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Improving Hospital Mortality Prediction with Medical Named Entities and Multimodal Learning (1811.12276v2)

Published 29 Nov 2018 in cs.CL, cs.AI, and cs.LG

Abstract: Clinical text provides essential information to estimate the acuity of a patient during hospital stays in addition to structured clinical data. In this study, we explore how clinical text can complement a clinical predictive learning task. We leverage an internal medical natural language processing service to perform named entity extraction and negation detection on clinical notes and compose selected entities into a new text corpus to train document representations. We then propose a multimodal neural network to jointly train time series signals and unstructured clinical text representations to predict the in-hospital mortality risk for ICU patients. Our model outperforms the benchmark by 2% AUC.

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Authors (14)
  1. Mengqi Jin (2 papers)
  2. Mohammad Taha Bahadori (15 papers)
  3. Aaron Colak (4 papers)
  4. Parminder Bhatia (50 papers)
  5. Busra Celikkaya (6 papers)
  6. Ram Bhakta (1 paper)
  7. Selvan Senthivel (2 papers)
  8. Mohammed Khalilia (17 papers)
  9. Daniel Navarro (1 paper)
  10. Borui Zhang (15 papers)
  11. Tiberiu Doman (1 paper)
  12. Arun Ravi (1 paper)
  13. Matthieu Liger (1 paper)
  14. Taha Kass-Hout (13 papers)
Citations (65)

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