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1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida
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Page 1: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

1

CAP5510 – BioinformaticsFall 2015

Tamer Kahveci

CISE Department

University of Florida

Page 2: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Vital Information

• Instructor: Tamer Kahveci• Office: E566• Time: Mon/Wed/Thu 12:50- 1:40 PM• Office hours: Mon/Wed 1:55-2:40 PM• TA: Gokhan Kaya

– Office hours: – Location

• Course page: – http://www.cise.ufl.edu/~tamer/teaching/fall2015

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Goals

• Understand the major components of bioinformatics data and how computer technology is used to understand this data better.

• Learn main potential research problems in bioinformatics and gain background information.

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This Course will

• Give you a feeling for main issues in molecular biological computing: sequence, structure and function.

• Give you exposure to classic biological problems, as represented computationally.

• Encourage you to explore research problems and make contribution.

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This Course will not

• Teach you biology.

• Teach you programming

• Teach you how to be an expert user of off-the-shelf molecular biology computer packages.

• Force you to make a novel contribution to bioinformatics.

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Course Outline

• Introduction to terminology• Biological sequences • Sequence comparison

– Lossless alignment (DP)– Lossy alignments (BLAST, etc)

• Protein structures and their prediction• Sequence assembly• Substitution matrices, statistics • Multiple sequence alignment • Phylogeny • Biological networks

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Grading

1. Project (50 %)– Contribution (2.5 % bonus)

2. Other (50 %)– Non-EDGE: Homeworks +

quizzes – EDGE: Homeworks + 3 surveys

• Attendance (2.5% bonus)

How can I get an A ?

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Expectations

• Require– Data structures and algorithms.– Coding (C, Java)

• Encourage – actively participate in discussions in the classroom– read bioinformatics literature in general– attend colloquiums on campus

• Academic honesty

Page 9: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Text Book

• Not required, but recommended.• Class notes + papers.

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Where to Look ?

• Journals– Bioinformatics– Genome Research– PLOS Computational Biology– Journal of Computational Biology– IEEE Transaction on Computational Biology and Bioinformatics

• Conferences– RECOMB– ISMB– ECCB– PSB– BCB

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What is Bioinformatics?• Bioinformatics is the field of science in which biology, computer

science, and information technology merge into a single discipline. The ultimate goal of the field is to enable the discovery of new biological insights as well as to create a global perspective from which unifying principles in biology can be discerned. There are three important sub-disciplines within bioinformatics:– the development and implementation of tools that enable efficient

access and management of different types of information.– the analysis and interpretation of various types of data including

nucleotide and amino acid sequences, protein domains, and protein structures

– the development of new algorithms and statistics with which to assess relationships among members of large data sets

From NCBI (National Center for Biotechnology Information)http://www.ncbi.nlm.nih.gov/Education/BLASTinfo/milestones.html

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Does biology have anything to do with computer science?

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Challenges 1/5

• Data diversity– DNA

(ATCCAGAGCAG)– Protein sequences

(MHPKVDALLSR)– Protein structures– Microarrays– Biological networks– Bio-images– Time series

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Challenges 2/5• Database size

– GeneBank : As of August 2013, there are over 154B + 500B bases.

– More than 500K protein sequences, More than 190M amino acids as of July 2012.

– More than 83K protein structures in PDB as of August 2012.

Genome sequence now accumulate so quickly that, in less than a week, a single laboratory can produce more bits of data than

Shakespeare managed in a lifetime, although the latter make better reading.

-- G A Pekso, Nature 401: 115-116 (1999)

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• Moore’s Law Matched by Growth of Data• CPU vs Disk

– As important as the increase in computer speed has been, the ability to store large amounts of information on computers is even more crucial

Str

uct

ure

s in

PD

B

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10001500200025003000350040004500

1980 1985 1990 19950

20

40

60

80

100

120

1401979 1981 1983 1985 1987 1989 1991 1993 1995

CP

U In

stru

ctio

nT

ime

(ns)Num.

