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Respiratory Volume Monitoring: A Machine-Learning Approach to the Non-Invasive Prediction of Tidal Volume and Minute Ventilation

Hurtado, Daniel E; Chávez, Javier A P; Mansilla, Roberto; Lopez, Roberto; Abusleme, Angel

Authors

Daniel E Hurtado

Javier A P Chávez

Roberto Lopez

Angel Abusleme



Abstract

Continuous monitoring of ventilatory parameters such as tidal volume (TV) and minute ventilation (MV) has shown to be effective in the prevention of respiratory compromise events in hospitalized patients. However, the non-invasive estimation of respiratory volume in non-intubated patients remains an outstanding challenge. In this work, we present a novel approach to respiratory volume monitoring (RVM) that continuously predicts TV and MV in normal subjects. Respiratory flow in 19 volunteers under spontaneous breathing was recorded using respiratory inductance plethysmography and a temperature-based wearable sensor. Temperature signals were processed to identify features such as temperature amplitude and mean value, among others. The feature datasets were then used to train and validate three machine-learning (ML) algorithms for the prediction of respiratory volume based on temperature-related features. A model based on Random-Forest regression resulted in the lowest root mean-square error and was subsequently chosen to predict ventilatory parameters on subject test data not used in the construction of the model. Our predictions achieve a bias (mean error) in TV and MV of 16.04 mL and 0.19 L/min, respectively, which compare well with performance metrics reported in commercially-available RVM systems based on electrical impedance. Our results show that the combination of novel respiratory temperature sensors and machine-learning algorithms can deliver accurate and continuous estimates of TV and MV in healthy subjects.

Journal Article Type Article
Acceptance Date Dec 11, 2020
Online Publication Date Dec 17, 2020
Publication Date 2020
Deposit Date Jul 9, 2024
Publicly Available Date Jul 18, 2024
Journal IEEE Access
Electronic ISSN 2169-3536
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Not Peer Reviewed
Volume 8
Pages 227936-227944
DOI https://doi.org/10.1109/ACCESS.2020.3045603
Keywords Hypoventilation; machine learning; respiratory monitoring; ventilatory parameters
Public URL https://nottingham-repository.worktribe.com/output/37148119
Publisher URL https://ieeexplore.ieee.org/document/9296762

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