Center for Indigenous Health Research, Maya Health Alliance Wuqu' Kawoq, Tecpán, Guatemala.
Department of Global Health and Social Medicinem, Blavatnik Institute, Harvard Medical School, Boston, Massachusetts, USA.
BMJ Open. 2024 Sep 10;14(9):e090503. doi: 10.1136/bmjopen-2024-090503.
Undetected high-risk conditions in pregnancy are a leading cause of perinatal mortality in low-income and middle-income countries. A key contributor to adverse perinatal outcomes in these settings is limited access to high-quality screening and timely referral to care. Recently, a low-cost one-dimensional Doppler ultrasound (1-D DUS) device was developed that front-line workers in rural Guatemala used to collect quality maternal and fetal data. Further, we demonstrated with retrospective preliminary data that 1-D DUS signal could be processed using artificial intelligence and deep-learning algorithms to accurately estimate fetal gestational age, intrauterine growth and maternal blood pressure. This protocol describes a prospective observational pregnancy cohort study designed to prospectively evaluate these preliminary findings.
This is a prospective observational cohort study conducted in rural Guatemala. In this study, we will follow pregnant women (N =700) recruited prior to 18 6/7 weeks gestation until their delivery and early postpartum period. During pregnancy, trained nurses will collect data on prenatal risk factors and obstetrical care. Every 4 weeks, the research team will collect maternal weight, blood pressure and 1-D DUS recordings of fetal heart tones. Additionally, we will conduct three serial obstetric ultrasounds to evaluate for fetal growth restriction (FGR), and one postpartum visit to record maternal blood pressure and neonatal weight and length. We will compare the test characteristics (receiver operator curves) of 1-D DUS algorithms developed by deep-learning methods to two-dimensional fetal ultrasound survey and published clinical pre-eclampsia risk prediction algorithms for predicting FGR and pre-eclampsia, respectively.
Results of this study will be disseminated at scientific conferences and through peer-reviewed articles. Deidentified data sets will be made available through public repositories. The study has been approved by the institutional ethics committees of Maya Health Alliance and Emory University.
在中低收入国家,妊娠期间未被发现的高危情况是围产期死亡的一个主要原因。在这些环境中,导致不良围产期结局的一个关键因素是获得高质量筛查和及时转介护理的机会有限。最近,开发了一种低成本的一维多普勒超声(1-D DUS)设备,危地马拉农村的一线工作人员使用该设备来收集高质量的母婴数据。此外,我们使用回顾性初步数据证明,1-D DUS 信号可以通过人工智能和深度学习算法进行处理,以准确估计胎儿胎龄、宫内生长和产妇血压。本方案描述了一项前瞻性观察性妊娠队列研究,旨在前瞻性评估这些初步发现。
这是一项在危地马拉农村进行的前瞻性观察性队列研究。在这项研究中,我们将跟踪招募时妊娠不足 18 周 6/7 周的孕妇(N=700),直到分娩和产后早期。在妊娠期间,经过培训的护士将收集产前危险因素和产科护理数据。每 4 周,研究小组将收集产妇体重、血压和胎儿心音的 1-D DUS 记录。此外,我们将进行三次连续的产科超声检查,以评估胎儿生长受限(FGR),并在产后进行一次检查,以记录产妇血压和新生儿体重和长度。我们将比较深度学习方法开发的 1-D DUS 算法的测试特征(接收者操作特征曲线)与二维胎儿超声检查以及分别用于预测 FGR 和子痫前期的已发表的临床子痫前期风险预测算法。
本研究的结果将在科学会议上和通过同行评审的文章传播。匿名数据集将通过公共存储库提供。该研究已获得玛雅健康联盟和埃默里大学机构伦理委员会的批准。