Pilia N, Severi S, Raimann J G, Genovesi S, Dössel O, Kotanko P, Corsi C, Loewe A
Institute of Biomedical Engineering, Karlsruhe Institute of Technology (KIT), 76131 Karlsruhe, Germany.
Department of Electrical, Electronic, and Information Engineering "Guglielmo Marconi," University of Bologna, 47522 Cesena, Italy.
APL Bioeng. 2020 Oct 2;4(4):041501. doi: 10.1063/5.0018504. eCollection 2020 Dec.
Diseases caused by alterations of ionic concentrations are frequently observed challenges and play an important role in clinical practice. The clinically established method for the diagnosis of electrolyte concentration imbalance is blood tests. A rapid and non-invasive point-of-care method is yet needed. The electrocardiogram (ECG) could meet this need and becomes an established diagnostic tool allowing home monitoring of the electrolyte concentration also by wearable devices. In this review, we present the current state of potassium and calcium concentration monitoring using the ECG and summarize results from previous work. Selected clinical studies are presented, supporting or questioning the use of the ECG for the monitoring of electrolyte concentration imbalances. Differences in the findings from automatic monitoring studies are discussed, and current studies utilizing machine learning are presented demonstrating the potential of the deep learning approach. Furthermore, we demonstrate the potential of computational modeling approaches to gain insight into the mechanisms of relevant clinical findings and as a tool to obtain synthetic data for methodical improvements in monitoring approaches.
由离子浓度改变引起的疾病是临床实践中常见的挑战,并且在临床实践中发挥着重要作用。临床上用于诊断电解质浓度失衡的既定方法是血液检测。目前仍需要一种快速且非侵入性的即时检测方法。心电图(ECG)能够满足这一需求,并成为一种既定的诊断工具,使得可穿戴设备也能够在家中监测电解质浓度。在本综述中,我们介绍了利用心电图监测钾和钙浓度的现状,并总结了先前研究的结果。展示了一些选定的临床研究,这些研究支持或质疑使用心电图监测电解质浓度失衡。讨论了自动监测研究结果的差异,并介绍了当前利用机器学习的研究,展示了深度学习方法的潜力。此外,我们展示了计算建模方法的潜力,以深入了解相关临床发现的机制,并作为一种工具来获取合成数据,以改进监测方法。