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An efficient pre-processing method for improved classification of diabetics using decision tree and artificial neural network

机译:一种高效的预处理方法,用于利用决策树和人工神经网络改善糖尿病患者分类的预处理方法

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The medical dataset is growing on a daily basis and there is a need to efficiently use this data to assist in the diagnosis of vast multitude of diseases. With the advancement in data mining, it is possible to extract interesting patterns from ever growing datasets in order to help take wise medical decisions. Diabetes is a chronic disease, caused due to either insufficient production of insulin by the pancreas or the cells of the body are not responding properly to the insulin produced. It leads to complications that affects heart, kidney, nerve and blood vessel damage, blindness and hence needs to be diagnosed at an early stage. This research work analyses different pre-processing tasks and identifies the best one that performs better than all the other techniques by constructing various classifier models. The classification model categories whether a person has diabetes or not. The four classification models explored were ANN, ID3, C4.5, and CART; compared the models based on evaluation parameters like Accuracy, Sensitivity, Specificity and Precision.
机译:医疗数据集每天增长,需要有效地使用此数据来帮助诊断大量疾病。随着数据挖掘的进步,可以从越来越多的数据集中提取有趣的模式,以帮助采取明智的医学决策。糖尿病是一种慢性疾病,由于胰腺的胰岛素的生产不足而导致的胰岛素或身体细胞没有正确响应胰岛素。它导致影响心脏,肾脏,神经和血管损伤,失明,因此需要在早期阶段被诊断出来的并发症。该研究工作分析了不同的预处理任务,并通过构建各种分类器模型来识别比所有其他技术更好地执行的最好的预处理。分类模型类别是否有一个人患有糖尿病。探索的四种分类模型是ANN,ID3,C4.5和购物车;基于评估参数比较模型,如精度,灵敏度,特异性和精度。

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