Adams E Kathleen, Kramer Michael R, Joski Peter J, Coloske Marissa, Dunlop Anne L
Department of Health Policy and Management, Rollins School of Public Health Emory University, Atlanta, GA (Dr Adams, Mr Joski, and Ms Coloske).
Department of Epidemiology, Rollins School of Public Health, Emory University Atlanta, GA (Dr Kramer).
AJOG Glob Rep. 2023 Dec 26;4(1):100303. doi: 10.1016/j.xagr.2023.100303. eCollection 2024 Feb.
Studies find that delivery hospital explains a significant portion of the Black-White gap in severe maternal morbidity. No such studies have focused on the US Southeast, where racial disparities are widest, and few have examined the relative contribution of hospital, residential, and maternal factors.
This study aimed to estimate the portion of Georgia's Black-White gap in severe maternal morbidity during delivery through 42 days postpartum explained by hospital, residential, and maternal factors.
Using linked Georgia hospital discharge, birth, and fetal death records for 2016 through 2020, we identified 413,124 deliveries to non-Hispanic White (229,357; 56%) or Black (183,767; 44%) individuals. We linked hospital data from the American Hospital Association and Center for Medicare and Medicaid Services, and area data from the Area Resource File and American Community Survey. We identified severe maternal morbidity indicator conditions during delivery or subsequent hospitalizations through 42 days postpartum. Using race-specific logistic models followed by a decomposition technique, we estimated the portion of the Black-White severe maternal morbidity gap explained by the following: (1) sociodemographic factors (age, education, marital status, and nativity), (2) medical conditions (diabetes mellitus, gestational diabetes, chronic hypertension, gestational hypertension or preeclampsia, and smoking), (3) obstetrical factors (singleton or multiple, and birth order); (4) access to care (no or third trimester care, and payer), (5) hospital factors that are time-varying (delivery volume, deliveries per full-time equivalent nurse, doctor communication, patient safety, and adverse event composite score) or measured time-invariant characteristics (ownership, profit status, religious affiliation, teaching status, and perinatal level), and (6) residential factors (county urban/rural classification, percent uninsured women of reproductive age, obstetrician-gynecologists per women of reproductive age, number of federally-qualified and community health centers, medically-underserved area [yes/no], and census tract neighborhood deprivation index). We estimated models with and without hospital fixed-effects, which account for unobserved time-invariant hospital characteristics such as within-hospital care processes or unmeasured hospital-specific factors.
There was 1.8 times the rate of severe maternal morbidity per 100 discharges among non-Hispanic Black (3.15) than among White (1.73) individuals, with an explained proportion of 30.4% in models without and 49.8% in models with hospital fixed-effects. In the latter, hospital fixed-effects explained the largest portion of the Black-White severe maternal morbidity gap (15.1%) followed by access to care (14.9%) and sociodemographic factors (14.4%), with residential factors being protective for Black individuals (-7.5%). Smaller proportions were explained by medical (5.6%), obstetrical (4.0%), and time-varying hospital factors (3.2%). Within each category, the largest explanatory portion was payer type (13.3%) for access to care, marital status (10.3%) for sociodemographic, gestational hypertension (3.3%) for medical, birth order (3.6%) for obstetrical, and patient safety indicator (3.1%) for time-varying hospital factors.
Models with hospital fixed-effects explain a greater proportion of Georgia's Black-White severe maternal morbidity gap than models without them, thereby supporting the point that differences in care processes or other unmeasured factors within the same hospital translate into racial differences in severe maternal morbidity during delivery through 42 days postpartum. Research is needed to discern and ameliorate sources of within-hospital differences in care. The substantial proportion of the gap attributable to racial differences in access to care and sociodemographic factors points to other needed policy interventions.
研究发现,分娩医院在严重孕产妇发病率的黑白差距中占很大比例。目前尚无此类研究聚焦于美国东南部,该地区种族差异最为显著,且很少有研究考察医院、居住地和孕产妇因素的相对贡献。
本研究旨在估计佐治亚州分娩至产后42天期间严重孕产妇发病率的黑白差距中,由医院、居住地和孕产妇因素所解释的部分。
利用佐治亚州2016年至2020年的医院出院、出生和胎儿死亡记录的关联数据,我们确定了413,124例非西班牙裔白人(229,357例;56%)或黑人(183,767例;44%)的分娩。我们将美国医院协会和医疗保险与医疗补助服务中心的医院数据,以及地区资源文件和美国社区调查的地区数据进行了关联。我们确定了分娩期间或产后42天内后续住院期间的严重孕产妇发病率指标情况。使用种族特异性逻辑模型,随后采用分解技术,我们估计了以下因素所解释的黑白严重孕产妇发病率差距的部分:(1)社会人口学因素(年龄、教育程度、婚姻状况和出生地),(2)医疗状况(糖尿病、妊娠期糖尿病、慢性高血压、妊娠期高血压或先兆子痫,以及吸烟),(3)产科因素(单胎或多胎,以及产次);(4)获得医疗服务的情况(无或孕晚期护理,以及支付方),(5)随时间变化的医院因素(分娩量、每全职等效护士的分娩数、医生沟通、患者安全和不良事件综合评分)或测量的时不变特征(所有权、盈利状况、宗教归属、教学状况和围产期水平),以及(6)居住因素(县城乡分类、育龄未参保妇女百分比、每育龄妇女的妇产科医生数量、联邦合格和社区卫生中心数量、医疗服务不足地区[是/否],以及人口普查区邻里贫困指数)。我们估计了有和没有医院固定效应的模型,医院固定效应考虑了未观察到的时不变医院特征,如医院内部护理流程或未测量的医院特定因素。
每100例出院中,非西班牙裔黑人的严重孕产妇发病率(3.15)是白人(1.73)的1.8倍,在没有医院固定效应的模型中,可解释比例为30.4%,在有医院固定效应的模型中为49.8%。在后者中,医院固定效应解释了黑白严重孕产妇发病率差距的最大部分(15.1%),其次是获得医疗服务的情况(14.9%)和社会人口学因素(14.4%),居住因素对黑人个体具有保护作用(-7.5%)。医疗(5.6%)、产科(4.0%)和随时间变化的医院因素(3.2%)解释的比例较小。在每个类别中,获得医疗服务的情况中最大的解释部分是支付方类型(13.3%),社会人口学因素中是婚姻状况(10.3%),医疗因素中是妊娠期高血压(3.3%),产科因素中是产次(3.6%),随时间变化的医院因素中是患者安全指标(3.1%)。
与没有医院固定效应的模型相比,有医院固定效应的模型解释了佐治亚州黑白严重孕产妇发病率差距的更大比例,从而支持了这样一种观点,即同一医院内护理流程或其他未测量因素的差异转化为分娩至产后42天期间严重孕产妇发病率的种族差异。需要进行研究以识别和改善医院内部护理差异的来源。差距中很大一部分归因于获得医疗服务的种族差异和社会人口学因素,这表明还需要其他政策干预措施。