Applied statistical methods for identifying features of heart rate that are associated with nicotine vaping.

IF 2.7 3区 医学 Q2 PSYCHOLOGY, CLINICAL
Puyang Zhao, James J Yang, Anne Buu
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引用次数: 0

Abstract

Background: Wearable devices have been increasingly adopted to collect physiological data such as heart rate that may infer momentary risk of substance use. Yet, innovative methods capable for handling these complex time series data as presented in the statistics or data science literature may not be accessible to substance use researchers.Objectives: This study introduces a series of statistical methods to analyze heart rate data and identify features that are associated with nicotine vaping.Methods: Nontechnical description of the methods coupled with the information about open-source software packages that implemented these methods was provided. The analytical procedure included 5 steps: (1) de-noising by the singular spectrum analysis (SSA); (2) sleep region identification by the Sum of Single Effects (SuSiE) model; (3) repeated heart rate pattern identification by the matrix profile; (4) dimension reduction by the linear regression; and (5) comparing repeated heart rate patterns across non-vaping and vaping regions by the linear mixed model. Secondary analysis was conducted on heart rate and ecological momentary assessment (EMA) data collected from 35 young adult e-cigarette users (66% female) for 7 days.Results: Effectiveness of the methods was demonstrated by graphical presentations showing that the extracted features characterize sleep patterns and heart rate changes before and after vaping events quite well. Secondary analysis found that heart rate was higher and changed faster before vaping.Conclusion: Statistical methods can effectively extract useful features from heart rate data that may inform momentary vaping risk and optimal timings for delivering messages in mobile-phone based interventions.

应用统计方法识别与尼古丁电子烟有关的心率特征。
背景:可穿戴设备越来越多地用于收集心率等生理数据,这些数据可以推断药物使用的瞬间风险。然而,能够处理统计或数据科学文献中提出的这些复杂时间序列数据的创新方法可能无法为物质使用研究人员所用。目的:本研究引入了一系列统计方法来分析心率数据,并识别与尼古丁电子烟相关的特征。方法:提供方法的非技术描述以及实现这些方法的开源软件包的信息。分析过程包括5个步骤:(1)奇异谱分析(SSA)去噪;(2)单效应和(Sum of Single Effects, SuSiE)模型识别睡眠区域;(3)利用矩阵轮廓识别重复心率模式;(4)线性回归降维;(5)通过线性混合模型比较非吸电子烟和吸电子烟地区的重复心率模式。对35名年轻成年电子烟使用者(66%为女性)收集的7天心率和生态瞬时评估(EMA)数据进行了二次分析。结果:该方法的有效性通过图形演示证明了提取的特征很好地描述了吸电子烟事件前后的睡眠模式和心率变化。二次分析发现,在吸电子烟之前,心率更高,变化更快。结论:统计方法可以有效地从心率数据中提取有用的特征,这些特征可能会为基于移动电话的干预提供瞬时电子烟风险和传递信息的最佳时机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.70
自引率
3.70%
发文量
68
期刊介绍: The American Journal of Drug and Alcohol Abuse (AJDAA) is an international journal published six times per year and provides an important and stimulating venue for the exchange of ideas between the researchers working in diverse areas, including public policy, epidemiology, neurobiology, and the treatment of addictive disorders. AJDAA includes a wide range of translational research, covering preclinical and clinical aspects of the field. AJDAA covers these topics with focused data presentations and authoritative reviews of timely developments in our field. Manuscripts exploring addictions other than substance use disorders are encouraged. Reviews and Perspectives of emerging fields are given priority consideration. Areas of particular interest include: public health policy; novel research methodologies; human and animal pharmacology; human translational studies, including neuroimaging; pharmacological and behavioral treatments; new modalities of care; molecular and family genetic studies; medicinal use of substances traditionally considered substances of abuse.
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