Predicting intensive care need in women with preeclampsia using machine learning - a pilot study.

IF 1.5 4区 医学 Q3 OBSTETRICS & GYNECOLOGY Hypertension in Pregnancy Pub Date : 2024-12-01 Epub Date: 2024-02-22 DOI:10.1080/10641955.2024.2312165
Camilla Edvinsson, Ola Björnsson, Lena Erlandsson, Stefan R Hansson
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Abstract

Background: Predicting severe preeclampsia with need for intensive care is challenging. To better predict high-risk pregnancies to prevent adverse outcomes such as eclampsia is still an unmet need worldwide. In this study we aimed to develop a prediction model for severe outcomes using routine biomarkers and clinical characteristics.

Methods: We used machine learning models based on data from an intensive care cohort with severe preeclampsia (n=41) and a cohort of preeclampsia controls (n=40) with the objective to find patterns for severe disease not detectable with traditional logistic regression models.

Results: The best model was generated by including the laboratory parameters aspartate aminotransferase (ASAT), uric acid and body mass index (BMI) with a cross-validation accuracy of 0.88 and an area under the curve (AUC) of 0.91. Our model was internally validated on a test-set where the accuracy was lower, 0.82, with an AUC of 0.85.

Conclusion: The clinical routine blood parameters ASAT and uric acid as well as BMI, were the parameters most indicative of severe disease. Aspartate aminotransferase reflects liver involvement, uric acid might be involved in several steps of the pathophysiologic process of preeclampsia, and obesity is a well-known risk factor for development of both severe and non-severe preeclampsia likely involving inflammatory pathways..[Figure: see text].

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利用机器学习预测子痫前期妇女的重症监护需求--一项试点研究。
背景:预测需要重症监护的重度子痫前期具有挑战性。更好地预测高危妊娠以预防子痫等不良后果仍是全世界尚未满足的需求。在这项研究中,我们旨在利用常规生物标志物和临床特征建立一个严重后果预测模型:我们根据重症子痫前期重症监护队列(41 人)和子痫前期对照队列(40 人)的数据建立了机器学习模型,目的是找到传统逻辑回归模型无法发现的严重疾病模式:将实验室参数天门冬氨酸氨基转移酶(ASAT)、尿酸和体重指数(BMI)纳入模型后得出了最佳模型,交叉验证准确率为 0.88,曲线下面积(AUC)为 0.91。我们的模型在测试集上进行了内部验证,准确率较低,为 0.82,曲线下面积为 0.85:结论:临床血液常规参数天门冬氨酸氨基转移酶(ASAT)和尿酸以及体重指数(BMI)是最能反映严重疾病的参数。天门冬氨酸氨基转移酶反映肝脏受累情况,尿酸可能参与子痫前期病理生理过程的多个步骤,而肥胖是众所周知的重度和非重度子痫前期的风险因素,可能涉及炎症途径......[图:见正文]。
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来源期刊
Hypertension in Pregnancy
Hypertension in Pregnancy 医学-妇产科学
CiteScore
3.40
自引率
0.00%
发文量
21
审稿时长
6 months
期刊介绍: Hypertension in Pregnancy is a refereed journal in the English language which publishes data pertaining to human and animal hypertension during gestation. Contributions concerning physiology of circulatory control, pathophysiology, methodology, therapy or any other material relevant to the relationship between elevated blood pressure and pregnancy are acceptable. Published material includes original articles, clinical trials, solicited and unsolicited reviews, editorials, letters, and other material deemed pertinent by the editors.
期刊最新文献
Trimester and severity of SARS-CoV-2 infection during pregnancy and risk of hypertensive disorders in pregnancy. Use of the USCOM® noninvasive cardiac output measurement system to predict the development of pre-eclampsia in hypertensive pregnancies. Effects of hypertensive disorders of pregnancy on the complications in very low birth weight neonates. Predicting intensive care need in women with preeclampsia using machine learning - a pilot study. Anti-hypertensive therapy for preeclampsia: a network meta-analysis and systematic review.
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