Protein DomainStructures

Challenges 3/5

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Challenges 4/5

• Deciphering the code– Within same data type: hard– Across data types: harder

caacaagccaaaactcgtacaaatatgaccgcacttcgctataaagaacacggcttgtggcgagatatctcttggaaaaactttcaagagcaactcaatcaactttctcgagcattgcttgctcacaatattgacgtacaagataaaatcgccatttttgcccataatatggaacgttgggttgttcatgaaactttcggtatcaaagatggtttaatgaccactgttcacgcaacgactacaatcgttgacattgcgaccttacaaattcgagcaatcacagtgcctatttacgcaaccaatacagcccagcaagcagaatttatcctaaatcacgccgatgtaaaaattctcttcgtcggcgatcaagagcaatacgatcaaacattggaaattgctcatcattgtccaaaattacaaaaaattgtagcaatgaaatccaccattcaattacaacaagatcctctttcttgcacttgg

atggcaattaaaattggtatcaatggttttggtcgtatcggccgtatcgtattccgtgcagcacaacaccgtgatgacattgaagttgtaggtattaacgacttaatcgacgttgaatacatggcttatatgttgaaatatgattcaactcacggtcgtttcgacggcactgttgaagtgaaagatggtaacttagtggttaatggtaaaactatccgtgtaactgcagaacgtgatccagcaaacttaaactggggtgcaatcggtgttgatatcgctgttgaagcgactggtttattcttaactgatgaaactgctcgtaaacatatcactgcaggcgcaaaaaaagttgtattaactggcccatctaaagatgcaacccctatgttcgttcgtggtgtaaacttcaacgcatacgcaggtcaagatatcgtttctaacgcatcttgtacaacaaactgtttagctcctttagcacgtgttgttcatgaaactttcggtatcaaagatggtttaatgaccactgttcacgcaacgact

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Challenges 5/5

• Inaccuracy

• Redundancy

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What is the Real Solution?

We need better computational methods

•Compact summarization•Fast and accurate analysis of data•Efficient indexing

Page 19: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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A Gentle Introduction to Molecular Biology

Page 20: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Goals

• Understand major components of biological data– DNA, protein sequences, expression arrays,

protein structures

• Get familiar with basic terminology

• Learn commonly used data formats

Page 21: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Genetic Material: DNA

• Deoxyribonucleic Acid, 1950s– Basis of inheritance– Eye color, hair color,

• 4 nucleotides – A, C, G, T

Page 22: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Chemical Structure of Nucleotides

Purines

Pyrmidines

Page 23: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Making of Long Chains

5’ -> 3’

Page 25: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Base Pairs

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Question

• 5’ - GTTACA – 3’

• 5’ – XXXXXX – 3’ ?

• 5’ – TGTAAC – 3’

• Reverse complements.

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Repetitive DNA

• Tandem repeats: highly repetitive – Satellites (100 k – 1 Gbp) / (a few hundred bp)– Mini satellites (1 k – 20 kbp) / (9 – 80 bp)– Micro satellites (< 150 bp) / (1 – 6 bp)– DNA fingerprinting

• Interspersed repeats: moderately repetitive– LINE– SINE

• Proteins contain repetitive patterns too

Page 28: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Genetic Material: an Analogy

• Nucleotide => letter• Gene => sentence• Contig => chapter• Chromosome => book

– Traits: Gender, hair/eye color, …– Disorders: down syndrome, turner syndrome, …– Chromosome number varies for species– We have 46 (23 + 23) chromosomes

• Complete genome => volumes of encyclopedia• Hershey & Chase experiment show that DNA is the

genetic material. (ch14)

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Functions of Genes 1/2

• Signal transduction: sensing a physical signal and turning into a chemical signal

• Enzymatic catalysis: accelerating chemical transformations otherwise too slow.

• Transport: getting things into and out of separated compartments– Animation (ch 5.2)

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Functions of Genes 2/2

• Movement: contracting in order to pull things together or push things apart.

• Transcription control: deciding when other genes should be turned ON/OFF– Animation (ch7)

• Structural support: creating the shape and pliability of a cell or set of cells

Page 31: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Central Dogma

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Introns and Exons 1/2

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Introns and Exons 2/2

• Humans have about 25,000 genes = 40,000,000 DNA bases < 3% of total DNA in genome.

