Akinyemi Oluwasegun A, Fasokun Mojisola E, Babalola Oluranti, Adubi Oreoluwa, Awolumate Oluwatayo J, Agunwa Nnaemeka, Belie Funmilola, Ikugbayigbe Seun A, Hughes Kakra, Micheal Miriam
Health Policy and Management, University of Maryland School of Public Health, College Park, USA.
Surgery, Howard University College of Medicine, Washington DC, USA.
Cureus. 2024 Sep 15;16(9):e69474. doi: 10.7759/cureus.69474. eCollection 2024 Sep.
Introduction Annually, a significant number of Americans are hospitalized due to heart failure (HF), marking it as an important contributor to morbidity and mortality. It also poses a substantial financial burden and leads to considerable losses in productivity. Socioeconomic disparities may intensify the risk of hospital admissions following HF and worsen patient outcomes. Objective This study investigates the predictive accuracy of different socioeconomic metrics on the risk and outcomes of HF in Maryland. Methodology To evaluate the predictive accuracy of various socioeconomic metrics on the risk of HF, we utilized data from the Maryland State Inpatient Database. Our retrospective analysis covered hospital admissions for HF from 2016 to 2020, correlating these with poverty indicators derived from U.S. Census data at the zip code level with socioeconomic metrics like race/ethnicity, insurance, household median income, and neighborhood distress (Distressed Communities Index (DCI)). Multivariate logistic regression models adjusted for confounders and isolated the impact of socioeconomic factors. Result During the study period, a total of 389,220 cases of HF were reported in the Maryland State Inpatient Database (SID). The majority of these patients were White individuals (56.8%) and female (51.1%), with a median age of 73 years (interquartile range (IQR) 62-82 years). The in-hospital mortality rate was 5.1%, while rates of atrial fibrillation, cardiac arrest, and prolonged hospital stay were 34.4%, 0.3%, and 48.4%, respectively. The studied socioeconomic metrics showed varying predictive power for the risk of HF-related admissions and selected outcomes, with the highest predictive accuracy for neighborhood distress on the risk of HF (AUC = 0.53, 95% CI 0.530-0.532), atrial fibrillation (AUC = 0.479, 95% CI 0.477-0.480), cardiac arrest (AUC = 0.511, 95% CI 0.498-0.525), prolonged hospital stays (AUC = 0.531, 95% CI 0.530-0.532), and mortality (AUC = 0.499, 95% CI 0.496-0.502). Conclusions The Distressed Communities Index demonstrates significant predictive power for assessing the risk of hospital admissions following HF and outcomes among individuals with HF, exceeding factors like insurance, race/ethnicity, and household median income.
引言
每年,大量美国人因心力衰竭(HF)住院,这使其成为发病率和死亡率的重要因素。它还带来了巨大的经济负担,并导致生产力的大幅损失。社会经济差异可能会增加HF后住院的风险,并使患者预后恶化。
目的
本研究调查了不同社会经济指标对马里兰州HF风险和预后的预测准确性。
方法
为了评估各种社会经济指标对HF风险的预测准确性,我们使用了马里兰州住院患者数据库的数据。我们的回顾性分析涵盖了2016年至2020年因HF的住院情况,并将这些情况与邮政编码级别的美国人口普查数据得出的贫困指标以及种族/民族、保险、家庭收入中位数和社区困境(困境社区指数(DCI))等社会经济指标相关联。多元逻辑回归模型对混杂因素进行了调整,并分离了社会经济因素的影响。
结果
在研究期间,马里兰州住院患者数据库(SID)共报告了389,220例HF病例。这些患者大多数是白人(56.8%)和女性(51.1%),中位年龄为73岁(四分位间距(IQR)62 - 82岁)。住院死亡率为5.1%,而房颤、心脏骤停和住院时间延长的发生率分别为34.4%、0.3%和48.4%。所研究的社会经济指标对与HF相关的住院风险和选定的预后显示出不同的预测能力,其中社区困境对HF风险的预测准确性最高(AUC = 0.53,95% CI 0.530 - 0.532),对房颤(AUC = 0.479,95% CI 0.477 - 0.480)、心脏骤停(AUC = 0.511,95% CI 0.498 - 0.525)、住院时间延长(AUC = 0.531,95% CI 0.530 - 0.532)和死亡率(AUC = 0.499,95% CI 0.496 - 0.502)的预测准确性也较高。
结论
困境社区指数在评估HF后住院风险和HF患者的预后方面显示出显著的预测能力,超过了保险、种族/民族和家庭收入中位数等因素。