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Hypertension diagnosis: A comparative study using fuzzy expert system and neuro fuzzy system

机译:高血压诊断:使用模糊专家系统和神经模糊系统的比较研究

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Hypertension is called the silent killer because it has no symptoms and can cause serious trouble if left untreated for a long time. It has a major role for stroke, heart attacks, heart failure, aneurysms of the arteries, peripheral arterial diseases, chronic kidney disease etc. An intelligent and accurate diagnostic system is mandatory for better diagnosis and treatment of hypertension patients. This study develops a fuzzy expert system to diagnose the hypertension risk for different patients based on a set of symptoms and rules. Next we design a neuro fuzzy system for the same set of symptoms and rules using three different types of learning algorithms which are Levenberg-Marquardt (LM), Gradient Descent (GD) and Bayesian Resolution (BR) based learning functions. Then this paper presents a comparative study between fuzzy expert system (FES) and feed forward back propagation based neuro fuzzy system (NFS) for hypertension diagnosis. This paper also presents a comparison among the learning functions (LM, GD and BR) where Levenberg-Marquardt based learning function shows its efficiency over the others. Comparison between FES and NFS shows the effectiveness of using NFS over FES. Here, the input data set has been collected from 10 patients whose ages are between 20 and 40 years, both for male and female. The input parameters taken are age, body mass index (BMI), blood pressure (BP), and heart rate. The diagnosis process, linguistic variables and their values were modeled based on expert's knowledge and from existing database.
机译:高血压被称为无声杀手,因为它没有症状,如果长时间不治疗会引起严重的麻烦。它对中风,心脏病发作,心力衰竭,动脉瘤,周围动脉疾病,慢性肾脏疾病等具有重要作用。必须有智能,准确的诊断系统才能更好地诊断和治疗高血压患者。这项研究开发了一种模糊专家系统,可以根据一组症状和规则诊断不同患者的高血压风险。接下来,我们使用基于Levenberg-Marquardt(LM),Gradient Descent(GD)和Bayesian Resolution(BR)的三种学习功能,使用三种不同类型的学习算法为一组相同的症状和规则设计一个神经模糊系统。然后本文对模糊专家系统(FES)和基于前馈传播的神经模糊系统(NFS)进行高血压诊断进行了比较研究。本文还介绍了学习功能(LM,GD和BR)之间的比较,其中基于Levenberg-Marquardt的学习功能展示了其在其他功能上的效率。 FES和NFS之间的比较表明,与FES相比,使用NFS的有效性。在这里,已从10位年龄在20至40岁之间的男性和女性患者中收集了输入数据集。输入的参数是年龄,体重指数(BMI),血压(BP)和心率。诊断过程,语言变量及其值是根据专家的知识和现有数据库建模的。

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