Nicole Cusimano
Queensland University of Technology
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Publication
Featured researches published by Nicole Cusimano.
PLOS ONE | 2015
Nicole Cusimano; Alfonso Bueno-Orovio; Ian Turner; Kevin Burrage
Space-fractional operators have been used with success in a variety of practical applications to describe transport processes in media characterised by spatial connectivity properties and high structural heterogeneity altering the classical laws of diffusion. This study provides a systematic investigation of the spatio-temporal effects of a space-fractional model in cardiac electrophysiology. We consider a simplified model of electrical pulse propagation through cardiac tissue, namely the monodomain formulation of the Beeler-Reuter cell model on insulated tissue fibres, and obtain a space-fractional modification of the model by using the spectral definition of the one-dimensional continuous fractional Laplacian. The spectral decomposition of the fractional operator allows us to develop an efficient numerical method for the space-fractional problem. Particular attention is paid to the role played by the fractional operator in determining the solution behaviour and to the identification of crucial differences between the non-fractional and the fractional cases. We find a positive linear dependence of the depolarization peak height and a power law decay of notch and dome peak amplitudes for decreasing orders of the fractional operator. Furthermore, we establish a quadratic relationship in conduction velocity, and quantify the increasingly wider action potential foot and more pronounced dispersion of action potential duration, as the fractional order is decreased. A discussion of the physiological interpretation of the presented findings is made.
Journal of the Royal Society Interface | 2016
Christopher C. Drovandi; Nicole Cusimano; Steven Psaltis; Brodie A. J. Lawson; Anthony N. Pettitt; Pamela Burrage; Kevin Burrage
Between-subject and within-subject variability is ubiquitous in biology and physiology, and understanding and dealing with this is one of the biggest challenges in medicine. At the same time, it is difficult to investigate this variability by experiments alone. A recent modelling and simulation approach, known as population of models (POM), allows this exploration to take place by building a mathematical model consisting of multiple parameter sets calibrated against experimental data. However, finding such sets within a high-dimensional parameter space of complex electrophysiological models is computationally challenging. By placing the POM approach within a statistical framework, we develop a novel and efficient algorithm based on sequential Monte Carlo (SMC). We compare the SMC approach with Latin hypercube sampling (LHS), a method commonly adopted in the literature for obtaining the POM, in terms of efficiency and output variability in the presence of a drug block through an in-depth investigation via the Beeler–Reuter cardiac electrophysiological model. We show improved efficiency for SMC that produces similar responses to LHS when making out-of-sample predictions in the presence of a simulated drug block. Finally, we show the performance of our approach on a complex atrial electrophysiological model, namely the Courtemanche–Ramirez–Nattel model.
Bulletin of The Australian Mathematical Society | 2016
Nicole Cusimano
This work addresses fundamental issues in the mathematical modelling of the diffusive motion of particles in biological and physiological settings. New mathematical results are proved and implemented in computer models for the colonisation of the embryonic gut by neural cells and the propagation of electrical waves in the heart, offering new insights into the relationships between structure and function. In particular, the thesis focuses on the use of non-local differential operators of non-integer order to capture the main features of diffusion processes occurring in complex spatial structures characterised by high levels of heterogeneity.
Applied Mathematical Modelling | 2017
Nicole Cusimano; Kevin Burrage; Ian Turner; David Kay
School of Mathematical Sciences; Science & Engineering Faculty | 2015
Nicole Cusimano
ARC Centre of Excellence for Mathematical & Statistical Frontiers (ACEMS); School of Mathematical Sciences; Science & Engineering Faculty | 2018
Brodie A. J. Lawson; Christopher C. Drovandi; Nicole Cusimano; Pamela Burrage; Blanca Rodriguez; Kevin Burrage
Science & Engineering Faculty | 2016
W. L. Sweatman; Geoff Mercer; John Boland; Nicole Cusimano; Ava A. Greenwood; Kristen Harley; Peter van Heijster; P. Kim; Joe Maisano; Mark Nelson
Anziam Journal | 2016
W. L. Sweatman; Geoff Mercer; John Boland; Nicole Cusimano; Ava A. Greenwood; Kristen Harley; Peter van Heijster; P. Kim; Joe Maisano; Mark Nelson
ARC Centre of Excellence for Mathematical & Statistical Frontiers (ACEMS); Science & Engineering Faculty | 2015
Nicole Cusimano; Alfonso Bueno-Orovio; Ian Turner; Kevin Burrage
Science & Engineering Faculty | 2013
Nicole Cusimano; Kevin Burrage; Pamela Burrage