Tronstad Christian, Strand-Amundsen Runar
Department of Clinical and Biomedical Engineering, Oslo University Hospital - Rikshospitalet, Oslo, Norway.
Sensocure AS, Skoppum, Norway.
J Electr Bioimpedance. 2019 Jul 2;10(1):24-33. doi: 10.2478/joeb-2019-0004. eCollection 2019 Jan.
The relation between a biological process and the changes in passive electrical properties of the tissue is often non-linear, in which developing prediction models based on bioimpedance spectra is not trivial. Relevant information on tissue status may also lie in characteristic developments in the bioimpedance spectra over time, often neglected by conventional methods. The aim of this study was to explore possibilities in machine learning methods for time series of bioimpedance spectra, where we used organ ischemia as an example. Based on published data on the development of the bioimpedance spectrum during liver ischemia, a simulation model was made and used to generate sets of synthetic data with different levels of organ-to-organ variation, measurement noise and drift. Three types of artificial neural networks were employed in learning to predict the ischemic duration, based on the simulated datasets. The simulated prediction performance was very dependent on the amount of training examples, the organ-to-organ variation and the selection of input variables from the bioimpedance spectrum. The performance was also affected by noise and drift in the measurement, but a recurrent neural network with long short-term memory units could obtain good predictions even on noisy and drifting measurements. This approach may be relevant for further exploration on several applications of bioimpedance having the purpose of predicting a biological state based on spectra measured over time.
生物过程与组织被动电学特性变化之间的关系通常是非线性的,因此基于生物阻抗谱建立预测模型并非易事。关于组织状态的相关信息也可能存在于生物阻抗谱随时间的特征变化中,而这一点常常被传统方法所忽视。本研究的目的是探索机器学习方法在生物阻抗谱时间序列中的应用可能性,我们以器官缺血为例进行研究。基于已发表的肝脏缺血期间生物阻抗谱变化的数据,构建了一个模拟模型,并用于生成具有不同器官间差异水平、测量噪声和漂移的合成数据集。基于这些模拟数据集,采用了三种类型的人工神经网络来学习预测缺血持续时间。模拟预测性能非常依赖于训练样本的数量、器官间差异以及从生物阻抗谱中选择的输入变量。性能还受到测量中的噪声和漂移的影响,但具有长短期记忆单元的循环神经网络即使在有噪声和漂移的测量中也能获得良好的预测结果。这种方法可能与进一步探索生物阻抗的多种应用相关,这些应用旨在基于随时间测量的谱来预测生物状态。