Fuzzy Inference System for The Risks Pregnancy Detection

Khairul Fuady, Eva Zulisa
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引用次数: 0

Abstract

Abstract One of the causes of the high Maternal Mortality Rate (MMR) and Infant Mortality Rate (IMR) in Aceh is the delay in handling cases of at risk pregnancies due to the lack of availability of easily accessible and well-documented information about conditions during pregnancy. So far, manual reporting through data recapitulation report was difficult to access quickly if there are cases maternal and infant mortality. Fuzzy logic can be used as an alternative for classifying pregnant women at risk with supporting data when examining pregnant women. Data related to pregnancy checks will be analyzed with a Fuzzy Inference System (FIS) to obtain information on pregnancy risks. The results of this study indicate that FIS can determine the risk of pregnancy more detailed range than using a manual scoring card. The results of the defuzzyfication value will describe the final decision related to pregnancy risk which can be categorized into low risk, high risk and very high risk. The problem solving steps in this study can be used for algorithms in the development of application programming for risky pregnancy early detection systems based on programming languages. ​​
妊娠风险检测的模糊推理系统
亚齐省产妇死亡率(MMR)和婴儿死亡率(IMR)高的原因之一是由于缺乏关于怀孕期间状况的易于获取和记录良好的信息,导致处理高危妊娠病例的延误。到目前为止,如果有产妇和婴儿死亡病例,很难通过数据重述报告进行手工报告。在检查孕妇时,模糊逻辑可以作为一种替代方法,利用支持数据对处于危险中的孕妇进行分类。与妊娠检查相关的数据将通过模糊推理系统(FIS)进行分析,以获取妊娠风险信息。本研究结果表明,与人工计分卡相比,FIS可以更详细地确定妊娠风险。解模糊值的结果将描述与妊娠风险相关的最终决策,可分为低风险、高风险和极高风险。本研究的问题求解步骤可用于基于编程语言的高危妊娠早期检测系统应用程序编程的算法开发。​​
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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