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Evaluating alignments using motif detection

Evaluating alignments using motif detection. Let’s evaluate alignments by searching for motifs If alignment X reveals more functional motifs than Y using technique Z then X is better than Y w.r.t. Z Motifs could be functional sites in proteins or functional regions in non-coding DNA.

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Evaluating alignments using motif detection

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  1. Evaluating alignments using motif detection • Let’s evaluate alignments by searching for motifs • If alignment X reveals more functional motifs than Y using technique Z then X is better than Y w.r.t. Z • Motifs could be functional sites in proteins or functional regions in non-coding DNA

  2. Protein Functional Site Prediction • The identification of protein regions responsible for stability and function is an especially important post-genomic problem • With the explosion of genomic data from recent sequencing efforts, protein functional site prediction from only sequence is an increasingly important bioinformatic endeavor.

  3. What is a “Functional Site”? • Defining what constitutes a “functional site” is not trivial • Residues that include and cluster around known functionality are clear candidates for functional sites • We define a functional site as catalytic residues, binding sites, and regions that clustering around them.

  4. Protein

  5. Protein + Ligand

  6. Functional Sites (FS)

  7. Regions that Cluster Around FS

  8. Phylogenetic motifs • PMs are short sequence fragments that conserve the overall familial phylogeny • Are they functional? • How do we detect them?

  9. Phylogenetic motifs • PMs are short sequence fragments that conserve the overall familial phylogeny • Are they functional? • How do we detect them? • First we design a simple heuristic to find them • Then we see if the detected sites are functional

  10. Scan for Similar Trees Whole Tree

  11. Scan for Similar Trees Whole Tree

  12. Scan for Similar Trees Whole Tree Windowed Tree

  13. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  14. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 8

  15. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 4

  16. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  17. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 8

  18. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  19. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  20. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 0

  21. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  22. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  23. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 8

  24. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 0

  25. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  26. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  27. Scan for Similar Trees Whole Tree Windowed Tree Partition Metric Score: 6

  28. Phylogenetic Motif Identification • Compare all windowed trees with whole tree and keep track of the partition metric scores • Normalize all partition metric scores by calculating z-scores • Call these normalized scores Phylogenetic Similarity Z-scores (PSZ) • Set a PSZ threshold for identifying windows that represent phylogenetic motifs

  29. Set PSZ Threshold

  30. Regions of PMs

  31. Map PMs to the Structure

  32. Map PMs to the Structure Set PSZ Threshold

  33. Map PMs to the Structure Map Set PSZ Threshold

  34. Map PMs to the Structure Map Set PSZ Threshold

  35. PMs in Various Structures

  36. PMs and Traditional Motifs

  37. TIM Phylogenetic Similarity False Positive Expectation

  38. TIM Phylogenetic Similarity False Positive Expectation

  39. TIM Phylogenetic Similarity False Positive Expectation

  40. TIM Phylogenetic Similarity False Positive Expectation

  41. Cytochrome P450 Phylogenetic Similarity False Positive Expectation

  42. Cytochrome P450 Phylogenetic Similarity False Positive Expectation

  43. Enolase Phylogenetic Similarity False Positive Expectation

  44. Glycerol Kinase Phylogenetic Similarity False Positive Expectation

  45. Glycerol Kinase Phylogenetic Similarity False Positive Expectation

  46. Myoglobin Phylogenetic Similarity False Positive Expectation

  47. Myoglobin Phylogenetic Similarity False Positive Expectation

  48. Evaluating alignments • For a given alignment compute the PMs • Determine the number of functional PMs • Those identifying more functional PMs will be classified as better alignments

  49. Protein datasets

  50. Running time

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