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众包寻找新的儿童肥胖成年预测因子。

Crowdsourcing novel childhood predictors of adult obesity.

机构信息

Department of Communication Science, University of Amsterdam, Amsterdam, the Netherlands.

VTT Technical Research Centre of Finland, Tampere, Finland.

出版信息

PLoS One. 2014 Feb 5;9(2):e87756. doi: 10.1371/journal.pone.0087756. eCollection 2014.

Abstract

Effective and simple screening tools are needed to detect behaviors that are established early in life and have a significant influence on weight gain later in life. Crowdsourcing could be a novel and potentially useful tool to assess childhood predictors of adult obesity. This exploratory study examined whether crowdsourcing could generate well-documented predictors in obesity research and, moreover, whether new directions for future research could be uncovered. Participants were recruited through social media to a question-generation website, on which they answered questions and were able to pose new questions that they thought could predict obesity. During the two weeks of data collection, 532 participants (62% female; age  =  26.5±6.7; BMI  =  29.0±7.0) registered on the website and suggested a total of 56 unique questions. Nineteen of these questions correlated with body mass index (BMI) and covered several themes identified by prior research, such as parenting styles and healthy lifestyle. More importantly, participants were able to identify potential determinants that were related to a lower BMI, but have not been the subject of extensive research, such as parents packing their children's lunch to school or talking to them about nutrition. The findings indicate that crowdsourcing can reproduce already existing hypotheses and also generate ideas that are less well documented. The crowdsourced predictors discovered in this study emphasize the importance of family interventions to fight obesity. The questions generated by participants also suggest new ways to express known predictors.

摘要

需要有效的、简单的筛查工具来检测生命早期形成的行为,这些行为对生命后期的体重增加有重大影响。众包可能是一种新颖且具有潜在用途的工具,可以评估儿童时期肥胖的预测因素。这项探索性研究考察了众包是否可以在肥胖研究中产生有充分记录的预测因素,并且是否可以揭示未来研究的新方向。通过社交媒体向参与者招募到一个问题生成网站,他们在该网站上回答问题,并可以提出他们认为可以预测肥胖的新问题。在两周的数据收集期间,532 名参与者(62%为女性;年龄=26.5±6.7;BMI=29.0±7.0)在该网站上注册,并总共提出了 56 个独特的问题。其中 19 个问题与体重指数(BMI)相关,涵盖了先前研究确定的几个主题,例如父母的养育方式和健康的生活方式。更重要的是,参与者能够识别与较低 BMI 相关的潜在决定因素,但这些因素尚未得到广泛研究,例如父母为孩子准备午餐带到学校或与他们谈论营养。研究结果表明,众包可以复制已经存在的假设,也可以生成尚未有充分记录的想法。本研究中发现的众包预测因素强调了家庭干预对抗肥胖的重要性。参与者提出的问题也提出了表达已知预测因素的新方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e25d/3914836/e0074201dba5/pone.0087756.g001.jpg

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