An Introduction to Bioinformatics
Database Searching - Pairwise Alignments
AIMS
OBJECTIVES
To explain the principles underlying local and global alignment programs
To explain what substitution matrices are and how
they are used
To introduce the commonly used pairwise alignment programs
To explore the significance of alignment results
Carry out FastA and Blast searches
To select appropriate substitution matrices
To evaluate the significance of alignment/search results
INTRODUCTION
• Sequence comparisons
• Protein v Protein• DNA v DNA• Protein v DNA• DNA v Protein
• Pair-wise comparison
• Methodology
Similarity v Homology……….
“If two genes shared a common ancestor then they are homologous”
They did or they didn’t, they are or they arn’t
% Homology
Definitions
Similarity v Homology…….
But :-
• Comparison of two sequences complex
• Differences need to be quantified
• infer homology from degree of similarity
Information theory……….?
Protein sequence = message
4.19 bits per residuebits = log2M
bit: The amount of information required to distinguish between two equally likely choices
Ref: Molecular Information theory - http://www-lmmb.ncifcrf.gov/~toms/
http://www.lecb.ncifcrf.gov/~toms/paper/nano2/latex/index.html
• Average protein size of 150 residues
• Information content of 630 bits.
• Probability that two random sequences specify the same message
is 2-630 or about 10-190.
• Convergent evolution giving rise to two similar sequences would
be very rare
• If two sequences exhibit significant similarity arose from a
common ancestor and are homologous.
Are two proteins related ?
• The English alphabet contains 26 letters, that of DNA 4, and that of protein 20
• Measure similarity or dissimilarity
Basic concept
• Hamming Distance
• Measure No of differences between two sequences
• The answer to the above is…………..
• The proportional or p-distance. Hamming distance divided by the total sequence length, so ranges from 0 to 1. In the above example the p-distance is 10/14
AGATCTAG ACGAAGGCATCATGCAGT
Basic concept……….
10
Basic concept……….
The log-odds ratio. - measure of how unlikely two sequences should
be so similar.
- based on the observed frequencies of each of the characters (bases or amino acids) in the sequences, and the probability of observing each homologous pair in the two sequences.
- positive score, measuring similarity, calculated by adding the scores from pre-calculated matrices (PAM and BLOSUM for protein, unitary for DNA).
Two problems to consider:
• GAPS
• genes evolve•deletions, insertions, recombination
• give penalties for gap creations and extensions
• Global or Local Alignments
• Will sequences be similar over their whole length?• Use different algorithms
AGATCTAG-ACGA-TGCAGTAGGCATCATGCAGT
Global and Local Alignments
• A global approach will attempt to align two sequences along
their entire length
• A local alignment will look for local regions of similarity or
subsequences.
T H E C A T S A T O N T H E M A T T l l l l l H l l E l l R A l l l T l l l l l S l A l l l T l l l l l
O l N l T l l l l l H l l E l l
C l A l l l T l l l l l
Dotplots are the simplest form of alignment
Identical sequences, or subsequences areidentified by diaganol lines
DOTTUP website does this analysis
Example of Rabbit vEmperor PenguinHaemoglobin
Matrices - PAM and BLOSUM
• Certain groups of amino acids have similar physico-chemical properties e.g Lysine and Arginine
– conservative substitution
• Genetic code is degenerate - silent mutations
• Dayhoff - Point Accepted Mutation (PAM)
Matrices - PAM and BLOSUM
1 PAM unit is the extent of evolutionary divergence in which 1% of amino acid residues are altered
• Alignment of 15 very closely related proteins• Calculate a matrix of probability of a mutation altering one amino acid residue to any other amino acid on the basis of 1 PAM.• Extrapolate to PAM250
– more useful for proteins not well conserved
PAM
PAM250 matrix Problems: derived from proteins of only slight divergence
BLOSUM
• Henikov and Henikov (1992) derived matrices based on sequences more divergent.
