Hoodbhoy Zahra, Hasan Babar, Jehan Fyezah, Bijnens Bart, Chowdhury Devyani
Department of Paediatrics and Child Health, Aga khan University, Karachi, 75500, Pakistan.
Department of Information and Communication Technologies, Pompeu Fabra University, Barcelona , Catalonia , 08002, Spain.
Gates Open Res. 2018 Feb 12;2:8. doi: 10.12688/gatesopenres.12796.1.
In Pakistan, stillbirth rates and early neonatal mortality rates are amongst the highest in the world. The aim of this study is to provide proof of concept for using a computational model of fetal haemodynamics, combined with machine learning. This model will be based on Doppler patterns of the fetal cardiovascular, cerebral and placental flows with the goal to identify those fetuses at increased risk of adverse perinatal outcomes such as stillbirth, perinatal mortality and other neonatal morbidities. This will be prospective one group cohort study which will be conducted in Ibrahim Hyderi, a peri-urban settlement in south east of Karachi. The eligibility criteria include pregnant women between 22-34 weeks who reside in the study area. Once enrolled, in addition to the performing fetal ultrasound to obtain Dopplers, data on socio-demographic, maternal anthropometry, haemoglobin and cardiotocography will be obtained on the pregnant women. The machine learning approach for predicting adverse perinatal outcomes obtained from the current study will be validated in a larger population at the next stage. The data will allow for early interventions to improve perinatal outcomes.
在巴基斯坦,死产率和早期新生儿死亡率位居世界前列。本研究的目的是为使用结合机器学习的胎儿血流动力学计算模型提供概念验证。该模型将基于胎儿心血管、大脑和胎盘血流的多普勒模式,目标是识别那些有死产、围产期死亡和其他新生儿疾病等不良围产期结局风险增加的胎儿。这将是一项前瞻性单组队列研究,将在卡拉奇东南部的一个城郊定居点易卜拉欣·海代里进行。入选标准包括居住在研究区域的22至34周孕妇。一旦入选,除了进行胎儿超声检查以获取多普勒数据外,还将收集孕妇的社会人口统计学、孕产妇人体测量学、血红蛋白和胎心监护数据。从本研究中获得的预测不良围产期结局的机器学习方法将在下一阶段在更大的人群中进行验证。这些数据将有助于进行早期干预以改善围产期结局。