Flow starvation during square-flow assisted ventilation detected by supervised deep learning techniques.

Journal: Critical care (London, England)

Volume: 28

Issue: 1

Year of Publication: 2024

Affiliated Institutions:  Critical Care Department, Parc Taulí Hospital Universitari, Institut d'Investigació I Innovació Parc Taulí (IPT-CERCA),, Carrer Parc Taulí, , , Sabadell, Spain. cdeharo@tauli.cat. Centro Investigación Biomédica en Red de Enfermedades Respiratorias (CIBERES), Instituto de Salud Carlos III, Madrid, Spain. Keenan Research Center for Biomedical Science, Li Ka Shing Knowledge Institute, Unity Health Toronto, Toronto, ON, Canada. Critial Care Department, Althaia Xarxa Assistencial Universtaria de Manresa, Manresa, Spain. Critical Care Department, Hospital Británico, Buenos Aires, Argentina. Institut d'Investigació i Innovació Parc Taulí (IPT-CERCA), Sabadell, Spain. Critical Care Department, Parc Taulí Hospital Universitari, Institut d'Investigació I Innovació Parc Taulí (IPT-CERCA),, Carrer Parc Taulí, , , Sabadell, Spain. Service de Médecine Intensive-Réanimation, Hôpital de Bicêtre, DMU CORREVE, FHU SEPSIS, Groupe de Recherche Clinique CARMAS, Université Paris-Saclay, AP-HP, Le Kremlin-Bicêtre, France. Better Care, SL, Sabadell, Spain.

Abstract summary 

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.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 (ΔP), we analyzed the association between the intensity of the inspiratory effort and the airway pressure deformation.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 ΔP > 10 cmHO and 37.2% a ΔP > 15 cmHO.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.

Authors & Co-authors:  de Haro Santos-Pulpón Telías Xifra-Porxas Subirà Batlle Fernández Murias Albaiceta Fernández-Gonzalo Godoy-González Gomà Nogales Roca Pham López-Aguilar Magrans Brochard Blanch Sarlabous

Study Outcome 

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Statistics
Citations :  Georgopoulos D, Prinianakis G, Kondili E. Bedside waveforms interpretation as a tool to identify patient-ventilator asynchronies. Intensive Care Med. 2006;32(1):34–47. doi: 10.1007/s00134-005-2828-5.
Authors :  21
Identifiers
Doi : 75
SSN : 1466-609X
Study Population
Male,Female
Mesh Terms
Adult
Other Terms
Airway pressure deformation;Artificial intelligence algorithms;Asynchronies;Flow starvation;Patient–ventilator interaction
Study Design
Study Approach
Country of Study
Publication Country
England