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Combining electrohysterography and heart rate data to detect labour

机译:结合子宫电图和心率数据来检测分娩

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In this paper we propose a method combining electrohysterography (EHG) and heart rate (HR) data to detect labour. Labour detection may be helpful in providing just in time care and avoiding unnecessary antenatal visits. Given specific changes in physiological data such as EHG and HR highlighted from previous literature in correspondence of uterine contractions, we sought to create a model able to classify between labour and non-labour recordings based on EHG and maternal HR data. In particular, we collected 37 recordings (19 labour and 18 non-labour) from pregnant women at different stages of pregnancy using a wearable sensor designed to be attached to the abdomen using an adhesive patch. We extracted time and frequency domain features from EHG and HR data, as stronger, sinusoidal patterns arise on both data streams in correspondence with uterine contractions during labour. Features were used as input to a random forests classifier, trained to recognize labour and non-labour recordings. The accuracy of the proposed model in classifying labour and non-labour recordings was evaluated using leave one out cross validation. We analyzed results including as predictors; gestational age (GA) only, as reference lower bound (68% accuracy), EHG features only (71% accuracy), HR features only (71% accuracy) and combined EHG and HR data, resulting in 82% accuracy. Inclusion of GA as additional predictor further increased detection accuracy to 79%, 82% and 87% for EHG, HR and combined EHG and HR respectively. Our labour detection model demonstrated a high accuracy in classifying labour and non-labour recordings using EHG and HR data collected using a single wearable device.
机译:在本文中,我们提出了一种结合子宫电描记术(EHG)和心率(HR)数据来检测人工的方法。分娩检测可能有助于提供及时护理,并避免不必要的产前检查。给定生理数据(例如EHG和HR)的特定变化(从先前的文献中可以看出,对应于子宫收缩),我们试图创建一个能够基于EHG和孕产妇HR数据对劳动和非劳动记录进行分类的模型。尤其是,我们使用可穿戴式传感器收集了妊娠不同阶段孕妇的37份记录(19例劳动和18例非劳动),该传感器采用可穿戴式传感器设计,可通过粘贴贴片固定在腹部上。我们从EHG和HR数据中提取了时域和频域特征,因为两种数据流上都出现了与分娩时子宫收缩相对应的更强的正弦波模式。要素被用作随机森林分类器的输入,经过训练可以识别人工和非人工记录。使用留一法交叉验证评估了拟议模型在对劳动和非劳动录音进行分类中的准确性。我们分析了包括预测在内的结果;仅作为参考下限的胎龄(GA)(68%的准确度),仅EHG功能(71%的准确度),仅HR功能(71%的准确度),以及结合EHG和HR数据,得出82%的准确度。包括GA作为额外的预测因子,进一步将EHG,HR和结合的EHG和HR的检测准确度分别提高到79%,82%和87%。我们的劳动检测模型展示了使用单个穿戴式设备收集的EHG和HR数据对劳动和非劳动记录进行分类的高精度。

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