Here's an idea that might speed up the search. You create an additional list in which you store the running total of the word counts for each sentence in your big text. Using a generator function that I learned from Alex Martelli, try something like:
tot = 0
for item in a:
tot += item
from nltk.tokenize import sent_tokenize
sen_list = sent_tokenize(bigtext)
wc = [len(s.split()) for s in sen_list]
runningwc = list(running_sum(wc)) #list of the word count for each sentence (running total for the whole text)
word_index = #some number that you get from word index
for index,w in enumerate(runningwc):
if w > word_index:
sentnumber = index-1 #found the index of the sentence that contains the word
Hope the idea helps.
UPDATE: If sent_tokenize is what is slow, then you can try avoiding it altogether. Use the known index to find the word in your big text.
Now, move forward and backward, character by character, to detect sentence end and sentence starts. Something like a "[.!?] " (a period, exclamation or a question mark, followed by a space) would signify and sentence start and end. You will only be searching in the vicinity of your target word, so it should be much faster than sent_tokenize.