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An unsupervised partition method based on association delineated revised mutual information

机译:基于关联描述修正互信息的无监督划分方法

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Background: The syndrome is the basic pathological unit and the key concept in traditional Chinese medicine (TCM) and the herbal remedy is prescribed according to the syndrome a patient catches. Nevertheless, few studies are dedicated to investigate the number of syndromes and what these,syndromes are. Correlative measure based on mutual information can measure arbitrary statistical dependences between discrete and continuous variables.Results: We presented a revised version of mutual information to discriminate positive and negative association. The entropy partition method self-organizedly discovers the effective patterns in patient data and rat data. The super-additivity of cluster by mutual information is proved and N-class association concept is introduced in our model to reduce computational complexity. Validation of the algorithm is performed by using the patient data and its diagnostic data. The partition results of patient data indicate that the algorithm achieves a high sensitivity with 96.48% and each classified pattern is of clinical significance. The partition results of rat data show the inherent relationship between vascular endothelial function related parameters and neuro-endocrine-immune (NEI) network related parameters.Conclusions: Therefore, we conclude that the algorithm provides an excellent solution to patients and rats data problem in the context of traditional Chinese medicine.
机译:背景:综合症是中医(TCM)的基本病理单位和关键概念,根据患者所患的综合症规定草药。然而,很少有研究专门研究综合症的数量以及这些综合症是什么。基于互信息的相关度量可以度量离散变量和连续变量之间的任意统计依赖性。结果:我们提出了互信息的修订版,以区分正向和负向关联。熵划分方法可以自组织地发现患者数据和大鼠数据中的有效模式。通过互信息证明了集群的超可加性,并在模型中引入了N类关联概念,以降低计算复杂度。通过使用患者数据及其诊断数据来执行算法的验证。对患者数据的分割结果表明,该算法达到了96.48%的高灵敏度,并且每种分类模式都具有临床意义。对大鼠数据进行分区后的结果表明,血管内皮功能相关参数与神经内分泌免疫(NEI)网络相关参数之间存在内在联系。结论:因此,我们得出的结论是,该算法为患者和大鼠数据问题提供了一个很好的解决方案。中医的背景。

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