Sepsis Prediction with Temporal Convolutional Networks
- URL: http://arxiv.org/abs/2205.15492v1
- Date: Tue, 31 May 2022 01:14:38 GMT
- Title: Sepsis Prediction with Temporal Convolutional Networks
- Authors: Xing Wang, Yuntian He
- Abstract summary: Our model is trained on data extracted from MIMIC III database.
Benchmarked with several machine learning models, our model is superior on this binary classification task.
- Score: 6.161443205488337
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We design and implement a temporal convolutional network model to predict
sepsis onset. Our model is trained on data extracted from MIMIC III database,
based on a retrospective analysis of patients admitted to intensive care unit
who did not fall under the definition of sepsis at the time of admission.
Benchmarked with several machine learning models, our model is superior on this
binary classification task, demonstrates the prediction power of convolutional
networks for temporal patterns, also shows the significant impact of having
longer look back time on sepsis prediction.
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