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通过创新的患者分组策略提高心血管疾病风险评估工具的性能。

Improvement of CVD risk assessment tools' performance through innovative patients' grouping strategies.

作者信息

Paredes S, Rocha T, de Carvalho P, Henriques J, Morais J, Ferreira J, Mendes M

机构信息

Instituto Politécnico de Coimbra, Departamento de Engenharia Informática e de Sistemas, Portugal.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:5907-10. doi: 10.1109/EMBC.2012.6347338.

DOI:10.1109/EMBC.2012.6347338
PMID:23367273
Abstract

There are available in the clinical community several practical risk tools to assess the risk of occurrence of a cardiovascular event. Although valuable, these tools typically present some lack of performance (low sensitivity/low specificity) when applied to a general (average) patient. This flaw is addressed in this work through an innovative personalization strategy that is supported on the evidence that current risk assessment tools perform differently among different populations/groups of patients. The proposed methodology is based on two main hypotheses: i) patients are grouped through a proper dimension reduction technique complemented with an unsupervised learning algorithm, ii) for each group the most suitable risk assessment tool can be selected improving the risk prediction performance. As a result, risk personalization is simply achieved by the identification of the group that patients belong to. The validation of the strategy is carried out through the combination of three current risk assessment tools (GRACE, TIMI, PURSUIT) developed to predict the risk of an event in coronary artery disease patients. The combination of these tools is validated with a real patient testing dataset: Santa Cruz Hospital, Portugal, N=460 ACS-NSTEMI patients. Considering the obtained results with the available dataset it is possible to state that the main objective of this work was achieved.

摘要

临床界有几种实用的风险工具可用于评估心血管事件发生的风险。尽管这些工具很有价值,但在应用于普通(平均)患者时,它们通常存在一些性能缺陷(低敏感性/低特异性)。本研究通过一种创新的个性化策略解决了这一缺陷,该策略基于当前风险评估工具在不同患者群体中表现不同的证据。所提出的方法基于两个主要假设:i)通过适当的降维技术辅以无监督学习算法对患者进行分组,ii)为每个组选择最合适的风险评估工具以提高风险预测性能。结果,通过识别患者所属的组即可简单地实现风险个性化。该策略的验证是通过结合三种用于预测冠心病患者事件风险的现有风险评估工具(GRACE、TIMI、PURSUIT)来进行的。这些工具的组合在一个真实患者测试数据集上得到验证:葡萄牙圣克鲁斯医院,N = 460例急性冠状动脉综合征非ST段抬高型心肌梗死患者。考虑到从可用数据集中获得的结果,可以说这项工作的主要目标已经实现。

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