胎儿心磁图的进化自适应多模型预测算法

A. Adamopoulos, P. Anninos, S. Likothanassis, G. Beligiannis, L. Skarlas, E. N. Demiris, D. Papadopoulos
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引用次数: 9

摘要

提出了一种胎儿心磁图(f-MCG)分析、非线性模型识别和预测的新技术。f- mcg可以通过使用特定的完全非侵入性超导量子干涉装置(SQUID)来记录。对于f-MCG信号的分析和分类,我们引入了一种智能方法,该方法结合了以下众所周知的先进信号处理技术:遗传算法(GA),多模型划分(MMP)理论和扩展卡尔曼滤波器(EKF)。仿真结果表明,该方法能够在足够少的迭代次数内选择正确的模型结构,识别模型参数,并成功地实时跟踪信号的变化。所提出的分析提供的信息很容易被妇科医生解释和评估,包括胎儿的临床状态。该算法可以并行实现,并且在VLSI上实现是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary self-adaptive multimodel prediction algorithms of the fetal magnetocardiogram
A novel technique for the analysis, nonlinear model identification and prediction of the fetal magnetocardiogram (f-MCG) is presented. f-MCGs can be recorded with the use of specific totally non-invasive superconductive quantum interference devices (SQUID). For the analysis and classification of the f-MCG signals we introduce an intelligent method that combines the following well known advanced signal processing techniques: the genetic algorithms (GA), the multimodel partitioning (MMP) theory and the extended Kalman filters (EKF). Simulations illustrate that the proposed method is selecting the correct model structure and identifies the model parameters in a sufficiently small number of iterations and tracks successfully changes in the signal, in real time. The information provided by the proposed analysis is easily interpreted and assessed by gynecologists and consist of the clinical status of the fetus. The proposed algorithm can be parallel implemented and also a VLSI implementation is feasible.
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