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Impact of heat on emergency hospital admissions related to kidney diseases in Texas: Uncovering racial disparities

  • Chunyu Guo
  • , Erjia Ge
  • , Manzhu Yu
  • , Changwei Li
  • , Xiangqian Lao
  • , Changwei Li
  • , Jason Glaser
  • , Yongqun He
  • , Marina Almeida-Silva
  • , Sisi Meng
  • , Wei-Chung Su
  • , Junfeng Zhang
  • , Shao Lin
  • , Kai Zhang
  • University at Albany-State University of New York
  • University of Toronto
  • Pennsylvania State University
  • Tulane University School of Public Health and Tropical Medicine
  • Bridgewater College
  • Deptartment of Mathematics, City University
  • La Isla Network
  • Department of Biological Chemistry, The University of Michigan
  • Escola Superior de Tecnologia da Saúde de Lisboa
  • OSEAN—Outermost Regions Sustainable Ecosystem for Entrepreneurship and Innovation
  • University of Notre Dame
  • University of Texas Houston School of Public Health
  • Duke University
  • School of Public Health

Research output: Contribution to journalReview articlepeer-review

9 Scopus citations

Abstract

Background and objective: While impact of heat exposure on human health is well-documented, limited research exists on its effect on kidney disease hospital admissions especially in Texas, a state with diverse demographics and a high heat-related death rate. We aimed to explore the link between high temperatures and emergency kidney disease hospital admissions across 12 Texas Metropolitan Statistical Areas (MSAs) from 2004 to 2013, considering causes, age groups, and ethnic populations. Methods: To investigate the correlation between high temperatures and emergency hospital admissions, we utilized MSA-level hospital admission and weather data. We employed a Generalized Additive Model to calculate the association specific to each MSA, and then performed a random effects meta-analysis to estimate the overall correlation. Analyses were stratified by age groups, admission causes, and racial/ethnic disparities. Sensitivity analysis involved lag modifications and ozone inclusion in the model. Results: Our analysis found that each 1 °C increase in temperature was associated with a 1.73 % (95 % CI [1.43, 2.03]) increase in hospital admissions related to all types of kidney diseases. Besides, the effect estimates varied across different age groups and specific types of kidney diseases. We observed statistically significant associations between high temperatures and emergency hospital admissions for Acute Kidney Injury (AKI) (3.34 % (95 % CI [2.86, 3.82])), Kidney Stone (1.76 % (95 % CI [0.94, 2.60])), and Urinary Tract Infections (UTI) (1.06 % (95 % CI [0.61, 1.51])). Our research findings indicate disparities in certain Metropolitan Statistical Areas (MSAs). In Austin, Houston, San Antonio, and Dallas metropolitan areas, the estimated effects are more pronounced for African Americans when compared to the White population. Additionally, in Dallas, Houston, El Paso, and San Antonio, the estimated effects are greater for the Hispanic group compared to the Non-Hispanic group. Conclusions: This study finds a strong link between higher temperatures and kidney disease-related hospital admissions in Texas, especially for AKI. Public health actions are necessary to address these temperature-related health risks, including targeted kidney health initiatives. More research is needed to understand the mechanisms and address health disparities among racial/ethnic groups.
Original languageEnglish
Article number168377
JournalScience of the Total Environment
Volume909
DOIs
StatePublished - Jan 20 2024

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Keywords

  • Emergency hospital admission
  • Heat
  • High temperature
  • Kidney disease

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