A method for imputation of semantic class in diagnostic radiology text

2015 
Diagnostic medicine produces large volumes of free-text reports used primarily for communication between medical professionals. Secondary use of these reports requires extraction of structured information from the free text. State-of-the-art computational natural language processing techniques can make partial identification of semantics in text, but the diverse terminology used in medical settings makes training classifiers for every lexicon a laborious task. We present statistics of semantics from a large-scale machine-annotated corpus of 83,452 chest x-ray reports. We show that the distribution of semantics is consistent with Zipfian distributions observed in other natural language corpora, and we quantify the semantic focus imparted by limiting a study by body area and modality. We demonstrate that within our semantically focused corpus, pairwise co-occurrence statistics can be used to accurately impute the semantic class for frequently occurring unknown entities, thereby reducing the number of semantically unclassified phrases by up to 25%. Finally, we show that our imputation approach is consistent across multiple reconstructions of the underlying text data.
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