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

Publication Type:
Journal Article
Year of Publication:
Journal:
Pac Symp Biocomput
Date Published:
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.

DOI:
10.1142/9789811286421_0014
PubMed ID:
38160278
PubMed Central ID:
PMC10766083
Funding Sources
P30 ES030287
P42 ES016465
R21 ES024718
R33 ES024718