Predicting Clinical Events by Combining Static and Dynamic Information Using Recurrent Neural Networks
February 08, 2016 ยท Declared Dead ยท ๐ IEEE International Conference on Healthcare Informatics
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Authors
Cristรณbal Esteban, Oliver Staeck, Yinchong Yang, Volker Tresp
arXiv ID
1602.02685
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.NE
Citations
166
Venue
IEEE International Conference on Healthcare Informatics
Last Checked
4 months ago
Abstract
In clinical data sets we often find static information (e.g. patient gender, blood type, etc.) combined with sequences of data that are recorded during multiple hospital visits (e.g. medications prescribed, tests performed, etc.). Recurrent Neural Networks (RNNs) have proven to be very successful for modelling sequences of data in many areas of Machine Learning. In this work we present an approach based on RNNs, specifically designed for the clinical domain, that combines static and dynamic information in order to predict future events. We work with a database collected in the Charitรฉ Hospital in Berlin that contains complete information concerning patients that underwent a kidney transplantation. After the transplantation three main endpoints can occur: rejection of the kidney, loss of the kidney and death of the patient. Our goal is to predict, based on information recorded in the Electronic Health Record of each patient, whether any of those endpoints will occur within the next six or twelve months after each visit to the clinic. We compared different types of RNNs that we developed for this work, with a model based on a Feedforward Neural Network and a Logistic Regression model. We found that the RNN that we developed based on Gated Recurrent Units provides the best performance for this task. We also used the same models for a second task, i.e., next event prediction, and found that here the model based on a Feedforward Neural Network outperformed the other models. Our hypothesis is that long-term dependencies are not as relevant in this task.
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