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Risk Prediction of Disease Complications in Type 2 Diabetes Patients Using Soft Computing Techniques

机译:2型糖尿病患者疾病并发症的风险预测使用软计算技术

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Diabetes has become the fourth leading cause of death in developed countries. By the endurance and hasty spread of diabetes, with increased number of ill condition, complications in the disease all over the world, several methodologies have been developed to predict and prevent this chronic disease. An early diagnosis of disease helps patients and medical experts to reduce the problem, risk and cost of medications. This paper presented an efficient system to predict diabetes and further complications with risk level. In this system, methods including genetic algorithm, nearest neighbor, and fuzzy rule-based system have been used in order to provide an accurate prediction system to prepare for presence of diabetes and complications. In this system, 235 individual's data were collected. The best subsets of features generated by the implemented algorithm include the most common risk factors such as age, family history, BMI, weight, smoking habit, alcohol habit and also factors related to the presence of other diabetes complications considered for predication of disease. The proposed system was prejudiced and the results showed to be more suitable by selecting best subset of features selected using variations of genetic algorithm depending on the types of nearest neighbor. The succeeded results produced 95.83% sensitivity, 95.50% accuracy and 86.95% specificity on impenetrable data which support the effectiveness of the system to predict the disease.
机译:糖尿病已成为发达国家死亡的第四个主要原因。通过持久性和繁忙的糖尿病蔓延,随着病情的不足,世界各地的疾病的并发症,已经开发了几种方法来预测和预防这种慢性疾病。疾病的早​​期诊断有助于患者和医学专家降低药物的问题,风险和成本。本文介绍了一种有效的系统,以预测糖尿病和风险水平的进一步并发症。在该系统中,已经使用了包括遗传算法,最近邻居和基于模糊规则的系统的方法,以便提供准确的预测系统,以准备糖尿病和并发症。在该系统中,收集了235个个人的数据。由实施的算法产生的最佳功能子集包括最常见的风险因素,如年龄,家族史,BMI,重量,吸烟习惯,酒精习性以及与其他糖尿病的存在相关的因素,考虑疾病预测。所提出的系统被偏见,结果表明,通过根据最近邻居的类型选择使用遗传算法的变化选择的最佳特征子集更合适。成功的结果产生了95.83%的灵敏度,精度为95.50%和86.95%的特异性,支持系统的有效性预测疾病。

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