Multivariate Frequency Domain Analysis of Causal Interactions in Physiological Time Series
نویسندگان
چکیده
منابع مشابه
Methods for the analysis of short-term variability of heart rate and blood pressure in frequency domain
Cardiovascular variability signals provide information about the functioning of the autonomous nervous system and other physiological sub-systems. Because of large interand intra-subject variability, sophisticated data analysis methods are needed to gain this information. An important approach for analysing signals is the analysis in the frequency domain. In this thesis, spectral analysis of ca...
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