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Waiting Time and Seed Selection for Homology Search

This experiment explores the waiting time and seed selection for homology search using coin tosses. The results show the effectiveness of using small "words" for quicker and more accurate matches in a large database of gene sequences.

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Waiting Time and Seed Selection for Homology Search

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  1. Waiting Time and Seed Selection for Homology Search Gary Benson Department of Computer Science Department of Biology Graduate Program in Bioinformatics Boston University

  2. Classroom Experiment – Estimating Waiting Time • Each student tosses a coin until the first occurrence of 3 heads in a row. This is one trial. If ten tosses do not produce three heads in a row, stop and begin a new trial. • Repeat trials, if necessary, so that there are 100 trials across all the students in the class. • For each trial, record in a table which toss (if any) gives the first occurrence of three heads in a row.

  3. Example 1 2 3 4 5 6 7 8 9 10 Trial 1: H T H H T H H H 8 Trial 2: T T H H H 5 Trial 3: H T T H H T H H H9 Trial 4: H T T H H T H T H H None First occurrence

  4. Fill in Table

  5. Class Results

  6. ACGTTCGACT Speciation Nucleotide substitution Nucleotide substitution ACGTTCGACT ACGTTCGACT ACGTTCGGCT AAGTTCGACT ACGTTCGGCT Evolutionary time AAGTTCGACT ACCTTCGGCT AAGTTCGACA ACCTTCGGCT Mouse Human Molecular evolution

  7. Biologists Ask: I have an unstudied human gene sequence AAGTTCGACA What other genes (from other organisms) are similar to this one?

  8. Why do they ask that question? Genes that have similar sequences often: • produce proteins that have similar function • are regulated in similar ways So a gene that has already been studied can often provide information about an unknown gene.

  9. How we answer the question: Compare the human gene to every sequence in a database of known genomes

  10. How BIG is the database? Combined length of all sequences is greater than 1011 = 100,000,000,000 nucleotides.

  11. http://www.ncbi.nlm.nih.gov/

  12. http://www.ncbi.nlm.nih.gov/

  13. How long does it take to search? The best algorithm (not the fastest) for detecting similarity takes time proportional to the product of the lengths of the sequence and the database. Assume the unstudied gene sequence is 102 = 100 nucleotides and the database is 1011 = 100,000,000,000 nucleotides.

  14. Searching the database 102 • 1011 = 1013nucleotide comparisons. Good desktop computers now run at 3 gigahertz = 3 billion = 3 • 109 comparisons per second So comparing one sequence to the database takes 1013 / 3 • 109 = 3333 seconds = 55 minutes

  15. Searching the database 102 • 1011 = 1013nucleotide comparisons. Good desktop computers now run at 3 gigahertz = 3 billion = 3 • 109 comparisons per second So comparing one sequence to the database takes 1013 / 3 • 109 = 3333 seconds = 55 minutes UGH!!!

  16. A faster way Take small “words” from A and find matches in the database first: AAGTTCGACA AAGTT AGTTCGTTCG…CGACA Then only do comparisons where there is a “hit”.

  17. Example Sequence: AAGTTCGACA Targets: AAGTT AGTTCGTTCG…CGACA Database: ACTGGTTCAAATGGCGCATGCAAAAGTTGGCTGATTTGCATGACGTACCCTGAGACCTCGGAATTCTAGCTTGCGAAGTAATACGATACCGTACGTTGCCGACATACGGTACGTCGTCTACGTACGTACGCCTACGCTACGTACCTTCGGCTTTTCATGGCAGCGATCGTACTCCTCTAGTTCCTGACTGACTAC…

  18. Example Sequence: AAGTTCGACA Targets: AAGTT AGTTCGTTCG…CGACA Database: ACTGGTTCAAATGGCGCATGCAAAAGTTGGCTGATTTGCATGACGTACCCTGAGACCTCGGAATTCTAGCTTGCGAAGTAATACGATACCGTACGTTGCCGACATACGGTACGTCGTCTACGTACGTACGCCTACGCTACGTACCTTCGGCTTTTCATGGCAGCGATCGTACTCCTCTAGTTCCTGACTGACTAC… But we missed the mouse gene!

  19. What size should the “words” be? • Too long and we miss similar sequences This reduces sensitivity. • Too small and there are “hits” everywhere. This reduces specificity. We need to balance these two issues.

  20. Computing sensitivity We need to answer the following type of question: Suppose a gene sequence of length 100 has a match in the database and the two sequences are expected to be identical at 80% of their positions. If we search with “words” of length 5, how often will we find the match?

  21. Computing sensitivity We model the two sequences with coin tosses, where a match is considered a head and a mismatch (mutation) is considered a tail. Example: AAGTTCGACA ACCTTCGGCT HTTHHHHTHT

  22. Computing sensitivity We model the two sequences with coin tosses, where a match is considered a head and a mismatch (mutation) is considered a tail. Example: AAGTTCGACA ACCTTCGGCT HTTHHHHTHT We are interested in at least one occurrence of five heads if we use small words of length five.

  23. Waiting Time Our question is a classic waiting time problem. It asks, for coin toss sequences of length n, and with probability of heads = P(H), what is the probability of tossing k heads in a row at least once? For our question, n = 100, P(H) = 0.8 k = 5

  24. Answer 99.99% -- Which means that using small words of length 5, we will never miss similar sequences of length 100. In fact, the sequences have to be as short as 23 nucleotides before we will miss 5%. And at 9 nucleotides we miss 41% of similarities. AAGTTCGACA ACCTTCGGCT

  25. But wait! Maybe the “words” can be modified It turns out, that words composed of letters with don’t care spaces produce better results. AAGTTCGACA AA*TTC AG*TCGGT*CGA…TC*ACA

  26. But wait! Maybe the “words” can be modified It turns out, that words composed of letters with don’t care spaces produce better results. AAGTTCGACA AA*TTC AG*TCGGT*CGA…TC*ACA Current research involves finding the best word shapes.

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