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Design of an optimized continuous mini-bolus thermodilution cardiac output monitor using artificial neural networks and genetic algorithms

机译:利用人工神经网络和遗传算法设计优化的连续小剂量热稀释心输出量监护仪

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The ability to estimate cardiac output by thermodilution, as initially described by Fegler (1954), was an important step in hemodynamic monitoring. However, the usefulness of this procedure has been hampered by the difficulty in filtering the thermal noise from the thermodilution signal in the pulmonary artery. As a result, current procedures are limited to intermittent measurements with large-bolus injections that produce an acceptable signal-to-noise ratio (SNR). This paper presents one approach to solving this problem using the nonlinear mapping ability of artificial neural networks (ANN). It is shown that the cardiac output estimated by the ANN significantly improves the classical method of computing cardiac output with small-injectates using the Stewart-Hamilton equation and are within clinically acceptable limits in comparison to the "gold standard".
机译:如Fegler(1954)最初所述,通过热稀释估计心输出量的能力是血液动力学监测的重要一步。然而,由于难以从肺动脉中的热稀释信号中滤除热噪声,因此妨碍了该方法的实用性。结果,当前的程序仅限于使用大推注进样的间歇式测量,该间歇式测量会产生可接受的信噪比(SNR)。本文提出了一种使用人工神经网络(ANN)的非线性映射功能解决此问题的方法。结果表明,由人工神经网络估计的心输出量显着改善了使用Stewart-Hamilton方程进行小剂量注射的经典心输出量计算方法,并且与“黄金标准”相比在临床可接受的范围内。

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