Title: Pairwise sequence alignments
1Pairwise sequence alignments
- Dynamic programming (Needleman-Wunsch), finds
optimal alignment - Heuristics Blast (Altschul et al) does not
guarantee finding optimal alignment, but fast
2Pairwise sequence alignments
- APLFVA----ITRSDD
- APVFIAGDTRITRSEE
- Assumptions
- evolution of sequences through mutations and
deletions/insertions - the closer similarity between sequences, the more
chances they are evolutionarily related.
3Similarity measures Percent Identity
Identity score Exact matches receive score of
1 and non-exact matches score of
0 AVLILKQW AVLI I LQ T -------------------------
----- 1 1 1 1 0 0 1 0 5 (Score of
the alignment under identity) Percent
identity identity_score/length_of_the_shorter_pro
tein
Disadvantage of id does not take into account
the similarity between their properties.
4Substitution Matrices measure of similarity
score of amino-acids
- M(i,j) probability of substituting i into j
over some time period - Percent Accepted Mutation (PAM) unit
evolutionary time corresponding to average of 1
mutation per 100 res. - Two most popular classes of matrices
- PAMn relates to mutation probabilities in
evolutionary interval of n PAM units (PAM 120 is
often used in practice) - BLOSUMx relates to mutation probabilities
observed between pairs of related proteins that
diverged so above x identity. - BLOSUM62 PAM250
5Scoring the gaps
The two alignments below have the same score.
The second alignment is better.
ATTTTAGTAC ATT- - AGTAC
ATTTTAGTAC A-T-T -AGTAC
- Solution Have additional penalty for opening a
gap
Affine gap penalty
w(k) h gk h,g constants
Interpretation const of starting a gap hg,
extending gap g
6Dot plot illustration
Adapted from T. Przytycka
The alignment corresponds to path from upper
left corner to lower right corner going trough
max. nr of dots
Deletions
TTACTCAAT - - - - - ACTCA- TTAC
7Gap penalties
Consider two pairs of alignments
ATCG ATTG
AT C G AT T - G
They have the same score but the right
alignment is more likely from evolutionary
perspective (simpler explanation better
explanation)
and
and
AT - C - T A AT T T T TA
ATC - - T A ATT T T TA
- First problem is corrected by introducing gap
penalty for each gap subtract gap penalty from
the score - Second problem is corrected by introducing
additional penalty for opening a gap
Affine gap penalty
w(k) h gk h,g constants
Interpretation const of starting a gap hg,
extending gap g
8Organizing the computation dynamic programming
table
Align
j
Align(i,j)
Align(Si,Sj) max
i
Align(Si-1,Sj-1) s(ai, aj) Align(Si-1,Sj) -
g Align(Si,Sj-1) - g
s(ai,aj)
max
9Recovering the path
A T T G
A T G C
10Ignoring initial and final gaps semiglobal
comparison
CAGCA - CTTGGATTCTCGG - - - CAGCGTGG - - - - -
- - -
No penalties for these gaps
Recall the initialization step for the dynamic
programming table A0,i, Aj,0 these are
responsible for initial gaps.
set them to zero! How to ignore
final gaps?
Take the largest value in the last row /column
and trace-back form there
11Comparing similar sequences
Similar sequences optimal alignment has small
number of gaps.
The alignment path stays close to the diagonal
From book Setubal MeidanisIntroduction Comp.
Mol. Biol
12Local and global alignments
Global Local
13Local alignment (Smith - Waterman)
So far we have been dealing with global
alignment. Local alignment alignment between
substrings. Main idea If alignment becomes too
bad drop it.
ai-1,j-1 s(ai, aj) ai-1,j g ai,j-1 g 0
ai,j max
14Example
15BLAST
- Local heuristics
- Fast
- Good statistics
- Precalculated lookup table of all high score word
matches of three residue long - Extend the hit until score drops below some
threshold
16Sequence-profile alignments sequence profiles
describe conserved features with respect to
position in multiple alignment
1 2 3 4 5 6 7
IDVVVVC --------------------------------------
- LDLV--C A 2 -2 -2 -1 -1
-1 -2 LDLVFVC -------------------------
-------------- ADIIFLI R -3 -2
-3 -3 -2 -2 -4 ---------------------------
------------ N -3 1 -4 -4 -2 -2
-4 --------------------------------------- D
-3 7 -4 -4 -3 -3 -4 -----------------
---------------------- C -2 -4 -2 -1
-2 -1 6 -------------------------------------
--.
Gribskov et al, PNAS, 1987 Schaffer et al,
Nucleic Acids Res., 2001
17Computational aspects of protein structure
18Examples of protein architecture
ß-sheet with all pairs of strands parallel
Architecture refers to the arrangement and
orientation of SSEs, but not to the connectivity.
ß-sheet with all pairs of strands anti-parallel
19Examples of protein topology
Topology refers to the manner in which the SSEs
are connected.
Two ß-sheets (all parallel) with
different topologies.
20Secondary structures are connected to form
motifs.
G.M. Salem et al. J. Mol. Biol. (1999) 287 969-981
21Supersecondary structure Greek key motifs
G.M. Salem et al. J. Mol. Biol. (1999) 287 969-981
22Some supersecondary structure motifs are
associated with specific functionDNA binding
motifs.
