Computation of multifactorial receiver operator and predictive accuracy characteristics [ECG analysis]

K. Hnatkova, J. Poloniecki, A. Camm, M. Malik
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Abstract

The computation of the so-called receiver operator characteristics is simple when based on univariate data. On the contrary, the complexity of computation of multivariate characteristics increases exponentially with the dimension of the data. This study describes a new algorithm for computation of multivariate receiver operator characteristics. The algorithm is based on several concepts which increase its computational efficiency. The most important of them is a pre-sorting of the data in each dimension and the division of each dimension into groups in which the negative cases precede positive ones. The algorithm was tested in a risk stratification study that was aimed at identifying survivors of acute myocardial infarction at risk of early death. A cohort of 539 patients was stratified based on time-domain (3 variables) and spectral turbulence (6 variables) indices of signal averaged electrocardiogram. The computing requirements of this study are presented in the text and the efficiency of the algorithm is discussed in detail.<>
多因子接收算子的计算及预测精度特性[心电分析]
当基于单变量数据时,所谓的接收机算子特征的计算很简单。相反,多变量特征的计算复杂度随着数据维数的增加呈指数增长。提出了一种计算多变量接收机算子特征的新算法。该算法基于多个概念,提高了计算效率。其中最重要的是对每个维度的数据进行预先排序,并将每个维度划分为负面情况先于正面情况的组。该算法在一项风险分层研究中进行了测试,该研究旨在识别有早期死亡风险的急性心肌梗死幸存者。根据信号平均心电图的时域(3个变量)和频谱湍流(6个变量)指标对539例患者进行分层。文中给出了本研究的计算要求,并对算法的效率进行了详细的讨论
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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