Background: Non-invasive assessment of respiratory drive and effort in spontaneously breathing ARDS patients is challenging, yet clinically relevant. We explored whether hierarchical clustering applied to electrical impedance tomography (EIT– a radiation-free non-invasive lung imaging technique) identifies ARDS sub-phenotypes with increased drive and effort. Results: Thirty intubated patients with ARDS on assisted mechanical ventilation were monitored by EIT and esophageal pressure during a decremental positive end-expiratory pressure (PEEP) trial. A comprehensive EIT assessment was made (computed variables n = 180) during tidal breathing at different PEEP levels. Agglomerative nesting was applied to scaled data distances. Three clusters of ARDS were identified: inhomogeneous ventilation, unmatched V’/Q, and mismatched V’/Q. The unmatched V’/Q cluster had the highest respiratory drive (p = 0.045) and effort (p = 0.021) at lower PEEP, and experienced longer length of ICU stay (p = 0.019). Conclusions: Higher PEEP levels reduced drive of the unmatched V’/Q cluster, mitigating the physiological differences. Clustering approaches to EIT data identify physiologically and clinically relevant sub-phenotypes of ARDS.

Omics approach to chest electrical impedance tomography reveals physiological cluster of ARDS characterised by increased respiratory drive and effort / T. Mauri, M. Leali, E. Spinelli, G. Scaramuzzo, M. Antonelli, D.L. Grieco, S. Spadaro, G. Grasselli. - In: ANNALS OF INTENSIVE CARE. - ISSN 2110-5820. - 15:1(2025), pp. 90.1-90.10. [10.1186/s13613-025-01514-3]

Omics approach to chest electrical impedance tomography reveals physiological cluster of ARDS characterised by increased respiratory drive and effort

T. Mauri
Primo
;
M. Leali;G. Grasselli
Ultimo
2025

Abstract

Background: Non-invasive assessment of respiratory drive and effort in spontaneously breathing ARDS patients is challenging, yet clinically relevant. We explored whether hierarchical clustering applied to electrical impedance tomography (EIT– a radiation-free non-invasive lung imaging technique) identifies ARDS sub-phenotypes with increased drive and effort. Results: Thirty intubated patients with ARDS on assisted mechanical ventilation were monitored by EIT and esophageal pressure during a decremental positive end-expiratory pressure (PEEP) trial. A comprehensive EIT assessment was made (computed variables n = 180) during tidal breathing at different PEEP levels. Agglomerative nesting was applied to scaled data distances. Three clusters of ARDS were identified: inhomogeneous ventilation, unmatched V’/Q, and mismatched V’/Q. The unmatched V’/Q cluster had the highest respiratory drive (p = 0.045) and effort (p = 0.021) at lower PEEP, and experienced longer length of ICU stay (p = 0.019). Conclusions: Higher PEEP levels reduced drive of the unmatched V’/Q cluster, mitigating the physiological differences. Clustering approaches to EIT data identify physiologically and clinically relevant sub-phenotypes of ARDS.
Agglomerative nesting; ARDS; Clustering; EIT; Electrical impedance tomography; Esophageal pressure; Hierarchical clustering; Omics; Respiratory drive; V’/Q
Settore MEDS-23/A - Anestesiologia
2025
8-lug-2025
Article (author)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1182438
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