Expanding the access of wearable silicone wristbands in community-engaged research through best practices in data analysis and integration.

Lisa M Bramer, Holly M Dixon, David J Degnan, Diana Rohlman, Julie B Herbstman, Kim A Anderson, Katrina M Waters
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Abstract

Wearable silicone wristbands are a rapidly growing exposure assessment technology that offer researchers the ability to study previously inaccessible cohorts and have the potential to provide a more comprehensive picture of chemical exposure within diverse communities. However, there are no established best practices for analyzing the data within a study or across multiple studies, thereby limiting impact and access of these data for larger meta-analyses. We utilize data from three studies, from over 600 wristbands worn by participants in New York City and Eugene, Oregon, to present a first-of-its-kind manuscript detailing wristband data properties. We further discuss and provide concrete examples of key areas and considerations in common statistical modeling methods where best practices must be established to enable meta-analyses and integration of data from multiple studies. Finally, we detail important and challenging aspects of machine learning, meta-analysis, and data integration that researchers will face in order to extend beyond the limited scope of individual studies focused on specific populations.

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通过数据分析和整合方面的最佳实践,扩大可穿戴硅胶腕带在社区参与式研究中的使用范围。
可穿戴硅胶腕带是一种快速发展的暴露评估技术,它为研究人员提供了研究以前无法接触到的群体的能力,并有可能更全面地反映不同社区的化学品暴露情况。然而,目前还没有既定的最佳实践来分析一项研究或多项研究中的数据,从而限制了这些数据对大型荟萃分析的影响和使用。我们利用纽约市和俄勒冈州尤金市参与者佩戴的 600 多条腕带上的三项研究数据,首次提交了一份详细说明腕带数据特性的手稿。我们进一步讨论了常用统计建模方法中的关键领域和注意事项,并提供了具体实例,这些领域和注意事项必须建立最佳实践,才能进行荟萃分析和整合来自多项研究的数据。最后,我们详细介绍了研究人员在机器学习、荟萃分析和数据整合方面将面临的重要挑战,以便超越以特定人群为重点的单项研究的有限范围。
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