Modeling the Memory of Unmyelinated Axons: Integration of a Data-Driven Approach with Physiological Memory Concept
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In this study, we present a simplified and resource-efficient computational model to predict activity-dependent conduction velocity changes of action in unmyelinated axons. This model serves as a complementary tool to Hodgkin-Huxley models. Our approach is based on the concept of "memory," where the speed of subsequent action potentials is modulated by prior activity. We utilized microneurography data from 95 mechano-insensitive C-fibers of healthy human participants, including both sexes, across various stimulation protocols to optimize model parameters. The model incorporates linear long-term and non-linear short-term memory components. By convolving the history of recorded action potentials with the memory function, the model can effectively predict the propagation speed of subsequent action potentials with low mean squared errors for the proposed one-dimensional and two-dimensional memory functions. This computational framework provides insights into the dynamics of unmyelinated axons under varying conditions and thus in signal processing along the axon and the short-term memory of axons. The model’s rapid computation times make it suitable for real-time applications in electrophysiological experiments.
Significance Statement
This study introduces a novel model for simulating activity-dependent conduction velocity changes in unmyelinated axons, which crucially shape signal processing during conduction. While traditional Hodgkin-Huxley (HH) models offer valuable physiological insights, they are computationally intensive and challenging to adapt due to numerous parameters. Our approach leverages the concept of fiber “memory,” capturing how prior activity shapes conduction. It requires fewer parameters and therefore makes it easier to fit to diverse datasets, including patient data. Importantly, our model is highly efficient and suitable for real-time applications, enabling rapid simulation and analysis that are not feasible with HH models.