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Aortic blood pressure estimation: A hybrid machine-learning and cross-relation approach

机译:主动脉血压估计:混合机 - 学习和交叉关系方法

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Aortic blood pressure is a vital signal that provides valuable medical information about cardiovascular health condition. Noninvasive measurement of this signal is very challenging, which motivates several researchers to develop mathematical approaches over the years to estimate the aortic pressure from peripheral measurements. Most of these approaches are limited in their performance as they fail to recover important features of the blood pressure signal. To overcome this issue, we investigate the application of machine-learning methods to estimate the aortic blood pressure from peripheral signals. In the absence of reasonably large datasets, we rely on prevalidated virtual databases to train our machine-learning models. To avoid model bias due to the lack of diversity and variability in these databases, we propose a hybrid approach that combines machine-learning models with the cross-relation blind estimation approach. On top of that, a sparse representation, coupled with a dictionary-learning approach, is employed to emphasize the characteristics of the aortic pressure signals and generate more meaningful outputs. Our results show that the proposed hybrid approach offers a 27% reduction in the root-mean-squared error compared to pure machine-learning models and 40% improvement compared to the cross-relation method. The proposed approach also shows a noticeable potency in capturing fine features of the aortic blood pressure signal.
机译:主动脉血压是一种重要信号,提供有关心血管健康状况的有价值的医疗信息。这种信号的非侵入性测量非常具有挑战性,这激励了几年多年来开发数学方法的研究人员来估计来自外围测量的主动脉压力。这些方法中的大多数都是有限的,因为它们无法恢复血压信号的重要特征。为了克服这个问题,我们研究了机器学习方法的应用来估计来自外围信号的主动脉血压。在没有合理的大型数据集的情况下,我们依靠被挖掘的虚拟数据库来训练我们的机器学习模型。为避免由于这些数据库中缺乏多样性和可变性而避免模型偏见,我们提出了一种混合方法,将机器学习模型与交叉关系盲估计方法相结合。首先,采用与字典学习方法耦合的稀疏表示来强调主动脉压力信号的特性并产生更有意义的输出。我们的研究结果表明,与纯机器学习模型相比,该拟议的混合方法提供了27%的根均衡误差减少,与互关系方法相比,40%的改进。所提出的方法还显示出捕获主动脉血压信号的细节的明显效力。

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