2. SEQUENCE ALIGNMENT
It is the way of arranging the
sequence of DNA, RNA, Protein to
identify regions of similarity that may
be a consequence of functional,
structural, or evolutionary relationship
between the sequence.
3. Global Alignment
In global alignment, two sequences to be
aligned are assumed to be generally
similar over their entire length.
Alignment is carried out from beginning
to end of both sequences to find the best
possible alignment across the entire
length between the two sequences.
This method is more applicable for
aligning two closely related sequences of
roughly the same length.
4.
5. Local Alignment
Local alignment, on the other hand, does not
assume that the two sequences in question
have similarity over the entire length.
It only finds local regions with the highest level
of similarity between the two sequences and
aligns these regions without regard for the
alignment of the rest of the sequence regions.
This approach can be used for aligning more
divergent sequences with the goal of searching
for conserved patterns in DNA or protein
sequences. The two sequences to be aligned
can be of different lengths.
6.
7. •It is simplest method of alignment.
•In pairwise alignment sequence there is a
aligning of two sequences.
•It is used in structural, functional and
evolutionary analysis of sequence.
•By pairwise alignment high accuracy result
is obtained.
•It is also used to identify homologous
sequence.
Advantage of Pairwise
alignment
8. Disadvantage of pairwise
alignment
•It is not useful when we align more
than two sequence.
•Pairwise alignment is difficult if we use
long sequences for alignment.
9. •It is also known as the dot plot method.
•It is a graphical way of comparison two
sequence in a two dimensional matrix.
•In a dot matrix two sequences to be
compared are written in the horizontal and
vertical axis of the matrix.
•The comparison is done by scanning each
residue of one sequence for similarity with
all residue in the other sequence.
DOT MATRIX METHOD
11. DYNAMIC PROGRAMING
METHOD
It is the method that determines optimal
alignment by matching two sequence for
all possible pair of character between the
two sequence.
It is similar to dot matrix as,it finds
alignment in a more quantitative way by
converting a dot matrix into scoring
matrix
13. MULTIPLE SEQUENCE ALIGNMENT
•It is a sequence alignment of three or more
biological sequence, generally protein, DNA, or
RNA.
•MSAs require more sophisticated methodologies
than pairwise alignment because they are more
computational complex.
•Most multiple sequence alignment program use
heuristic methods rather than global optimization.
• Because identifying the optimal alignment
between more than a few sequence of moderate
length is prohibitively computational expensive.
14.
15.
16. Advantage of multiple sequence
alignment
•MSA is used for comparing more
than two sequences.
•It is used to identify homologous
residue within sequence.
•To find out identical sequence.
17. Disadvantage of multiple
sequence alignment
•It is more complex method as
compare to pairwise allignment.
•It is more time consuming.
•Due to gap within the sequence it
show error.
•Low accuracy as compare to pairwise
sequence allignment.
18. Online tool for sequence
alignment
There are following online tool for
sequence alignment.
•BLAST
•FASTA
•CLUSTAL OMEGA
19. BASIC STEPS PERFORMED IN BLAST
Open NCBI SITE
All data bases (choosed gene )
Enter the name of gene(thyroid peroxidase)
Click on search
Get list of search result
Get the gene I.D and location
Click on FASTA
Obtained FASTA format and NCBI reference sequence
Run BLAST
34. It is the most commonly used approach
to multiple sequence alignment.
It speeds up the alignment of multiple
sequence through a multistep process.
It first conducts pairwise alignment for
each possible pair of sequences using
the Needleman-Wunsch alignment and
record these similarity scores from the
pairwise comparison.
PROGRESSIVE ALIGNMENT
35. •The scores are then converted into
evolutionary distances to generate a
distance matrix for all the sequence
involved.
•As a result,a phylogenetic tree is
generated using the neighbor-joining
method.
•In the next step,the closest sequence
based on guide tree is aligned with the
consensus sequence using dynamic
programming.
36.
37. •It is based on the idea that an optimal
solution can be found by repeatedly
modifying existing suboptimal solution.
•The procedure starts by producing a low
quality alignment and gradually improves
it by iterative realignment through well
defined procedures until no more
improvement in the alignment can be
achieved.
ITERATION ALIGNMENT
38.
39. It performs multiple alignment through
two sets of iteration.
1.Outer iteration=In this an initial
random alignment is generated that is
used to derive a UPGMA tree
2.Inner iteration=In this the sequence
are randomly divided into two groups
The process is repeated over
many cycles until there is no further
improvement in the overall
alignment scores.
40. •If a residue match is found, a dot is
placed within the graph.
•Otherwise, the matrix position are left
bank.
•When the two sequences have
substantial regions of similarity, many
dots line up to form contiguous diagonal
lines, which reveal the sequence
alignment.
•If there are interruptions in the middle of
a diagonal line, they indicate insertion or
deletion