Learning to reformulate long queries for clinical decision support
The large volume of biomedical literature poses a serious problem for medical professionals, who are often struggling to keep current with it. At the same time, many health providers consider knowledge of the latest literature in their field a key component for successful clinical practice. In this...
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Veröffentlicht in: | Journal of the American Society for Information Science and Technology 2017-11, Vol.68 (11), p.2602-2619 |
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creator | Soldaini, Luca Yates, Andrew Goharian, Nazli |
description | The large volume of biomedical literature poses a serious problem for medical professionals, who are often struggling to keep current with it. At the same time, many health providers consider knowledge of the latest literature in their field a key component for successful clinical practice. In this work, we introduce two systems designed to help retrieving medical literature. Both receive a long, discursive clinical note as input query, and return highly relevant literature that could be used in support of clinical practice. The first system is an improved version of a method previously proposed by the authors; it combines pseudo relevance feedback and a domain‐specific term filter to reformulate the query. The second is an approach that uses a deep neural network to reformulate a clinical note. Both approaches were evaluated on the 2014 and 2015 TREC CDS datasets; in our tests, they outperform the previously proposed method by up to 28% in inferred NDCG; furthermore, they are competitive with the state of the art, achieving up to 8% improvement in inferred NDCG. |
doi_str_mv | 10.1002/asi.23924 |
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subjects | Artificial neural networks Clinical medicine Decision support systems Deep learning Feedback Health care industry Information retrieval Machine learning Medical personnel Neural networks Queries |
title | Learning to reformulate long queries for clinical decision support |
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