Cynthia Williams, Nels Paulson, Jeffrey Sweat, Rachel Rutledge, Margaret R Paulson, Michael Maniaci, Charles D Burger
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The study examined 1433 patients; 53% were men, 90.58% were White, and 68.2% were married. The mortality rate was 2.8%, 30-day readmission was 11.4%, and escalation back to brick-and-mortar hospitals was 8.7%. At the patient level, older age and male gender were significant predictors of 30-day mortality (<i>P</i>-value <0.05), older age was a significant predictor of 30-day readmission (<i>P</i>-value <0.05), and severity of illness was a significant predictor for readmission, mortality, and escalation back to the brick-and-mortar hospital (<i>P</i>-value <0.01). Patients with COVID-19 were less likely to experience readmission, mortality, or escalations (<i>P</i>-value <0.05). At the community level, the Gini Index and internet access were significant predictors of mortality (<i>P</i>-value <0.05). Race and ethnicity did not significantly predict adverse outcomes (<i>P</i>-value >0.05). This study showed promise in equitable treatment of diverse patient populations. The authors discuss and address health equity issues to approximate the vision of inclusive HaH delivery.</p>","PeriodicalId":20396,"journal":{"name":"Population Health Management","volume":" ","pages":"168-173"},"PeriodicalIF":1.8000,"publicationDate":"2024-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Individual- and Community-Level Predictors of Hospital-at-Home Outcomes.\",\"authors\":\"Cynthia Williams, Nels Paulson, Jeffrey Sweat, Rachel Rutledge, Margaret R Paulson, Michael Maniaci, Charles D Burger\",\"doi\":\"10.1089/pop.2023.0297\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Advanced Care at Home is a Mayo Clinic hospital-at-home (HaH) program that provides hospital-level care for patients. The study examines patient- and community-level factors that influence health outcomes. 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Individual- and Community-Level Predictors of Hospital-at-Home Outcomes.
Advanced Care at Home is a Mayo Clinic hospital-at-home (HaH) program that provides hospital-level care for patients. The study examines patient- and community-level factors that influence health outcomes. The authors performed a retrospective study using patient data from July 2020 to December 2022. The study includes 3 Mayo Clinic centers and community-level data from the Agency for Healthcare Research and Quality. The authors conducted binary logistic regression analyses to examine the relationship among the independent variables (patient- and community-level characteristics) and dependent variables (30-day readmission, mortality, and escalation of care back to the brick-and-mortar hospital). The study examined 1433 patients; 53% were men, 90.58% were White, and 68.2% were married. The mortality rate was 2.8%, 30-day readmission was 11.4%, and escalation back to brick-and-mortar hospitals was 8.7%. At the patient level, older age and male gender were significant predictors of 30-day mortality (P-value <0.05), older age was a significant predictor of 30-day readmission (P-value <0.05), and severity of illness was a significant predictor for readmission, mortality, and escalation back to the brick-and-mortar hospital (P-value <0.01). Patients with COVID-19 were less likely to experience readmission, mortality, or escalations (P-value <0.05). At the community level, the Gini Index and internet access were significant predictors of mortality (P-value <0.05). Race and ethnicity did not significantly predict adverse outcomes (P-value >0.05). This study showed promise in equitable treatment of diverse patient populations. The authors discuss and address health equity issues to approximate the vision of inclusive HaH delivery.
期刊介绍:
Population Health Management provides comprehensive, authoritative strategies for improving the systems and policies that affect health care quality, access, and outcomes, ultimately improving the health of an entire population. The Journal delivers essential research on a broad range of topics including the impact of social, cultural, economic, and environmental factors on health care systems and practices.
Population Health Management coverage includes:
Clinical case reports and studies on managing major public health conditions
Compliance programs
Health economics
Outcomes assessment
Provider incentives
Health care reform
Resource management
Return on investment (ROI)
Health care quality
Care coordination.