• Remaining 2,960,000,000 bases for control information. (e.g. when, where, how long, etc...)

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ProteinPhenotype

DNA(Genotype)

Gene expression

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Gene Expression

• Building proteins from DNA– Promoter sequence: start of a gene 13 nucleotides.

• Positive regulation: proteins that bind to DNA near promoter sequences increases transcription.

• Negative regulation

Page 36: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Microarray

Animation on creating microarrays

Page 37: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Amino Acids

• 20 different amino acids– ACDEFGHIKLMNPQRSTVWY but not BJOUXZ

• ~300 amino acids in an average protein, hundreds of thousands known protein sequences

• How many nucleotides can encode one amino acid ?– 42 < 20 < 43

– E.g., Q (glutamine) = CAG– degeneracy– Triplet code (codon)

Page 38: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Triplet Code

Page 39: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Molecular Structure of Amino Acid

Side Chain

•Non-polar, Hydrophobic (G, A, V, L, I, M, F, W, P)•Polar, Hydrophilic (S, T, C, Y, N, Q)•Electrically charged (D, E, K, R, H)

C

Page 40: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Peptide Bonds

Page 41: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Direction of Protein Sequence

Animation on protein synthesis (ch15)

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Data Format

• GenBank

• EMBL (European Mol. Biol. Lab.)

• SwissProt

• FASTA

• NBRF (Nat. Biomedical Res. Foundation)

• Others– IG, GCG, Codata, ASN, GDE, Plain ASCII

Page 43: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Primary Structure of Proteins

43

>2IC8:A|PDBID|CHAIN|SEQUENCE

ERAGPVTWVMMIACVVVFIAMQILGDQEVMLWLAWPFDPTLKFEFWRYFTHALMHFSLMHILFNLLWWWYLGGAVEKRLGSGKLIVITLISALLSGYVQQKFSGPWFGGLSGVVYALMGYVWLRGERDPQSGIYLQRGLIIFALIWIVAGWFDLFGMSMANGAHIAGLAVGLAMAFVDSLNA

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Secondary Structure: Alpha Helix

• 1.5 A translation• 100 degree rotation• Phi = -60• Psi = -60

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anti-parallel parallel

Secondary Structure: Beta sheet

Phi = -135Psi = 135

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Tertiary Structure

phi1

psi1

phi2

2N angles

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• 3-d structure of a polypeptide sequence– interactions between non-local atoms

tertiary structure ofmyoglobin

Tertiary Structure

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Ramachandran Plot

Sample pdb entry ( http://www.rcsb.org/pdb/ )

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• Arrangement of protein subunits

quaternary structure of Cro

human hemoglobin tetramer

Quaternary Structure

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• 3-d structure determined by protein sequence

• Prediction remains a challenge

• Diseases caused by misfolded proteins– Mad cow disease

• Classification of protein structure

Structure Summary

Page 51: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Biological networks

• Signal transduction network

• Transcription control network

• Post-transcriptional regulation network

• PPI (protein-protein interaction) network

• Metabolic network

Page 52: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Signal transduction

Extracellular molecule

activate

Memberane receptor

Intrecellular molecule

alter

Page 53: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Transcription control network

Transcription Factor (TF) – some protein

Promoter region of a gene

bind

•Up/down regulates•TFs are potential drug targets

Page 54: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Post transcriptional regulation

RNA-binding protein

RNA

bind

Slow down or accelerate protein translation from RNA

Page 55: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

PPI (protein-protein interaction)

Creates a protein complex

Page 56: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

Metabolic interactions

Compound A1

consume

Enzyme(s)

Compound B1

produce

Compound Am

Compound Bn

Page 57: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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Quiz Next Lecture

পরী�ক্ষা�考試

Page 58: 1 CAP5510 – Bioinformatics Fall 2015 Tamer Kahveci CISE Department University of Florida.

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STOP

Next:•Basic sequence comparison•Dynamic programming methods

–Global/local alignment–Gaps


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