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Big data-based extraction of fuzzy partition rules for heart arrhythmia detection: a semi-automated approach

机译:基于大数据的心律失常检测模糊分区规则提取:一种半自动方法

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摘要

In this paper, we introduce a novel method to define semi-automatically fuzzy partition rules to provide a powerful and accurate insight into cardiac arrhythmia. In particular, we define a text mining approach applied to a large dataset consisting of the freely available scientific papers provided by PubMed. The information extracted is then integrated with expert knowledge, as well as experimental data, to provide a robust, scalable and accurate system, which can successfully address the challenges posed by the management and assessment of big data in the medical sector. The evaluation we carried out shows an accuracy rate of 93% and interpretability of 0.646, which clearly shows that our method provides an excellent balance between accuracy and system transparency. Furthermore, this contributes substantially to the knowledge discovery and offers a powerful tool to facilitate the decision-making process. Copyright © 2015 John Wiley & Sons, Ltd.
机译:在本文中,我们介绍了一种定义半自动模糊划分规则的新颖方法,以提供对心律不齐的强大而准确的见解。特别是,我们定义了一种文本挖掘方法,该方法适用于由PubMed提供的免费科学论文组成的大型数据集。然后将提取的信息与专家知识以及实验数据集成在一起,以提供一个健壮,可扩展且准确的系统,该系统可以成功应对医疗领域大数据的管理和评估所带来的挑战。我们进行的评估显示出93%的准确率和0.646的可解释性,这清楚地表明我们的方法在准确性和系统透明性之间提供了出色的平衡。此外,这极大地促进了知识发现,并提供了强大的工具来促进决策过程。版权所有©2015 John Wiley&Sons,Ltd.

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