NOGUEIRA, KEITH,ENGEL, TALY G.,GROSMAN, BENYAMIN,LI, XIAOLONG,LIANG, BRADLEY C.,SHAH, RAJIV,LIU, MIKE C.,TSAI, ANDY Y.,VARSAVSKY, ANDREA,NISHIDA, JEFFREY
申请号:
CA3008640
公开号:
CA3008640A1
申请日:
2016.07.22
申请国别(地区):
CA
年份:
2017
代理人:
摘要:
A method for retrospective calibration of a glucose sensor uses stored values of measured working electrode current (Isig) to calculate a final sensor glucose (SG) value retrospectively. The Isig values may be preprocessed, discrete wavelet decomposition applied. At least one machine learning model, such as, e.g., Genetic Programing (GP) and Regression Decision Tree (DT), may be used to calculate SG values based on the Isig values and the discrete wavelet decomposition. Other inputs may include, e.g., counter electrode voltage (Vcntr) and Electrochemical Impedance Spectroscopy (EIS) data. A plurality of machine learning models may be used to generate respective SG values, which are then fused to generate a fused SG. Fused SG values may be filtered to smooth the data, and blanked if necessary.