Validation of deep learning models for cuffless blood pressure estimation on a large benchmarking dataset

Yu Huang, Yonghu He, Zhengbi Song, Kun Gao, Yali Zheng
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Abstract

Objective: This study aims to evaluate the effectiveness of deep learning techniques in estimating cuffless blood pressure (BP) across a diverse patient population in intensive care units (ICUs). Methods: A comprehensive ICU benchmarking dataset encompassing 2,154 patients with a wide demographic range (18-97 years old) and varied cardiovascular status was employed to validate several deep learning models in predicting continuous BP waveforms. Three methods were developed to enhance the model's generalizability to this heterogeneous dataset. Ten-fold subject-independent cross-validation was performed and the model performance was assessed through mean absolute error (MAE), Pearson’s correlation coefficient (PCC), and compared with significance analysis. Results: The UTransBPNet_Demo_In model, which incorporated demographic and physiological signals as inputs, achieved a PCC of 0.89 and a MAE of 10.38 mmHg in predicting arterial BP waveforms, demonstrating the highest tracking capability among all models. Notably, the performance of UTransBPNet_Demo_In remained robust across variations in demographic and cardiovascular status. Conclusion: The UTransBPNet_Demo_In model demonstrates robust predictive capabilities across a broad spectrum of demographics and cardiovascular conditions. Although the performance still needs further improvement, this study offers a benchmark in the field of cuffless BP monitoring in critical care settings for future studies.
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在大型基准数据集上验证用于无袖带血压估算的深度学习模型
研究目的本研究旨在评估深度学习技术在重症监护室(ICU)不同患者群体中估算无袖带血压(BP)的有效性。研究方法研究采用了一个全面的重症监护室基准数据集,该数据集包含 2,154 名患者,这些患者的人口统计范围广泛(18-97 岁),心血管状况各不相同,研究采用该数据集对预测连续血压波形的多个深度学习模型进行了验证。我们开发了三种方法来增强模型对这一异构数据集的普适性。进行了十倍主体独立交叉验证,并通过平均绝对误差(MAE)、皮尔逊相关系数(PCC)评估模型性能,并与显著性分析进行比较。结果将人口和生理信号作为输入的 UTransBPNet_Demo_In 模型在预测动脉血压波形时的 PCC 为 0.89,MAE 为 10.38 mmHg,在所有模型中显示出最高的跟踪能力。值得注意的是,UTransBPNet_Demo_In 的性能在人口统计学和心血管状况发生变化时仍然保持稳定。结论UTransBPNet_Demo_In模型在广泛的人口统计学和心血管状况中表现出了强大的预测能力。尽管其性能仍需进一步提高,但这项研究为今后在重症监护环境中进行无袖带血压监测提供了一个基准。
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