Viktor Mattsson, Mauricio D. Perez, Laya Joseph, Robin Augustine
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引用次数: 0
Abstract
The Muscle Analyzer System (MAS) project wants to create a standalone microwave device that can assess the muscle quality, called the MAS device. To achieve that an algorithm that can derive the properties of skin, fat and muscle from the measurements is needed. This paper presents a machine learning algorithm that aims to do precisely that. The algorithm relies on first predicting the skin using the data from the MAS device, then predicting the fat again using the data from the MAS but also the predicted skin value and lastly the muscle is predicted using the microwave data together with the skin and fat predictions. Data have been collected in phantom experiments, materials that mimick the dielectric properties of human tissues. The algorithm is trained to predict the properties of said phantoms. The results show that the prediction for skin thickness works well, the fat thickness prediction is okay but the muscle prediction struggles. This is partly due to the error from the skin and fat layers are propagated to the muscle layer and partly because the muscle layer is farthest away from the sensor, which makes getting information from that layer harder.
肌肉分析仪系统(MAS)项目希望创建一个能够评估肌肉质量的独立微波设备,称为 MAS 设备。为实现这一目标,需要一种能从测量结果中推导出皮肤、脂肪和肌肉属性的算法。本文介绍的机器学习算法正是为了实现这一目标。该算法首先利用 MAS 设备的数据预测皮肤,然后利用 MAS 的数据以及预测的皮肤值再次预测脂肪,最后利用微波数据以及皮肤和脂肪预测值预测肌肉。数据是在模拟人体组织介电特性的模型实验中收集的。对算法进行了训练,以预测上述模型的特性。结果显示,对皮肤厚度的预测效果良好,对脂肪厚度的预测尚可,但对肌肉的预测却很困难。这一方面是由于皮肤和脂肪层的误差会传播到肌肉层,另一方面是由于肌肉层离传感器最远,因此很难从该层获取信息。
期刊介绍:
The prime objective of the International Journal of Microwave and Wireless Technologies is to enhance the communication between microwave engineers throughout the world. It is therefore interdisciplinary and application oriented, providing a platform for the microwave industry. Coverage includes: applied electromagnetic field theory (antennas, transmission lines and waveguides), components (passive structures and semiconductor device technologies), analogue and mixed-signal circuits, systems, optical-microwave interactions, electromagnetic compatibility, industrial applications, biological effects and medical applications.