Few-shot pulse wave contour classification based on multi-scale feature extraction

被引:0
作者
Peng Lu
Chao Liu
Xiaobo Mao
Yvping Zhao
Hanzhang Wang
Hongpo Zhang
Lili Guo
机构
[1] Zhengzhou University,School of Electrical Engineering
[2] Research Center for Intelligent Science and Engineering Technology of TCM,undefined
[3] China Academy of Chinese Medical Sciences,undefined
[4] Internet Medical and Health Service Henan Collaborative Innovation Center,undefined
[5] The First Affiliated Hospital of Zhengzhou University,undefined
[6] First Affiliated Hospital of Shihezi University Medical College,undefined
来源
Scientific Reports | / 11卷
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摘要
The annotation procedure of pulse wave contour (PWC) is expensive and time-consuming, thereby hindering the formation of large-scale datasets to match the requirements of deep learning. To obtain better results under the condition of few-shot PWC, a small-parameter unit structure and a multi-scale feature-extraction model are proposed. In the small-parameter unit structure, information of adjacent cells is transmitted through state variables. Simultaneously, a forgetting gate is used to update the information and retain long-term dependence of PWC in the form of unit series. The multi-scale feature-extraction model is an integrated model containing three parts. Convolution neural networks are used to extract spatial features of single-period PWC and rhythm features of multi-period PWC. Recursive neural networks are used to retain the long-term dependence features of PWC. Finally, an inference layer is used for classification through extracted features. Classification experiments of cardiovascular diseases are performed on photoplethysmography dataset and continuous non-invasive blood pressure dataset. Results show that the classification accuracy of the multi-scale feature-extraction model on the two datasets respectively can reach 80% and 96%, respectively.
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