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首页> 外文期刊>International Journal of Computational Intelligence and Applications >INTELLIGENT DATA ANALYSIS FOR THE CLASSIFICATION OF BODY SURFACE POTENTIAL MAPS
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INTELLIGENT DATA ANALYSIS FOR THE CLASSIFICATION OF BODY SURFACE POTENTIAL MAPS

机译:身体表面电位图分类的智能数据分析

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Body surface potential maps were investigated to identify a set of optimal recording sites required to discriminate between several diseases. Specifically, recordings captured from subjects exhibiting myocardial infarction or left ventricular hypertrophy, as well as a control group consisting of healthy subjects, were investigated. Owing to the fact that multi-class problems are inherently difficult to solve we divided the problem into several two-class scenarios. Six data sets were generated from the available 744 records, each viewing the available data differently, to form several two-class problems. A data-driven selection algorithm was applied to each of the generated data sets to produce six classification models, each utilizing as features those recording sites offering most to the discrimination task being investigated. Subsequently, a framework was introduced to facilitate the combination of outputs from each classifier. Essentially, the framework used the outputs from half of the classification models to determine which of the remaining models would be employed to form a final decision. A benchmark, in the form of a multi-group classifier, was introduced to evaluate the perceived benefits of the proposed approach. An improvement of approximately 10% upon the benchmark was observed resulting in an overall accuracy of 79.19%.
机译:对体表电位图进行了研究,以识别出区分几种疾病所需的一组最佳记录位点。具体地,研究了从表现出心肌梗塞或左心室肥大的受试者以及由健康受试者组成的对照组中捕获的记录。由于存在多类问题本来就难以解决的事实,我们将该问题分为几个两类情况。从744个可用记录中生成了六个数据集,每个记录以不同的方式查看可用数据,从而形成了几个两类问题。将数据驱动的选择算法应用于每个生成的数据集,以生成六个分类模型,每个分类模型都利用那些对正在研究的歧视任务提供最多帮助的记录站点作为特征。随后,引入了一个框架来促进每个分类器的输出组合。本质上,该框架使用了一半分类模型的输出来确定将使用哪些剩余模型来形成最终决策。引入了以多组分类器形式的基准,以评估所提出方法的感知收益。观察到比基准提高了约10%,导致总体精度为79.19%。

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