A Study of Arrhythmia Risk Level Discrimination Based on K-Means Algorithm and Analytic Hierarchy Method

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Abstract

Arrhythmia is one of the major causes of cardiac risk events, so the study and analysis of this cause can reduce the lethality of cardiac risk events. In this paper, based on the K-Means algorithm and hierarchical analysis method, a specific research and analysis of cardiac risk events is carried out. In this paper, the K-Means algorithm is used to establish the data classification model of abnormal heart beats, the Euclidean distance is chosen as the method of data similarity calculation, and the arrhythmia is classified through the analysis of the number of clusters, and through the deviation of the coordinates of the center point of the clusters, the corresponding objects are re-divided according to the minimum distance until the coordinates of the center point of the clusters are no longer shifted. The final field variability analysis was derived and solved for the frequency and percentage of classification for each category. Then, based on the comprehensive analysis of the classification results and the characteristics of each type of arrhythmia in sinus arrhythmia, five categories were derived: sinus arrhythmia, sinus bradycardia, sinus tachycardia, sinus conduction block, and sinus arrest. Further, this study used hierarchical analysis to establish an evaluation model to evaluate the risk level of each arrhythmia category, and the higher the score, the higher the risk level. A pairwise comparison matrix was constructed by comparing each category, and the weight vector and eigenvalues of each category were calculated, resulting in a ranking of the risk level of each arrhythmia category from highest to lowest: sinus arrest, sinus block, sinus tachycardia, sinus bradycardia, and sinus arrhythmia. This methodology enables healthcare organizations to more accurately assess arrhythmia categories and their corresponding risk levels, which provides an important reference for medical decision-making and contributes to more timely and effective interventions and treatments, thus improving patients' survival rates and quality of life.
基于k均值算法和层次分析法的心律失常危险等级判别研究
心律失常是发生心脏危险事件的主要原因之一,对其原因进行研究和分析可以降低心脏危险事件的致死率。本文基于K-Means算法和层次分析法,对心脏危险事件进行了具体的研究和分析。本文采用K-Means算法建立异常心跳数据分类模型,选择欧几里得距离作为数据相似度计算方法,通过分析聚类数量,通过聚类中心点坐标的偏差,对心律失常进行分类。根据最小距离重新划分对应的对象,直到集群中心点的坐标不再移动。最后导出并求解了每个类别的分类频率和分类百分比。然后,综合分析窦性心律失常的分类结果及各类型心律失常的特点,归纳出窦性心律失常、窦性心动过缓、窦性心动过速、窦性传导阻滞、窦性骤停5类。进一步,本研究采用层次分析法建立评价模型,对各心律失常类别的危险程度进行评价,得分越高,危险程度越高。通过对各类别进行比较,构建两两比较矩阵,计算各类别的权重向量和特征值,得出各心律失常类别的风险等级由高到低依次为:窦性骤停、窦性传导阻滞、窦性心动过速、窦性心动过缓、窦性心律失常。该方法使医疗机构能够更准确地评估心律失常的类别及其相应的风险水平,为医疗决策提供重要参考,有助于更及时有效的干预和治疗,从而提高患者的生存率和生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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