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Intelligent ZHENG Classification of Hypertension Depending on ML-kNN and Information Fusion

机译:基于ML-kNN和信息融合的高血压智能郑分类

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摘要

Hypertension is one of the major causes of heart cerebrovascular diseases. With a good accumulation of hypertension clinical data on hand, research on hypertension's ZHENG differentiation is an important and attractive topic, as Traditional Chinese Medicine (TCM) lies primarily in “treatment based on ZHENG differentiation.” From the view of data mining, ZHENG differentiation is modeled as a classification problem. In this paper, ML-kNN—a multilabel learning model—is used as the classification model for hypertension. Feature-level information fusion is also used for further utilization of all information. Experiment results show that ML-kNN can model the hypertension's ZHENG differentiation well. Information fusion helps improve models' performance.
机译:高血压是心脏脑血管疾病的主要原因之一。拥有丰富的高血压临床资料,高血压的ZHENG分化研究是一个重要且有吸引力的话题,因为中医(TCM)主要在于“基于ZHENG分化的治疗”。从数据挖掘的角度来看,郑分化被建模为一个分类问题。在本文中,多标签学习模型ML-kNN被用作高血压的分类模型。特征级信息融合还用于进一步利用所有信息。实验结果表明,ML-kNN可以很好地模拟高血压患者的郑氏分化。信息融合有助于提高模型的性能。

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