Affiliation:
1. College of Electronic and Information Engineering Hebei University Baoding China
2. Key Laboratory of Digital Medical Engineering of Hebei Province Baoding China
3. Senior Department of Orthopedics the Fourth Medical Center of PLA General Hospital Beijing China
4. Affiliated Hospital of Hebei University Baoding China
5. Department of Liver Surgery Peking Union Medical College Hospital Chinese Academy of Medical Sciences and Peking Union Medical College (CAMS & PUMC) Beijing China
6. Suzhou Institute of Biomedical Engineering and Technology Chinese Academy of Sciences Suzhou China
Abstract
AbstractBackground2D CT image‐guided radiofrequency ablation (RFA) is an exciting minimally invasive treatment that can destroy liver tumors without removing them. However, CT images can only provide limited static information, and the tumor will move with the patient's respiratory movement. Therefore, how to accurately locate tumors under free conditions is an urgent problem to be solved at present.PurposeThe purpose of this study is to propose a respiratory correlation prediction model for mixed reality surgical assistance system, Riemannian and Multivariate Feature Enhanced Temporal Convolutional Network (R‐MFE‐TCN), and to achieve accurate respiratory correlation prediction.MethodsThe model adopts a respiration‐oriented Riemannian information enhancement strategy to expand the diversity of the dataset. A new Multivariate Feature Enhancement module (MFE) is proposed to retain respiratory data information, so that the network can fully explore the correlation of internal and external data information, the dual‐channel is used to retain multivariate respiratory feature, and the Multi‐headed Self‐attention obtains respiratory peak‐to‐valley value periodic information. This information significantly improves the prediction performance of the network. At the same time, the PSO algorithm is used for hyperparameter optimization. In the experiment, a total of seven patients' internal and external respiratory motion trajectories were obtained from the dataset, and the first six patients were selected as the training set. The respiratory signal collection frequency was 21 Hz.ResultsA large number of experiments on the dataset prove the good performance of this method, which improves the prediction accuracy while also having strong robustness. This method can reduce the delay deviation under long window prediction and achieve good performance. In the case of 400 ms, the average RMSE and MAE are 0.0453 and 0.0361 mm, respectively, which is better than other research methods.ConclusionThe R‐MFE‐TCN can be extended to respiratory correlation prediction in different clinical situations, meeting the accuracy requirements for respiratory delay prediction in surgical assistance.
Funder
Natural Science Foundation of Hebei Province