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RNA sequencing for differential expression genes

RNA sequencing for differential expression genes . Speaker : tzu-chun lo Advisor : Yao-Ting Haung. Outline . Molecular Central Dogma RNA Sequencing Differential Expression Gene Case–Control Study Negative Binomial Distribution Hypothesis Testing Rice SNP, QTL, Pathway.

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RNA sequencing for differential expression genes

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  1. RNA sequencing for differential expression genes Speaker : tzu-chun lo Advisor : Yao-Ting Haung

  2. Outline Molecular Central Dogma RNA Sequencing Differential Expression Gene Case–Control Study Negative Binomial Distribution Hypothesis Testing Rice SNP, QTL, Pathway

  3. Molecular Central Dogma The central dogma of molecular biology describes the flow of genetic information within a biological system. Forest Branches BBQ

  4. RNA Sequencing DNA RNA Alignment Gene 1 exons Gene 2 mRNA reads Spliced alignment Alignment Finding differential expression genes via read counts each gene. Read counts DEG process

  5. Differential Expression Gene • We want to find the cold-resistant genes in rice. • Rice genome • We should compare with two conditions. • Room temperature • Low temperature Gene 1 Gene 3 Gene 2 Gene 1 Gene 3 Gene 2 Cole-resistant differential expression genes : Gene 1 Gene 3 Gene 2 13 4 5 7 2 6

  6. Strategy for DEG • Case–control study • Two existing groups differing in outcome are identified and compared on the basis of some supposed causal attribute. • Question • Is the number adequate to the gene? • How to define the gene is differential expression?  69 v.s 71 Almost the same ?  86 v.s 56 PossibleDEG  66 v.s 111 More likely DEG Gene 4 … 80 … 60 …  80 v.s 60 How to judge? It is just one of sample in condition. Negative binomial distribution Hypothesis test

  7. Negative Binomial Distribution NB is a count data distribution that can substitute Poisson distribution for better variance. j Gene abundance parameter Smooth function i 69 i=1~n j=1~m Library size parameter Smooth function is more complex, so let us forget it.  3

  8. FPKM An indicator used to represent mRNA expression. Fragments Per Kilobase of transcript per Million mapper reads. 10 4 reads Genome Exon length: 8 10 7 8 9 bases Gene 1 Gene 2

  9. FPKM Before hypothesis testing, we have to get FPKM and variance of FPKM.

  10. Hypothesis Testing Step 1 : You find some observations or clues support a novel idea. Step 2 : Assume a against opinion that you want to fight it. Step 3 : Go to test it and take a stand. p-value

  11. T-test Using t-test to compare the log ratio (log fold-change) of gene’s expression between condition (a) and (b).

  12. T-test

  13. Result Investigating Discussing alpha=0.05 with read counts & p-value. If alpha=0.04 or 0.03 ? We don’t know which alpha is the best, but we can do some subsequent processing.

  14. RNA sequencing for Rice • Plan • Cold-resistant genes • Samples • Japonica (TN67): room temperature (R), low temperature (L) • Indica (IR64): room temperature (R), low temperature (L) • Rice • 粳稻(TN67) : 米粒闊而短,黏性較大,Q彈,如 : 蓬萊米。 • 秈稻(IR64) : 米粒細而長,黏性較小,易碎,如 : 在來米。 • Zone • TN67 : High-latitude, or high altitude • IR64 : Low-latitude, or low altitude

  15. Strategy for DEG • Case–control study • Four combinations • Different varieties or distinct temperatures • Four sets of differential expression genes • The DEGs above combination (A,B,C,D) • Negative binomial • Inference probability situation by sample • Hypothesis test • Which is the DEG that we want • Subsequent processing • SNP, QTL, Pathway A TN67R IR64R TN67L IR64L D B C

  16. SNP A single-nucleotide polymorphism is a sequence variation occurring when a single nucleotide differs between members of a biological species. Case Assembly SNP ATGCCCTCGTAA TTACTGCGT ATGCCCTCGTAA TTACTGCGT Control ATGCGCTCGAAA TTACTCCGT ATGCGCTCGAAA TTACTCCGT

  17. QTL Quantitative traits refer to phenotypes(characteristics) that vary in degree and can be attributed to polygeniceffects (product of two or more genes) Quantitative trait loci (QTLs) are stretches of DNA containing or linked to the genes that underlie a quantitative trait. Ex : QT(cold) Loci : 599~799 (base) DNA Cold tolerance (29) & pollen fertility (43) QTL length : ~million bases QTL genes 1 1000

  18. Pathway Pathway is a collection of manually drawn pathway maps representing molecular interaction and reaction networks. Rice Gene No.2 Gene No.55 Gene No.99 Cold-resistant

  19. Conclusion • Review • RNA Sequencing • Differential Expression Gene • Case–Control Study • Negative Binomial Distribution • Hypothesis Testing • Rice • SNP • QTL • Pathway

  20. Variance of negative binomial NB is a count data distribution that can substitute poisson distribution for better variance.

  21. Strategy for DEG Case-control in the same temperature : A, C Case-control in the same variety : B, D Let T is a set of all genes.

  22. QTL 生物的另一類性狀例如人類的身高、體重、高 血壓、糖尿病;水稻株高及產量對疾病的抵抗程度;老鼠的體脂肪百分比;乳牛的乳產量;雞的產卵量,由 於其變異性是連續性的,不易分類,且易受環境影響,故稱為數量性狀(quantitative trait)。數量性狀是由多 個基因所控制,由於每個基因對數量性狀均有影響,所以每一基因的作用便相對地小。這些控制數量性狀的 基因稱為微效基因(polygenes)或又稱為數量性狀基因座(quantitative trait loci,QTL)。 Rice genome size 430Mb

  23. QTL

  24. Negative binomial distribution NB is a count data distribution that can inference adequate number by sample. j Smooth function i

  25. Negative binomial distribution NB is a count data distribution that can substitute Poisson distribution for better variance.

  26. Hypothesis test Step 1 : You find some observations or clues support a novel idea.() Step 2 : Assume a against opinion that you want to fight it. Step 3 : Go to test it and take a stand. p-value

  27. Case-control example • Example • Question • Is the number adequate to the gene? • Negative binomial • How to define the gene is differential expression? • Hypothesis test  69 v.s 71 Almost the same  86 v.s 56 PossibleDEG  66 v.s 111 More likely DEG

  28. Variance of negative binomial NB is a count data distribution that can substitute Poisson distribution for better variance.

  29. RNA sequencing DNA RNA Alignment Gene 1 exons Gene 2 mRNA reads Spliced alignment DNA We should align with regions above blue.

  30. RNA sequencing • Spliced alignment • TopHat

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