Detection and quantitative analysis of patient-ventilator interactions in ventilated infants by deep learning networks

被引:1
作者
Chong, David [1 ]
Belteki, Gusztav [1 ]
机构
[1] Cambridge Univ Hosp NHS Fdn Trust, Rosie Hosp, Neonatal Intens Care Unit, Cambridge, England
关键词
MECHANICAL VENTILATION; SPONTANEOUS RESPIRATION; EXPIRATION; ASYNCHRONY; ASSIST;
D O I
10.1038/s41390-024-03064-z
中图分类号
R72 [儿科学];
学科分类号
100202 ;
摘要
BACKGROUND: The study of patient-ventilator interactions (PVI) in mechanically ventilated neonates is limited by the lack of unified PVI definitions and tools to perform large scale analyses. METHODS: An observational study was conducted in 23 babies randomly selected from 170 neonates who were ventilated with SIPPV-VG, SIMV-VG or PSV-VG mode for at least 12 h. 500 breaths were randomly selected and manually annotated from each recording to train convolutional neural network (CNN) models for PVI classification. RESULTS: The average asynchrony index (AI) over all recordings was 52.5%. The most frequently occurring PVIs included expiratory work (median: 28.4%, interquartile range: 23.2-40.2%), late cycling (7.6%, 2.8-10.2%), failed triggering (4.6%, 1.2-6.2%) and late triggering (4.4%, 2.8-7.4%). Approximately 25% of breaths with a PVI had two or more PVIs occurring simultaneously. Binary CNN classifiers were developed for PVIs affecting >= 1% of all breaths (n = 7) and they achieved F1 scores of >0.9 on the test set except for early triggering where it was 0.809. CONCLUSIONS: sPVIs occur frequently in neonates undergoing conventional mechanical ventilation with a significant proportion of breaths containing multiple PVIs. We have developed computational models for seven different PVIs to facilitate automated detection and further evaluation of their clinical significance in neonates. Impact: center dot The study of patient-ventilator interactions (PVI) in mechanically ventilated neonates is limited by the lack of unified PVI definitions and tools to perform large scale analyses. center dot By adapting a recent taxonomy of PVI definitions in adults, we have manually annotated neonatal ventilator waveforms to determine prevalence and co-occurrence of neonatal PVIs. center dot We have also developed binary deep learning classifiers for common PVIs to facilitate their automatic detection and quantification.
引用
收藏
页码:418 / 426
页数:9
相关论文
共 50 条
  • [41] Prevalence and Prognosis Impact of Patient-Ventilator Asynchrony in Early Phase of Weaning according to Two Detection Methods
    Rolland-Debord, Camille
    Bureau, Come
    Poitou, Tymothee
    Belin, Lisa
    Clavel, Marc
    Perbet, Sebastien
    Terzi, Nicolas
    Kouatchet, Achille
    Similowski, Thomas
    Demoule, Alexandre
    ANESTHESIOLOGY, 2017, 127 (06) : 989 - 997
  • [42] An interpretable multi-scale lightweight network for patient-ventilator asynchrony detection during mechanical ventilation
    Chen, Dingfu
    Lin, Kangwei
    Deng, Ziheng
    Deng, Qingxu
    MEASUREMENT, 2023, 222
  • [43] Ability of ICU Health-Care Professionals to Identify Patient-Ventilator Asynchrony Using Waveform Analysis
    Ramirez, Ivan I.
    Arellano, Daniel H.
    Adasme, Rodrigo S.
    Landeros, Jose M.
    Salinas, Francisco A.
    Vargas, Alvaro G.
    Vasquez, Francisco J.
    Lobos, Ignacio A.
    Oyarzun, Magdalena L.
    Restrepo, Ruben D.
    RESPIRATORY CARE, 2017, 62 (02) : 144 - 149
  • [44] Patient-Ventilator Synchronization During Non-invasive Ventilation: A Pilot Study of an Automated Analysis System
    Letellier, Christophe
    Lujan, Manel
    Arnal, Jean-Michel
    Carlucci, Annalisa
    Chatwin, Michelle
    Ergan, Begum
    Kampelmacher, Mike
    Storre, Jan Hendrik
    Hart, Nicholas
    Gonzalez-Bermejo, Jesus
    Nava, Stefano
    FRONTIERS IN MEDICAL TECHNOLOGY, 2021, 3
  • [45] The Ability of Critical Care Physicians to Identify Patient-Ventilator Asynchrony Using Waveform Analysis: A National Survey
    Chelbi, Rym
    Thabet, Farah
    Ennouri, Emna
    Meddeb, Khaoula
    Toumi, Radhouane
    Zghidi, Marwa
    Ben Saida, Imen
    Boussarsar, Mohamed
    RESPIRATORY CARE, 2024, 69 (02) : 176 - 183
  • [46] Patient-ventilator asynchrony, impact on clinical outcomes and effectiveness of interventions: a systematic review and meta-analysis
    Kyo, Michihito
    Shimatani, Tatsutoshi
    Hosokawa, Koji
    Taito, Shunsuke
    Kataoka, Yuki
    Ohshimo, Shinichiro
    Shime, Nobuaki
    JOURNAL OF INTENSIVE CARE, 2021, 9 (01)
  • [47] Effects of dexmedetomidine and propofol on patient-ventilator interaction in difficult-to-wean, mechanically ventilated patients: a prospective, open-label, randomised, multicentre study
    Giorgio Conti
    Vito Marco Ranieri
    Roberta Costa
    Chris Garratt
    Andrew Wighton
    Giorgia Spinazzola
    Rosario Urbino
    Luciana Mascia
    Giuliano Ferrone
    Pasi Pohjanjousi
    Gabriela Ferreyra
    Massimo Antonelli
    Critical Care, 20
  • [48] Effects of dexmedetomidine and propofol on patient-ventilator interaction in difficult-to-wean, mechanically ventilated patients: a prospective, open-label, randomised, multicentre study
    Conti, Giorgio
    Ranieri, Vito Marco
    Costa, Roberta
    Garratt, Chris
    Wighton, Andrew
    Spinazzola, Giorgia
    Urbino, Rosario
    Mascia, Luciana
    Ferrone, Giuliano
    Pohjanjousi, Pasi
    Ferreyra, Gabriela
    Antonelli, Massimo
    CRITICAL CARE, 2016, 20
  • [49] Can visual inspection of the electrical activity of the diaphragm improve the detection of patient-ventilator asynchronies by pediatric critical care physicians?
    Di Nardo, Matteo
    Lonero, Margherita
    Staffieri, Francesco
    Di Mussi, Rosa
    Murgolo, Francesco
    Lorusso, Pantaleo
    Pham, Tai
    Picardo, Sergio G.
    Perrotta, Daniela
    Cecchetti, Corrado
    Rava, Lucilla
    Grasso, Salvatore
    MINERVA ANESTESIOLOGICA, 2021, 87 (03) : 319 - 324
  • [50] A New Tool to Assess Patient-Ventilator Synchrony in Preterm Infants Receiving Non-Invasive Ventilation: A Randomized Crossover Pilot Study
    Cresi, Francesco
    Maggiora, Elena
    Rubino, Carlotta
    Ferroglio, Mattia
    Ruzzante, Elena
    Piga, Enrico
    Giraudo, Isaac
    Limone, Marco
    Terrin, Gianluca
    Coscia, Alessandra
    NEONATOLOGY, 2025,