[HTML][HTML] EMR coding with semi–parametric multi–head matching networks

A Rios, R Kavuluru�- Proceedings of the conference. Association�…, 2018 - ncbi.nlm.nih.gov
Proceedings of the conference. Association for Computational�…, 2018ncbi.nlm.nih.gov
Coding EMRs with diagnosis and procedure codes is an indispensable task for billing,
secondary data analyses, and monitoring health trends. Both speed and accuracy of coding
are critical. While coding errors could lead to more patient–side financial burden and mis–
interpretation of a patient's well–being, timely coding is also needed to avoid backlogs and
additional costs for the healthcare facility. In this paper, we present a new neural network
architecture that combines ideas from few–shot learning matching networks, multi–label loss�…
Abstract
Coding EMRs with diagnosis and procedure codes is an indispensable task for billing, secondary data analyses, and monitoring health trends. Both speed and accuracy of coding are critical. While coding errors could lead to more patient–side financial burden and mis–interpretation of a patient’s well–being, timely coding is also needed to avoid backlogs and additional costs for the healthcare facility. In this paper, we present a new neural network architecture that combines ideas from few–shot learning matching networks, multi–label loss functions, and convolutional neural networks for text classification to significantly outperform other state–of–the–art models. Our evaluations are conducted using a well known deidentified EMR dataset (MIMIC) with a variety of multi–label performance measures.
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