Department of IT Convergence Engineering, Kumoh National Institute of Technology, Gumi, 39177, Republic of Korea.
Department of Electrical Engineering, Telkom University, Bandung, 40257, Indonesia.
Sci Rep. 2024 Jul 16;14(1):16450. doi: 10.1038/s41598-024-66514-y.
Continuous blood pressure (BP) monitoring is essential for managing cardiovascular disease. However, existing devices often require expert handling, highlighting the need for alternative methods to simplify the process. Researchers have developed various methods using physiological signals to address this issue. Yet, many of these methods either fall short in accuracy according to the BHS, AAMI, and IEEE standards for BP measurement devices or suffer from low computational efficiency due to the complexity of their models. To solve this problem, we developed a BP prediction system that merges extracted features of PPG and ECG from two pulses of both signals using convolutional and LSTM layers, followed by incorporating the R-to-R interval durations as additional features for predicting systolic (SBP) and diastolic (DBP) blood pressure. Our findings indicate that the prediction accuracies for SBP and DBP were 5.306 ± 7.248 mmHg with a 0.877 correlation coefficient and 3.296 ± 4.764 mmHg with a 0.918 correlation coefficient, respectively. We found that our proposed model achieved a robust performance on the MIMIC III dataset with a minimum architectural design and high-level accuracy compared to existing methods. Thus, our method not only meets the passing category for BHS, AAMI, and IEEE guidelines but also stands out as the most rapidly accurate deep-learning-based BP measurement device currently available.
连续血压(BP)监测对于心血管疾病的管理至关重要。然而,现有的设备通常需要专业的操作,这突出了需要替代方法来简化该过程。研究人员已经开发了各种使用生理信号的方法来解决这个问题。然而,根据 BP 测量设备的 BHS、AAMI 和 IEEE 标准,许多这些方法要么在准确性上存在不足,要么由于其模型的复杂性而导致计算效率低下。为了解决这个问题,我们开发了一种 BP 预测系统,该系统使用卷积层和 LSTM 层合并来自两个信号的两个脉冲的 PPG 和 ECG 的提取特征,然后将 R-R 间隔持续时间作为预测收缩压(SBP)和舒张压(DBP)的附加特征。我们的研究结果表明,SBP 和 DBP 的预测精度分别为 5.306±7.248mmHg,相关系数为 0.877,3.296±4.764mmHg,相关系数为 0.918。我们发现,与现有的方法相比,我们的模型在 MIMIC III 数据集上具有最小的架构设计和较高的准确性,因此表现出稳健的性能。因此,我们的方法不仅满足 BHS、AAMI 和 IEEE 指南的通过标准,而且是目前最快、最准确的基于深度学习的 BP 测量设备。