9 research outputs found
Do Employees From Less-Healthy Communities Use More Care and Cost More? Seeking to Establish a Business Case for Investment in Community Health.
INTRODUCTION: Few studies have examined the impact of community health on employers. We explored whether employed adults and their adult dependents living in less-healthy communities in the greater Philadelphia region used more care and incurred higher costs to employers than employees from healthier communities.
METHODS: We used a multi-employer database to identify adult employees and dependents with continuous employment and mapped them to 31 zip code regions. We calculated community health scores at the regional level, by using metrics similar to the Robert Wood Johnson Foundation (RWJF) County Health Rankings but with local data. We used descriptive analyses and multilevel linear modeling to explore relationships between community health and 3 outcome variables: emergency department (ED) use, hospital use, and paid claims. Business leaders reviewed findings and offered insights on preparedness to invest in community health improvement.
RESULTS: Poorer community health was associated with high use of ED services, after controlling for age and sex. After including a summary measure of racial composition at the zip code region level, the relationship between community health and ED use became nonsignificant. No significant relationships between community health and hospitalizations or paid claims were identified. Business leaders expressed interest in further understanding health needs of communities where their employees live.
CONCLUSION: The health of communities in which adult employees and dependents live was associated with ED use, but similar relationships were not seen for hospitalizations or paid claims. This finding suggests a need for more primary care access. Despite limited quantitative evidence, business leaders expressed interest in guidance on investing in community health improvement
Sewer System Alternatives Evaluation for Potential Creswell Area Expansion in Harford County
Final project for ENCE422: Project Cost Accounting and Economics (Fall 2018).
University of Maryland, College Park.This report summarizes the findings of the ENCE422 Fall 2018 class term project. Students were
tasked with evaluating sewer system alternatives for the Creswell area expansion in Harford
County. Student groups were to consider environmental impacts, community/social impacts,
and perform financial analysis for the alternatives they chose to evaluate. This report extracts
information from 14 separate team presentations and synthesizes it around the following
structure; 1. Systems that Utilize Septic Tanks
a. Traditional Septic System
b. Orenco Effluent System
c. Small Diameter Gravity Sewer System
2. System that Do Not Utilize Septic Tanks
a. Traditional Gravity System
b. Vacuum System
c. Grinder Pump SystemHarford Count
Cancer Informatics for Cancer Centers: Scientific Drivers for Informatics, Data Science, and Care in Pediatric, Adolescent, and Young Adult Cancer
Cancer Informatics for Cancer Centers (CI4CC) is a grassroots, nonprofit 501c3 organization intended to provide a focused national forum for engagement of senior cancer informatics leaders, primarily aimed at academic cancer centers anywhere in the world but with a special emphasis on the 70 National Cancer Institute-funded cancer centers. This consortium has regularly held topic-focused biannual face-to-face symposiums. These meetings are a place to review cancer informatics and data science priorities and initiatives, providing a forum for discussion of the strategic and pragmatic issues that we faced at our respective institutions and cancer centers. Here, we provide meeting highlights from the latest CI4CC Symposium, which was delayed from its original April 2020 schedule because of the COVID-19 pandemic and held virtually over three days (September 24, October 1, and October 8) in the fall of 2020. In addition to the content presented, we found that holding this event virtually once a week for 6 hours was a great way to keep the kind of deep engagement that a face-to-face meeting engenders. This is the second such publication of CI4CC Symposium highlights, the first covering the meeting that took place in Napa, California, from October 14-16, 2019. We conclude with some thoughts about using data science to learn from every child with cancer, focusing on emerging activities of the National Cancer Institute\u27s Childhood Cancer Data Initiative
Trans-Ethnic Fine-Mapping of Lipid Loci Identifies Population-Specific Signals and Allelic Heterogeneity That Increases the Trait Variance Explained
Genome-wide association studies (GWAS) have identified ~ 100 loci associated with blood lipid levels, but much of the trait
heritability remains unexplained, and at most loci the identities of the trait-influencing variants remain unknown. We
conducted a trans-ethnic fine-mapping study at 18, 22, and 18 GWAS loci on the Metabochip for their association with
triglycerides (TG), high-density lipoprotein cholesterol (HDL-C), and low-density lipoprotein cholesterol (LDL-C), respectively,
in individuals of African American (n = 6,832), East Asian (n = 9,449), and European (n = 10,829) ancestry. We aimed to
identify the variants with strongest association at each locus, identify additional and population-specific signals, refine
association signals, and assess the relative significance of previously described functional variants. Among the 58 loci, 33
exhibited evidence of association at P,161024 in at least one ancestry group. Sequential conditional analyses revealed that
ten, nine, and four loci in African Americans, Europeans, and East Asians, respectively, exhibited two or more signals. At
these loci, accounting for all signals led to a 1.3- to 1.8-fold increase in the explained phenotypic variance compared to the
strongest signals. Distinct signals across ancestry groups were identified at PCSK9 and APOA5. Trans-ethnic analyses
narrowed the signals to smaller sets of variants at GCKR, PPP1R3B, ABO, LCAT, and ABCA1. Of 27 variants reported previously
to have functional effects, 74% exhibited the strongest association at the respective signal. In conclusion, trans-ethnic highdensity
genotyping and analysis confirm the presence of allelic heterogeneity, allow the identification of population-specific
variants, and limit the number of candidate SNPs for functional studies