Despite broad application during labor and delivery, there remains considerable debate about the value of electronic fetal monitoring (EFM). EFM includes the surveillance of the fetal heart rate (FHR) patterns in conjunction with the maternal uterine contractions providing a wealth of data about fetal behavior and the threat of diminished oxygenation and perfusion. Adverse outcomes universally associate a fetal injury with the failure to timely respond to FHR pattern information. Historically, the EFM data, stored digitally, are available only as rasterized pdf images for contemporary or historical discussion and examination. In reality, however, they are rarely reviewed systematically. Using a unique archive of EFM collected over 50 years of practice in conjunction with adverse outcomes, we present a deep learning framework for training and detection of incipient or past fetal injury. We report 94% accuracy in identifying early, preventable fetal injury intrapartum. This framework is suited for automating an early warning and decision support system for maintaining fetal well-being during the stresses of labor. Ultimately, such a system could enable a physician to timely respond during labor and prevent adverse outcomes. When adverse outcomes cannot be avoided, they can provide guidance to the early neuroprotective treatment of the newborn.
翻译:尽管在分娩和分娩期间广泛应用,但关于电子胎儿监测的价值(EFM)仍有大量争议。EFM包含对胎儿心率(FHR)模式的监视,同时伴以产妇子宫收缩,提供有关胎儿行为以及氧气减少和过敏威胁的大量数据。不利结果普遍将胎儿伤害与对FHR模式信息的不及时反应联系起来。从历史上看,储存的数字式EFM数据仅作为光化的pdf图像提供给当代或历史讨论和检查。但事实上,这些数据很少得到系统审查。利用50多年来收集的胎儿心率(FHR)模式的独特档案,再加上不利结果,我们提出了一个深度学习框架,用于培训和检测胚胎或过去胎儿伤害。我们报告在早期、可预防的胎儿伤害方面有94%的准确性。这个框架适合于在劳动压力下维持胎儿福祉的预警和决策支持系统自动化。最终,这样一个系统可以让医生在分娩期间及时作出反应,防止不良结果。当不利结果无法避免时,它们可以提供新生儿早期神经防护指导。