TY - JOUR
T1 - Respiratory Rate Extraction from Neonatal Near-Infrared Spectroscopy Signals
AU - Hakimi, Naser
AU - Shahbakhti, Mohammad
AU - Horschig, Jörn M
AU - Alderliesten, Thomas
AU - Van Bel, Frank
AU - Colier, Willy N J M
AU - Dudink, Jeroen
N1 - Funding Information:
This project received funding from the European Union’s Horizon 2020 Framework Program under grant agreements No. 813843 and No. 813234. This study was also funded by the European Fund for Regional Development (EFRO) and the Dutch provinces Gelderland and Overijssel (PROJ-00872).
Publisher Copyright:
© 2023 by the authors.
PY - 2023/5/5
Y1 - 2023/5/5
N2 -
Background: Near-infrared spectroscopy (NIRS) relative concentration signals contain 'noise' from physiological processes such as respiration and heart rate. Simultaneous assessment of NIRS and respiratory rate (RR) using a single sensor would facilitate a perfectly time-synced assessment of (cerebral) physiology. Our aim was to extract respiratory rate from cerebral NIRS intensity signals in neonates admitted to a neonatal intensive care unit (NICU).
Methods: A novel algorithm, NRR (NIRS RR), is developed for extracting RR from NIRS signals recorded from critically ill neonates. In total, 19 measurements were recorded from ten neonates admitted to the NICU with a gestational age and birth weight of 38 ± 5 weeks and 3092 ± 990 g, respectively. We synchronously recorded NIRS and reference RR signals sampled at 100 Hz and 0.5 Hz, respectively. The performance of the NRR algorithm is assessed in terms of the agreement and linear correlation between the reference and extracted RRs, and it is compared statistically with that of two existing methods.
Results: The NRR algorithm showed a mean error of 1.1 breaths per minute (BPM), a root mean square error of 3.8 BPM, and Bland-Altman limits of agreement of 6.7 BPM averaged over all measurements. In addition, a linear correlation of 84.5% (
p < 0.01) was achieved between the reference and extracted RRs. The statistical analyses confirmed the significant (
p < 0.05) outperformance of the NRR algorithm with respect to the existing methods.
Conclusions: We showed the possibility of extracting RR from neonatal NIRS in an intensive care environment, which showed high correspondence with the reference RR recorded. Adding the NRR algorithm to a NIRS system provides the opportunity to record synchronously different physiological sources of information about cerebral perfusion and respiration by a single monitoring system. This allows for a concurrent integrated analysis of the impact of breathing (including apnea) on cerebral hemodynamics.
AB -
Background: Near-infrared spectroscopy (NIRS) relative concentration signals contain 'noise' from physiological processes such as respiration and heart rate. Simultaneous assessment of NIRS and respiratory rate (RR) using a single sensor would facilitate a perfectly time-synced assessment of (cerebral) physiology. Our aim was to extract respiratory rate from cerebral NIRS intensity signals in neonates admitted to a neonatal intensive care unit (NICU).
Methods: A novel algorithm, NRR (NIRS RR), is developed for extracting RR from NIRS signals recorded from critically ill neonates. In total, 19 measurements were recorded from ten neonates admitted to the NICU with a gestational age and birth weight of 38 ± 5 weeks and 3092 ± 990 g, respectively. We synchronously recorded NIRS and reference RR signals sampled at 100 Hz and 0.5 Hz, respectively. The performance of the NRR algorithm is assessed in terms of the agreement and linear correlation between the reference and extracted RRs, and it is compared statistically with that of two existing methods.
Results: The NRR algorithm showed a mean error of 1.1 breaths per minute (BPM), a root mean square error of 3.8 BPM, and Bland-Altman limits of agreement of 6.7 BPM averaged over all measurements. In addition, a linear correlation of 84.5% (
p < 0.01) was achieved between the reference and extracted RRs. The statistical analyses confirmed the significant (
p < 0.05) outperformance of the NRR algorithm with respect to the existing methods.
Conclusions: We showed the possibility of extracting RR from neonatal NIRS in an intensive care environment, which showed high correspondence with the reference RR recorded. Adding the NRR algorithm to a NIRS system provides the opportunity to record synchronously different physiological sources of information about cerebral perfusion and respiration by a single monitoring system. This allows for a concurrent integrated analysis of the impact of breathing (including apnea) on cerebral hemodynamics.
KW - cerebral oxygenation
KW - near-infrared spectroscopy
KW - neonates
KW - respiratory rate
KW - signal quality assessment
UR - http://www.scopus.com/inward/record.url?scp=85159301073&partnerID=8YFLogxK
U2 - 10.3390/s23094487
DO - 10.3390/s23094487
M3 - Article
C2 - 37177691
SN - 1424-8220
VL - 23
JO - Sensors (Basel, Switzerland)
JF - Sensors (Basel, Switzerland)
IS - 9
M1 - 4487
ER -