- Backend NLP engine
pattern.en
has been replaced withspaCy
v 2.1.0. This is a major fix for some of the problems withpattern.en
including poor lemmatization. (eg. cytokine -> cytocow) - Support for python 2 has been dropped
- Support for custom dictionaries in
replace_from_dictionary
- Option for suffix to be used instead of prefix in
replace_from_dictionary
- URL replacement can now remove emails
token_replacement
can remove symbols
NLPre is a text (pre)-processing library that helps smooth some of the inconsistencies found in real-world data. Correcting for issues like random capitalization patterns, strange hyphenations, and abbreviations are essential parts of wrangling textual data but are often left to the user.
While this library was developed by the Office of Portfolio Analysis at the National Institutes of Health to correct for historical artifacts in our data, we envision this module to encompass a broad spectrum of problems encountered in the preprocessing step of natural language processing.
NLPre is part of the word2vec-pipeline
.
For the latest release, use
pip install nlpre
If installing the python 3 version on Ubuntu, you may need to use
sudo apt-get install libmysqlclient-dev
from nlpre import titlecaps, dedash, identify_parenthetical_phrases
from nlpre import replace_acronyms, replace_from_dictionary
text = ("LYMPHOMA SURVIVORS IN KOREA. Describe the correlates of unmet needs "
"among non-Hodgkin lymphoma (NHL) surv- ivors in Korea and identify "
"NHL patients with an abnormal white blood cell count.")
ABBR = identify_parenthetical_phrases()(text)
parsers = [dedash(), titlecaps(), replace_acronyms(ABBR),
replace_from_dictionary(prefix="MeSH_")]
for f in parsers:
text = f(text)
print(text)
''' lymphoma survivors in korea .
Describe the correlates of unmet needs among non_Hodgkin_lymphoma
( non_Hodgkin_lymphoma ) survivors in Korea and identify non_Hodgkin_lymphoma
patients with an abnormal MeSH_Leukocyte_Count . '''
A longer example highlighting a "pipeline" of changes can be found here.
To see a detailed log of the changes made, set the level to logging.INFO
or logging.DEBUG
,
import nlpre, logging
nlpre.logger.setLevel(logging.INFO)
Function | Description |
---|---|
replace_from_dictionary | Replace phrases from an input dictionary. The replacement is done without regard to case, but punctuation is handled correctly. The MeSH (Medical Subject Headings) dictionary is built-in. (11-Dimethylethyl)-4-methoxyphenol is great MeSH_Butylated_Hydroxyanisole is great |
replace_acronyms | Replaces acronyms and abbreviations found in a document with their corresponding phrase. If an acronym is explicitly identified with a phrase in a document, then all instances of that acronym in the document will be replaced with the given phrase. If there is no explicit indication what the phrase is within the document, then the most common phrase associated with the acronym in the given counter is used. The EPA protects trees The Environmental_Protection_Agency protects trees |
identify_parenthetical_phrases | Identify abbreviations of phrases found in a parenthesis. Returns a counter and can be passed directly into replace_acronyms . 'Environmental Protection Agency (EPA) Counter((('Environmental', 'Protection', 'Agency'), 'EPA'):1) |
separated_parenthesis | Separates parenthetical content into new sentences. This is useful when creating word embeddings, as associations should only be made within the same sentence. Terminal punctuation of a period is added to parenthetical sentences if necessary. Hello (it is a beautiful day) world. Hello world. it is a beautiful day . |
pos_tokenizer | Removes all words that are of a designated part-of-speech (POS) from a document. For example, when processing medical text, it is useful to remove all words that are not nouns or adjectives. POS detection is provided by the spaCy module. The boy threw the ball into the yard boy ball yard |
unidecoder | Converts Unicode phrases into ASCII equivalent. α-Helix β-sheet a-Helix b-sheet |
dedash | Hyphenations are sometimes erroneously inserted when text is passed through a word-processor. This module attempts to correct the hyphenation pattern by joining words that if they appear in an English word list. How is the treat- ment going How is the treatment going |
decaps_text | We presume that case is important, but only when it differs from title case. This class normalizes capitalization patterns. James and Sally had a fMRI james and sally had a fMRI |
titlecaps | Documents sometimes have sentences that are entirely in uppercase (commonly found in titles and abstracts of older documents). This parser identifies sentences where every word is uppercase, and returns the document with these sentences converted to lowercase. ON THE STRUCTURE OF WATER. On the structure of water . |
token_replacement | Simple token replacement. Observed > 20% Observed greater-than 20 percent |
separate_reference | Separates and optionally removes references that have been concatenated onto words. Key feature of interleukin-1 in Drosophila3-5 and elegans(7). Key feature of interleukin-1 in Drosophila and elegans . |
url_replacement | Removes or replaces URLs The source code is [here](www.github.com/NIHOPA/NLPre/). The source code is [here](LINK). |
-
He, Jian and Chaomei Chen. Predictive Effects of Novelty Measured by Temporal Embeddings on the Growth of Scientific Literature. Frontiers in Research Metrics and Analytics, 3, 9. (2018).
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He, Jian and Chaomei Chen. Temporal Representations of Citations for Understanding the Changing Roles of Scientific Publications. Front. Res. Metr. Anal. (2018).
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Galea, Dieter et al. Sub-word information in pre-trained biomedical word representations: evaluation and hyper-parameter optimization. BioNLP (2018).
This project is in the public domain within the United States, and copyright and related rights in the work worldwide are waived through the CC0 1.0 Universal public domain dedication.