CirnetamorNet: An ultrasonic temperature measurement network for microwave hyperthermia based on deep learning.
Authors
Affiliations (3)
Affiliations (3)
- School of Digital and Intelligence Industry, Inner Mongolia University of Science and Technology, 7 Alding Street, Baotou, 014010, China.
- School of Digital and Intelligence Industry, Inner Mongolia University of Science and Technology, 7 Alding Street, Baotou, 014010, China. Electronic address: [email protected].
- Technical Institute of Physics and Chemistry CAS, 29 Zhongguancun East Road, Haidian District, Beijing, 100190, China.
Abstract
Microwave thermotherapy is a promising approach for cancer treatment, but accurate noninvasive temperature monitoring remains challenging. This study aims to achieve accurate temperature prediction during microwave thermotherapy by efficiently integrating multi-feature data, thereby improving the accuracy and reliability of noninvasive thermometry techniques. We proposed an enhanced recurrent neural network architecture, namely CirnetamorNet. The experimental data acquisition system is developed by using the material that simulates the characteristics of human tissue to construct the body model. Ultrasonic image data at different temperatures were collected, and 5 parameters with high temperature correlation were extracted from gray scale covariance matrix and Homodyned-K distribution. Using multi-feature data as input and temperature prediction as output, the CirnetamorNet model is constructed by multi-head attention mechanism. Model performance was evaluated by analyzing training losses, predicting mean square error and accuracy, and ablation experiments were performed to evaluate the contribution of each module. Compared with common models, the CirnetamorNet model performs well, with training losses as low as 1.4589 and mean square error of only 0.1856. Its temperature prediction accuracy of 0.3°C exceeds that of many advanced models. Ablation experiments show that the removal of any key module of the model will lead to performance degradation, which proves that the collaboration of all modules is significant for improving the performance of the model. The proposed CirnetamorNet model exhibits exceptional performance in noninvasive thermometry for microwave thermotherapy. It offers a novel approach to multi-feature data fusion in the medical field and holds significant practical application value.