Department of Electronics and Communication Engineering, Bennett University, Gr. Noida, UP, 201308, India.
J Med Syst. 2018 Jan 11;42(2):34. doi: 10.1007/s10916-017-0886-1.
With the alarming rise in the deaths due to cardiovascular diseases (CVD), present medical research scenario places notable importance on techniques and methods to detect CVDs. As adduced by world health organization, technological proceeds in the field of cardiac function assessment have become the nucleus and heart of all leading research studies in CVDs in which electrocardiogram (ECG) analysis is the most functional and convenient tool used to test the range of heart-related irregularities. Most of the approaches present in the literature of ECG signal analysis consider noise removal, rhythm-based analysis, and heartbeat detection to improve the performance of a cardiac pacemaker. Advancements achieved in the field of ECG segments detection and beat classification have a limited evaluation and still require clinical approvals. In this paper, approaches on techniques to implement on-chip ECG detector for a cardiac pacemaker system are discussed. Moreover, different challenges regarding the ECG signal morphology analysis deriving from medical literature is extensively reviewed. It is found that robustness to noise, wavelet parameter choice, numerical efficiency, and detection performance are essential performance indicators required by a state-of-the-art ECG detector. Furthermore, many algorithms described in the existing literature are not verified using ECG data from the standard databases. Some ECG detection algorithms show very high detection performance with the total number of detected QRS complexes. However, the high detection performance of the algorithm is verified using only a few datasets. Finally, gaps in current advancements and testing are identified, and the primary challenge remains to be implementing bullseye test for morphology analysis evaluation.
随着心血管疾病 (CVD) 导致的死亡人数的惊人上升,当前的医学研究场景非常重视用于检测 CVD 的技术和方法。世界卫生组织指出,心脏功能评估领域的技术进展已成为 CVD 所有主要研究的核心和心脏,其中心电图 (ECG) 分析是用于测试与心脏相关的不规则范围的最实用和方便的工具。ECG 信号分析文献中提出的大多数方法都考虑了噪声去除、基于节律的分析和心跳检测,以提高心脏起搏器的性能。在 ECG 段检测和节拍分类领域取得的进展评估有限,仍需要临床认可。在本文中,讨论了用于心脏起搏器系统的片上 ECG 检测器的技术实现方法。此外,还广泛回顾了从医学文献中得出的 ECG 信号形态分析的不同挑战。研究发现,对噪声的鲁棒性、小波参数选择、数值效率和检测性能是最先进的 ECG 检测器所需的重要性能指标。此外,现有文献中描述的许多算法并未使用标准数据库中的 ECG 数据进行验证。一些 ECG 检测算法在检测到的 QRS 复合波总数上显示出非常高的检测性能。然而,该算法的高检测性能仅使用少数数据集进行了验证。最后,确定了当前进展和测试中的差距,主要挑战仍然是实施形态分析评估的瞄准测试。