Early detection of sepsis utilizing deep learning on electronic health record event sequences
Simon Meyer Lauritsen, Mads Ellersgaard Kal{\o}r, Emil Lund, Kongsgaard, Katrine Meyer Lauritsen, Marianne Johansson J{\o}rgensen, Jeppe, Lange, Bo Thiesson

TL;DR
This study develops a deep learning model using electronic health record sequences to detect sepsis early across multiple hospitals, improving timeliness and applicability beyond intensive care units.
Contribution
It introduces a novel deep learning approach combining CNN and LSTM to detect sepsis from raw event data, overcoming limitations of previous models.
Findings
AUROC 0.856 three hours before sepsis onset
AUROC 0.756 twenty-four hours before sepsis onset
Effective early detection across diverse hospital settings
Abstract
The timeliness of detection of a sepsis event in progress is a crucial factor in the outcome for the patient. Machine learning models built from data in electronic health records can be used as an effective tool for improving this timeliness, but so far the potential for clinical implementations has been largely limited to studies in intensive care units. This study will employ a richer data set that will expand the applicability of these models beyond intensive care units. Furthermore, we will circumvent several important limitations that have been found in the literature: 1) Models are evaluated shortly before sepsis onset without considering interventions already initiated. 2) Machine learning models are built on a restricted set of clinical parameters, which are not necessarily measured in all departments. 3) Model performance is limited by current knowledge of sepsis, as feature…
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Taxonomy
TopicsSepsis Diagnosis and Treatment · Machine Learning in Healthcare · Time Series Analysis and Forecasting
