by Candelaria de
Haro, Verónica Santos-Pulpón, Irene Telías, Alba Xifra-Porxas, Carles Subirà,
Montserrat Batlle, Rafael Fernández, Gastón Murias, Guillermo M. Albaiceta, Sol
Fernández-Gonzalo, Marta Godoy-González, Gemma Gomà, Sara Nogales, Oriol Roca, Tai
Pham, Josefina López-Aguilar…
Critical Care volume 28,
Article number: 75 (2024) Published: 14
March 2024
Background
Flow starvation is a type of patient-ventilator asynchrony
that occurs when gas delivery does not fully meet the patients’ ventilatory
demand due to an insufficient airflow and/or a high inspiratory effort, and it
is usually identified by visual inspection of airway pressure waveform.
Clinical diagnosis is cumbersome and prone to underdiagnosis, being an
opportunity for artificial intelligence. Our objective is to develop a
supervised artificial intelligence algorithm for identifying airway pressure
deformation during square-flow assisted ventilation and patient-triggered
breaths.
Methods
Multicenter, observational study. Adult critically ill
patients under mechanical ventilation > 24 h on square-flow assisted
ventilation were included. As the reference, 5 intensive care experts
classified airway pressure deformation severity. Convolutional neural network
and recurrent neural network models were trained and evaluated using accuracy,
precision, recall and F1 score. In a subgroup of patients with esophageal
pressure measurement (ΔPes), we analyzed the association between the intensity
of the inspiratory effort and the airway pressure deformation.
Results
6428 breaths from 28 patients were analyzed, 42% were
classified as having normal-mild, 23% moderate, and 34% severe airway pressure
deformation. The accuracy of recurrent neural network algorithm and
convolutional neural network were 87.9% [87.6–88.3], and 86.8% [86.6–87.4],
respectively. Double triggering appeared in 8.8% of breaths, always in the
presence of severe airway pressure deformation. The subgroup analysis
demonstrated that 74.4% of breaths classified as severe airway pressure
deformation had a ΔPes > 10 cmH2O and 37.2% a ΔPes > 15 cmH2O.
Conclusions
Recurrent neural network model appears excellent to identify
airway pressure deformation due to flow starvation. It could be used as a
real-time, 24-h bedside monitoring tool to minimize unrecognized periods of
inappropriate patient-ventilator interaction.
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