Kang Jieun, Hwang Sangwon, Lee Taesic, Ahn Kwangjin, Seo Dong Min, Choi Seong Jin, Uh Young
Department of Obstetrics and Gynecology, Yonsei University Wonju College of Medicine, Wonju 26426, Republic of Korea.
Department of Precision Medicine, Yonsei University Wonju College of Medicine, Wonju 26426, Republic of Korea.
Biology (Basel). 2023 Jun 4;12(6):816. doi: 10.3390/biology12060816.
Pre-eclampsia (PE) is a pregnancy-related disease, causing significant threats to both mothers and babies. Numerous studies have identified the association between PE and renal dysfunction. However, in clinical practice, kidney problems in pregnant women are often overlooked due to physiologic adaptations during pregnancy, including renal hyperfiltration. Recent studies have reported serum creatinine (SCr) level distribution based on gestational age (GA) and demonstrated that deviations from the expected patterns can predict adverse pregnancy outcomes, including PE. This study aimed to establish a PE prediction model using expert knowledge and by considering renal physiologic adaptation during pregnancy. This retrospective study included pregnant women who delivered at the Wonju Severance Christian Hospital. Input variables, such as age, gestational weeks, chronic diseases, and SCr levels, were used to establish the PE prediction model. By integrating SCr, GA, GA-specific SCr distribution, and quartile groups of GA-specific SCr (GAQ) were made. To provide generalized performance, a random sampling method was used. As a result, GAQ improved the predictive performance for any cases of PE and triple cases, including PE, preterm birth, and fetal growth restriction. We propose a prediction model for PE consolidating readily available clinical blood test information and pregnancy-related renal physiologic adaptations.
子痫前期(PE)是一种与妊娠相关的疾病,对母亲和婴儿都构成重大威胁。大量研究已确定PE与肾功能障碍之间的关联。然而,在临床实践中,由于孕期的生理适应性变化,包括肾高滤过,孕妇的肾脏问题常常被忽视。最近的研究报告了基于孕周(GA)的血清肌酐(SCr)水平分布,并表明与预期模式的偏差可预测包括PE在内的不良妊娠结局。本研究旨在利用专业知识并考虑孕期肾脏生理适应性来建立PE预测模型。这项回顾性研究纳入了在原州Severance基督教医院分娩的孕妇。使用年龄、孕周、慢性病和SCr水平等输入变量来建立PE预测模型。通过整合SCr、GA、GA特异性SCr分布,制作了GA特异性SCr四分位数组(GAQ)。为提供通用性能,采用了随机抽样方法。结果,GAQ提高了对任何PE病例以及包括PE、早产和胎儿生长受限在内的三联症病例的预测性能。我们提出了一种整合易于获得的临床血液检测信息和妊娠相关肾脏生理适应性的PE预测模型。