We present an application of a modified Kalman-Filter (KF) framework for data fusion to the estimation of respiratory rate from multiple physiological sources which is robust to background noise. A novel index of the underlying signal quality of respiratory signals is presented and then used to modify the noise covariance matrix of the KF which discounts the effect of noisy data. The signal quality index, together with the KF innovation sequence, is also used to weight multiple independent estimates of the respiratory rate from independent KFs. The approach is evaluated both on a realistic artificial ECG model (with real additive noise) and on real data taken from 30 subjects with overnight polysomnograms, containing ECG, respiration, and p...
Abnormal respiratory rate (RR) is known to be one of the most clinically effective predictors of cat...
Respiratory rate (RR) is a key vital sign that is monitored to assess the health of patients. With t...
The respiratory rate is a vital parameter that can provide valuable information about the health con...
We present an application of a modified Kalman-Filter (KF) framework for data fusion to the estimat...
Respiratory information can be obtained from the changes in electrical impedance across the chest, t...
International audienceBreathing rate (BR) is an important physiological indicator monitored for a va...
Ce mémoire de thèse vise à proposer de nouvelles méthodes robustes pour l'estimation de la fréquence...
Breathing Rate (BR) is a key physiological parameter measured in a wide range of clinical settings. ...
The presented work in this dissertation concerns the development of approaches to estimate the breat...
This thesis investigates the feasibility of using a set of non-invasive biomedical signals to monito...
A new method for extracting respiratory signals from the electrocardiogram (ECG) is proposed. The me...
Objective: Respiratory rate (RR) estimation algorithms based on the photoplethymogram (PPG) and elec...
Respiratory rate, an important antecedent of patient deterioration, is inadequately recorded by hosp...
Breathing is an involuntary action by the human body, and irregularities in breathing suggest possib...
Over 100 algorithms have been proposed to estimate respiratory rate (RR) from the electrocardiogram ...
Abnormal respiratory rate (RR) is known to be one of the most clinically effective predictors of cat...
Respiratory rate (RR) is a key vital sign that is monitored to assess the health of patients. With t...
The respiratory rate is a vital parameter that can provide valuable information about the health con...
We present an application of a modified Kalman-Filter (KF) framework for data fusion to the estimat...
Respiratory information can be obtained from the changes in electrical impedance across the chest, t...
International audienceBreathing rate (BR) is an important physiological indicator monitored for a va...
Ce mémoire de thèse vise à proposer de nouvelles méthodes robustes pour l'estimation de la fréquence...
Breathing Rate (BR) is a key physiological parameter measured in a wide range of clinical settings. ...
The presented work in this dissertation concerns the development of approaches to estimate the breat...
This thesis investigates the feasibility of using a set of non-invasive biomedical signals to monito...
A new method for extracting respiratory signals from the electrocardiogram (ECG) is proposed. The me...
Objective: Respiratory rate (RR) estimation algorithms based on the photoplethymogram (PPG) and elec...
Respiratory rate, an important antecedent of patient deterioration, is inadequately recorded by hosp...
Breathing is an involuntary action by the human body, and irregularities in breathing suggest possib...
Over 100 algorithms have been proposed to estimate respiratory rate (RR) from the electrocardiogram ...
Abnormal respiratory rate (RR) is known to be one of the most clinically effective predictors of cat...
Respiratory rate (RR) is a key vital sign that is monitored to assess the health of patients. With t...
The respiratory rate is a vital parameter that can provide valuable information about the health con...