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Akaike's model versus conventional spectral analysis as tools for analyzing multivariate clinical time series

机译:Akaike模型与传统频谱分析相比可作为分析多元临床时间序列的工具

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Akaike's method of multivariate autoregressive (AR) modeling is applied to time-series analysis of clinical data. The present approach successfully demonstrated the peculiar power spectrum in various time-series data, which failed to be detected by FFT analysis because of abundant noise. Once AR coefficients are computed from the observed time-series of the relevant variables they can be used to describe the peculiar behavior of the system under study in two different ways: impulse response (IR) curves and Akaike's relative power contribution. The original program of Akaike is modified for exclusive uses in the analysis of clinical data.
机译:Akaike的多元自回归(AR)建模方法应用于临床数据的时间序列分析。本方法成功地证明了各种时间序列数据中的特殊功率谱,由于存在大量噪声,因此无法通过FFT分析检测到。一旦从观察到的相关变量的时间序列中计算出AR系数,就可以用两种不同的方式来描述所研究系统的特殊行为:脉冲响应(IR)曲线和Akaike的相对功率贡献。修改了Akaike的原始程序,仅用于临床数据分析。

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