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Anmar Khadra

Academic title(s): 

Full Professor

Anmar Khadra
Contact Information
Phone: 
514-398-1743
Address: 

McIntyre Medical Building, Office: 1120
3655 Promenade Sir William Osler Montreal, Quebec Canada H3G 1Y6

Email address: 
anmar.khadra [at] mcgill.ca
Department: 
Physiology
Areas of expertise: 

I have a broad background in mathematical and computational biology, with proficiency in key research areas that lie at the interface of complex systems, nonlinear and stochastic dynamics, biophysics, numerical computations and artificial intelligence. I use this expertise to study quantitatively and mechanistically the underlying dynamics of various physiological systems in neuroscience, immunology and cell biology. In collaborations with leading experimental scientists, my research group develops multiscale complex systems and computational AI-based models to study the (sub)cellular and network dynamics of neurons, immune cells and motile cells; that includes:

  • analyzing neural rhythms and the role of ion channels in regulating neural excitability,
  • characterizing neural responses at the system level during rest and upon receiving a stimulus,
  • studying spontaneous and evoked calcium responses in different cellular systems including neurons,
  • deciphering ion channel kinetics,
  • investigating how T cells are activated by pMHC-coated nanoparticles and how they respond as a population during diseases,
  • unravelling how protein networks regulate cellular migration patterns.

These models adhere very closely to the physiological properties of each system under consideration, bridging its multiscale components and predicting its emergent behaviour. The models are then used to generate testable predictions, explore how these systems are regulated individually and collectively, how they evolve in time and how they respond to perturbations. Our experimental collaborators rely profoundly on our work to understand their respective biological systems and our predictions and insightful conclusions drawn from our models help steer their experimental work in new directions.

Research areas: 
Signals and Systems
Biomedical Modelling
Bioinformatics and Computational Biology
Area(s): 
Neural Encoding
Electroencephalogram (EEG)
Biophysics
System Biology
Signal Processing
Computational Modeling
Electrophysiology
Neurophysiology
Nonlinear & Nonstationary Systems
Mathematical Modeling
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