基于云的心血管风险评估电子健康新系统

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
G. Tatsis, G. Baldoumas, V. Christofilakis, P. Kostarakis, P. Varotsos, N. Sarlis, E. Skordas, A. Bechlioulis, L. Michalis, K. K. Naka
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引用次数: 0

摘要

心脏性猝死(SCD)是导致全球死亡的主要原因之一。许多人在 SCD 事件发生前没有任何心血管症状。因此,在此类事件发生前识别风险的能力极其有限。我们亟需利用新的电子技术及时准确地预测 SCD。在这项工作中,介绍了一种基于云的新型创新电子健康系统,该系统可根据自然时间熵变异性分析方法对 SCD 风险进行分层。这种创新的无创系统可在任何环境下轻松使用。该电子健康云系统使用了 203 人的数据进行评估,其中包括 SCD 高风险慢性心力衰竭 (CHF) 患者和年龄匹配的健康对照组。统计分析在两个持续时间不同的时间窗口中进行;第一个时间窗口持续时间为 20 分钟,第二个时间窗口为 10 分钟。利用现代机器学习方法,对第一个窗口和第二个窗口(半小时)进行了分类,以区分 CHF 患者和健康对照组。结果表明,即使是 10 分钟时间窗内采集的样本,也能很好地区分两组。在将这一新型电子健康云系统用于日常临床实践之前,还需要进行更大规模的研究,以进一步验证其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new e-health cloud-based system for cardiovascular risk assessment
Sudden cardiac death (SCD) is one of the leading causes of death worldwide. Many individuals have no cardiovascular symptoms before the SCD event. As a result, the ability to identify the risk before such an event is extremely limited. Timely and accurate prediction of SCD using new electronic technologies is greatly needed. In this work, a new innovative e-health cloud-based system is presented that allows a stratification of SCD risk based on the method of natural time entropy variability analysis. This innovative, non-invasive system can be used easily in any setting. The e-health cloud-based system was evaluated using data from a total of 203 individuals, patients with chronic heart failure (CHF) who are at high risk of SCD and age-matched healthy controls. Statistical analysis was performed in two-time windows of different duration; the first-time window had a duration of 20 min, while the second was 10 min. Employing modern methods of machine learning, classifiers for the discrimination of CHF patients from the healthy controls were obtained for the first as well as the second (half-time) window. The results indicated a very good separation between the two groups, even from samples taken in a 10-min time window. Larger studies are needed to further validate this novel e-health cloud-based system before its use in everyday clinical practice.
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