Hybrid Model for Early Diabetes Diagnosis

A. Ojugo, A. Eboka, R. Yoro., M. Yerokun, F. N. Efozia
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引用次数: 19

Abstract

Diabetes Mellitus (silent killer or sugar disease) is a metabolic disease characterized by high glucose levels, either in a body with insufficient insulin to breakdown glucose, or body that is resistant to effects of insulin. To improve early diagnosis, data-mining tools are used to help physicians effectively classify the disease. Study presents a hybrid fuzzy, genetic algorithm trained neural network model as a decision support system for diabetes classification. Adopted data is split into: training, cross validation and testing to aid model validation with appropriate weights and biases set for each variables. Results indicate that age, obesity and family relations (in first and second degree), environmental conditions are critical factors to be watched, While in gestational diabetes, mothers with or without a previous case of GDM is confirmed if there is: (a) history of babies with weight > 4.5kg at birth, (b) resistant to insulin showing polycystic ovary syndrome, and (c) have abnormal tolerance to insulin.
早期糖尿病诊断的混合模型
糖尿病(无声杀手或糖类疾病)是一种以高血糖水平为特征的代谢疾病,要么是体内胰岛素不足,无法分解葡萄糖,要么是身体对胰岛素的作用产生抵抗。为了提高早期诊断,数据挖掘工具被用来帮助医生有效地对疾病进行分类。研究了一种混合模糊遗传算法训练神经网络模型作为糖尿病分类决策支持系统。采用的数据分为:训练、交叉验证和测试,以帮助模型验证,为每个变量设置适当的权重和偏差。结果表明,年龄、肥胖、家庭关系(一、二度)、环境条件是观察的关键因素,而妊娠期糖尿病中,有或没有GDM病史的母亲,如果有:(a)出生时体重> 4.5kg的婴儿史,(b)胰岛素抵抗表现为多囊卵巢综合征,(c)胰岛素耐受异常。
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