DocumentCode :
1759602
Title :
Error Correction Algorithm for High Accuracy Bio-Impedance Measurement in Wearable Healthcare Applications
Author :
Kubendran, Rajkumar ; Lee, Sang-Rim ; Mitra, Subhasish ; Yazicioglu, Refet Firat
Author_Institution :
Qualcomm Technol. Inc., Boxborough, MA, USA
Volume :
8
Issue :
2
fYear :
2014
fDate :
41730
Firstpage :
196
Lastpage :
205
Abstract :
Implantable and ambulatory measurement of physiological signals such as Bio-impedance using miniature biomedical devices needs careful tradeoff between limited power budget, measurement accuracy and complexity of implementation. This paper addresses this tradeoff through an extensive analysis of different stimulation and demodulation techniques for accurate Bio-impedance measurement. Three cases are considered for rigorous analysis of a generic impedance model, with multiple poles, which is stimulated using a square/sinusoidal current and demodulated using square/sinusoidal clock. For each case, the error in determining pole parameters (resistance and capacitance) is derived and compared. An error correction algorithm is proposed for square wave demodulation which reduces the peak estimation error from 9.3% to 1.3% for a simple tissue model. Simulation results in Matlab using ideal RC values show an average accuracy of for single pole and for two pole RC networks. Measurements using ideal components for a single pole model gives an overall and readings from saline phantom solution (primarily resistive) gives an . A Figure of Merit is derived based on ability to accurately resolve multiple poles in unknown impedance with minimal measurement points per decade, for given frequency range and supply current budget. This analysis is used to arrive at an optimal tradeoff between accuracy and power. Results indicate that the algorithm is generic and can be used for any application that involves resolving poles of an unknown impedance. It can be implemented as a post-processing technique for error correction or even incorporated into wearable signal monitoring ICs.
Keywords :
bioelectric potentials; biological tissues; biomedical equipment; biomedical measurement; capacitance measurement; demodulation; electric resistance measurement; error correction; health care; mathematics computing; medical signal processing; phantoms; Matlab; RC networks; RC values; ambulatory measurement; capacitance; demodulation techniques; error correction algorithm; figure-of-merit; generic impedance model; high accuracy bioimpedance measurement; implantable measurement; implementation complexity; limited power budget; measurement accuracy; miniature biomedical devices; minimal measurement points; multiple poles; peak estimation error; physiological signals; pole parameters; post-processing technique; resistance; rigorous analysis; saline phantom solution; simple tissue model; square wave demodulation; square-sinusoidal clock; square-sinusoidal current; unknown impedance; wearable healthcare applications; wearable signal monitoring IC; Biomedical measurement; Demodulation; Frequency measurement; Impedance; Impedance measurement; Measurement uncertainty; Voltage measurement; Bio-impedance; biomedical devices; error correction; figure of merit;
fLanguage :
English
Journal_Title :
Biomedical Circuits and Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1932-4545
Type :
jour
DOI :
10.1109/TBCAS.2014.2310895
Filename :
6805668
Link To Document :
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