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The Design and Implementation of Cardiotocography Signals Classification Algorithm Based on Neural Network

机译:基于神经网络的心肌术信号分类算法的设计与实现

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摘要

Mobile medical care is a hot issue in current medical research. Due to the inconvenience of going to hospital for fetal heart monitoring and the limited medical resources, real-time monitoring of fetal health on portable devices has become an urgent need for pregnant women, which helps to protect the health of the fetus in a more comprehensive manner and reduce the workload of doctors. For the feature acquisition of the fetal heart rate (FHR) signal, the traditional feature-based classification methods need to manually read the morphological features from the FHR curve, which is time-consuming and costly and has a certain degree of calibration bias. This paper proposes a classification method of the FHR signal based on neural networks, which can avoid manual feature acquisition and reduce the error caused by human factors. The algorithm will directly learn from the FHR data and truly realize the real-time diagnosis of FHR data. The convolution neural network classification method named “MKNet” and recurrent neural network named “MKRNN” are designed. The main contents of this paper include the preprocessing of the FHR signal, the training of the classification model, and the experiment evaluation. Finally, MKNet is proved to be the best algorithm for real-time FHR signal classification.
机译:移动医疗保健是当前医学研究的热门问题。由于前往医院为胎心监测和有限的医疗资源,便携式设备上的胎儿健康的实时监测已成为孕妇的迫切需要,这有助于保护胎儿的健康更全面方式,减少医生的工作量。对于胎儿心率(FHR)信号的特征获取,基于传统的基于特征的分类方法需要手动读取来自FHR曲线的形态特征,这是耗时且昂贵的并且具有一定程度的校准偏压。本文提出了一种基于神经网络的FHR信号的分类方法,可以避免手动特征获取,并减少人为因素引起的错误。该算法将直接从FHR数据中学习,并真正实现FHR数据的实时诊断。设计了名为“MKNET”和名为“MKRNN”的经常性神经网络的卷积神经网络分类方法。本文的主要内容包括FHR信号的预处理,分类模型的培训以及实验评估。最后,已被证明是MKNet是实时FHR信号分类的最佳算法。

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