Novel Approach to Identify Severe Maternal Morbidity Clusters: A Latent Class Analysis.

IF 1.5 4区 医学 Q3 OBSTETRICS & GYNECOLOGY
Andrea J Ibarra, Samia H Lopa, BaDoi N Phan, Katherine Himes, Meryl A Butters, Stacy Beck, Janet M Catov
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引用次数: 0

Abstract

Objective:  Whether clusters exist within severe maternal morbidity (SMM), a set of life-threatening heterogeneous conditions, is not known. Our primary objective was to identify SMM clusters using a data-driven clustering technique, their associated predictors and outcomes.

Study design:  From 2008 to 2017, we used a delivery database supplemented by state data and medical record abstraction from a single institution in Pennsylvania. To identify SMM clusters, we applied latent class modeling that included 23 conditions defined by 21 Centers for Disease Control SMM indicators, intensive care unit (ICU) admission, or prolonged postpartum length of stay. Logistic regression models estimated risk for SMM clusters and associations between clusters and maternal and neonatal outcomes.

Results:  Among 97,492 deliveries, 2.7% (N = 2,666) experienced SMM by any of the 23 conditions. Four clusters were identified as archetypes of SMM. Deliveries labeled as Hemorrhage (37.7%, N = 1,004) were characterized by blood transfusions and sickle cell anemia; Critical Care (28.1%, N = 748) by ICU admission and amniotic embolism; Vascular (24.5%, N = 654) by cerebrovascular conditions; and Shock (9.8%, N = 260) by ventilatory support and shock. Hypertensive disorders of pregnancy, depression, and Medicaid insurance were associated with Shock cluster. People in all clusters had a high risk of maternal death within 1 year (odds ratio: 12.0, 95% confidence interval: 6.2-23). Infants born to those in the shock cluster had the highest odds of neonatal death, low Apgar scores, and neonatal ICU admission.

Conclusion:  We identified four novel SMM clusters that may help understand the collection of conditions defining SMM, underlying pathways and the importance of comorbidities such as depression and social determinants of health markers that amplify the well-established risk factors for SMM such as hypertensive disorders of pregnancy.

Key points: · A total of 2.7% of deliveries experienced SMM events.. · There are four distinct SMM clusters: Hemorrhage, Critical Care, Vascular, and Shock.. · Not all SMM clusters bear the same risk for adverse perinatal outcomes..

识别严重孕产妇发病集群的新方法:潜类分析
目的:严重孕产妇发病率(SMM)是一组危及生命的异质性病症,其是否存在集群尚不清楚。我们的主要目标是利用数据驱动的聚类技术识别 SMM 群组、其相关预测因素和结果:从 2008 年到 2017 年,我们使用了宾夕法尼亚州一家机构的分娩数据库,并辅以州数据和病历摘要。为了识别SMM群组,我们应用了潜类建模,其中包括由21个疾病控制中心SMM指标、重症监护室(ICU)入院或产后住院时间延长所定义的23种情况。逻辑回归模型估算了SMM群组的风险以及群组与孕产妇和新生儿结局之间的关联:在 97,492 例分娩中,有 2.7% 的产妇(N = 2,666 例)在 23 种情况中的任何一种情况下经历过 SMM。四个群组被确定为 SMM 的原型。大出血(37.7%,N = 1,004)的特征是输血和镰状细胞贫血;重症监护(28.1%,N = 748)的特征是入住重症监护室和羊水栓塞;血管(24.5%,N = 654)的特征是脑血管疾病;休克(9.8%,N = 260)的特征是呼吸支持和休克。妊娠高血压疾病、抑郁症和医疗补助保险与休克群组有关。所有群组中的孕产妇在 1 年内死亡的风险都很高(几率比:12.0,95% 置信区间:6.2-23)。休克群组中的人所生的婴儿发生新生儿死亡、低阿普加评分和新生儿入住重症监护室的几率最高:我们发现了四个新的SMM群组,这可能有助于了解定义SMM的一系列病症、基本途径以及合并症(如抑郁症)和社会健康决定因素标志物的重要性,这些标志物放大了SMM的既定风险因素(如妊娠高血压疾病):- 共有2.7%的分娩经历了SMM事件。- 有四个不同的 SMM 群组:出血、重症监护、血管和休克。- 并非所有的SMM群组都具有相同的围产期不良后果风险。
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来源期刊
American journal of perinatology
American journal of perinatology 医学-妇产科学
CiteScore
5.90
自引率
0.00%
发文量
302
审稿时长
4-8 weeks
期刊介绍: The American Journal of Perinatology is an international, peer-reviewed, and indexed journal publishing 14 issues a year dealing with original research and topical reviews. It is the definitive forum for specialists in obstetrics, neonatology, perinatology, and maternal/fetal medicine, with emphasis on bridging the different fields. The focus is primarily on clinical and translational research, clinical and technical advances in diagnosis, monitoring, and treatment as well as evidence-based reviews. Topics of interest include epidemiology, diagnosis, prevention, and management of maternal, fetal, and neonatal diseases. Manuscripts on new technology, NICU set-ups, and nursing topics are published to provide a broad survey of important issues in this field. All articles undergo rigorous peer review, with web-based submission, expedited turn-around, and availability of electronic publication. The American Journal of Perinatology is accompanied by AJP Reports - an Open Access journal for case reports in neonatology and maternal/fetal medicine.
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