRKWVQNLVFQIYFYP
UniRef90_A0A009HPY1
37
0.9
MAAGMPPVEQLYKEVLFAQQKVFGYFFKKVTSISYLH
UniRef90_A0A009HQ02
30
0.9
MAIASTTHTTFKIMMLEKCLPFMTGVLAAL
UniRef90_A0A009HRC7
38
0.9
MALQPRNFHLGNFLKNNNVESPILELGFFVQLIALAMR
UniRef90_A0A009HRE1
40
0.9
MRTQGMSWISVCQQGDVSEDEPKAVEVEGKKIGVFFVVAW
UniRef90_A0A009HRI4
38
0.9
MNLIKLVFDLDIYNIHKINPVLMSSDYFYITLSQKNTF
UniRef90_A0A009HS81
38
0.9
MFLQYFYRCKQWSGSVDEKVFWLLFFKKVTELADCFRG
UniRef90_A0A009HTK4
48
0.9
MDARLKGVSKESLRNEILTDKNASKAEIQEGLRDIDRAYNSNFKDKGL
UniRef90_A0A009HTY2
38
0.9
MLQSLKFKSSLDIRPKVYVNMLIGLNPVFITRLIDGNH
UniRef90_A0A009HU73
40
0.9
MDEEELKQIEEDCQQFKNVIKTVFYLAVMLFAAYLVWCNW
UniRef90_A0A009HUE6
40
0.9
MDLKRLLPQILYIKKHLNLGAFLSLLIKPNVGLLANGRLE
UniRef90_A0A009HUN8
37
0.9
MLEMRVQNTRKRWSKNIILNKSLDSYSVSLLSKMFGI
UniRef90_A0A009HWR3
35
0.9
MSHVAVLRAILLYFCQIVACDAVAMGKEEAFEIVA
UniRef90_A0A009HXB2
37
0.9
MDVKREFRQTSYFIPALLLKAKIIFVDGQNHQNLKKL
UniRef90_A0A009HY11
49
0.9
IHFRKKILAKLEEGQSIRAVAQHFEIDKNTIVEWKKANRNKKNSTKKTI
UniRef90_A0A009HY30
31
0.9
MAHPIFLLLLFEYNVHIHFDRVVGITLQSFG
UniRef90_A0A009HY73
30
0.9
MVRGIANSKIGFGDLILLLRYFFKLKVSTH
UniRef90_A0A009HYH0
38
0.9
MFWQDITFSDIAILAVFVFTYPIYWFVVHKLMDEIFGS
UniRef90_A0A009HYK3
42
0.9
MVVTLAKHFKDRPDVLFGLIVVGGAITLIWAGKLKGAISFGG
UniRef90_A0A009HZ88
40
0.9
MLLNPVGILLAKKIYHRSKFNRQNTLLPENKYLSHSIIIS
UniRef90_A0A009HZB4
37
0.9
MQLHEQNEHSCSFPRHIVYQANDHDFSYSPLETSKAV
UniRef90_A0A009HZH4
44
0.9
MKYSSFDNVVLNILVQKNEIPYKGGADAVFVRRKLNGLKLFKMD
UniRef90_A0A009HZR4
41
0.9
MVLLIVIKNHTFNQCFATCLNLWELMFSCVNRFAFTPEFTP
UniRef90_A0A009HZV2
47
0.9
MSFRYSSSARTLIVFGNLMNHYYDNVNASQIDNLIDEAKFKEATWRK
UniRef90_A0A009HZY3
45
0.9
MTLWLTYHEDLRHSPRVRVLIDFIDSIFQNRHNQLAPSRFPFTKT
UniRef90_A0A009I0Z3
37
0.9
MESSFVFIAISPKFLKFKKYLMRLIIQYRAIFIKARQ
UniRef90_A0A009I0Z8
47
0.9
MLVKLNNQTTDKHTKNNLILVFYCYFYYNKISTNHLFIFHSPDTILA
UniRef90_A0A009I145
38
0.9
MKINHFYNRVLIKCLNFKHLILLNINQKDLDYEVKSYK
UniRef90_A0A009I1H6
38
0.9
MPVKKVKIVISLNKKYLIYSYLKILMSLRSKDCVGLKL
UniRef90_A0A009I1Z5
42
0.9
MFILRFAKALVPLSCSGGVFYTYTKPKLPICLKPYFATTVVT
UniRef90_A0A009I2D2
41
0.9
MDYKSLLEFKVKVNERGVFLRDAHYFVSKYLCLNNEHIGQN
UniRef90_A0A009I2V5
40
0.9
MINTIFSIDIYEKALYRKIFIVKFVLNIILLIYLEKLNSL
UniRef90_A0A009I320
