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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.
- Mengqi Jin (2 papers)
- Mohammad Taha Bahadori (15 papers)
- Aaron Colak (4 papers)
- Parminder Bhatia (50 papers)
- Busra Celikkaya (6 papers)
- Ram Bhakta (1 paper)
- Selvan Senthivel (2 papers)
- Mohammed Khalilia (17 papers)
- Daniel Navarro (1 paper)
- Borui Zhang (15 papers)
- Tiberiu Doman (1 paper)
- Arun Ravi (1 paper)
- Matthieu Liger (1 paper)
- Taha Kass-Hout (13 papers)