Nanjing University of Chinese Medicine, Nanjing, China.
Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Science, Suzhou, China.
PLoS One. 2024 Sep 25;19(9):e0308968. doi: 10.1371/journal.pone.0308968. eCollection 2024.
Temperature prediction is crucial in the clinical ablation treatment of liver cancer, as it can be used to estimate the coagulation zone of microwave ablation.
Experiments were conducted on 83 fresh ex vivo porcine liver tissues at two ablation powers of 15 W and 20 W. Ultrasound grayscale images and temperature data from multiple sampling points were collected. The machine learning method of random forests was used to train the selected texture features, obtaining temperature prediction models for sampling points and the entire ultrasound imaging area. The accuracy of the algorithm was assessed by measuring the area of the hyperechoic area in the porcine liver tissue cross-section and ultrasound grayscale images.
The model exhibited a high degree of accuracy in temperature prediction and the identification of coagulation zone. Within the test sets for the 15 W and 20 W power groups, the average absolute error for temperature prediction was 1.14°C and 4.73°C, respectively. Notably, the model's accuracy in measuring the area of coagulation was higher than that of traditional ultrasonic grey-scale imaging, with error ratios of 0.402 and 0.182 for the respective power groups. Additionally, the model can filter out texture features with a high correlation to temperature, providing a certain degree of interpretability.
The temperature prediction model proposed in this study can be applied to temperature monitoring and coagulation zone range assessment in microwave ablation.
温度预测在肝癌临床消融治疗中至关重要,因为它可用于估计微波消融的凝固区域。
在两个消融功率为 15 W 和 20 W 的情况下,对 83 个新鲜离体猪肝组织进行了实验。采集了多个采样点的超声灰度图像和温度数据。使用随机森林机器学习方法对选定的纹理特征进行训练,获得了采样点和整个超声成像区域的温度预测模型。通过测量猪肝组织横截面上的高回声区域和超声灰度图像的面积来评估算法的准确性。
该模型在温度预测和凝固区域识别方面具有很高的准确性。在 15 W 和 20 W 功率组的测试集中,温度预测的平均绝对误差分别为 1.14°C 和 4.73°C。值得注意的是,该模型在测量凝固面积的准确性上高于传统的超声灰度成像,两个功率组的误差比分别为 0.402 和 0.182。此外,该模型可以过滤出与温度高度相关的纹理特征,提供一定程度的可解释性。
本研究提出的温度预测模型可应用于微波消融中的温度监测和凝固区域范围评估。