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Application of Multi-label Learning Model for Chronic Kidney Disease Syndrome Classification

机译:多标签学习模型在慢性肾病综合征分类中的应用

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Traditional Chinese Medicine (TCM) has been widely applied in Chronic Kidney Disease (CKD), syndrome classification is a very important step in the diagnosis of TCM. Based on clinical diagnosis experiences and the analogy theory of TCM, we propose a method that is grounded on analogy theory of TCM for syndrome diagnosis (ATTSCM). The ATTSCM method utilizes the feature selection algorithm to select the significant symptoms, and the clustering algorithm combine multi-label learning algorithm to distinguish the syndromes. The proposed method is evaluated by the chronic kidney disease dataset which is collated by University of Chinese Medicine. Three evaluation measures of multi-label classification are taken to evaluate the performance of syndrome classification, including classification accuracy, micro F1 measure and hamming loss. Experimental results show that the proposed method performs well in the application for TCM syndrome differentiation of CKD.
机译:中药(TCM)已广泛应用于慢性肾病(CKD),综合征分类是中医诊断的一个非常重要的一步。基于临床诊断经验和中医的类比理论,我们提出了一种基于TCM综合征诊断(ATTSCM)的中医基础的方法。 ATTSCM方法利用特征选择算法选择重大症状,并且聚类算法结合了多标签学习算法来区分综合征。所提出的方法是由慢性肾病数据集评估,由中药大学来源。三种评估措施的多标签分类评估综合征分类的性能,包括分类准确性,微F1测量和汉明损失。实验结果表明,该方法对CKD的中医综合征分化的应用良好。

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