基于长短期记忆的无创深度体温测量在热疗中的应用

K. Mori, Y. Tange
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引用次数: 0

摘要

在本研究中,我们建立了从表面温度信息预测深层温度的模型,以实现热疗的无创测量。采用基于长短期记忆的深度学习方法,基于表面温度、表面温度变化、初始表面温度和消失时间对深度温度进行预测。利用琼脂组成的生物模测得的温度特性来学习模型。模型对幻影的预测精度误差最大时在0.45度左右。我们测量了类似人体组织的猪肉模型的温度特性,并使用该模型进行预测。幻影预测精度误差最大时在5.0度左右。在本研究中,我们使用了两种类型的热源。该模型对每个热源的温度特性了解不够。我们证实,对于使用热包作为热源的数据,该系统能够实现小于0.3度的预测精度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Invasive Deep Temperature Measurement Based on the Long Short Term Memory for Hyperthermia Therapy
In this study, we developed the model predicted the deep temperatures from the surface temperature information in order to realize non-invasive measurement for the hyperthermia therapy. The deep temperatures were predicted based on the surface temperature, surface temperature change, initial surface temperature, and lapsed time by using deep learning method based on long short term memory. The model was learned by using temperature characteristics measured by biological phantoms composed by agar. Errors of the model’s prediction accuracies for the phantoms were around 0.45 degree at the largest point. We measured the temperature characteristics of the pork-based phantom as a material similar to human tissue and used the model to make predictions. Errors of the prediction accuracies for the phantom were around 5.0 degree at the largest point. In this study, we used two type heat sources. The model does not enough learn temperature characteristics for each heat source. We confirmed that the system was able to achieve a prediction accuracy of less than 0.3 degree for data using a heat pack as a heat source
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