Helix-turn-helix motif recognizes specific
palindromic DNA sequence Zn-finger motif Zn
binds to two Cys and two His binds in tandems
along major groove
23P-loop motif.
Sequence pattern G/AxxxxGK(x)S/T Function
mononucleotide binding
24Calcium-binding motif.
Calcium-binding sequence pattern
DxD/NxDxxxE/DxxE Function binding of Ca(2)
calmodulin Ca-dependent signaling pathways
A.Lewit-Bentley S. Rety, 2000
25Protein domains can be defined based on
- Geometry group of residues with the high contact
density, number of contacts within domains is
higher than the number of contacts between
domains. - - chain continuous domains
- - chain discontinous domains
- Kinetics domain as an independently folding
unit. - Physics domain as a rigid body linked to other
domains by flexible linkers. - Genetics minimal fragment of gene that is
capable of performing a specific function.
26Domains as recurrent units of proteins.
- The same or similar domains are found in
different proteins. - Each domain has a well determined compact
structure and performs a specific function. - Proteins evolve through the duplication and
domain shuffling. - Protein domain classification based on comparing
their recurrent sequence, structure and
functional features Conserved Domain Database
27Conserved Domain Database (CDD).
- Protein domain classification based on comparing
their recurrent sequence, structure and
functional features Conserved Domain Database - CDD represents a collection of multiple sequence
alignments corresponding to different protein
domains
28CDD icludes a set of multiple sequence alignments.
- Accurate alignments since structure-structure
alignments are reconciled with sequence
alignments. - Block-based alignments.
- Annotated alignments.
- Annotated functionally important sites.
29PSSMs for each CDD are calculated using observed
residue frequencies and relationships between
different residue types.
- 1 2 3 4 5 6 7
IDVVVVC - ---------------------------------------
LDLV--I - A 2 -2 -2 -1 -1 -1 -2
LDLVFVI - ---------------------------------------
ADIIFLI - R -3 -2 -3 -3 -2 -2 -4
- ---------------------------------------
W(D,3) log( Q(D,3) / P(D) ) - N -3 1 -4 -4 -2 -2 -4
- ---------------------------------------
P(D) background probability - D -3 7 -4 -4 -3 -3 -4
- ---------------------------------------
Q(D,3) estimated probability - C -2 -4 -2 -1 -2 -1 6
for residue D to be found in - ---------------------------------------
column 3. - .
- .
- .
30How to annotate domains in a protein using CDD?
- To annotate domains in a protein
- - to find domain boundaries
- - to assign function(structure) for each
domain - For each query sequence perform CD-search.
- CD-search query sequence is compared with
sequence profiles derived from CDD multiple
sequence alignments.
31Classwork
- Retrieve 1WQ1 from MMDB, look at structural
domains and domains annotated by CDD. How
different are they? - Pretend you do not know the structure of 1WQ1,
perform the CD-search, annotate domain boundaries.
32Protein folds.
- Fold definition two folds are similar if they
have a similar arrangement of SSEs (architecture)
and connectivity (topology). Sometimes a few
SSEs may be missing. - Fold classification structural similarity
between folds is searched using
structure-structure comparison algorithms. - There is a limited number of folds 1000 3000.
33Superfolds are the most populated protein folds.
- There are about 10 types of folds, the
superfolds, to which about 30 of the other folds
are similar. - Superfolds are characterized by a wide range of
sequence diversity and spanning a range of
non-similar functions.
C.Orengo et al, 1994
34Why do some folds are more populated than others?
- Thermodynamic stability?
- Fast folding?
- By chance, through the duplication processes?
- Perform essential functions?
- Symmetrical folds, emerged through the gene
duplication? - High supersecondary structure content, higher
fraction of local interactions?
35Distinguishing structural similarity due to
common origin versus convergent evolution.
Divergent evolution, homologs
Convergent evolution, analogs
36TIM barrels
- Classified into 21 families in the CATH database.
- Mostly enzymes, but participate in a diverse
collection of different biochemical reactions. - There are intriguing common features across the
families, e.g. the active site is always located
at the C-terminal end of the barrel.
Catalytic and metal-binding residues aligned in
structure-structure alignments
Nagano, C. Orengo and J. Thornton, 2002
37Functional diversity of TIM-barrels.
38TIM barrel evolutionary relationships
- Sequence analyses with advanced programs such as
PSI-BLAST have identified further relationships
among the families. - Further interesting similarities observed from
careful comparison of structures, e.g. a
phosphate binding site commonly formed by loops
7, 8 and a small helix. - In summary, there is evidence for evolutionary
relationships between 17 of the 21 families.
39SCOP (Structural Classification of Proteins)
- http//scop.mrc-lmb.cam.ac.uk/scop/
- Levels of the SCOP hierarchy
- Family clear evolutionary relationship
- Superfamily probable common evolutionary origin
- Fold major structural similarity
- Class secondary structure content
40CATH (Class, Architecture, Topology, Homologous
superfamily)
- http//www.biochem.ucl.ac.uk/bsm/cath/
41Classwork
- Using SCOP and CATH classify four protein
structures (1b5t, 1n8i, 1tph and 1hti). - How different are the classifications produced by
SCOP and CATH? - Can these proteins be considered homologous?