37
0.9
MELTQNNLQAPTWPFSFYIKIFNLNLLMIIRIIFICV
UniRef90_A0A009I486
39
0.9
MFIHFYLFKADKIALFLFIPFKDKMQFMQQSLNIIGGDV
UniRef90_A0A009I5B0
46
0.9
MSRIEQAEKIFGLQFIELSFLITYDIPNKLMPHISLGAFLTALGQI
UniRef90_A0A009I6V5
47
0.9
MSPKAIKTYACLYSFLFSTFCFFLNQNAKKMSTFIKPIEKIYRLPLL
UniRef90_A0A009I7X0
41
0.9
MKYESFEPNGSFFMLNENTMLGHGDCLELMKHIPDGSVDMI
UniRef90_A0A009I8W0
42
0.9
MFRTNICQNYYRALKLGDVSTIALIDKGSAVVAILLAWLILR
UniRef90_A0A009I9M4
47
0.9
MVNQINEESVIVAQSMGGIFAVAAALKKPHLVKGLVLIATSGGINLE
UniRef90_A0A009I9S1
37
0.9
MTLILTAIQIQPRQMHQRLTQSMARIRLQVRQNQVQQ
UniRef90_A0A009I9S6
37
0.9
MVYKHERITVKSSLIKNTFQTQDVKGAFIGVISLRKH
UniRef90_A0A009I9W3
41
0.9
MIFPQREKPAETSKRIKKDKQGGIKIGIKQISERNVFLPGR
UniRef90_A0A009IA19
49
0.9
MALDIAAISAYCDHYEIPVERDIFNDCIFAMDNIFLDDSHKKMKRPIKK
UniRef90_A0A009IAG7
41
0.9
MTVDIKPIFLFMTVLTPLGFNQSIVFFYGEFDQFVLLHCRN
UniRef90_A0A009IB52
42
0.9
MGNVFRLNLASGGAITAWEIVKGIRKESFSHHQKLESIETCH
UniRef90_A0A009IBG4
38
0.9
MLCFKSKRRDNRILFYFGYPLNKASLNPAINSSKKLTK
UniRef90_A0A009IC45
46
0.9
MQTNSSELNNDAGTLLSFNGFNINTQQLSNQAGQIVEAGTQILLTN
UniRef90_A0A009ICG6
37
0.9
MGIDAKTLQIRAVQLTTNNVSDSQVLGDLLDQIPQDD
UniRef90_A0A009ICW8
41
0.9
MMSECIHSQPVEHKKFKVFANYLNSNKQGTGFVNGNGFGLA
UniRef90_A0A009IF21
40
0.9
MAIGTKVKLGIDMALLHKDLKVKTSHIYSNLSDNSGMWSA
UniRef90_A0A009IFM7
44
0.9
MFPPHATHANRKSGTQKQAKLAERSLFDEKKHLTNEDLSFRVLI
UniRef90_A0A009IGI6
50
0.9
MTLAFLVLMVEFWLIYRASYIKTFEQRNFFQAAKDSLIELRLGLKMILKK
UniRef90_A0A009IHE0
37
0.9
MLVIFLVLTHHRLSREFGPYLPTPLIFKGLATVLWYH
UniRef90_A0A009IHS4
50
0.9
MGGNPAFETEFVLFYIESTMLAWGYKNPKVAAYCDAIKAENDNFRAMGIC
UniRef90_A0A009II05
40
0.9
MSNQDRNGVPKSILNFHKNLRAVNKHQVHPVLFDEKKEDN
UniRef90_A0A009II79
37
0.9
MIVIYCDLKISINYIVFKYFSDILFLSSFTYYHTWIL
UniRef90_A0A009IIW2
38
0.9
MHHRYGLQDLRNLAISLHLAKSQIGQIRIFSDRIGNDI
UniRef90_A0A009IJA3
48
0.9
MFLIKMRQIVGNDVEIVNSLNRAEDQLAYLELPLKSDKTSKIIELLNY
UniRef90_A0A009IJX5
43
0.9
MANHQAVLIWTFQLLDREPVLNELAEIKKYFLLIFPDSVYQLA
UniRef90_A0A009IKW7
41
0.9
MKDWIYFYIENTIKYGELFYKEIGWSLGLKNNYIVMSLIQS
UniRef90_A0A009IKX0
41
0.9
MIFPQREKPAETSKRINKDKRRGIKLGIKQISKRNVSLPDQ
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YAML Metadata Warning:empty or missing yaml metadata in repo card

