IMPLEMENTASI METODE PEMBOBOTAN BERBASIS ATURAN DAN METODE PROFILE MATCHING PADA SISTEM PAKAR MEDIS UNTUK PREDIKSI RISIKO HIPERTENSI

A. Wantoro, Admi Syarif, Khairunissa Berawi, Kurnia Muludi, S. Sulistiyanti, Sutyarso Sutyarso
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Abstract

Cardiovascular is a disease that often causes death. One of the cardiovascular diseases that often cause death is the risk of Hipertensi. The highest risk factors for premature death and disability in the world are caused by smoking habits, high systolic blood pressure, and increased blood sugar levels. This death factor is because people with Hipertensi generally do not experience any symptoms until their blood pressure is too high which can cause death. Efforts that can be made are by utilizing information technology in the form of a medical expert system to Kelasify the risk of Hipertensi. This study aims to develop a medical expert system in a different way using rule-based weighting methods and profile matching. The weighting method is used to determine the risk weight based on patient variables, while the profile matching method is used to calculate the risk Kelasification based on the core factor and secondary factor variables on the risk of Hipertensi. System evaluation is carried out by comparing asset data taken from the Pima Indian Hipertensi Data (NHANES) with results from the system. The results of the comparison show that the accuracy of the proposed system is 96.67%. The proposed system is also compared with other Kelasification methods such as decision tree, Random Tree, Decision Stump, KNN, Naïve BaYa, Deep Learning, and Rule Induction. Based on the comparison results, the proposed system has a better level of accuracy, therefore the system developed can be used to Kelasify risks for other types of diseases.
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采用基于规则和剖析方法的隐蔽方法,以预测高血压风险为基础
心血管疾病是一种经常导致死亡的疾病。高血压是经常导致死亡的心血管疾病之一。世界上导致过早死亡和残疾的最高风险因素是由吸烟习惯、高收缩压和血糖水平升高引起的。这种死亡因素是因为患有高血压的人通常不会出现任何症状,直到他们的血压过高而导致死亡。可以采取的措施是利用医疗专家系统形式的信息技术来降低Hipertensi的风险。本研究旨在利用基于规则的加权方法和轮廓匹配,以不同的方式开发医学专家系统。采用加权法根据患者变量确定风险权重,采用剖面匹配法根据Hipertensi风险的核心因素和次要因素变量计算风险克拉化。通过比较从Pima Indian Hipertensi data (NHANES)获取的资产数据与系统的结果来进行系统评估。对比结果表明,该系统的准确率为96.67%。该系统还比较了其他的Kelasification方法,如决策树、随机树、决策树桩、KNN、Naïve BaYa、深度学习和规则归纳。根据比较结果,所提出的系统具有更好的准确性,因此所开发的系统可用于其他类型疾病的风险Kelasify。
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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