I have "DNA motifs" represented by position-weight-matrices (PWMs) a.k.a position-specific scoring matrices (PSSMs), in transfac format:
transfac format:
- Motif names are shown in rows following "DE"
- Each numbered row represents the observed frequencies of four possible DNA bases ("letters"): A, G, T and C, at a given position along the whole DNA motif sequence (these positions are shown by the first column)
- Row 0 is the first letter along the DNA motif sequence, and the row before "XX" is the final position along the DNA motif sequence
- The righter-most column shows the most representative letter for that position along the sequence, based on the observed frequencies; these can be given ambiguity codes (not A,G,C,T) if no particular letter is representative
- finally "XX" delimits multiple DNA motifs
E.g. SRF: GCCCATATATGGGTTGTNNTC, and HMG-1: GTTGNNTC
DE SRF
0 0.0435 0.0217 0.8478 0.0870 G
1 0.1957 0.7174 0.0435 0.0435 C
2 0.0000 0.9782 0.0217 0.0000 C
3 0.0217 0.9782 0.0000 0.0000 C
4 0.6956 0.0217 0.0000 0.2826 A
5 0.0652 0.0217 0.0000 0.9130 T
6 1.0000 0.0000 0.0000 0.0000 A
7 0.0217 0.0000 0.0000 0.9782 T
8 0.9348 0.0000 0.0000 0.0652 A
9 0.3261 0.0217 0.0000 0.6522 T
10 0.0435 0.0000 0.9565 0.0000 G
11 0.0435 0.0217 0.9348 0.0000 G
XX
DE HMG-1
0 0.0000 0.3846 0.6154 0.0000 G
1 0.0000 0.0000 0.2308 0.7692 T
2 0.0000 0.3077 0.0000 0.6923 T
3 0.0000 0.1539 0.7692 0.0769 G
4 0.0000 0.0769 0.0000 0.9230 T
5 0.4615 0.0769 0.2308 0.2308 N
6 0.2308 0.3846 0.0000 0.3846 N
7 0.0000 0.0769 0.1539 0.7692 T
8 0.0000 0.6154 0.0769 0.3077 C
XX
Question: How can I calculate the Shannon Entropy for each DNA motif in Python? Are there any Python packages out there for data like this (I don't know the non-biological jargon for these data structures)?, or perhaps somebody can provide a neat Python function?