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Development and validation of warning system of ventricular tachyarrhythmia in patients with heart failure with heart rate variability data

机译:心率变异性数据在心力衰竭患者室性心律失常预警系统的开发和验证

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摘要

Implantable-cardioverter defibrillators (ICD) detect and terminate life-threatening ventricular tachyarrhythmia with electric shocks after they occur. This puts patients at risk if they are driving or in a situation where they can fall. ICD’s shocks are also very painful and affect a patient’s quality of life. It would be ideal if ICDs can accurately predict the occurrence of ventricular tachyarrhythmia and then issue a warning or provide preventive therapy. Our study explores the use of ICD data to automatically predict ventricular arrhythmia using heart rate variability (HRV). A 5 minute and a 10 second warning system are both developed and compared. The participants for this study consist of 788 patients who were enrolled in the ICD arm of the Sudden Cardiac Death–Heart Failure Trial (SCD-HeFT). Two groups of patient rhythms, regular heart rhythms and pre-ventricular-tachyarrhythmic rhythms, are analyzed and different HRV features are extracted. Machine learning algorithms, including random forests (RF) and support vector machines (SVM), are trained on these features to classify the two groups of rhythms in a subset of the data comprising the training set. These algorithms are then used to classify rhythms in a separate test set. This performance is quantified by the area under the curve (AUC) of the ROC curve. Both RF and SVM methods achieve a mean AUC of 0.81 for 5-minute prediction and mean AUC of 0.87–0.88 for 10-second prediction; an AUC over 0.8 typically warrants further clinical investigation. Our work shows that moderate classification accuracy can be achieved to predict ventricular tachyarrhythmia with machine learning algorithms using HRV features from ICD data. These results provide a realistic view of the practical challenges facing implementation of machine learning algorithms to predict ventricular tachyarrhythmia using HRV data, motivating continued research on improved algorithms and additional features with higher predictive power.
机译:植入式心脏复律除颤器(ICD)可在发生电击后检测并终止危及生命的室性快速性心律失常。这会使患者在驾驶或处于跌倒的危险中。 ICD的电击也非常痛苦,会影响患者的生活质量。如果ICD能够准确预测室性快速性心律失常的发生,然后发出警告或提供预防性治疗,则将是理想的。我们的研究探索了使用ICD数据通过心率变异性(HRV)自动预测室性心律失常。开发并比较了一个5分钟和10秒的警告系统。这项研究的参与者包括788名患者,他们参加了心脏猝死-心力衰竭试验(SCD-HeFT)的ICD组。分析两组患者的节律,即规则的心律和心室前性心律失常的节律,并提取不同的HRV特征。在这些功能上训练包括随机森林(RF)和支持向量机(SVM)在内的机器学习算法,以在包含训练集的数据子集中对两组节奏进行分类。然后将这些算法用于在单独的测试集中对节奏进行分类。该性能由ROC曲线的曲线下面积(AUC)量化。 RF和SVM方法在5分钟的预测中均达到0.81的平均AUC,在10秒的预测中均达到0.87–0.88。 AUC超过0.8通常需要进一步的临床研究。我们的工作表明,使用ICD数据中的HRV功能,通过机器学习算法可以预测出适度的分类准确性,以预测室性心律失常。这些结果为使用HRV数据预测室速性心律失常的机器学习算法的实施所面临的实际挑战提供了现实的看法,从而推动了对改进算法和具有更高预测能力的其他功能的持续研究。

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