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一种基于血压范围约束的新型深度学习框架,用于连续无袖带血压估计。

A new deep learning framework based on blood pressure range constraint for continuous cuffless BP estimation.

作者信息

Chen Yongyi, Zhang Dan, Karimi Hamid Reza, Deng Chao, Yin Wutao

机构信息

Research Center of Automation and Artificial Intelligence, Zhejiang University of Technology, Hangzhou 310023, Zhejiang, PR China.

Research Center of Automation and Artificial Intelligence, Zhejiang University of Technology, Hangzhou 310023, Zhejiang, PR China.

出版信息

Neural Netw. 2022 Aug;152:181-190. doi: 10.1016/j.neunet.2022.04.017. Epub 2022 Apr 22.

Abstract

Blood pressure (BP) is known as an indicator of human health status, and regular measurement is helpful for early detection of cardiovascular diseases. Traditional techniques for measuring BP are either invasive or cuff-based and thus are not suitable for continuous measurement. Aiming at the deficiencies in existing studies, a novel cuffless BP estimation framework of Receptive Field Parallel Attention Shrinkage Network (RFPASN) and BP range constraint is proposed. Firstly, RFPASN uses the multi-scale large receptive field convolution module to capture the long-term dynamics in the photoplethysmography (PPG) signal without using long short-term memory (LSTM). On this basis, the features acquired by the parallel mixed domain attention module are used as thresholds, and the soft threshold function is used to screen the input features to enhance the discriminability and robustness of features, which can significantly improve the prediction accuracy of diastolic blood pressure (DBP) and systolic blood pressure (SBP). Finally, in order to prevent large fluctuations in the prediction results of RFPASN, RFPASN based on BP range constraint is proposed to make the prediction results of RFPASN more accurate and reasonable. The performance of the proposed method is demonstrated on a publically available MIMIC-II database. The database contains normal, hypertensive and hypotensive people. We have achieved MAE of 1.63/1.59 (DBP) and 2.26/2.15 (SBP) mmHg for BP on total population of 1562 subjects. A comparative study shows that the proposed algorithm is more promising than the state-of-the-art.

摘要

血压(BP)是人类健康状况的一个指标,定期测量有助于早期发现心血管疾病。传统的血压测量技术要么是侵入性的,要么是基于袖带的,因此不适合连续测量。针对现有研究的不足,提出了一种基于感受野并行注意力收缩网络(RFPASN)和血压范围约束的新型无袖带血压估计框架。首先,RFPASN使用多尺度大感受野卷积模块来捕捉光电容积脉搏波描记图(PPG)信号中的长期动态,而无需使用长短期记忆(LSTM)。在此基础上,将并行混合域注意力模块获取的特征用作阈值,并使用软阈值函数对输入特征进行筛选,以增强特征的可辨别性和鲁棒性,这可以显著提高舒张压(DBP)和收缩压(SBP)的预测准确率。最后,为了防止RFPASN预测结果出现大幅波动,提出了基于血压范围约束的RFPASN,以使RFPASN的预测结果更加准确和合理。在公开可用的MIMIC-II数据库上验证了所提方法的性能。该数据库包含正常、高血压和低血压人群。对于1562名受试者的总体人群,我们在血压方面实现了DBP为1.63/1.59 mmHg、SBP为2.26/2.15 mmHg的平均绝对误差(MAE)。一项对比研究表明,所提算法比现有最先进算法更具前景。

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