Nomogram to Early Screen Multiparous Women for Preterm Birth in a Cohort Study

Q4 Biochemistry, Genetics and Molecular Biology
Mayssa A. Traboulsi, Zainab El Alaoui Talibi, A. Boussaid
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引用次数: 0

Abstract

Preterm Birth (PTB) can negatively affect the health of mothers as well as infants. Prediction of this gynecological complication remains difficult especially in Middle and Low-Income countries because of limited access to specific tests and data collection scarcity. Machine learning methods have been used to predict PTB but the low prevalence of this pregnancy complication led to rather low prediction values. The objective of this study was to produce a nomogram based on improved prediction for low prevalence PTB using up sampling and lasso penalized regression. We used data from a cohort study in Northern Lebanon of 922 multiparous presenting a PTB prevalence of 8%. We analyzed the personal, demographic, and health indicators available for this group of women. The improved Positive Predictive Value for PTB reached around 88%. The regression coefficients of the 6 selected variables (Pre-hemorrhage, Social status, Residence, Age, BMI, and Weight gain) were used to create a nomogram to screen multiparous women for PTB risk. The nomogram based on readily available indicators for multiparous women reasonably predicted most of the at PTB risk women. The physicians can use this tool to screen for women at high risk for spontaneous preterm birth to improve medical surveillance that can reduce PTB incidence.
队列研究中多胎妇女早产早期筛查的诺模图
早产(PTB)会对母亲和婴儿的健康产生负面影响。这种妇科并发症的预测仍然很困难,特别是在中低收入国家,因为获得特定检测的机会有限,数据收集稀缺。机器学习方法已被用于预测肺结核,但这种妊娠并发症的低患病率导致预测值相当低。本研究的目的是利用全采样和套索惩罚回归,在改进低患病率肺结核预测的基础上产生一个nomogram。我们使用的数据来自黎巴嫩北部的一项队列研究,922名多胎产妇的PTB患病率为8%。我们分析了这组妇女的个人、人口和健康指标。改善后的肺结核阳性预测值达到88%左右。6个选定变量(出血前、社会地位、居住地、年龄、BMI和体重增加)的回归系数被用来创建一个nomogram来筛查多产妇女患PTB的风险。基于现成的多胎妇女指标的nomogram合理地预测了大多数有PTB风险的妇女。医生可以使用这个工具来筛选自发性早产的高风险妇女,以改善医疗监测,从而减少肺结核的发病率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Biology and Biomedical Engineering
International Journal of Biology and Biomedical Engineering Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
自引率
0.00%
发文量
42
期刊介绍: Topics: Molecular Dynamics, Biochemistry, Biophysics, Quantum Chemistry, Molecular Biology, Cell Biology, Immunology, Neurophysiology, Genetics, Population Dynamics, Dynamics of Diseases, Bioecology, Epidemiology, Social Dynamics, PhotoBiology, PhotoChemistry, Plant Biology, Microbiology, Immunology, Bioinformatics, Signal Transduction, Environmental Systems, Psychological and Cognitive Systems, Pattern Formation, Evolution, Game Theory and Adaptive Dynamics, Bioengineering, Biotechnolgies, Medical Imaging, Medical Signal Processing, Feedback Control in Biology and Chemistry, Fluid Mechanics and Applications in Biomedicine, Space Medicine and Biology, Nuclear Biology and Medicine.
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