Suppr超能文献

特定体力活动和饮食行为对区分青少年后期瘦、正常和超重脂肪组的判别能力。

The Discriminant Power of Specific Physical Activity and Dietary Behaviors to Distinguish between Lean, Normal and Excessive Fat Groups in Late Adolescents.

机构信息

Department of Biostructure, Wroclaw University of Health and Sport Sciences, 51-612 Wrocław, Poland.

出版信息

Nutrients. 2023 Feb 28;15(5):1230. doi: 10.3390/nu15051230.

Abstract

Physical activity (PA) and dietary behaviors (DBs) are crucial determinants of body mass composition. This work is a continuation of the previous study of PA and DBs patterns in late adolescents. The main aim of this work was to assess the discriminant power of PA and dietary behaviors and to identify the set of variables that discriminated participants with low, normal, and excessive fat the most. The results were also canonical classification functions that can allow the classification of individuals into adequate groups. A total of 107 individuals (48.6% male) participated in examinations, which used the International Physical Activity Questionnaire (IPAQ) and Questionnaire of Eating Behaviors (QEB) to assess PA and DBs. The participants self-reported body height, body weight, and BFP, with the accuracy of the data confirmed and empirically verified. Analyses included the metabolic equivalent task (MET) minutes of PA domains and intensity, and indices of healthy and non-healthy DBs, calculated as a sum of the intake frequency of specific food items. At the beginning, Pearson's r-coefficients and chi-squared tests were calculated to study various relationships between variables, while the main considerations were based on discriminant analyses conducted to determine the set of variables with the most power to distinguish between lean, normal, and excessive body fat groups of participants. Results showed weak relationships between PA domains and strong relationships between PA intensity, sitting time, and DBs. Vigorous and moderate PA intensity related positively to healthy behaviors (r = 0.14, r = 0.27, < 0.05), while sitting time related negatively to unhealthy DBs (r = -0.16). Sankey diagrams illustrated that lean persons displayed healthy DBs and low sitting time, while those with excessive fat had non-healthy DBs spent more time sitting. The variables that effectively distinguished between the groups include and domains alongside low-intensity PA, represented by and . The first three variables participated significantly in the optimal discriminant subset ( = 0.002, = 0.010, = 0.01, respectively). The discriminant power of the optimal subset (contained four above-mentioned variables) was average (Wilk's Λ = 0.755) and determined that weak relationships between PA domains and DBs resulted from heterogeneous behaviors and mixed patterns of behaviors. Identifying the trajectory of the frequency flow through specific PA and DBs allowed for well-designed tailored intervention programs to improve healthy habits in adolescents. Therefore, identifying the set of variables that discriminate the most between lean, normal, and excessive fat groups is a suitable target for intervention. The practical achievements are canonical classification functions that can be used to classify (predict) participants in groups based on the three the most discriminating PA and DB variables.

摘要

身体活动(PA)和饮食行为(DBs)是体重组成的关键决定因素。这项工作是对青少年后期 PA 和 DB 模式进行的先前研究的延续。这项工作的主要目的是评估 PA 和饮食行为的判别能力,并确定能够最有效地区分低、正常和过多脂肪参与者的变量集。结果也是典型的分类函数,可以允许将个体分类到合适的组中。共有 107 人(48.6%为男性)参加了检查,使用国际体力活动问卷(IPAQ)和饮食行为问卷(QEB)评估 PA 和 DB。参与者报告了他们的身高、体重和 BFP,数据的准确性得到了确认和经验验证。分析包括 PA 领域的代谢当量任务(MET)分钟数和强度,以及健康和非健康 DBs 的指标,这些指标是特定食物摄入频率的总和。首先,计算了 Pearson r 系数和卡方检验,以研究变量之间的各种关系,而主要考虑因素是基于判别分析进行的,以确定具有最大能力区分参与者的瘦、正常和过多脂肪组的变量集。结果表明,PA 领域之间的关系较弱,而 PA 强度、久坐时间和 DBs 之间的关系较强。剧烈和中度 PA 强度与健康行为呈正相关(r = 0.14,r = 0.27,<0.05),而久坐时间与不健康的 DBs 呈负相关(r = -0.16)。Sankey 图表明,瘦人表现出健康的 DBs 和低久坐时间,而那些脂肪过多的人则有不健康的 DBs 和久坐时间较多。能够有效区分组的变量包括和领域以及低强度 PA,由和表示。前三个变量显著参与了最优判别子集(= 0.002,= 0.010,= 0.01,分别)。最优子集的判别能力(包含上述四个变量)为中等(Wilk's Λ = 0.755),并确定了 PA 领域和 DBs 之间的弱关系是由于行为的异质性和行为模式的混合。确定特定 PA 和 DBs 的频率流轨迹可以设计出精心设计的定制干预计划,以改善青少年的健康习惯。因此,确定能够最有效地区分瘦、正常和过多脂肪组的变量集是干预的合适目标。实用成果是典型的分类函数,可以用于根据三个最具判别力的 PA 和 DB 变量对参与者进行分类(预测)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8435/10005529/2ba3d55dc784/nutrients-15-01230-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验