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数据挖掘技术在医疗领域中的应用研究 被引量:5

Application Research on Data Mining Technology in Medical Field
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摘要 由于传统的数据统计方法已无法完成对海量数据信息的挖掘提取,为此数据挖掘技术(DM)被逐渐应用于信息的分析应用研究中。以医疗领域中的Breast Cancer治疗数据的信息挖掘为对象,在WEKA数据挖掘平台下,通过应用贝叶斯网络(BayesNet)算法快速地实现了对治疗信息的挖掘。实验表明,数据挖掘技术的应用对相关信息挖掘领域的研究具有一定的参考价值。 Because the mining of massive data can not be finished by traditional data statistics method, the Data Mining technology (DM) has been applied to the analysis and application research of information. Taking the treatment data mining of breast cancer in medical field as the research object, the paper implemented the mining of treatment information with BayesNet algorithm on WEKA data mining platform. Experiment results show the application of data mining technology has some reference value for other research of related data mining fields.
作者 周云辉 王娇
出处 《机械工程与自动化》 2013年第4期14-15,18,共3页 Mechanical Engineering & Automation
基金 西南科技大学青年基金资助项目(12zx3110)
关键词 数据挖掘 医疗领域 应用研究 data mining medical field application research
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