Many types of ventricular and atrial cardiac arrhythmias have been discovered in clinical practice in the past 100 years, and these arrhythmias are a major contributor to sudden cardiac death. Ventricular tachycardia, ventricular fibrillation, and paroxysmal atrial fibrillation are the most commonly-occurring and dangerous arrhythmias, therefore early detection is crucial to prevent any further complications and reduce fatalities. Implantable devices such as pacemakers are commonly used in patients at high risk of sudden cardiac death. While great advances have been made in medical technology, there remain significant challenges in effective management of common arrhythmias. This thesis proposes novel arrhythmia detection and prediction methods to differentiate cardiac arrhythmias from non-life-threatening cardiac events, to increase the likelihood of detecting events that may lead to mortality, as well as reduce the incidence of unnecessary therapeutic intervention. The methods are based on detailed analysis of Heart Rate Variability (HRV) information. The results of the work show good performance of the proposed methods and support the potential for their deployment in resource-constrained devices for ventricular and atrial arrhythmia prediction, such as implantable pacemakers and defibrillators.
翻译:在过去100年中,在临床实践中发现了许多类型的心血管和外心心律不全,这些心律不全是导致突发性心血管死亡的主要原因。心肌梗塞、心血管纤维炎和脑膜炎是最常见的和危险的心律不全症,因此早期发现对于防止任何进一步并发症和减少死亡至关重要。心脏起搏器等可移植装置通常用于心脏病突发死亡高风险患者。虽然医疗技术取得了巨大进步,但在有效管理常见心律不全症方面仍面临重大挑战。该论文提出了新的心律不全检测和预测方法,以区分心律失常和非威胁生命的心律事件,从而增加发现可能导致死亡的事件的可能性,并减少不必要的治疗干预的发生率。这些方法基于对心律易变性(HRV)信息的详细分析。工作结果显示,拟议的方法表现良好,支持了将心律失常、心律不全的预测设备作为可部署的神经节律和感应变速度装置的可能性。