A Tool to Explore Discrete-Time Data: The Time Series Response Analyser

被引:50
|
作者
Narang, Benjamin J. [1 ]
Atkinson, Greg [2 ]
Gonzalez, Javier T. [1 ]
Betts, James A. [1 ]
机构
[1] Univ Bath, Ctr Nutr Exercise & Metab, Dept Hlth, Bath, Avon, England
[2] Teesside Univ, Sch Hlth & Life Sci, Middlesbrough, Cleveland, England
关键词
incremental area under the curve; postprandial; temporal response; time series data; GLYCEMIC INDEX; ORAL GLUCOSE; MEAL; PEAK; VALIDITY; HORMONE; HUMANS; MUSCLE;
D O I
10.1123/ijsnem.2020-0150
中图分类号
R15 [营养卫生、食品卫生]; TS201 [基础科学];
学科分类号
100403 ;
摘要
The analysis of time series data is common in nutrition and metabolism research for quantifying the physiological responses to various stimuli. The reduction of many data from a time series into a summary statistic(s) can help quantify and communicate the overall response in a more straightforward way and in line with a specific hypothesis. Nevertheless, many summary statistics have been selected by various researchers, and some approaches are still complex. The time-intensive nature of such calculations can be a burden for especially large data sets and may, therefore, introduce computational errors, which are difficult to recognize and correct. In this short commentary, the authors introduce a newly developed tool that automates many of the processes commonly used by researchers for discrete time series analysis, with particular emphasis on how the tool may be implemented within nutrition and exercise science research.
引用
收藏
页码:374 / 381
页数:8
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