IEEE J Transl Eng Health Med. 2015 Apr 10;3:1900112. doi: 10.1109/JTEHM.2015.2421901. eCollection 2015.
Cardiovascular diseases are projected to remain the single leading cause of death globally. Timely diagnosis and treatment of these diseases are crucial to prevent death and dangerous complications. One of the important tools in early diagnosis of arrhythmias is analysis of electrocardiograms (ECGs) obtained from ambulatory long-term recordings. The design of novel patch-type ECG recorders has increased the accessibility of these long-term recordings. In many applications, it is furthermore an advantage for these devices that the recorded ECGs can be analyzed automatically in real time. The purpose of this study was therefore to design a novel algorithm for automatic heart beat detection, and embed the algorithm in the CE marked ePatch heart monitor. The algorithm is based on a novel cascade of computationally efficient filters, optimized adaptive thresholding, and a refined search back mechanism. The design and optimization of the algorithm was performed on two different databases: The MIT-BIH arrhythmia database ([Formula: see text]%, [Formula: see text]) and a private ePatch training database ([Formula: see text]%, [Formula: see text]%). The offline validation was conducted on the European ST-T database ([Formula: see text]%, [Formula: see text]%). Finally, a double-blinded validation of the embedded algorithm was conducted on a private ePatch validation database ([Formula: see text]%, [Formula: see text]%). The algorithm was thus validated with high clinical performance on more than 300 ECG records from 189 different subjects with a high number of different abnormal beat morphologies. This demonstrates the strengths of the algorithm, and the potential for this embedded algorithm to improve the possibilities of early diagnosis and treatment of cardiovascular diseases.
心血管疾病预计将继续成为全球范围内单一的主要死亡原因。及时诊断和治疗这些疾病对于预防死亡和危险的并发症至关重要。心律失常的早期诊断的重要工具之一是分析从动态长期记录中获得的心电图 (ECG)。新型贴片式心电图记录仪的设计增加了这些长期记录的可及性。在许多应用中,这些设备的另一个优势是记录的心电图可以实时自动进行分析。因此,本研究的目的是设计一种新的自动心跳检测算法,并将该算法嵌入到 CE 标记的 ePatch 心脏监测器中。该算法基于一种新的级联计算高效滤波器、优化自适应阈值和改进的搜索回溯机制。算法的设计和优化是在两个不同的数据库上进行的:麻省理工学院心律不齐数据库 ([Formula: see text]%, [Formula: see text]) 和一个私人 ePatch 训练数据库 ([Formula: see text]%, [Formula: see text]%)。离线验证是在欧洲 ST-T 数据库上进行的 ([Formula: see text]%, [Formula: see text]%)。最后,在私人 ePatch 验证数据库上对嵌入式算法进行了双盲验证 ([Formula: see text]%, [Formula: see text]%)。该算法在来自 189 位不同个体的 300 多份心电图记录中进行了验证,这些记录具有多种不同的异常心跳形态,具有很高的临床性能。这证明了该算法的优势,以及该嵌入式算法在改善心血管疾病早期诊断和治疗可能性方面的潜力。