School of Physics and Mechanical and Electrical Engineering, Longyan University, Longyan 364012, PR China.
School of Physics and Mechanical and Electrical Engineering, Longyan University, Longyan 364012, PR China.
Artif Intell Med. 2020 Jun;106:101848. doi: 10.1016/j.artmed.2020.101848. Epub 2020 May 18.
Cardiovascular diseases (CVD) is the leading cause of human mortality and morbidity around the world, in which myocardial infarction (MI) is a silent condition that irreversibly damages the heart muscles. Currently, electrocardiogram (ECG) is widely used by the clinicians to diagnose MI patients due to its inexpensiveness and non-invasive nature. Pathological alterations provoked by MI cause slow conduction by increasing axial resistance on coupling between cells. This issue may cause abnormal patterns in the dynamics of the tip of the cardiac vector in the ECG signals. However, manual interpretation of the pathological alternations induced by MI is a time-consuming, tedious and subjective task. To overcome such disadvantages, computer-aided diagnosis techniques including signal processing and artificial intelligence tools have been developed. In this study we propose a novel technique for automatic detection of MI based on hybrid feature extraction and artificial intelligence tools. Tunable quality factor (Q-factor) wavelet transform (TQWT), variational mode decomposition (VMD) and phase space reconstruction (PSR) are utilized to extract representative features to form cardiac vectors with synthesis of the standard 12-lead and Frank XYZ leads. They are combined with neural networks to model, identify and detect abnormal patterns in the dynamics of cardiac system caused by MI. First, 12-lead ECG signals are reduced to 3-dimensional VCG signals, which are synthesized with Frank XYZ leads to build a hybrid 4-dimensional cardiac vector. Second, this vector is decomposed into a set of frequency subbands with a number of decomposition levels by using the TQWT method. Third, VMD is employed to decompose the subband of the 4-dimensional cardiac vector into different intrinsic modes, in which the first intrinsic mode contains the majority of the cardiac vector's energy and is considered to be the predominant intrinsic mode. It is selected to construct the reference variable for analysis. Fourth, phase space of the reference variable is reconstructed, in which the properties associated with the nonlinear cardiac system dynamics are preserved. Three-dimensional (3D) PSR together with Euclidean distance (ED) has been utilized to derive features, which demonstrate significant difference in cardiac system dynamics between normal (healthy) and MI cardiac vector signals. Fifth, cardiac system dynamics can be modeled and identified using neural networks, which employ the ED of 3D PSR of the reference variable as the input features. The difference of cardiac system dynamics between healthy control and MI cardiac vector is computed and used for the detection of MI based on a bank of estimators. Finally, data sets, which include conventional 12-lead and Frank XYZ leads ECG signal fragments from 148 patients with MI and 52 healthy controls from PTB diagnostic ECG database, are used for evaluation. By using the 10-fold cross-validation style, the achieved average classification accuracy is reported to be 97.98%. Currently, ST segment evaluation is one of the major and traditional ways for the MI detection. However, there exist weak or even undetectable ST segments in many ECG signals. Since the proposed method does not rely on the information of ST waves, it can serve as a complementary MI detection algorithm in the intensive care unit (ICU) of hospitals to assist the clinicians in confirming their diagnosis. Overall, our results verify that the proposed features may satisfactorily reflect cardiac system dynamics, and are complementary to the existing ECG features for automatic cardiac function analysis.
心血管疾病 (CVD) 是全球人类死亡和发病的主要原因,其中心肌梗死 (MI) 是一种不可逆地损害心肌的隐性疾病。目前,心电图 (ECG) 因其廉价和非侵入性而被临床医生广泛用于诊断 MI 患者。MI 引起的病理改变通过增加细胞间的轴向阻力导致传导缓慢。这可能会导致 ECG 信号中心脏向量尖端的动力学出现异常模式。然而,MI 引起的病理改变的手动解释是一项耗时、乏味和主观的任务。为了克服这些缺点,已经开发了包括信号处理和人工智能工具在内的计算机辅助诊断技术。在这项研究中,我们提出了一种基于混合特征提取和人工智能工具的 MI 自动检测新技术。可调谐品质因数 (Q-factor) 小波变换 (TQWT)、变分模态分解 (VMD) 和相空间重构 (PSR) 用于提取具有代表性的特征,以形成与标准 12 导联和 Frank XYZ 导联相结合的心脏向量。它们与神经网络相结合,用于模拟、识别和检测由 MI 引起的心脏系统动力学的异常模式。首先,12 导联 ECG 信号被简化为 3 维 VCG 信号,与 Frank XYZ 导联一起合成混合 4 维心脏向量。其次,该向量通过使用 TQWT 方法分解为一组具有一定分解级别的频率子带。然后,VMD 用于将 4 维心脏向量的子带分解为不同的固有模式,其中第一个固有模式包含心脏向量的大部分能量,被认为是主要的固有模式。它被选择来构建分析的参考变量。第四,参考变量的相空间被重构,其中保留了与非线性心脏系统动力学相关的特性。三维 (3D) PSR 与欧几里得距离 (ED) 一起用于提取特征,这些特征在正常 (健康) 和 MI 心脏向量信号之间的心脏系统动力学中表现出显著差异。第五,心脏系统动力学可以使用神经网络进行建模和识别,该神经网络使用参考变量的 3D PSR 的 ED 作为输入特征。计算健康对照组和 MI 心脏向量之间的心脏系统动力学差异,并基于一组估计器进行 MI 检测。最后,使用来自 PTB 诊断 ECG 数据库的 148 名 MI 患者和 52 名健康对照者的常规 12 导联和 Frank XYZ 导联 ECG 信号片段数据集进行评估。通过使用 10 折交叉验证方式,报告的平均分类准确率为 97.98%。目前,ST 段评估是 MI 检测的主要和传统方法之一。然而,许多 ECG 信号中存在微弱甚至无法检测到的 ST 段。由于所提出的方法不依赖于 ST 波的信息,因此它可以作为医院重症监护病房 (ICU) 的补充 MI 检测算法,以帮助临床医生确认他们的诊断。总体而言,我们的结果验证了所提出的特征可以令人满意地反映心脏系统动力学,并且对自动心脏功能分析的现有 ECG 特征具有补充作用。