I am working with biological datasets, straight from transcriptome (RNA) to finding certain protein sequences. I have a set of the protein names for each dataset, and want to find which are common to all datasets. Due to how the data is processed, I end up with a one variable that contains all the sub sets.
Due to how the
set.intersect() command works, it requires at least 2 sets as input:
IDs = set.intersection(transc1 & trans2)
However I only have one input,
colA which contains 30 sets of 80 to 100 entries. Here is what I have so far:
from glob import glob for file in glob('*_query.tsv'): #input all 30 datasets, first column with protein IDs sources = file colnames = ['a', 'b', 'c', 'd', 'e', 'f'] df = pandas.read_csv(sources, sep='\t', names=colnames) #colnames headers for df contruction colA = df.a.tolist() #turn column a, protein IDs, into list IDs = set(colA) #turn lists into sets
print(colA), the output is something like this, with two unnamed elements as sets:
set(['ID2', 'ID8', 'ID35', 'ID77', 'ID78', 'ID199', 'ID211']) set(['ID1', 'ID5', 'ID8', 'ID88', 'ID105', 'ID205'])
At this point I get stuck. I can't get
set.intersection() working with the
IDs set of sets. Also tried
pandas.merge(*IDs) for which the syntax seemed to work, but the number of entries for comparison exceeded the maximum (12).
I wanted to use sets because unlike lists, it should be quick to find common IDs between all the datasets. If there is a better way, I am all for it.
Help is much appreciated.