Community-Engaged Survey Approach to Pandemic Impacts on Marginalized Communities, Massachusetts, 2020-2021.
Lauren F CardosoTa-Wei LinJustine EganCaroline StackSabrina SelkElizabeth BeatrizBen WoodGlory SongKathleen FitzsimmonsEmily H SparerAbigail AtkinsW W Sanouri UrsprungPublished in: American journal of public health (2024)
Objectives. To describe how an innovative, community-engaged survey illuminated previously unmeasured pandemic inequities and informed health equity investments. Methods. The methodological approach of Massachusetts' COVID-19 Community Impact Survey, a cross-sectional online survey, was driven by key health equity principles: prioritizing community engagement, gathering granular and intersectional data, capturing root causes, elevating community voices, expediting analysis for timeliness, and creating data-to-action pathways. Data collection was deployed statewide in 11 languages from 2020 to 2021. Results. The embedded equity principles resulted in a rich data set and enabled analyses of populations previously undescribed. The final sample included 33 800 respondents including unprecedented numbers of populations underrepresented in traditional data sources. Analyses indicated that pandemic impacts related to basic needs, discrimination, health care access, workplace protections, employment, and mental health disproportionately affected these priority populations, which included Asian American/Pacific Islanders and parents. Conclusions. Equity-centered data approaches allow for analyses of populations previously invisible in surveillance data, enable more equitable public health action, and are both possible and necessary to deploy in state health departments. ( Am J Public Health . Published online ahead of print August 28, 2024:e1-e11. https://doi.org/10.2105/AJPH.2024.307800).
Keyphrases
- mental health
- public health
- healthcare
- electronic health record
- coronavirus disease
- sars cov
- big data
- health information
- cross sectional
- social media
- randomized controlled trial
- risk assessment
- mental illness
- systematic review
- data analysis
- global health
- machine learning
- climate change
- health promotion
- deep learning
- meta analyses