| Literature DB >> 34912531 |
Mengyun Zhu1, Ximin Fan1, Weijing Liu1, Jianying Shen1, Wei Chen1, Yawei Xu1, Xuejing Yu1.
Abstract
This paper combines echocardiographic signal processing and artificial intelligence technology to propose a deep neural network model adapted to echocardiographic signals to achieve left atrial volume measurement and automatic assessment of pulmonary veins efficiently and quickly. Based on the echocardiographic signal generation mechanism and detection method, an experimental scheme for the echocardiographic signal acquisition was designed. The echocardiographic signal data of healthy subjects were measured in four different experimental states, and a database of left atrial volume measurements and pulmonary veins was constructed. Combining the correspondence between ECG signals and echocardiographic signals in the time domain, a series of preprocessing such as denoising, feature point localization, and segmentation of the cardiac cycle was realized by wavelet transform and threshold method to complete the data collection. This paper proposes a comparative model based on artificial intelligence, adapts to the characteristics of one-dimensional time-series echocardiographic signals, automatically extracts the deep features of echocardiographic signals, effectively reduces the subjective influence of manual feature selection, and realizes the automatic classification and evaluation of human left atrial volume measurement and pulmonary veins under different states. The experimental results show that the proposed BP neural network model has good adaptability and classification performance in the tasks of LV volume measurement and pulmonary vein automatic classification evaluation and achieves an average test accuracy of over 96.58%. The average root-mean-square error percentage of signal compression is only 0.65% by extracting the coding features of the original echocardiographic signal through the convolutional autoencoder, which completes the signal compression with low loss. Comparing the training time and classification accuracy of the LSTM network with the original signal and encoded features, the experimental results show that the AI model can greatly reduce the model training time cost and achieve an average accuracy of 97.97% in the test set and increase the real-time performance of the left atrial volume measurement and pulmonary vein evaluation as well as the security of the data transmission process, which is very important for the comparison of left atrial volume measurement and pulmonary vein. It is of great practical importance to compare left atrial volume measurements with pulmonary veins.Entities:
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Year: 2021 PMID: 34912531 PMCID: PMC8668302 DOI: 10.1155/2021/1336762
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Cardiac synchronized cardiac impedance signal waveform.
Figure 2Left atrial volume measurements compared with pulmonary veins.
Figure 3Calculated heart rate and BSA and BV parameters in the natural lying state.
Figure 4Training results of LSTM classification network with different inputs.
Figure 5Relevant evaluation parameters of the network test set.
Figure 6Maximum diameter of pulmonary vein opening. (a) Paroxysmal group and continuous group and (b) Normal control group.
Figure 7Comparison of pulmonary vein opening size and intergroup comparison of each diameter and volume of the left atrium (mm). (a) Normal group, (b) Burst group and (c) Continuous group.
Figure 8Echocardiographic results of morphological indicators of the heart (mm).