Mathematical Modelling of Heart Rate Changes in the Mouse
The CVS is composed of numerous interacting and dynamically regulated physiological subsystems which each generate measurable periodic components such that the CVS can itself be presented as a system of weakly coupled oscillators. The interactions between these oscillators generate a chaotic blood p...
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Zusammenfassung: | The CVS is composed of numerous interacting and dynamically regulated
physiological subsystems which each generate measurable periodic components
such that the CVS can itself be presented as a system of weakly coupled
oscillators. The interactions between these oscillators generate a chaotic
blood pressure waveform signal, where periods of apparent rhythmicity are
punctuated by asynchronous behaviour. It is this variability which seems to
characterise the normal state. We used a standard experimental data set for the
purposes of analysis and modelling. Arterial blood pressure waveform data was
collected from conscious mice instrumented with radiotelemetry devices over
$24$ hours, at a $100$ Hz and $1$ kHz time base. During a $24$ hour period,
these mice display diurnal variation leading to changes in the cardiovascular
waveform. We undertook preliminary analysis of our data using Fourier
transforms and subsequently applied a series of both linear and nonlinear
mathematical approaches in parallel. We provide a minimalistic linear and
nonlinear coupled oscillator model and employed spectral and Hilbert analysis
as well as a phase plane analysis. This provides a route to a three way
synergistic investigation of the original blood pressure data by a combination
of physiological experiments, data analysis viz. Fourier and Hilbert transforms
and attractor reconstructions, and numerical solutions of linear and nonlinear
coupled oscillator models. We believe that a minimal model of coupled
oscillator models that quantitatively describes the complex physiological data
could be developed via such a method. Further investigations of each of these
techniques will be explored in separate publications. |
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DOI: | 10.48550/arxiv.1510.01403 |