TY - JOUR
T1 - Artificial Intelligence-Driven Prognosis of Respiratory Mechanics
T2 - Forecasting Tissue Hysteresivity Using Long Short-Term Memory and Continuous Sensor Data
AU - Othman, Ghada Ben
AU - Ynineb, Amani R.
AU - Yumuk, Erhan
AU - Farbakhsh, Hamed
AU - Muresan, Cristina
AU - Birs, Isabela Roxana
AU - De Raeve, Alexandra
AU - Copot, Cosmin
AU - Ionescu, Clara M.
AU - Copot, Dana
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/9
Y1 - 2024/9
N2 - Tissue hysteresivity is an important marker for determining the onset and progression of respiratory diseases, calculated from forced oscillation lung function test data. This study aims to reduce the number and duration of required measurements by combining multivariate data from various sensing devices. We propose using the Forced Oscillation Technique (FOT) lung function test in both a low-frequency prototype and the commercial RESMON device, combined with continuous monitoring from the Equivital (EQV) LifeMonitor and processed by artificial intelligence (AI) algorithms. While AI and deep learning have been employed in various aspects of respiratory system analysis, such as predicting lung tissue displacement and respiratory failure, the prediction or forecasting of tissue hysteresivity remains largely unexplored in the literature. In this work, the Long Short-Term Memory (LSTM) model is used in two ways: (1) to estimate the hysteresivity coefficient (Formula presented.) using heart rate (HR) data collected continuously by the EQV sensor, and (2) to forecast (Formula presented.) values by first predicting the heart rate from electrocardiogram (ECG) data. Our methodology involves a rigorous two-hour measurement protocol, with synchronized data collection from the EQV, FOT, and RESMON devices. Our results demonstrate that LSTM networks can accurately estimate the tissue hysteresivity parameter (Formula presented.), achieving an (Formula presented.) of 0.851 and a mean squared error (MSE) of 0.296 for estimation, and forecast (Formula presented.) with an (Formula presented.) of 0.883 and an MSE of 0.528, while significantly reducing the number of required measurements by a factor of three (i.e., from ten to three) for the patient. We conclude that our novel approach minimizes patient effort by reducing the measurement time and the overall ambulatory time and costs while highlighting the potential of artificial intelligence methods in respiratory monitoring.
AB - Tissue hysteresivity is an important marker for determining the onset and progression of respiratory diseases, calculated from forced oscillation lung function test data. This study aims to reduce the number and duration of required measurements by combining multivariate data from various sensing devices. We propose using the Forced Oscillation Technique (FOT) lung function test in both a low-frequency prototype and the commercial RESMON device, combined with continuous monitoring from the Equivital (EQV) LifeMonitor and processed by artificial intelligence (AI) algorithms. While AI and deep learning have been employed in various aspects of respiratory system analysis, such as predicting lung tissue displacement and respiratory failure, the prediction or forecasting of tissue hysteresivity remains largely unexplored in the literature. In this work, the Long Short-Term Memory (LSTM) model is used in two ways: (1) to estimate the hysteresivity coefficient (Formula presented.) using heart rate (HR) data collected continuously by the EQV sensor, and (2) to forecast (Formula presented.) values by first predicting the heart rate from electrocardiogram (ECG) data. Our methodology involves a rigorous two-hour measurement protocol, with synchronized data collection from the EQV, FOT, and RESMON devices. Our results demonstrate that LSTM networks can accurately estimate the tissue hysteresivity parameter (Formula presented.), achieving an (Formula presented.) of 0.851 and a mean squared error (MSE) of 0.296 for estimation, and forecast (Formula presented.) with an (Formula presented.) of 0.883 and an MSE of 0.528, while significantly reducing the number of required measurements by a factor of three (i.e., from ten to three) for the patient. We conclude that our novel approach minimizes patient effort by reducing the measurement time and the overall ambulatory time and costs while highlighting the potential of artificial intelligence methods in respiratory monitoring.
KW - artificial intelligence
KW - continuous monitoring
KW - electrocardiogram
KW - estimation
KW - long short-term memory (LSTM)
KW - low-frequency oscillation technique
KW - lung function test
KW - respiratory mechanics
KW - time-series forecasting
UR - http://www.scopus.com/inward/record.url?scp=85203873576&partnerID=8YFLogxK
U2 - 10.3390/s24175544
DO - 10.3390/s24175544
M3 - Article
AN - SCOPUS:85203873576
SN - 1424-8220
VL - 24
JO - Sensors
JF - Sensors
IS - 17
M1 - 5544
ER -