HRV-Spark:使用Apache Spark计算心率变异性测量。

Xufeng Qu, Yuanyuan Wu, Jinze Liu, Licong Cui
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引用次数: 0

摘要

在过去的几十年里,心率变异性(HRV)分析一直是临床研究中一个重要的有前途的指标。各种设备,特别是心电图(ECG)产生的快速增长的心率数据需要妥善存储和及时处理。迫切需要开发有效的方法来执行基于心电信号的心率波动分析。在本文中,我们引入了一种云计算方法(称为HRV-Spark),利用Apache Spark和[1]中的QRS检测算法并行计算HRV度量。我们使用国家睡眠研究资源中的大规模数据集在亚马逊网络服务(AWS)集群上运行HRV-Spark。我们根据AWS集群中计算节点的数量、输入数据集的大小和计算节点的硬件配置来评估HRV-Spark的性能和可扩展性。结果表明,HRV- spark是一种高效、可扩展的HRV计算方法。
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HRV-Spark: Computing Heart Rate Variability Measures Using Apache Spark.

Heart rate variability (HRV) analysis has been serving as a significant promising marker in clinical research over the last few decades. The rapidly growing heart rate data generated from various devices, particularly the electrocardiograph (ECG), need to be stored properly and processed timely. There is a pressing need to develop efficient approaches for performing HRV analyses based on ECG signals. In this paper, we introduce a cloud computing approach (called HRV-Spark) to compute HRV measures in parallel by leveraging Apache Spark and a QRS detection algorithm in [1]. We ran HRV-Spark on Amazon Web Services (AWS) clusters using large-scale datasets in the National Sleep Research Resource. We evaluated the performance and scalability of HRV-Spark in terms of the number of computing nodes in the AWS cluster, the size of the input datasets, and the hardware configuration of the computing nodes. The results show that HRV-Spark is an efficient and scalable approach for computing HRV measures.

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