Zahid Salman, Jha Shikha, Kaur Gurleen, Jung Youn-Hoa, Minhas Anum S, Hays Allison G, Michos Erin D
Division of Cardiovascular Medicine, Knight Cardiovascular Institute, Oregon Health and Science University, Portland, Oregon, USA.
Division of Cardiovascular Medicine, University of Wisconsin, Madison, Wisconsin, USA.
JACC Adv. 2024 Jul 22;3(8):101095. doi: 10.1016/j.jacadv.2024.101095. eCollection 2024 Aug.
Maternal mortality in the United States remains high, with cardiovascular (CV) complications being a leading cause.
The purpose of this paper was to develop the PARCCS (Prediction of Acute Risk for Cardiovascular Complications in the Peripartum Period Score) for acute CV complications during delivery.
Data from the National Inpatient Sample (2016-2020) and International Classification of Diseases, Tenth Revision codes to identify delivery admissions were used. Acute CV/renal complications were defined as a composite of pre-eclampsia/eclampsia, peripartum cardiomyopathy, renal complications, venous thromboembolism, arrhythmias, and pulmonary edema. A risk prediction model, PARCCS, was developed using machine learning consisting of 14 variables and scored out of 100 points.
Of the 2,371,661 pregnant patients analyzed, 7.0% had acute CV complications during delivery hospitalization. Patients with CV complications had a higher prevalence of comorbidities and were more likely to be of Black race and lower income. The PARCCS variables included electrolyte imbalances (13 points [p]), age (3p for age <20 years), cesarean delivery (4p), obesity (5p), pre-existing heart failure (28p), multiple gestations (4p), Black race (2p), gestational hypertension (3p), low income (1p), gestational diabetes (2p), chronic diabetes (6p), prior stroke (22p), coagulopathy (5p), and nonelective admission (2p). Using the validation set, the performance of the model was evaluated with an area under the receiver-operating characteristic curve of 0.68 and a 95% CI of 0.67 to 0.68.
PARCCS has the potential to be an important tool for identifying pregnant individuals at risk of acute peripartum CV complications at the time of delivery. Future studies should further validate this score and determine whether it can improve patient outcomes.
美国孕产妇死亡率仍然很高,心血管(CV)并发症是主要原因之一。
本文旨在开发PARCCS(围产期心血管并发症急性风险预测评分),用于预测分娩期间的急性CV并发症。
使用来自国家住院样本(2016 - 2020年)的数据以及国际疾病分类第十版代码来识别分娩住院病例。急性CV/肾脏并发症定义为先兆子痫/子痫、围产期心肌病、肾脏并发症、静脉血栓栓塞、心律失常和肺水肿的综合情况。使用由14个变量组成的机器学习方法开发了一种风险预测模型PARCCS,满分为100分。
在分析的2371661例孕妇中,7.0%在分娩住院期间发生了急性CV并发症。发生CV并发症的患者合并症患病率更高,更有可能是黑人种族且收入较低。PARCCS变量包括电解质失衡(13分[p])、年龄(年龄<20岁为3分)、剖宫产(4分)、肥胖(5分)、既往心力衰竭(28分)、多胎妊娠(4分)、黑人种族(2分)、妊娠期高血压(3分)、低收入(1分)、妊娠期糖尿病(2分)、慢性糖尿病(6分)、既往中风(22分)、凝血障碍(5分)和非择期入院(2分)。使用验证集,通过受试者工作特征曲线下面积为0.68以及95%置信区间为0.67至0.68来评估模型的性能。
PARCCS有可能成为识别分娩时面临围产期急性CV并发症风险的孕妇的重要工具。未来的研究应进一步验证该评分,并确定它是否能改善患者预后。