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首页> 外文期刊>Scientific reports. >Artificial Intelligence Estimation of Carotid-Femoral Pulse Wave Velocity using Carotid Waveform
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Artificial Intelligence Estimation of Carotid-Femoral Pulse Wave Velocity using Carotid Waveform

机译:颈动脉波形颈动脉慢脉搏波速度的人工智能估算

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In this article, we offer an artificial intelligence method to estimate the carotid-femoral Pulse Wave Velocity (PWV) non-invasively from one uncalibrated carotid waveform measured by tonometry and few routine clinical variables. Since the signal processing inputs to this machine learning algorithm are sensor agnostic, the presented method can accompany any medical instrument that provides a calibrated or uncalibrated carotid pressure waveform. Our results show that, for an unseen hold back test set population in the age range of 20 to 69, our model can estimate PWV with a Root-Mean-Square Error (RMSE) of 1.12?m/sec compared to the reference method. The results convey the fact that this model is a reliable surrogate of PWV. Our study also showed that estimated PWV was significantly associated with an increased risk of CVDs.
机译:在本文中,我们提供一种人工智能方法,以估计通过纯度测量的一个未胆固的颈动脉波形的颈动脉 - 股脉冲波速度(PWV),少数常规临床变量。由于该机器学习算法的信号处理输入是传感器不可知的,所以所示的方法可以伴随提供校准或未均相颈动脉压力波形的任何医疗仪器。我们的研究结果表明,对于一个看不见的试验集合,在20至69岁的年龄范围内,我们的模型可以估计与参考方法相比的根均方误差(RMSE)的PWV。结果传达了该模型是PWV可靠代理的事实。我们的研究还表明,估计的PWV与CVDS的风险增加显着相关。

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