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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Continuous Cuff-Less Blood Pressure Estimation Based on Combined Information Using Deep Learning Approach
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Continuous Cuff-Less Blood Pressure Estimation Based on Combined Information Using Deep Learning Approach

机译:基于使用深度学习方法的组合信息持续延续的血压估计

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Pulse transit time (PTT) is a promising way for continuous and unobtrusive blood pressure (BP) measurement. Many investigators made great efforts on cuff-less BP estimation. However, estimation of BP in clinic with a reliable accuracy is still a great challenge. In this paper, we proposea novel continuous blood pressure estimation method based on combined information including waveform information, artificial features and personal features. A 5 and 8 hidden layer deep neural networks had been constructed to learn the efficient and indetectable features associated with BPfrom the treated electrocardiogram (ECG) and photoplethysmogram (PPG) waveforms. Moreover, no calibration procedure is required in this approach. In our experiments, a total of 41267 beats from 85 subjects were performed in the 10-fold cross validation test to examine the accuracy of the proposedmethod. Besides, a supplementary experiment on another batch of subjects was performed for the robust test. We found that combined information was superior to the single feature in BP estimation. In addition, model 1 shows better performance in the 10-fold cross validation test. Meanwhile,model 2 with less hidden layers presented better robustness than model 1. The mean absolute difference (MAD) of systolic BP and diastolic BP for model 2 were 3.63 and 2.45 mmHg, respectively. In the comparison experiment, model 2 showed superiority in accuracy compared to the state-of-the-artmethods especially in diastolic BP. Although the model in this paper need to be further improved, the presented advantages endow the proposed methods a feasible and promising application in future continuous cuff-less BP estimation.
机译:脉冲过渡时间(PTT)是一种用于连续和不引人注目的血压(BP)测量的有希望的方式。许多调查人员努力努力缩减袖口的BP估计。然而,以可靠的准确性估计诊所中的BP仍然是一个巨大的挑战。本文基于组合信息,人工特征和个人特征,我们提出基于组合信息的新型连续血压估计方法。已经构建了5和8个隐藏层深度神经网络,以了解与BPFROM处理的心电图(ECG)和光学肌谱(PPG)波形相关的有效和禁止的特征。此外,这种方法不需要校准程序。在我们的实验中,在10倍的交叉验证测试中进行了来自85个受试者的41267个次数,以检查预设方法的准确性。此外,对鲁棒测试进行了另一批受试者的补充实验。我们发现组合信息优于BP估计中的单一特征。此外,型号1显示了10倍交叉验证测试中的更好性能。同时,具有较少隐藏层的模型2呈现出比模型的更好的鲁棒性。Systolic BP的平均绝对差异(Mad)和舒张模型2的模型2分别为3.63和2.45mmHg。在比较实验中,与尤其是舒张压性BP,模型2的精确度表现出优势。虽然本文的模型需要进一步提高,但呈现的优势赋予了所提出的方法,在未来的连续袖口的BP估计中可行和有希望的应用。

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