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Knowledge Mining from Clinical Datasets Using Rough Sets and Backpropagation Neural Network

机译:使用粗糙集和反向传播神经网络从临床数据集中进行知识挖掘

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摘要

The availability of clinical datasets and knowledge mining methodologies encourages the researchers to pursue research in extracting knowledge from clinical datasets. Different data mining techniques have been used for mining rules, and mathematical models have been developed to assist the clinician in decision making. The objective of this research is to build a classifier that will predict the presence or absence of a disease by learning from the minimal set of attributes that has been extracted from the clinical dataset. In this work rough set indiscernibility relation method with backpropagation neural network (RS-BPNN) is used. This work has two stages. The first stage is handling of missing values to obtain a smooth data set and selection of appropriate attributes from the clinical dataset by indiscernibility relation method. The second stage is classification using backpropagation neural network on the selected reducts of the dataset. The classifier has been tested with hepatitis, Wisconsin breast cancer, and Statlog heart disease datasets obtained from the University of California at Irvine (UCI) machine learning repository. The accuracy obtained from the proposed method is 97.3%, 98.6%, and 90.4% for hepatitis, breast cancer, and heart disease, respectively. The proposed system provides an effective classification model for clinical datasets.
机译:临床数据集和知识挖掘方法的可用性鼓励研究人员进行研究,以从临床数据集提取知识。不同的数据挖掘技术已用于挖掘规则,并且已经开发了数学模型来帮助临床医生进行决策。这项研究的目的是建立一个分类器,该分类器将通过从临床数据集中提取的最小属性集学习来预测疾病的存在与否。在这项工作中,使用了带有反向传播神经网络(RS-BPNN)的粗糙集不可分辨关系方法。这项工作分为两个阶段。第一步是处理缺失值以获得平滑的数据集,并通过不可分辨关系方法从临床数据集中选择适当的属性。第二阶段是使用反向传播神经网络对数据集的选定归类进行分类。已使用从加利福尼亚大学欧文分校(UCI)机器学习存储库获得的肝炎,威斯康星州乳腺癌和Statlog心脏病数据集对分类器进行了测试。对于肝炎,乳腺癌和心脏病,从该方法获得的准确度分别为97.3%,98.6%和90.4%。所提出的系统为临床数据集提供了有效的分类模型。

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