Subgroup Variation and Neighborhood Social Gradients-an Analysis of Hypertension and Diabetes Among Asian Patients (New York City, 2014-2017).

Justin M Feldman, Sarah Conderino, Nadia S Islam, Lorna E Thorpe
Author Information
  1. Justin M Feldman: Department of Population Health, NYU School of Medicine, 180 Madison Ave., 5th Floor, New York, NY, 10016, USA. justin.feldman@nyulangone.org. ORCID
  2. Sarah Conderino: Department of Population Health, NYU School of Medicine, 180 Madison Ave., 5th Floor, New York, NY, 10016, USA.
  3. Nadia S Islam: Department of Population Health, NYU School of Medicine, 180 Madison Ave., 5th Floor, New York, NY, 10016, USA.
  4. Lorna E Thorpe: Department of Population Health, NYU School of Medicine, 180 Madison Ave., 5th Floor, New York, NY, 10016, USA.

Abstract

Diabetes and hypertension are socially patterned by individual race/ethnicity and by neighborhood economic context, but distributions among Asian subgroups are undercharacterized. We examined variation in prevalence for both conditions, comparing between US Asian subgroups, including within South Asian nationalities, and comparing within subgroups by neighborhood economic context. We obtained data on a non-probability sample of 633,664 patients ages 18-64 in New York City, NY, USA (2014-2017); 30,138 belonged to one of seven Asian subgroups (Asian Indian, Bangladeshi, Pakistani, Chinese, Korean, Japanese, and Filipino). We used electronic health records to classify disease status. We characterized census tract economic context using the Index of Concentration at the Extremes and estimated prevalence differences using multilevel models. Among Asian men, hypertension prevalence was highest for Filipinos. Among Asian women, hypertension prevalence was highest for Filipinas and Bangladeshis. Diabetes prevalence was highest among Pakistanis and Bangladeshis of both genders, exceeding all other Asian and non-Asian groups. There was consistent evidence of an economic gradient for both conditions, whereby persons residing in the most privileged neighborhood tertile had the lowest disease prevalence. The economic gradient was particularly strong for diabetes among Pakistanis, whose prevalence in the most deprived tertile exceeded that of the most privileged by 9 percentage points (95% CI 3, 14). Only Koreans departed from the trend, experiencing the highest diabetes prevalence in the most privileged tertile. US Asian subgroups largely demonstrate similar neighborhood economic gradients as other groups. Disaggregating Asian subgroups, including within South Asian nationalities, reveals important heterogeneity in prevalence.

Keywords

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Grants

  1. U48DP005008/ACL HHS
  2. U54MD000538-15/NIMHD NIH HHS
  3. U48DP005008/CDC HHS
  4. U54 MD000538/NIMHD NIH HHS
  5. U48 DP005008/NCCDPHP CDC HHS
  6. R01 DK110048/NIDDK NIH HHS
  7. R01DK110048/NIDDK NIH HHS
  8. U54MD000538-15/NIMHD NIH HHS
  9. U48DP005008/CDC HHS
  10. R01DK110048/NIDDK NIH HHS

MeSH Term

Adolescent
Adult
Asian
Diabetes Mellitus
Female
Humans
Hypertension
Male
Middle Aged
New York City
Prevalence
Residence Characteristics
Socioeconomic Factors
Young Adult

Word Cloud

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