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http://dx.doi.org/10.5762/KAIS.2012.13.11.5442

The Analysis of affection on electromagnetic wave for U-healthcare Remote Diagnosis System  

Jeoung, Eui-Bung (Dept. of Auto & Mechanical Engineering, Howon University)
Lee, You-Yub (Dept. of Auto & Mechanical Engineering, Howon University)
Song, Je-Ho (Dept. of IT applied system Engineering, Chonbuk National University)
Publication Information
Journal of the Korea Academia-Industrial cooperation Society / v.13, no.11, 2012 , pp. 5442-5446 More about this Journal
Abstract
A u-healthcare remote diagnosis system is proposed for chronic disease and medical vulnerable groups check the health systematically and support for the most optimal environment to improve the quality of life. The u-healthcare remote diagnosis system using wireless measure the thoracic sound in the chest. And this is demonstrated that the system using radio frequency is not be affected by the electromagnetic wave with the use of an experiment and by confirming that this u-healthcare remote diagnosis system can not affect the doctors and the patients.
Keywords
U-healthcare; Diagnosis; Lung sound; Radio frequency; Patients;
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