Check out the documentation for more information.

This is a dataset download from UniRef90 database with sequence length ranging from 0 to 50

codes for the data mining (downloaded on September 30 2024)

import requests
query_url = 'https://rest.uniprot.org/uniref/stream?compressed=true&fields=id%2Clength%2Cidentity%2Csequence&format=tsv&query=%28%28length%3A%5B*+TO+50%5D%29%29+AND+%28identity%3A0.9%29'
uniprot_request = requests.get(query_url)
from io import BytesIO
import pandas

bio = BytesIO(uniprot_request.content)

df = pandas.read_csv(bio, compression='gzip', sep='\t')
df.to_parquet('peptide_UniRef90_0_50.parquet')

Data download procedure from UniProt database

we only need the sequences within a specific length range from a specific data sources (UniRef and UniParc). For example, download data from UniRef; we selected UniRef first and searched for

  • (length:[* TO 50]) AND (identity:1.0) ######### length between 0 - 50 from UniRef100
  • (length:[* TO 50]) AND (identity:0.9) ######### length between 0 - 50 from UniRef90
  • (length:[* TO 50]) AND (identity:0.5) ######### length between 0 - 50 from UniRef50

for UniPrac dataset, we selected UniPrac and searched for

  • (length:[* TO 50]) ######### length between 0 - 50 from UniPrac
  1. after it return the results, let's say around 19 million sequences.

  2. then selected 'Download', and set the format to TSV and the customize columns to Sequence and length (we actually only need the sequence column, but the rest might be needed, so we keey them)

  3. choose compressed format

  4. Once that's done, selecting Generate URL for API gives you a URL you can pass to Requests (this is the query_url variable below).

  5. To get this data into Pandas, we use a BytesIO object, which Pandas will treat like a file. If you downloaded the data as a file you can skip this bit and just pass the filepath directly to read_csv.

Explanation regarding rhe UniRef and UniParc databases

UniRef (UniProt Reference Clusters): UniRef is a clustering system for protein sequences that helps in reducing redundancy and speeding up sequence similarity searches. It consists of three databases:

UniRef100: Contains all sequences from UniProtKB (Swiss-Prot and TrEMBL), as well as selected UniParc sequences, without any redundancy. UniRef90: Clusters sequences that have at least 90% sequence identity to each other and cover 80% of the longest sequence. This reduces redundancy by grouping highly similar sequences together. UniRef50: Further reduces redundancy by clustering sequences that have at least 50% identity to each other. The UniRef databases make it easier to search protein sequences and analyze large datasets by removing highly similar sequences and presenting representative clusters.

UniParc (UniProt Archive): UniParc is a comprehensive protein sequence archive that contains all publicly available protein sequences from various sources, such as UniProtKB, Ensembl, RefSeq, PDB, and many others. Its goal is to capture and store every protein sequence ever published, independent of any annotation or quality check.

UniParc assigns a unique identifier to each distinct protein sequence and tracks all updates or changes to that sequence over time. This allows researchers to access historical versions of protein sequences and follow the evolution of sequence data across different databases.

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