Journal of Bionic Engineering ›› 2024, Vol. 21 ›› Issue (2): 991-1002.doi: 10.1007/s42235-023-00466-3
Yang Zhang1; Tianmei Pu2; Jiasen Xu1; Chunhua Zhou3
Yang Zhang1; Tianmei Pu2; Jiasen Xu1; Chunhua Zhou3
摘要: In this work, a three dimensional (3D) convolutional neural network (CNN) model based on image slices of various normal and pathological vocal folds is proposed for accurate and efcient prediction of glottal fows. The 3D CNN model is composed of the feature extraction block and regression block. The feature extraction block is capable of learning low dimensional features from the high dimensional image data of the glottal shape, and the regression block is employed to fatten the output from the feature extraction block and obtain the desired glottal fow data. The input image data is the condensed set of 2D image slices captured in the axial plane of the 3D vocal folds, where these glottal shapes are synthesized based on the equations of normal vibration modes. The output fow data is the corresponding fow rate, averaged glottal pressure and nodal pressure distributions over the glottal surface. The 3D CNN model is built to establish the mapping between the input image data and output fow data. The ground-truth fow variables of each glottal shape in the training and test datasets are obtained by a high-fdelity sharp-interface immersed-boundary solver. The proposed model is trained to predict the concerned fow variables for glottal shapes in the test set. The present 3D CNN model is more efcient than traditional Computational Fluid Dynamics (CFD) models while the accuracy can still be retained, and more powerful than previous data-driven prediction models because more details of the glottal fow can be provided. The prediction performance of the trained 3D CNN model in accuracy and efciency indicates that this model could be promising for future clinical applications.