Prediction of low birth weight from fetal ultrasound and clinical characteristics: a comparative study between a low- and middle-income and a high-income country.

IF 7.1 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Sergio Sanchez-Martinez, Pablo Miki Marti-Castellote, Zahra Hoodbhoy, Gabriel Bernardino, Josa Prats-Valero, Ainhoa M Aguado, Lea Testa, Gemma Piella, Francesca Crovetto, Corey Snyder, Shazia Mohsin, Ambreen Nizar, Rimsha Ahmed, Fyezah Jehan, Kathy Jenkins, Eduard Gratacós, Fatima Crispi, Devyani Chowdhury, Babar S Hasan, Bart Bijnens
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引用次数: 0

Abstract

Introduction: Adverse perinatal outcomes (APO) pose a significant global challenge, particularly in low- and middle-income countries (LMICs). This study aims to analyse two cohorts of high-risk pregnant women for APO to comprehend risk factors and improve prediction accuracy.

Methods: We considered an LMIC and a high-income country (HIC) population to derive XGBoost classifiers to predict low birth weight (LBW) from a comprehensive set of maternal and fetal characteristics including socio-demographic, past and current pregnancy information, fetal biometry and fetoplacental Doppler measurements. Data were sourced from the FeDoC (Fetal Doppler Collaborative) study (Pakistan, LMIC) and theIMPACT (Improving Mothers for a Better PrenAtal Care Trial) study (Spain, HIC), and included 520 and 746 pregnancies assessed from 28 weeks gestation, respectively. The models were trained on varying subsets of the mentioned characteristics to evaluate their contribution in predicting LBW cases. For external validation, and to highlight potential differential risk factors for LBW, we investigated the generalisation of these models across cohorts. Models' performance was evaluated through the area under the curve (AUC), and their interpretability was assessed using SHapley Additive exPlanations.

Results: In FeDoC, Doppler variables demonstrated the highest value at predicting LBW compared with biometry and maternal clinical data (AUCDoppler, 0.67; AUCClinical, 0.65; AUCBiometry, 0.63), and its combination with maternal clinical data yielded the best prediction (AUCClinical+Doppler, 0.71). In IMPACT, fetal biometry emerged as the most predictive set (AUCBiometry, 0.75; AUCDoppler, 0.70; AUCClinical, 0.69) and its combination with Doppler and maternal clinical data achieved the highest accuracy (AUCClinical+Biometry+Doppler, 0.81). External validation consistently indicated that biometry combined with Doppler data yielded the best prediction.

Conclusions: Our findings provide new insights into the predictive role of different clinical and ultrasound descriptors in two populations at high risk for APO, highlighting that different approaches are required for different populations. However, Doppler data improves prediction capabilities in both settings, underscoring the value of standardising ultrasound data acquisition, as practiced in HIC, to enhance LBW prediction in LMIC. This alignment contributes to bridging the health equity gap.

胎儿超声和临床特征预测低出生体重:中低收入国家和高收入国家的比较研究
围产期不良结局(APO)是一个重大的全球性挑战,特别是在低收入和中等收入国家(LMICs)。本研究旨在分析两组APO高危孕妇,了解APO的危险因素,提高预测准确性。方法:我们考虑了低收入和高收入国家(HIC)的人群,从一套全面的母体和胎儿特征中得出XGBoost分类器来预测低出生体重(LBW),包括社会人口统计学、过去和现在的妊娠信息、胎儿生物测量和胎儿胎盘多普勒测量。数据来自FeDoC(胎儿多普勒协作)研究(巴基斯坦,LMIC)和impact(改善母亲产前护理试验)研究(西班牙,HIC),分别包括520和746例妊娠28周评估。这些模型在上述特征的不同子集上进行训练,以评估它们对预测LBW病例的贡献。为了进行外部验证,并强调LBW的潜在差异风险因素,我们研究了这些模型在队列中的普遍性。通过曲线下面积(AUC)来评价模型的性能,并使用SHapley加性解释来评价模型的可解释性。结果:在FeDoC中,与生物测量和产妇临床数据相比,多普勒变量在预测LBW方面表现出最高的价值(AUCDoppler, 0.67;AUCClinical 0.65;AUCBiometry(0.63)及其与产妇临床资料的结合预测效果最好(AUCClinical+Doppler, 0.71)。在IMPACT中,胎儿生物测量是最具预测性的一组(AUCBiometry, 0.75;AUCDoppler 0.70;AUCClinical, 0.69)及其联合多普勒和产妇临床资料的准确率最高(AUCClinical+Biometry+Doppler, 0.81)。外部验证一致表明生物测定结合多普勒数据产生了最好的预测。结论:我们的研究结果为不同临床和超声描述符在两个APO高危人群中的预测作用提供了新的见解,强调了不同人群需要不同的方法。然而,多普勒数据提高了两种情况下的预测能力,强调了标准化超声数据采集的价值,正如在HIC中实践的那样,可以增强LMIC的LBW预测。这种协调有助于弥合卫生公平差距。
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
BMJ Global Health
BMJ Global Health Medicine-Health Policy
CiteScore
11.40
自引率
4.90%
发文量
429
审稿时长
18 weeks
期刊介绍: BMJ Global Health is an online Open Access journal from BMJ that focuses on publishing high-quality peer-reviewed content pertinent to individuals engaged in global health, including policy makers, funders, researchers, clinicians, and frontline healthcare workers. The journal encompasses all facets of global health, with a special emphasis on submissions addressing underfunded areas such as non-communicable diseases (NCDs). It welcomes research across all study phases and designs, from study protocols to phase I trials to meta-analyses, including small or specialized studies. The journal also encourages opinionated discussions on controversial topics.
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