The Early Detection of Diabetes Mellitus (DM) Using Fuzzy Hierarchical Model

作者: Rian Budi Lukmanto , E. Irwansyah

DOI: 10.1016/J.PROCS.2015.07.571

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摘要: Abstract In 2013 the number of patients with Diabetes Mellitus (DM) in world has reached 382 million. It is estimated that preva- lence will increase 55% 2035 1 . As a form our efforts to contribute prevention this phenomenon we propose an application computational intelligence by using fuzzy hierarchical model ability perform early detection against DM. order achieve success method, cooperate one eastern Jakarta hospital laboratory Indonesia as facilitator data need during research and conducting interviews two medical doctors at same knowledge acquisition process. The architecture proposed method designed based on how doctor concluded related indication someone potential DM, which been adjusted have obtained from authorities laboratory. evaluation do, did comparison decision equipped laboratory, result 87.46% 311 relevant equal doctor's statement. interpreting conclusions get hospitals us, results showed meet needs effectiveness efficiency performing DM can help people knowing since early.

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