• The BLOSUM (BLOcks SUbstition Matrix) matrices cover sequences with 80% or more similarity (BLOSUM 80), 62% or greater similarity (BLOSUM 62) etc
• Based on local not global alignments
Alignments - local
• Choose one sequence to be searched against the other • Query sequence (q) and target sequence (t)• Divide the query sequence into small subsequences, called
words• For each word of q, look along t to find other words in t which
are similar• Matching words "anchors" build up a better alignment between
q and t• Assess how good this alignment is.
Basic principle
FastA and BLAST
FastA
• Pearson and Lipman Method (late 80s)
• Query sequence compared to each sequence in a database•matching words (up to 6 nucleotides, or two amino acids in a row)
• Rescore best regions with matrices
• Algorithm checks concatenation
• Best sequences displayed
FastA and BLAST
BLAST
• Basic Local Alignment Search Tool
•Compares query to database
– For each pair - finds maximal segment pair (using BLOSUM)
– The algorithm calculates probability of random occurrence
– Faster than FastA, less accurate, method of choice since introduction of GAP-BLAST
Significance?
Only Local Alignments - without gaps
HSPs/MSPs - alignment occurring by chance (p value) is derived from the observed score (S) to the expected distribution of scores
– larger databases - larger probability of a sequence match by chance– the closer the p-value to zero the more confidence can be given to the alignment
Types of BLAST
• Nucleotide BLAST Standard nucleotide-nucleotide BLAST [blastn]
MEGABLAST Search for short nearly exact matches
• Protein BLAST Standard protein-protein BLAST [blastp]
PSI- and PHI-BLAST Search for short nearly exact matches
• Translated BLAST Searches Nucleotide query - Protein db [blastx]
Protein query - Translated db [tblastn] Nucleotide query - Translated db [tblastx]
Example.I have a new mRNA sequence:
TGGCGGCGGCGGCGGCGGTTGTCCCGGCTGTGCCGGTTGGTGTGGCCCGTCAGCCCGCGTACCACAGCGCCCGGGCCGCGTCGAGCCCAGTACAGCCAAGCCGCTGCGGCCGGGTCCGGCGCGGGCGGCGCGCGCAGACGGAGGGCGGCGGCCGCGGCCAGGGCGGCCCGTGGGACCGCGGGCCCCCGGCGCAGCGCTGCCCGGCTCCCGGCCCTGCCGGCCTCCTCCCTTGGCGCCGCGGCCATGGCGGCCAGCGCGAAGCGGAAGCAGGAGGAGAAGCACCTGAAGATGCTGCGGGACATGACCGGCCTCCCGCGCAACCGAAAGTGCTTCGACTGCGACCAGCGCGGCCCCACCTACGTTAACATGACGGTCGGCTCCTTCGTGTGTACCTCCTGCTCCGGCAGCCTGCGAGGATTAAATCCACCACACAGGGTGAAATCTATCTCCATGACAACATTCACACAACAGGAAATTGAATTCTTACAAAAACATGGAAATGAAGTCTGTAAACAGATTTGGCTAGGATTATTTGATGATAGATCTTCAGCAATTCCAGACTTCAGGGATCCACAAAAAGTGAAAGAGTTTCTACAAGAAAAGTATGAAAAGAAAAGATGGTATGTCCCGCCAGAACAAGCCAAAGTCGTGGCATCAGTTCATGCATCTATTTCAGGGTCCTCTGCCAGTAGCACAAGCAGCACACCTGAGGTCAAACCACTGAAATCTCTTTTAGGGGATTCTGCACCAACACTGCACTTAAATAAGGGCACACCTAGTCAGTCCCCAGTTGTAGGTCGTTCTCAAGGGCAGCAGCAGGAGAAGAAGCAATTTGACCTTTTAAGTGATCTCGGCTCAGACATCTTTGCTGCTCCAGCTCCTCAGTCAACAGCTACAGCCAATTTTGCTAACTTTGCACATTTCAACAGTCATGCAGCTCAGAATTCTGCAAATGCAGATTTTGCAAACTTTGATGCATTTGGACAGTCTAGTGGTTCGAGTAATTTTGGAGGTTTCCCCACAGCAAGTCACTCTCCTTTTCAGCCCCAAACTACAGGTGGAAGTGCTGCATCAGTAAATGCTAATTTTGCTCATTTTGATAACTTCCCCAAATCCTCCAGTGCTGATTTTGGAACCTTCAATACTTCCCAGAGTCATCAAACAGCATCAGCTGTTAGTAAAGTTTCAACGAACAAAGCTGGTTTACAGACTGCAGACAAATATGCAGCACTTGCTAATTTAGACAATATCTTCAGTGCCGGGCAAGGTGGTGATCAGGGAAGTGGCTTTGGGACCACAGGTAAAGCTCCTGTTGGTTCTGTGGTTTCAGTTCCCAGTCAGTCAAGTGCATCTTCAGACAAGTATGCAGCTCTGGCAGAACTAGACAGCGTTTTCAGTTCTGCAGCCACCTCCAGTAATGCGTATACTTCCACAAGTAATGCTAGCAGCAATGTTTTTGGAACAGTGCCAGTGGTTGCTTCTGCACAGACACAGCCTGCTTCATCAAGTGTGCCTGCTCCATTTGGACGTACGCCTTCCACAAATCCATTTGTTGCTGCTGCTGGTCCTTCTGTGGCATCTTCTACAAACCCATTTCAGACCAATGCCAGAGGAGCAACAGCGGCAACCTTTGGCACTGCATCCATGAGCATGCCCACGGGATTCGGCACTCCTGCTCCCTACAGTCTTCCCACCAGCTTTAGTGGCAGCTTTCAGCAGCCTGCCTTTCCAGCCCAAGCAGCTTTCCCTCAACAGACAGCTTTTTCTCAACAGCCCAATGGTGCAGGTTTTGCAGCATTTGGACAAACAAAGCCAGTAGTAACCCCTTTTGGTCAAGTTGCAGCTGCTGGAGTATCTAGTAATCCTTTTATGACTGGTGCACCAACAGGACAATTTCCAACAGGAAGCTCATCAACCAATCCTTTCTTATAGCCTTATATAGACAATTTACTGGAACGAACTTTTATGTGGTCACATTACATCTCTCCACCTCTTGCACTGTTGTCTTGTTTCACTGATCTTAGCTTTAAACACAAGAGAAGTCTTTAAAAAGCCTGCATTGTGTATTAAACACCAGGTAATATGTGCAAAACCGAGGGCTCCAGTAACACCTTCTAACCTGTGAATTGGCAGAAAAGGGTAGCGGTATCATGTATATTAAAATTGGCTAATATTAAGTTATTGCAGATACCACATTCATTATGCTGCAGTACTGTACATATTTTTCTTAGAAATTAGCTATTTGTGCATATCAGTATTTGTAACTTTAACACATTGTTATGTGAGAAATGTTACTGGGGAAATAGATCAGCCACTTTTAAGGTGCTGTCATATATCTTGGAATGAATGACCTAAAATCATTTTAACCATTGCTACTGGAAAGTAACAGAGTCAAAATTGGAAGGTTTTATTCATTCTTGAATTTTTCCTTTCTAAAGAGCTCTTCTATTTATACATGCCTAAATTCTTTTAAAATGTAGAGGGATACCTGTCTGCATAATAAAGCTGATCATGTTTTGCTACAGTTTGCAGGTGAAAAAAAATAAATATTATAAAATAAAAAAAAAAAAAAAGAAAAAAAAAA
I’ve pasted my sequence
I’ve selected the database
I hit BLAST!
Record this number
Press Format!
Setting up a BLAST search Step 1. Plan the search Step 2. Enter the query sequence Step 3. Choose the appropriate search parameters Step 4. Submit the query
Deciphering the BLAST output Step 1. Examine the alignment scores and statistics Step 2. Examine the alignments Step 3. Review search details to plan the next step
Post-BLAST analysis Perform a PSI-BLAST analysis Create a multiple alignment Try motif searching with PHI-BLAST