DocumentCode :
3698592
Title :
A seizure-detection IC employing machine learning to overcome data-conversion and analog-processing non-idealities
Author :
Jintao Zhang;Liechao Huang;Zhuo Wang;Naveen Verma
Author_Institution :
Princeton University, Princeton, NJ 08544, USA
fYear :
2015
Firstpage :
1
Lastpage :
4
Abstract :
This paper presents a seizure-detection system wherein the accuracy required of the analog frontend is substantially relaxed. Typically, readout of electroencephalogram (EEG) signals would dominate the energy of such a system, due to the precision (noise, linearity) requirements. The presented system performs data conversion and analog multiplication for EEG feature extraction via simple circuits to demonstrate that feature errors can be overcome by appropriate retraining of a classification model, using a machine-learning algorithm. This precludes the need to design a high-precision frontend. The prototype, in 32nm CMOS, results in features whose RMS error normalized to their ideal values is 1.16 (i.e. errors are larger than ideal values). An ideal implementation of the seizure detector exhibits sensitivity, latency, false alarms of 5/5, 2.0 sec., 8, respectively. The feature errors degrade this to 5/5, 3.6 sec., 443, causing high false alarms; but retraining of the classification model restores this to 5/5, 3.4 sec., 4.
Keywords :
Decision support systems
Publisher :
ieee
Conference_Titel :
Custom Integrated Circuits Conference (CICC), 2015 IEEE
Type :
conf
DOI :
10.1109/CICC.2015.7338456
Filename :
7338456
Link To Document :
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