Graduate School of Science and Technology, Nara Insitute of Science and Technology, Japan.
Graduate School of Science and Technology, Nara Insitute of Science and Technology, Japan; Data Science Center, Nara Insitute of Science and Technology, Japan.
Comput Methods Programs Biomed. 2021 Jun;205:106102. doi: 10.1016/j.cmpb.2021.106102. Epub 2021 Apr 15.
Malignant ventricular arrhythmias (MAs) occur unpredictably and lead to emergencies. A new approach that uses a timely tracking device e.g., photoplethysmogram (PPG) solely to predict MAs would be irreplaceably valuable and it is natural to expect the approach can predict the occurrence as early as possible.
We assumed that with an appropriate metric based on signal complexity, the heartbeat interval time series (HbIs) can be used to manifest the intrinsic characteristics of the period immediately precedes the MAs (preMAs). The approach first characterizes the patterns of preMAs by a new complexity metric (the refined composite multi-scale entropy). The MAs detector is then constructed by checking the discriminability of the MAs against the sinus rhythm and other prevalent arrhythmias (atrial fibrillation and premature ventricular contraction) of three machine-learning models (SVM, Random Forest, and XGboost).
Two specifications are of interest: the length of the HbIs needed to delineate the preMAs patterns sufficiently (l) and how long before the occurrence of MAs will the HbIs manifest specific patterns that are distinct enough to predict the impending MAs (t). Our experimental results confirmed the best performance came from a Random-Forest model with an average precision of 99.99% and recall of 88.98% using a HbIs of 800 heartbeats (the l), 108 seconds (the t) before the occurrence of MAs.
By experimental validation of the unique pattern of the preMAs in HbIs and using it in the machine learning model, we showed the high possibility of MAs prediction in a broader circumstance, which may cover daily healthcare using the alternative sensor in HbIs monitoring. Therefore, this research is theoretically and practically significant in cardiac arrest prevention.
恶性室性心律失常(MAs)不可预测,可导致紧急情况。使用及时跟踪设备(例如光体积描记图(PPG))仅预测 MAs 的新方法将具有不可替代的价值,并且自然期望该方法能够尽早预测到 MAs 的发生。
我们假设,通过基于信号复杂度的适当指标,可以使用心跳间隔时间序列(HbIs)来体现紧随 MAs(preMAs)之前的时间段的固有特征。该方法首先通过一种新的复杂度指标(细化复合多尺度熵)来描述 preMAs 的模式。然后,通过检查 MAs 与窦性节律和其他常见心律失常(心房颤动和室性早搏)的可区分性来构建 MAs 检测器,这三种机器学习模型(SVM、随机森林和 XGboost)。
有两个规格值得关注:用于充分描绘 preMAs 模式所需的 HbIs 的长度(l),以及在 MAs 发生之前多久,HbIs 将表现出足够独特的特定模式以预测即将发生的 MAs(t)。我们的实验结果证实,使用 800 次心跳(l)和 108 秒(t)的 HbIs,随机森林模型的性能最佳,平均精度为 99.99%,召回率为 88.98%。
通过对 HbIs 中 preMAs 独特模式的实验验证,并将其应用于机器学习模型中,我们展示了在更广泛的情况下预测 MAs 的可能性,这可能涵盖了使用 HbIs 监测替代传感器的日常医疗保健。因此,这项研究在心脏骤停预防方面具有理论和实际意义。