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An Effective Sample Preparation Method for Diabetes Prediction

机译:一种有效的糖尿病预测样品制备方法

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Diabetes is a chronic disorder caused by metabolic malfunction in carbohydrate metabolism and it has become a serious health problem worldwide. Early and correct detection of diabetes can significantly influence the treatment process of diabetic patients and thus eliminate the associated side effects. Machine learning is an emerging field of high importance for providing prognosis and a deeper understanding of the classification of diseases such as diabetes. This study proposed a high precision diagnostic system by modifying k-means clustering technique. In the first place, noisy, uncertain and inconsistent data was detected by new clustering method and removed from data set. Then, diabetes prediction model was generated by using Support Vector Machine (SVM). Employing the proposed diagnostic system to classify Pima Indians Diabetes data set (PID) resulted in 99.64% classification accuracy with 10-fold cross validation. The results from our analysis show the new system is highly successful compared to SVM and the classical k-means algorithm & SVM regarding classification performance and time consumption. Experimental results indicate that the proposed approach outperforms previous methods.
机译:糖尿病是由碳水化合物代谢中的代谢异常引起的慢性疾病,并且它已经成为全世界的严重健康问题。早期正确地检测出糖尿病可以显着影响糖尿病患者的治疗过程,从而消除相关的副作用。机器学习是一个新兴的领域,对于提供预后和加深对诸如糖尿病等疾病分类的理解至关重要。本研究提出了一种通过修改k均值聚类技术的高精度诊断系统。首先,采用新的聚类方法检测出嘈杂,不确定和不一致的数据,并将其从数据集中删除。然后,使用支持向量机(SVM)生成糖尿病预测模型。使用建议的诊断系统对Pima Indians Diabetes数据集(PID)进行分类,可实现99.64%的分类准确度,并具有10倍的交叉验证。我们的分析结果表明,与SVM以及经典的k均值算法和SVM相比,该新系统在分类​​性能和时间消耗方面都非常成功。实验结果表明,提出的方法优于以前的方法。

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