A Knowledge Distillation Ensemble Framework for Predicting Short and
Long-term Hospitalisation Outcomes from Electronic Health Records Data
- URL: http://arxiv.org/abs/2011.09361v2
- Date: Fri, 11 Jun 2021 12:10:29 GMT
- Title: A Knowledge Distillation Ensemble Framework for Predicting Short and
Long-term Hospitalisation Outcomes from Electronic Health Records Data
- Authors: Zina M Ibrahim, Daniel Bean, Thomas Searle, Honghan Wu, Anthony Shek,
Zeljko Kraljevic, James Galloway, Sam Norton, James T Teo, Richard JB Dobson
- Abstract summary: Existing outcome prediction models suffer from a low recall of infrequent positive outcomes.
We present a highly-scalable and robust machine learning framework to automatically predict adversity represented by mortality and ICU admission.
- Score: 5.844828229178025
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The ability to perform accurate prognosis of patients is crucial for
proactive clinical decision making, informed resource management and
personalised care. Existing outcome prediction models suffer from a low recall
of infrequent positive outcomes. We present a highly-scalable and robust
machine learning framework to automatically predict adversity represented by
mortality and ICU admission from time-series vital signs and laboratory results
obtained within the first 24 hours of hospital admission. The stacked platform
comprises two components: a) an unsupervised LSTM Autoencoder that learns an
optimal representation of the time-series, using it to differentiate the less
frequent patterns which conclude with an adverse event from the majority
patterns that do not, and b) a gradient boosting model, which relies on the
constructed representation to refine prediction, incorporating static features
of demographics, admission details and clinical summaries. The model is used to
assess a patient's risk of adversity over time and provides visual
justifications of its prediction based on the patient's static features and
dynamic signals. Results of three case studies for predicting mortality and ICU
admission show that the model outperforms all existing outcome prediction
models, achieving PR-AUC of 0.891 (95$%$ CI: 0.878 - 0.969) in predicting
mortality in ICU and general ward settings and 0.908 (95$%$ CI: 0.870-0.935) in
predicting ICU admission.
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