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Most Influential KDD 2016 Paper · 2026-03 edition

Multi-layer Representation Learning For Medical Concepts

Edward Choi, Mohammad Taha Bahadori, Elizabeth Searles, Catherine Coffey, Michael Thompson, James Bost, Javier Tejedor-Sojo, Jimeng Sun

Venue
ACM SIGKDD Conference (KDD) 2016
Recognition
Most Influential KDD 2016 Paper (Rank No. 9)
Edition
2026-03
Impact factor
7
Certificate ID
f0f7111a45f01743

Abstract

Proper representations of medical concepts such as diagnosis, medication, procedure codes and visits from Electronic Health Records (EHR) has broad applications in healthcare analytics. Patient EHR data consists of a sequence of visits over time, where each visit includes multiple medical concepts, e.g., diagnosis, procedure, and medication codes. This hierarchical structure provides two types of relational information, namely sequential order of visits and co-occurrence of the codes within a visit. In this work, we propose <b>Med2Vec</b>, which not only learns the representations for both medical codes and visits from large EHR datasets with over million visits, but also allows us to interpret the learned representations confirmed positively by clinical experts. In the experiments, <b>Med2Vec</b> shows significant improvement in prediction accuracy in clinical applications compared to baselines such as Skip-gram, GloVe, and stacked autoencoder, while providing clinically meaningful interpretation.

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