Proceeding of the 11th World Congress on Intelligent Control and Automation 2014
DOI: 10.1109/wcica.2014.7052736
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Sensor abnormality detection based on global prediction model for type I diabetes

Abstract: Instead of self-monitoring of blood glucose which is in general only taken four times per day, continuous glucose monitoring (CGM) can provide real-time measurements of glucose levels more frequently. However, for successful clinical use, it is important to make sure that the sensor is running normally. Unfortunately, sensor abnormality has not been well analyzed and detected online although it is a very popular problem in real case and may result in unreliable CGM measurements. In the present work, a sensor a… Show more

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