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Computational Analysis of Transcript Identification Using GenBank

Computational Analysis of Transcript Identification Using GenBank

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Page 1: Computational Analysis of Transcript Identification Using GenBank

Computational Analysis of Transcript Identification Using

GenBank

Page 2: Computational Analysis of Transcript Identification Using GenBank

Differentiation of hematopoietic cellsPluripotent stem cell

Myeloid Lymphoid

Erythrocyte PlateletMonocyteNeutrophil Eosinophil Basophil B cell T cell

Pluripotent stem cellMyeloid LymphoidMyeloid Lymphoid

Page 3: Computational Analysis of Transcript Identification Using GenBank
Page 4: Computational Analysis of Transcript Identification Using GenBank
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Page 6: Computational Analysis of Transcript Identification Using GenBank

Genome-wide gene expression

number of expressed genes level of expression

100

< 5 mRNA / cell

5--50 mRNA / cell

>500 mRNA / cell

9,000

900

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SAGE (Serial Analysis of Gene Expression)

isolate SAGE tags

link tags together& sequencing

AAAAAAAAA

AAAAAAAAAAAAAAAA

AAAAAAAAAAAAAAAA

AAAAAAAAAA

AAAAAAAAAAA

AAAAAAA

AAAAAAAA

gene identification

mRNA/cDNA

Page 19: Computational Analysis of Transcript Identification Using GenBank
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SAGE & GLGI Overview

SPGI

SAGE

identify most of expressed genes

quantitative analysis of expressed genes by collecting tags

GLGI

Gene identification

GenBank

collect cDNA clones

mRNA

extend tags into longer 3' cDNAs

multi-match

single-match

no match

matchmatch

Page 22: Computational Analysis of Transcript Identification Using GenBank

SAGE tags match to many genes(Tags from Hashimoto S, et al. Blood 94:837, 1999)

Tags matched gene numbers Matched genes (only show up to 10)

CCTGTAATCC 405 Hs.267557,Hs.240615,Hs.231705,Hs.283045,Hs.236713,Hs.232277,Hs.181553,Hs.262716,Hs.181392,Hs.220696GTGAAACCCC 305 Hs.282868,Hs.170225,Hs.184220,Hs.194021,Hs.231625,Hs.171830,Hs.270571,Hs.270572,Hs.272193,Hs.283921CCACTGCACT 174 Hs.118778,Hs.256868,Hs.96023,Hs.31575,Hs.47517,Hs.200451,Hs.271222,Hs.253240,Hs.270018,Hs.270415ACTTTTTCAA 44 Hs.16426,Hs.10669,Hs.75155,Hs.28166,Hs.13975,Hs.79136,Hs.111334,Hs.133430,Hs.79356,Hs.239100TTGGGGTTTC 9 Hs.231375,Hs.273127,Hs.275603,Hs.175173,Hs.276612,Hs.224773,Hs.62954,Hs.182771,Hs.276326TGCACGTTTT 8 Hs.199160,Hs.279943,Hs.36927,Hs.5338,Hs.169793,Hs.83450,Hs.173902,Hs.183506TGTGTTGAGA 5 Hs.284136,Hs.275865,Hs.275221,Hs.274466,Hs.181165CCCGTCCGGA 5 Hs.276353,Hs.277498,Hs.277573,Hs.276350,Hs.180842TTGGTCCTCT 4 Hs.12328,Hs.108124,Hs.9739,Hs.112845CTGACCTGTG 3 Hs.277477,Hs.181244,Hs.77961TACCTGCAGA 3 Hs.100000,Hs.256957,Hs.253884AGGCTACGGA 3 Hs.119122,Hs.211582,Hs.183297GGGCTGGGGT 3 Hs.183698,Hs.118757,Hs.90436CCCTGGGTTC 2 Hs.52891,Hs.111334CACAAACGGT 2 Hs.2043,Hs.195453GTGAAGGCAG 2 Hs.4221,Hs.77039GGGCATCTCT 2 Hs.75061,Hs.76807ATGGCTGGTA 2 Hs.254246,Hs.182426CGCCGCCGGC 2 Hs.182825,Hs.132753AGGGCTTCCA 2 Hs.29797,Hs.276544TTGGTGAAGG 2 Hs.278674,Hs.75968GTGGCCACGG 1 Hs.112405GTTCACATTA 1 Hs.84298TGGTGTTGAG 1 Hs.275865CCCATCGTCC 1 Hs.151604GTTGTGGTTA 1 Hs.75415TTGTAATCGT 1 Hs.125078CCCACAACCT 1 Hs.252136GAGGGAGTTT 1 Hs.76064CCAGAACAGA 1 Hs.111222

Page 23: Computational Analysis of Transcript Identification Using GenBank

Tag Frequency Groups for 10-base Tag Set

Containing 878,938 Tags for UniGene Human

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Unique Tags among 878,938 EST Derived Tags

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Unique Tags among 32,851 Gene Derived Tags

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Converting tag into longer 3’ sequence

3' end

3' end5' end

SAGE tag

3' longer sequence

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Generation of Longer 3'cDNA for Gene Identification (GLGI)

TAAAAAAAAAAACTCGCCGGCGAANNNNNNNNNNATTTTTTTTTTTGAGCGGCCGCTT

10 bases

hundred bases

TAAAAAAAAAAACTCGCCGGCGAANNNNNNNNNN

NNNNNNNNNN

NNNNNNNNNN

NNNNNNNNNN

NNNNNNNNNN

Sense extension

antisense extension TGAGCGGCCGCTT

nnnnnnnnnn

nnnnnnnnnn

nnnnnnnnnn

nnnnnnnnnn

nnnnnnnnnn

nnnnnnnnnn

SAGE tag

TAAAAAAAAAAACTCGCCGGCGAA TGAGCGGCCGCTT

TAAAAAAAAAAACTCGCCGGCGAA TGAGCGGCCGCTT

TAAAAAAAAAAACTCGCCGGCGAA TGAGCGGCCGCTT

TAAAAAAAAAAACTCGCCGGCGAA TGAGCGGCCGCTT

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UniGene Human 3’ Part Length Distribution

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Number of Tags which Move for k to k+25

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Unique Tags among 878,938 EST Derived Tags

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Unique Tags among 32,851 Gene Derived Tags

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Idealized Construction

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Random Model

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Ideal Case Tag Count Progression

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Myeloid Tag Matches with UniGene Human SAGE Tag Reference Database

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SAGE Tag Processing with GIST

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k-mer tree

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GIST Performance with Improved IO

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Conspirators

Sanggyu LeeJanet D. RowleySan Ming Wang

Terry ClarkAndrew HuntworkJosef JurekL. Ridgway Scott