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Identifying Patients at Risk of Major Adverse Cardiovascular Events Using Symbolic Mismatch

机译:使用符号不匹配识别患者面临主要不良心血管事件的风险

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Cardiovascular disease is the leading cause of death globally, resulting in 17 million deaths each year. Despite the availability of various treatment options, existing techniques based upon conventional medical knowledge often fail to identify patients who might have benefited from more aggressive therapy. In this paper, we describe and evaluate a novel unsupervised machine learning approach for cardiac risk stratification. The key idea of our approach is to avoid specialized medical knowledge, and assess patient risk using symbolic mismatch, a new metric to assess similarity in long-term time-series activity. We hypothesize that high risk patients can be identified using symbolic mismatch, as individuals in a population with unusual long-term physiological activity. We describe related approaches that build on these ideas to provide improved medical decision making for patients who have recently suffered coronary attacks. We first describe how to compute the symbolic mismatch between pairs of long term electrocardio-graphic (ECG) signals. This algorithm maps the original signals into a symbolic domain, and provides a quantitative assessment of the difference between these symbolic representations of the original signals. We then show how this measure can be used with each of a one-class SVM, a nearest neighbor classifier, and hierarchical clustering to improve risk stratification. We evaluated our methods on a population of 686 cardiac patients with available long-term electrocardiographic data. In a univariate analysis, all of the methods provided a statistically significant association with the occurrence of a major adverse cardiac event in the next 90 days. In a multivariate analysis that incorporated the most widely used clinical risk variables, the nearest neighbor and hierarchical clustering approaches were able to statistically significantly distinguish patients with a roughly two-fold risk of suffering a major adverse cardiac event in the next 90 days.
机译:心血管疾病是导致死亡的原因全球范围内,每年导致17只万人死亡。尽管各种治疗方案的可用性,基于传统的医学知识现有技术往往不能确定谁可能从更积极的治疗中获益的患者。在本文中,我们描述和评估心脏危险分层的新颖无监督的机器学习方法。我们的方法的核心思想是避免专业的医学知识,以及使用符号不匹配,一个新的指标,以评估长期的时间序列相似性活动评估病人的风险。我们推测,高风险的患者可以使用符号不匹配,如不寻常的长时间生理活动人口的个体识别。我们描述了相关的方法,即建立在这些想法提供了改进的医疗决策的谁最近遭受攻击冠心病患者。我们首先介绍如何计算对长期心电图形(ECG)信号之间的象征性的不匹配。该算法在原来的信号映射到一个象征性的领域,并提供原始信号的这些符号表示之间的差异进行量化评估。然后,我们展示如何这一措施可以相互一类支持向量机,最近邻分类和聚类的用于改善危险分层。我们评估的686名心脏病患者可用长期心电图数据,人口我们的方法。在单因素分析中,所有的方法在未来90天内提供有主要不良心脏事件的发生有统计学显著关联。在多变量分析,纳入使用最广泛的临床风险变量,最近的邻居和层次聚类方法能够统计显著区分患者在未来90天内遭受主要不良心脏事件的大致双重风险。

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