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| Document Details: Diagnostic Quality Driven Physiological ... | |
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Diagnostic Quality Driven Physiological Data Collection for Personal Healthcare In 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC) , 0 pages , August 2008. NESL Technical Report #: TR-UCLA-NESL-200806-01 | |
| ABSTRACT | |
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We believe that each individual is unique, and that it is necessary for diagnosis purpose to have a distinctive combination of signals and data features that fits the personal health status. It is essential to develop mechanisms for reducing the amount of data that needs to be transferred (to mitigate the troublesome periodically recharging of a device) while maintaining diagnostic accuracy. Thus, the system should not uniformly compress the collected physiological data, but compress data in a personalized fashion that preserves the “important” signal features for each individual such that it is enough to make the diagnosis with a required high confidence level. We present a diagnostic quality driven mechanism for remote ECG monitoring, which enables a notation of priorities encoded into the wave segments. The priority is specified by the diagnosis engine or medical experts and is dynamic and individual dependent. The system pre-processes the collected physiological information according to the assigned priority before delivering to the backend server. We demonstrate that the proposed approach provides accurate inference results while effectively compressing the data. | |
| AUTHORS | |
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• David Jea |
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| RELATED PROJECTS | |
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• FitSens : Future Individual Telehealth Systems with Embedded Networked Sensing |
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| TYPE | |
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Conference Paper | |
© 2009 by Networked & Embedded Systems Laboratory •
University of California, Los Angeles
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