Department of Computer Science, University of Tübingen, Tübingen, Germany.
Department of Information Technology, Uppsala University, Uppsala, Sweden.
Sci Rep. 2024 Jul 3;14(1):15273. doi: 10.1038/s41598-024-65223-w.
Imbalances in electrolyte concentrations can have severe consequences, but accurate and accessible measurements could improve patient outcomes. The current measurement method based on blood tests is accurate but invasive and time-consuming and is often unavailable for example in remote locations or an ambulance setting. In this paper, we explore the use of deep neural networks (DNNs) for regression tasks to accurately predict continuous electrolyte concentrations from electrocardiograms (ECGs), a quick and widely adopted tool. We analyze our DNN models on a novel dataset of over 290,000 ECGs across four major electrolytes and compare their performance with traditional machine learning models. For improved understanding, we also study the full spectrum from continuous predictions to a binary classification of extreme concentration levels. Finally, we investigate probabilistic regression approaches and explore uncertainty estimates for enhanced clinical usefulness. Our results show that DNNs outperform traditional models but model performance varies significantly across different electrolytes. While discretization leads to good classification performance, it does not address the original problem of continuous concentration level prediction. Probabilistic regression has practical potential, but our uncertainty estimates are not perfectly calibrated. Our study is therefore a first step towards developing an accurate and reliable ECG-based method for electrolyte concentration level prediction-a method with high potential impact within multiple clinical scenarios.
电解质浓度失衡可能会带来严重后果,但准确且易于获取的测量方法可能会改善患者的预后。目前基于血液检测的测量方法虽然准确,但具有侵入性且耗时,例如在偏远地区或救护车上往往无法进行。在本文中,我们探讨了使用深度神经网络 (DNN) 进行回归任务,以从心电图 (ECG) 中准确预测连续电解质浓度,ECG 是一种快速且广泛采用的工具。我们在一个包含超过 29 万份 ECG 的新型数据集上分析了我们的 DNN 模型,并将其性能与传统机器学习模型进行了比较。为了更好地理解,我们还研究了从连续预测到极端浓度水平的二进制分类的全频谱。最后,我们研究了概率回归方法,并探索了不确定性估计,以提高临床实用性。我们的研究结果表明,DNN 优于传统模型,但不同电解质的模型性能差异很大。虽然离散化可以带来良好的分类性能,但它并不能解决连续浓度水平预测的原始问题。概率回归具有实际潜力,但我们的不确定性估计并不完全校准。因此,我们的研究是朝着开发基于心电图的电解质浓度水平预测的准确可靠方法迈出的第一步——这种方法在多种临床情况下具有很高的潜在影响。