Social Vulnerability Predictors of Acute Care: Leveraging Health Information Exchange Data to Understand Social Determinants at the Census Tract Level in a Correlational Study

急性护理的社会脆弱性预测因素:利用健康信息交换数据在人口普查区层面理解社会决定因素的相关性研究

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Abstract

BACKGROUND AND AIMS: While geographic social vulnerability is a known predictor of acute care utilization, it is not known which specific vulnerabilities are the best predictors. This is particularly important in rural areas where there are significant disparities. The purpose of this study was to identify social vulnerability predictors of acute care utilization across and within rural counties in Hawai'i. METHODS: This correlational study examined counts of emergency department (ED) visits and inpatient (IP) admissions for any reason by census tract obtained from Hawai'i Health Information Exchange for rural counties in Hawai'i. The overall Social Vulnerability Index (SVI), SVI subthemes, and individual measures that comprise the composites were used as measures of social vulnerability for each census tract. Regression models analyzed counts per population, after adjustments for missing data, where the response variable represents the number of events occurring. Each outcome (number of ED or IP visits) was regressed on a single predictor of social vulnerability for each county and for all counties combined. RESULTS: Across counties, the largest significant effect associated with acute care utilization was overall social vulnerability (ED: IRR = 5.72, 95% CI = 5.55-5.89; IP: IRR = 5.76, 95% CI = 5.42-6.12). The largest effect within Kaua'i County was Racial and Ethnic Minority Status (ED: IRR = 5.38, 95% CI = 5.13-5.64; IP: IRR = 6.30, 95% CI = 5.64-7.03), within Maui County was Housing Type and Transportation (ED: IRR = 6.72, 95% CI = 6.37-7.1; IP: IRR = 4.46, 95% CI = 3.99-5), and within Hawai'i County was Household Characteristics for ED (IRR = 11.50, 95% CI = 10.91-12.12) and No High School Diploma for IP (IRR = 6.33, 95% CI = 5.79-6.93). CONCLUSIONS: Social vulnerability is a significant predictor of acute care utilization across rural areas in Hawai'i. The strongest predictors were different for each county.

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