
doi: 10.7939/r31g81
Single-particle tracking (SPT) is a method used to study the diffusion of various molecules within the cell. SPT involves tagging proteins with optical labels and observing their individual two-dimensional trajectories with a microscope. The analysis of this data provides important information about protein movement and mechanism, and is used to create multistate biological models. One of the challenges in SPT analysis is the variety of complex environments that contribute to heterogeneity within movement paths. In this thesis, we explore the limitations of current methods used to analyze molecular movement, and adapt analytical methods used in animal movement analysis, such as correlated random walks and first-passage time variance, to SPT data of leukocyte function-associated antigen-1 (LFA-1) integral membrane proteins. We discuss the consequences of these methods in understanding different types of heterogeneity in protein movement behaviour, and provide support to results from current experimental work.
Diffusion, Mean square displacement, Single particle tracking, Variance first-passage time, Adhesion receptor, Correlated random walk, Random walks, Diffusion coefficient, Leukocyte function associated antigen - 1, Error
Diffusion, Mean square displacement, Single particle tracking, Variance first-passage time, Adhesion receptor, Correlated random walk, Random walks, Diffusion coefficient, Leukocyte function associated antigen - 1, Error
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