Title :
A Micro-Power EEG Acquisition SoC With Integrated Feature Extraction Processor for a Chronic Seizure Detection System
Author :
Verma, Naveen ; Shoeb, Ali ; Bohorquez, Jose ; Dawson, Joel ; Guttag, John ; Chandrakasan, Anantha P.
Author_Institution :
Princeton Univ., Princeton, NJ, USA
fDate :
4/1/2010 12:00:00 AM
Abstract :
This paper presents a low-power SoC that performs EEG acquisition and feature extraction required for continuous detection of seizure onset in epilepsy patients. The SoC corresponds to one EEG channel, and, depending on the patient, up to 18 channels may be worn to detect seizures as part of a chronic treatment system. The SoC integrates an instrumentation amplifier, ADC, and digital processor that streams features-vectors to a central device where seizure detection is performed via a machine-learning classifier. The instrumentation-amplifier uses chopper-stabilization in a topology that achieves high input-impedance and rejects large electrode-offsets while operating at 1 V; the ADC employs power-gating for low energy-per-conversion while using static-biasing for comparator precision; the EEG feature extraction processor employs low-power hardware whose parameters are determined through validation via patient data. The integration of sensing and local processing lowers system power by 14à by reducing the rate of wireless EEG data transmission. Feature vectors are derived at a rate of 0.5 Hz, and the complete one-channel SoC operates from a 1 V supply, consuming 9 ¿ J per feature vector.
Keywords :
analogue-digital conversion; biomedical electronics; choppers (circuits); comparators (circuits); diseases; electroencephalography; feature extraction; instrumentation amplifiers; learning (artificial intelligence); low-power electronics; medical signal detection; medical signal processing; patient monitoring; signal classification; system-on-chip; ADC; EEG channel; chopper stabilization; chronic seizure detection system; chronic treatment system; comparator; digital processor; electrode offsets; energy-per-conversion; epilepsy; feature vector; frequency 0.5 Hz; input impedance; instrumentation amplifier; integrated feature extraction processor; low-power SoC; machine learning classifier; micro-power EEG acquisition; power gating; seizure onset continuous detection; static biasing; voltage 1 V; wireless EEG data transmission; Algorithm design and analysis; Electroencephalography; Epilepsy; Feature extraction; Hardware; Instruments; Low-noise amplifiers; Medical treatment; Topology; Wireless sensor networks; 1/f noise; algorithm design and analysis; amplifiers; biomedical equipment; brain; choppers; digital signal processing; electroencephalography; low-noise amplifiers; low-power electronics;
Journal_Title :
Solid-State Circuits, IEEE Journal of
DOI :
10.1109/JSSC.2010.2042245