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Published in: BMC Medical Imaging 1/2022

Open Access 01-12-2022 | Research

Clinical language search algorithm from free-text: facilitating appropriate imaging

Authors: Gunvant R. Chaudhari, Yeshwant R. Chillakuru, Timothy L. Chen, Valentina Pedoia, Thienkhai H. Vu, Christopher P. Hess, Youngho Seo, Jae Ho Sohn

Published in: BMC Medical Imaging | Issue 1/2022

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Abstract

Background

The comprehensiveness and maintenance of the American College of Radiology (ACR) Appropriateness Criteria (AC) makes it a unique resource for evidence-based clinical imaging decision support, but it is underutilized by clinicians. To facilitate the use of imaging recommendations, we develop a natural language processing (NLP) search algorithm that automatically matches clinical indications that physicians write into imaging orders to appropriate AC imaging recommendations.

Methods

We apply a hybrid model of semantic similarity from a sent2vec model trained on 223 million scientific sentences, combined with term frequency inverse document frequency features. AC documents are ranked based on their embeddings’ cosine distance to query. For model testing, we compiled a dataset of simulated simple and complex indications for each AC document (n = 410) and another with clinical indications from randomly sampled radiology reports (n = 100). We compare our algorithm to a custom google search engine.

Results

On the simulated indications, our algorithm ranked ground truth documents as top 3 for 98% of simple queries and 85% of complex queries. Similarly, on the randomly sampled radiology report dataset, the algorithm ranked 86% of indications with a single match as top 3. Vague and distracting phrases present in the free-text indications were main sources of errors. Our algorithm provides more relevant results than a custom Google search engine, especially for complex queries.

Conclusions

We have developed and evaluated an NLP algorithm that matches clinical indications to appropriate AC guidelines. This approach can be integrated into imaging ordering systems for automated access to guidelines.
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Metadata
Title
Clinical language search algorithm from free-text: facilitating appropriate imaging
Authors
Gunvant R. Chaudhari
Yeshwant R. Chillakuru
Timothy L. Chen
Valentina Pedoia
Thienkhai H. Vu
Christopher P. Hess
Youngho Seo
Jae Ho Sohn
Publication date
01-12-2022
Publisher
BioMed Central
Published in
BMC Medical Imaging / Issue 1/2022
Electronic ISSN: 1471-2342
DOI
https://doi.org/10.1186/s12880-022-00740-6

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