Topic Modeling for Classification of Clinical Reports
Efsun Sarioglu Kayi, Kabir Yadav, James M. Chamberlain, Hyeong-Ah Choi

TL;DR
This paper explores the use of topic modeling for classifying clinical radiology reports, demonstrating that it offers an interpretable, efficient, and competitive alternative to traditional text classification methods.
Contribution
The study introduces novel classifiers based on topic modeling representations, improving interpretability and processing speed in clinical report classification.
Findings
Topic modeling classifiers are competitive with existing methods.
Proposed classifiers are more interpretable and faster.
Effective classification of CT reports into positive/negative for fractures.
Abstract
Electronic health records (EHRs) contain important clinical information about patients. Efficient and effective use of this information could supplement or even replace manual chart review as a means of studying and improving the quality and safety of healthcare delivery. However, some of these clinical data are in the form of free text and require pre-processing before use in automated systems. A common free text data source is radiology reports, typically dictated by radiologists to explain their interpretations. We sought to demonstrate machine learning classification of computed tomography (CT) imaging reports into binary outcomes, i.e. positive and negative for fracture, using regular text classification and classifiers based on topic modeling. Topic modeling provides interpretable themes (topic distributions) in reports, a representation that is more compact than the commonly used…
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Taxonomy
TopicsTopic Modeling · Biomedical Text Mining and Ontologies · Natural Language Processing Techniques
