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Deep Learning for Continuous Electronic Fetal Monitoring in Labor

机译:深入学习劳动中连续电子胎儿监测

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Continuous electronic fetal monitoring (EFM) is used worldwide to visually assess whether a fetus is exhibiting signs of distress during labor, and may benefit from an emergency operative delivery (e.g. Cesarean section). Previously, computerized EFM assessment that mimics clinical experts showed no benefit in randomized clinical trials. However, as an example of routinely collected 'big' data, EFM interpretation should benefit from data-driven computational approaches, such as deep learning, which allow automated evaluation based on large clinical datasets. Here we report our investigation of long short term memory (LSTM) and convolutional neural networks (CNN) in analyzing EFM traces from over 35,000 labors for the prediction of fetal compromise. Of these, 85% are used for training with cross-validation and the remainder are set aside for testing. The results are compared with Clinical practice (reason for operative delivery recorded as fetal distress) and an earlier prototype system for computerized analysis of EFM (OxSys 1.5), developed on the same data. We demonstrate that CNN outperforms LSTM, Clinical practice, and OxSys 1.5 in predicting fetal compromise, with a sensitivity of 42% (30%, 34%, and 36% for the others, respectively), at comparable or lower false positive rates. We also show that increasing the size of the training set improves the sensitivity and stability of CNN's performance on the testing set. When tested on a small open-access external database, CNN moderately improves on the performance of published feature extraction based methods. We conclude that CNN could play an important role in the field of automated EFM analysis, but requires further work.
机译:在全球范围内使用连续的电子胎儿监测(EFM),可视地评估胎儿是否在劳动期间表现出痛苦的迹象,并且可能会受益于紧急操作递送(例如剖宫产)。以前,模拟临床专家的计算机化EFM评估显示随机临床试验中没有任何益处。然而,作为常规收集的“大”数据的示例,EFM解释应该受益于数据驱动的计算方法,例如深度学习,允许基于大型临床数据集自动评估。在这里,我们报告了我们对长短短期记忆(LSTM)和卷积神经网络(CNN)的调查,分析了来自超过35,000多个劳动的EFM痕迹,以预测胎儿妥协。其中,85%用于通过交叉验证训练,剩余部分被搁置进行测试。将结果与临床实践进行比较(记录为胎儿遇险的手术递送的原因)以及用于EFM(OXSYS 1.5)的计算机分析的早期原型系统,在相同的数据上开发。我们证明CNN在预测胎儿妥协时表明,CNN优于LSTM,临床实践和氧气1.5,敏感性为42%(分别为其他42%(30%,34%和36%),以可比或较低的假阳性率。我们还表明,培训集的大小增加了CNN在测试集上性能的灵敏度和稳定性。在小型开放式外部数据库上测试时,CNN适度地提高了发布的基于特征提取的方法的性能。我们得出结论,CNN可以在自动化EFM分析领域发挥重要作用,但需要进一步的工作。

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