Abstract T cells must assess and choose between surveilling large areas, but also engage efficiently with the target cells. This process is translated into variations in the speed and turning angle of T cells. In this study, a generalized algorithm is proposed to analyze cell migration data with focus on CD8+ T cells, using clustering technique to identify the number of different migration states and Hidden Markov Model (HMM)to capture the dynamical switching between them. The algorithm only requires a set of position observations in a series of times, independent of other factors. While this study focuses on CD8+ T cell migration, this approach can potentially be used broadly to study the migration of other cell types as well. For the current analysis, low and high avidity T cells in melanoma tumors are tracked ex vivo using two‐photon microscopy. These findings suggest that CD8+ T cells follow a two‐state migration dynamic, with one state being faster, while the other slower and more localized. Moreover, a statistical methodology is established to analyze T cell migration to assess whether there is true variability in cell speeds as distinguished from stochastic fluctuations about a single speed, and it can be applied across different experimental platforms.
Memmos et al. (Mon,) studied this question.