TY - JOUR
T1 - Prediction of weaning failure using time-frequency analysis of electrocardiographic and respiration flow signals
AU - Acevedo, Hernando González
AU - Giraldo, Beatriz F.
A2 - Rodríguez-Sotelo, José Luis
A2 - Arizmendi, Carlos
N1 - Publisher Copyright:
© 2025 The Authors
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PY - 2025/10
Y1 - 2025/10
N2 - Acute respiratory distress syndrome often necessitates prolonged periods of mechanical ventilation for patient management. Therefore, it is crucial to make appropriate decisions regarding extubation to prevent potential harm to patients and avoid the associated risks of reintubation and extubation cycles. One atypical form of acute respiratory distress syndrome is associated with COVID-19, impacting patients admitted to the intensive care unit. This study presents the design of two classifiers: the first employs machine learning techniques, while the second utilizes a convolutional neural network. Their purpose is to assess whether a patient can safely be disconnected from a mechanical ventilator following a spontaneous breathing test. The machine learning algorithm uses descriptors derived from the variability of time-frequency representations computed with the non-uniform fast Fourier transform. These representations are applied to time series data, which consist of markers extracted from the electrocardiographic and respiratory flow signals sourced from the Weandb database. The input image for the convolutional neural network is formed by combining the spectrum of the RR signal and the spectrum of two parameters recorded from the respiratory flow signal, calculated using non-uniform fast Fourier transform. Three pre-trained network architectures are analyzed: Googlenet, Alexnet and Resnet-18. The best model is obtained with a CNN with the Resnet-18 architecture, presenting an accuracy of 90.1 ± 4.3%.
AB - Acute respiratory distress syndrome often necessitates prolonged periods of mechanical ventilation for patient management. Therefore, it is crucial to make appropriate decisions regarding extubation to prevent potential harm to patients and avoid the associated risks of reintubation and extubation cycles. One atypical form of acute respiratory distress syndrome is associated with COVID-19, impacting patients admitted to the intensive care unit. This study presents the design of two classifiers: the first employs machine learning techniques, while the second utilizes a convolutional neural network. Their purpose is to assess whether a patient can safely be disconnected from a mechanical ventilator following a spontaneous breathing test. The machine learning algorithm uses descriptors derived from the variability of time-frequency representations computed with the non-uniform fast Fourier transform. These representations are applied to time series data, which consist of markers extracted from the electrocardiographic and respiratory flow signals sourced from the Weandb database. The input image for the convolutional neural network is formed by combining the spectrum of the RR signal and the spectrum of two parameters recorded from the respiratory flow signal, calculated using non-uniform fast Fourier transform. Three pre-trained network architectures are analyzed: Googlenet, Alexnet and Resnet-18. The best model is obtained with a CNN with the Resnet-18 architecture, presenting an accuracy of 90.1 ± 4.3%.
KW - Convolutional neural network
KW - Mechanical ventilation
KW - Non-uniform fast Fourier transform
KW - Weaning
KW - Mechanical ventilation
KW - Non-uniform fast Fourier transform
KW - Weaning
KW - Convolutional neural network
UR - http://www.scopus.com/inward/record.url?scp=105002043184&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/13767cf9-ff4b-39fd-99b0-94bf03b6f9b5/
U2 - 10.1016/j.bspc.2025.107872
DO - 10.1016/j.bspc.2025.107872
M3 - Artículo Científico
AN - SCOPUS:105002043184
SN - 1746-8094
VL - 108
SP - 107872
JO - Biomedical Signal Processing and Control
JF - Biomedical Signal Processing and Control
M1 - 107872
ER -