Title :
Non-invasive estimation of central aortic pressure from radial artery tonometry by neural networks
Author :
Varanini, M. ; Massoni, M. ; Marraccini, P. ; Kozàkovà, M. ; Djukic, G. ; Bamoshmoosh, M. ; Testa, R. ; Vittone, F. ; Palombo, C.
Author_Institution :
CNR Inst. of Clinical Physiol., Pisa, Italy
Abstract :
This study compares a neural network-based autoregressive exogenous (NNARX) model with a linear autoregressive exogenous (ARX) model in reconstructing central aortic pulse curve from peripheral arterial pulse. Invasive aortic and radial tonometry pressures were recorded in 20 patients in rest condition. A set of 10 patients (learning) was used to estimate the model parameters, the remaining 10 patients (test set) were used for validation. The estimated waveform of aortic pressure obtained by NNARX results more accurate than that estimated by linear ARX model providing a more fine reconstruction of dicrotic notch and systolic flex. Comparison of augmentation index measurement computed from NNARX and ARX reconstructed pressure signals with the reference value derived from invasive aortic waveform showed an improvement in accuracy of the NNARX measure.
Keywords :
cardiovascular system; haemodynamics; medical signal processing; neural nets; signal reconstruction; waveform analysis; aortic waveform; augmentation index measurement; central aortic pulse reconstruction; dicrotic notch; linear autoregressive exogenous model; neural network-based autoregressive exogenous model; noninvasive central aortic pressure estimation; peripheral arterial pulse; radial artery tonometry; systolic flex; waveform; Artificial intelligence; Availability; Biological neural networks; Cardiovascular system; Medical tests; Neural networks; Parameter estimation; Physiology; Pressure measurement; Testing;
Conference_Titel :
Computers in Cardiology, 2003
Print_ISBN :
0-7803-8170-X
DOI :
10.1109/CIC.2003.1291202