Multiple EM for Motif Elicitation

Multiple EM for Motif Elicitation

Multiple EM for Motif Elicitation or MEME is a tool for discovering motifs in a group of related DNA or protein sequences.[1]

A motif is a sequence pattern that occurs repeatedly in a group of related protein or DNA sequences. MEME represents motifs as position-dependent letter-probability matrices which describe the probability of each possible letter at each position in the pattern. Individual MEME motifs do not contain gaps. Patterns with variable-length gaps are split by MEME into two or more separate motifs.

MEME takes as input a group of DNA or protein sequences (the training set) and outputs as many motifs as requested. It uses statistical modeling techniques to automatically choose the best width, number of occurrences, and description for each motif.

Contents

Definition

What the MEME algorithms actually does can be understood from two different perspectives. From a biological point of view, MEME identifies and characterizes shared motifs in a set of unaligned sequences. From the computer science aspect, MEME finds a set of non-overlapping, approximately matching substrings given a starting set of strings.

Use

With MEME one can find similar biological functions and structures in different sequences. One has to take into account that the sequences variation can be significant and that the motifs are sometimes very small. It is also useful to take into account that the binding sites for proteins are very specific. This makes it easier to reduce wet-lab experiments (reduces costs and time). Indeed to better discover the motifs relevant for a biological point of view one has to carefully choose:

  • The best width of motifs.
  • The number of occurrences in each sequence.
  • The composition of each motif.

Algorithm Components

The algorithm uses several types of well know functions:

  • Expectation maximization (EM).
  • EM based heuristic for choosing the EM starting point.
  • Maximum likelihood ratio based (LRT-based). Heuristic for determining the best number of model-free parameters.
  • Multi-start for searching over possible motif widths.
  • Greedy search for finding multiple motifs.

However, one often doesn't know where the starting position is. Several possibilities exist:

  • Exactly one motif per sequence.
  • One or zero motif per sequence.
  • Any number of motifs per sequence.

Example

In the following example, one has a weight matrix of 3 different sequences, without gaps.

1: C G G G T A A G T
2: A A G G T A T G C
3: C A G G T G A G G

Now one counts the number of nucleotides contained in all sequences:

A: 1 2 0 0 0 2 2 0 0 7
C: 2 0 0 0 0 0 0 0 1 3
G: 0 1 3 3 0 1 0 3 1 12
T: 0 0 0 0 3 0 1 0 1 5

Now one needs to sum up the total: 7+3+12+5 = 27; this gives us a "dividing factor" for each base, or the equivalent probability of each nucleotides.
A: 7/27 = 0.26
C: 3/27 = 0.11
G: 12/27 = 0.44
T: 5/27 = 0.19

Now one can "redo" the weight matrix (WM) by dividing it by the total number of sequences (in our case 3):
A: 0.33 0.66 0.00 0.00 0.00 0.66 0.66 0.00 0.00
C: 0.66 0.00 0.00 0.00 0.00 0.00 0.00 0.00 0.33
G: 0.00 0.33 1.00 1.00 0.00 0.33 0.00 1.00 0.33
T: 0.00 0.00 0.00 0.00 1.00 0.00 0.33 0.00 0.33

Next, one divides the entries of the WM at position xi with the probability of the base x.
A: 1.27 2.30 0.00 0.00 0.00 2.30 2.30 0.00 0.00
C: 6.00 0.00 0.00 0.00 0.00 0.00 0.00 0.00 3.00
G: 0.00 0.75 2.27 2.27 0.00 0.75 0.00 2.27 0.75
T: 0.00 0.00 0.00 0.00 5.26 0.00 1.74 0.00 1.74

In general one would now multiply the probabilities. In our case one would have zero for every one. Due to this we take the logarithm and define log(0)=(-10):

A: 0.10 0.36 -10 -10 -10 0.36 0.36 -10 -10
C: 0.78 -10 -10 -10 -10 -10 -10 -10 0.48
G: -10 -0.1 0.36 0.36 -10 -0.1 -10 0.36
T: -10 -10 -10 -10 0.72 -10 0.24 -10 0.24

This is our new weight matrix (WM). One is ready to use an example of a promoter sequence to determine its score. To do this, one has to add the numbers found at the position xi of the logarithmic WM. For instance, if one takes the AGGCTGATC promoter:
0.10 - 0.1 + 0.36 - 10 + 0.72 - 0.1 + 0.36 - 10 + 0.48 = -18.18
This is then divided by the number of entries (in our case 9) yielding a score of -2.02.

Shortcomings

The MEME algorithms has several drawbacks including:

  • Allowance for gaps/substitutions/insertions not included.
  • Ability to test significance often not included.
  • Erased input data each time a new motif is discovered (the algorithm assumes the new motif is correct).
  • Limitation to two component case.
  • Time complexity is high.
  • Very pessimistic about alignment (which might lead to missed signals).

See also

References

External links


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