Modeling physiological time-series in ICU is of high clinical importance. However, data collected within ICU are irregular in time and often contain missing measurements. Since absence of a measure would signify its lack of importance, the missingness is indeed informative and might reflect the decision making by the clinician. Here we propose a deep learning architecture that can effectively handle these challenges for predicting ICU mortality outcomes. The model is based on Long Short-Term Memory, and has layered attention mechanisms. At the sensing layer, the model decides whether to observe and incorporate parts of the current measurements. At the reasoning layer, evidences across time steps are weighted and combined. The model is evaluated on the PhysioNet 2012 dataset showing competitive and interpretable results.
History
Volume
1891
Pagination
25-29
Location
Melbourne, Victoria
Start date
2017-08-20
End date
2017-08-20
ISSN
1613-0073
Language
eng
Publication classification
E Conference publication, E1 Full written paper - refereed
Copyright notice
[2017, The Conference]
Title of proceedings
KDH 2017 : Proceedings of the 2nd International Workshop on Knowledge Discovery in Healthcare Data 2017
Event
Knowledge Discovery in Healthcare Data. International Workshop (2nd : 2017 : Melbourne, Victoria)