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Evaluation of convolutional neural network for recognizing uterine contractions with electrohysterogram

机译:卷积神经网络识别子宫凹陷的卷积神经网络评价

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摘要

Uterine contraction (UC) activity is commonly used to monitor the approach of labour and delivery. Electrohysterograms (EliGs) have recently been used to monitor UC and distinguish between efficient and inefficient contractions. In this study, we aimed to identify UC in EHG signals using a convolutional neural network (CNN). An open-access database (Icelandic 16-electrode EHG database from 45 pregnant women with 122 recordings, DB1) was used to develop a CNN model, and 14000 segments with a length of 45 s (7000 from UCs and 7000 from non-UCs, which were determined with reference to the simultaneously recorded tocography signals) were manually extracted from the 122 EHG recordings. Five-fold cross-validation was applied to evaluate the ability of the CNN to identify UC based on its sensitivity (SE), specificity (SP), accuracy (ACC), and area under the receiver operating characteristic curve (AUC). The CNN model developed using DB1 was then applied to an independent clinical database (DB2) to further test its generalisation for recognizing UCs. The EHG signals in DB2 were recorded from 20 pregnant women using our multi-channel system, and 308 segments (154 from UCs and 154 from non-UCs) were extracted. The CNN model from five-fold cross-validation achieved average SE, SP, ACC, and AUC of 0.87, 0.98, 0.93, and 0.92 for DB1, and 0.88, 0.97, 0.93, and 0.87 for DB2, respectively. In summary, we demonstrated that CNN could effectively identify UCs using EHG signals and could be used as a tool for monitoring maternal and foetal health.
机译:子宫收缩(UC)活动通常用于监测劳动力和递送的方法。最近用于监测UC并区分高效和效率的收缩。在这项研究中,我们旨在使用卷积神经网络(CNN)在EHG信号中识别UC。使用开放式访问数据库(来自45名孕妇的冰岛16电极EHG数据库,DB1)用于开发CNN模型,14000个段,长度为45秒(来自UCS 7000,来自非UCS 7000,从122 ehg录音中手动提取,参考同时记录的涂料信号确定。应用五倍的交叉验证以评估CNN基于其灵敏度(SE),特异性(SP),精度(ACC)和接收器操作特性曲线(AUC)下的区域的能力。然后将使用DB1开发的CNN模型应用于独立的临床数据库(DB2),以进一步测试其概括UCS的概括。 DB2中的EHG信号由使用我们的多通道系统的20名孕妇记录,提取308个段(来自UCS和154个来自非UC的154个)。从五倍交叉验证的CNN模型达到DB1的平均SE,SP,ACC和0.87,0.98,0.93和0.92的AUC,分别为DB2的0.88,0.97,0.93和0.87。总之,我们证明CNN可以使用EHG信号有效地识别UCS,并且可以用作监测母体和胎儿健康的工具。

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