Intelligent classification of cardiotocography based on a support vector machine and convolutional neural network: Multiscene research

Objective To propose a computerized system utilizing multiscene analysis based on a support vector machine (SVM) and convolutional neural network (CNN) to assess cardiotocography (CTG) intelligently. Methods We retrospectively collected 2542 CTG records of singleton pregnancies delivered at the mate...

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Veröffentlicht in:International journal of gynecology and obstetrics 2024-05, Vol.165 (2), p.737-745
Hauptverfasser: Zhang, Wen, Tang, Zixiang, Shao, Huikai, Sun, Chao, He, Xin, Zhang, Jiahui, Wang, Tiantian, Yang, Xiaowei, Wang, Yiran, Bin, Yadi, Zhao, Lanbo, Zhang, Siyi, Liang, Dongxin, Wang, Jianliu, Zhong, Dexing, Li, Qiling
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Sprache:eng
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Zusammenfassung:Objective To propose a computerized system utilizing multiscene analysis based on a support vector machine (SVM) and convolutional neural network (CNN) to assess cardiotocography (CTG) intelligently. Methods We retrospectively collected 2542 CTG records of singleton pregnancies delivered at the maternity ward of the First Affiliated Hospital of Xi'an Jiaotong University from October 10, 2020, to August 7, 2021. CTG records were divided into five categories (baseline, variability, acceleration, deceleration, and normality). Apart from the category of normality, the other four different categories of abnormal data correspond to four scenes. Each scene was divided into training and testing sets at 9:1 or 7:3. We used three computer algorithms (dynamic threshold, SVM, and CNN) to learn and optimize the system. Accuracy, sensitivity, and specificity were performed to evaluate performance. Results The global accuracy, sensitivity, and specificity of the system were 93.88%, 93.06%, and 94.33%, respectively. In acceleration and deceleration scenes, when the convolution kernel was 3, the test data set reached the highest performance. Conclusion The multiscene research model using SVM and CNN is a potential effective tool to assist obstetricians in classifying CTG intelligently. Synopsis The computer‐aided diagnosis system based on support vector machine and convolutional neural network is valuable for classification of cardiotocography.
ISSN:0020-7292
1879-3479
DOI:10.1002/ijgo.15236