PROJECT SUMMARY/ABSTRACT Background: Asthma, a chronic condition that affects over five million US children, is more prevalent among racial/ethnic minority children and those from low-income families. Despite advances in asthma treatment, asthma clinical care and mortality rates in children have plateaued, and disparities persist across racial/ethnic and socioeconomic groups. I propose a training and research plan that will deepen my understanding of evidence-based clinical asthma care and the differential impacts of multifactorial causes underlying disparities in childhood asthma, while launching an innovative, policy-relevant research portfolio that combines multi- source, linked data to conduct “natural policy experiments” regarding Medicaid managed care (MMC) plans. Objective: To produce evidence regarding the “add-on” benefits of MMC plans and their relative effects on outcomes of children with asthma, accounting for factors at individual, family, and neighborhood levels. This evidence will be used to simulate different ways of assigning patients to MMC plans that best serve their needs and, ultimately, reduce health disparities. Aim 1. To examine evidence-based indicators of pediatric asthma care quality and outcomes across different MMC plans. Aim 2. To evaluate the role of individual, family, and neighborhood contributors—including sociodemographic, economic, and biological (comorbidity) risk factors— associated with asthma outcomes. Aim 3. To develop an algorithm that matches each patient with an MMC plan that helps them achieve the best possible asthma outcomes. Research Design: Natural experiment analyses and simulation methods using administrative longitudinal linked datasets from 2000-2021. Methods: I will collect detailed data on MMC plan benefits and rely on established quasi-random assignment of Medicaid beneficiaries to MMC plans, to specify a set of regression models aimed at estimating causal effects of plan benefits on asthma-related outcomes, individually and relative to the social determinants of health. These analyses will use individual and geographic-level linked South Carolina datasets that contain health, economic, sociodemographic outcomes, and comorbidities: Medicaid; Vital Statistics; Department of Education and Department of Juvenile Justice records; American Community Survey data. I will use simulation methods to evaluate child health outcomes under differing Medicaid policy scenarios, to match each child to an optimal MMC plan. Training Plan: To complement my existing skills in economics and data analysis and support my path to independence, I will gain essential training in: 1. Evidence and circumstances of clinical asthma care that will aid in constructing precise plan quality measures; 2. Stakeholder engagement that is key to (a) confirming details of plan coverage with MMC plans and leadership, (b) informing and disseminating research results, and (c) engaging with other states’ Medicaid programs in the future...