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DESIGN OF EXPERT SYSTEM AS A SUPPORT TOOL FOR EARLY DIAGNOSIS OF PRIMARY HEADACHE

机译:专家系统的设计,作为早期诊断原发性心脏病的支持工具

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Background. Headache is the top ranked with 42% percentage of all complaints neurology’s patients.?Focused and systematic approach is needed in making a diagnosis of primary headache type because?management of headache is different for each type.Objective. Enabling users to identify the type of headache.Methods. The experiment was conducted using Na?ve Bayes classifier method which is the principle is multiplying the percentage likelihood of each variable for each parameter for each class.Results. The percentage value of each parameter obtained from the data of headache patients at neurology polyclinic poly of Dr. Soetomo Hospital within 1 year from the year 2014 to 2015. The percentage value of each class likelihood sought highest value which is the output or decision-diagnosis program. Analysis of each of the input parameters, gender, age, location of head pain, headache characteristics, appeared least autonomous signs, and scale of headache may indicate that each of the options selected by the user influence the decision of the diagnosis program.Conclusion. The design of early detection of primary headaches with the input parameters as mentioned before derived from the raw data as electronic medical records to be analyzed based on methods Na?ve Bayes classifier resulted in the decision diagnosis of migraine, cluster and TTH have accuracy values by 92 %.
机译:背景。头痛是头等疾病,在所有神经系统疾病患者中占42%。由于原发性头痛的类型各不相同,因此需要集中而系统的方法来诊断原发性头痛。使用户能够识别头痛的类型。实验是使用朴素贝叶斯分类器方法进行的,该方法的原理是将每个变量的每个类的每个变量的百分比可能性乘以每个类。结果。从2014年至2015年的1年内,从Soetomo医院神经内科综合诊所的头痛患者的数据中获得的每个参数的百分比值。每个类别的可能性的百分比值寻求最高值,这是输出或决策诊断程序。对每个输入参数,性别,年龄,头痛位置,头痛特征,出现的自主症状最少和头痛程度进行分析可能表明用户选择的每个选项都会影响诊断程序的决策。基于朴素贝叶斯分类器的方法,利用原始数据作为电子病历进行分析,使用先前提到的输入参数对原发性头痛进行早期检测设计,通过偏头痛,聚类和TTH的决策诊断,准确度为92%。

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