The Design and Implementation of Cardiotocography Signals Classification Algorithm Based on Neural Network.
Haijing TangTaoyi WangMengke LiXu YangPublished in: Computational and mathematical methods in medicine (2018)
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.
Keyphrases
- neural network
- deep learning
- machine learning
- healthcare
- heart rate
- pregnant women
- big data
- public health
- artificial intelligence
- blood pressure
- heart failure
- mental health
- primary care
- heart rate variability
- emergency department
- electronic health record
- risk assessment
- health information
- atrial fibrillation
- human health
- data analysis
- virtual reality