Title of article :
Non-invasive estimate of blood glucose and blood pressure from a photoplethysmograph by means of machine learning techniques
Author/Authors :
Monte-Moreno، نويسنده , , Enric، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Objective
ork presents a system for a simultaneous non-invasive estimate of the blood glucose level (BGL) and the systolic (SBP) and diastolic (DBP) blood pressure, using a photoplethysmograph (PPG) and machine learning techniques. The method is independent of the person whose values are being measured and does not need calibration over time or subjects.
ology
chitecture of the system consists of a photoplethysmograph sensor, an activity detection module, a signal processing module that extracts features from the PPG waveform, and a machine learning algorithm that estimates the SBP, DBP and BGL values. The idea that underlies the system is that there is functional relationship between the shape of the PPG waveform and the blood pressure and glucose levels.
s
cribed in this paper we tested this method on 410 individuals without performing any personalized calibration. The results were computed after cross validation. The machine learning techniques tested were: ridge linear regression, a multilayer perceptron neural network, support vector machines and random forests. The best results were obtained with the random forest technique. In the case of blood pressure, the resulting coefficients of determination for reference vs. prediction were R SBP 2 = 0.91 , R DBP 2 = 0.89 , and R BGL 2 = 0.90 . For the glucose estimation, distribution of the points on a Clarke error grid placed 87.7% of points in zone A, 10.3% in zone B, and 1.9% in zone D. Blood pressure values complied with the grade B protocol of the British Hypertension society.
sion
ective system for estimate of blood glucose and blood pressure from a photoplethysmograph is presented. The main advantage of the system is that for clinical use it complies with the grade B protocol of the British Hypertension society for the blood pressure and only in 1.9% of the cases did not detect hypoglycemia or hyperglycemia.
Keywords :
Machine Learning , Photoplethysmography , Blood glucose estimate , Blood pressure estimate , Noninvasive measurement
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine