LGMLMay 12, 2021

Early prediction of respiratory failure in the intensive care unit

arXiv:2105.05728v1
Originality Incremental advance
AI Analysis

This addresses the challenge of timely clinical intervention for ICU patients at risk of respiratory failure, representing an incremental improvement over existing methods.

The authors tackled the problem of predicting respiratory failure in ICU patients up to 8 hours in advance, using a machine learning system trained on over 60,000 admissions that outperformed a clinical baseline.

The development of respiratory failure is common among patients in intensive care units (ICU). Large data quantities from ICU patient monitoring systems make timely and comprehensive analysis by clinicians difficult but are ideal for automatic processing by machine learning algorithms. Early prediction of respiratory system failure could alert clinicians to patients at risk of respiratory failure and allow for early patient reassessment and treatment adjustment. We propose an early warning system that predicts moderate/severe respiratory failure up to 8 hours in advance. Our system was trained on HiRID-II, a data-set containing more than 60,000 admissions to a tertiary care ICU. An alarm is typically triggered several hours before the beginning of respiratory failure. Our system outperforms a clinical baseline mimicking traditional clinical decision-making based on pulse-oximetric oxygen saturation and the fraction of inspired oxygen. To provide model introspection and diagnostics, we developed an easy-to-use web browser-based system to explore model input data and predictions visually.

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