Dept. of Electronics & Communication Engineering, National Institute of Technology, Goa, India.
Dept. of Electronics & Communication Engineering, National Institute of Technology, Goa, India.
Med Eng Phys. 2022 Dec;110:103811. doi: 10.1016/j.medengphy.2022.103811. Epub 2022 Apr 27.
Early identification of coronary artery disease (CAD) can facilitate timely clinical intervention and save lives. This study aims to develop a machine learning framework that uses tensor analysis on heart rate (HR) signals to automate the CAD detection task. A third-order tensor representing a time-frequency relationship is constructed by fusing scalograms as vertical slices of the tensor. Each scalogram is computed from the considered time frame of a given HR signal. The derived scalogram represents the heterogeneity of data as a two-dimensional map. These two-dimensional maps are stacked one after the other horizontally along the z-axis to form a 3-way tensor for each HR signal. Each two-dimensional map is represented as a vertical slice in the xy - plane. Tensor factorization of such a fused tensor for every HR signal is performed using canonical polyadic (CP) decomposition. Only the core factor is retained later, excluding the three unitary matrices to provide the latent feature set for the detection task. The resultant latent features are then fed to machine learning classifiers for binary classification. Bayesian optimization is performed in a five-fold cross-validation strategy in search of the optimal machine learning classifier. The experimental results yielded the accuracy, sensitivity, and specificity of 96.62%, 96.53%, and 96.67%, respectively, with the bagged trees ensemble method. The proposed tensor decomposition deciphered higher-order interrelations among the considered time-frequency representations of HR signals.
早期识别冠状动脉疾病 (CAD) 可以促进及时的临床干预并拯救生命。本研究旨在开发一种机器学习框架,该框架使用张量分析对心率 (HR) 信号进行分析,以实现 CAD 检测任务的自动化。通过融合作为张量垂直切片的标量图来构建表示时频关系的三阶张量。每个标量图都是从给定 HR 信号的考虑时间段计算得出的。所得标量图代表数据的异质性作为二维图。这些二维图沿 z 轴一个接一个地水平堆叠,为每个 HR 信号形成一个 3 向张量。每个二维图表示为 xy 平面上的垂直切片。使用典型多面 (CP) 分解对每个 HR 信号的融合张量进行张量分解。仅保留核心因子,排除三个幺正矩阵,以提供用于检测任务的潜在特征集。然后,将所得潜在特征输入到机器学习分类器中进行二进制分类。在五折交叉验证策略中执行贝叶斯优化,以搜索最佳机器学习分类器。使用袋装树集成方法,实验结果分别产生了 96.62%、96.53%和 96.67%的准确率、灵敏度和特异性。所提出的张量分解揭示了 HR 信号的考虑时频表示之间的更高阶相互关系。