An automated method for precise axon reconstruction from recordings of high-density micro-electrode arrays
Autor: | Alessio Paolo Buccino, Xinyue Yuan, Vishalini Emmenegger, Xiaohan Xue, Tobias Gänswein, Andreas Hierlemann |
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Rok vydání: | 2021 |
Předmět: |
Computer science
extracellular recordings Biomedical Engineering Action Potentials Signal open source software Cellular and Molecular Neuroscience medicine Humans Axon Neurons high-density microelectrode arrays axon reconstruction Python Brain Reconstruction algorithm Axons Microelectrode Electrophysiology medicine.anatomical_structure nervous system Feature (computer vision) Graph (abstract data type) Biological system Microelectrodes Communication channel |
Zdroj: | Journal of Neural Engineering, 19 (2) |
ISSN: | 1741-2560 1741-2552 |
DOI: | 10.1101/2021.06.12.448051 |
Popis: | Objective: Neurons communicate with each other by sending action potentials (APs) through their axons. The velocity of axonal signal propagation describes how fast electrical APs can travel. This velocity can be affected in a human brain by several pathologies, including multiple sclerosis, traumatic brain injury and channelopathies. High-density microelectrode arrays (HD-MEAs) provide unprecedented spatio-temporal resolution to extracellularly record neural electrical activity. The high density of the recording electrodes enables to image the activity of individual neurons down to subcellular resolution, which includes the propagation of axonal signals. However, axon reconstruction, to date, mainly relies on manual approaches to select the electrodes and channels that seemingly record the signals along a specific axon, while an automated approach to track multiple axonal branches in extracellular action-potential recordings is still missing. Approach: In this article, we propose a fully automated approach to reconstruct axons from extracellular electrical-potential landscapes, so-called 'electrical footprints' of neurons. After an initial electrode and channel selection, the proposed method first constructs a graph based on the voltage signal amplitudes and latencies. Then, the graph is interrogated to extract possible axonal branches. Finally, the axonal branches are pruned, and axonal action-potential propagation velocities are computed. Main results: We first validate our method using simulated data from detailed reconstructions of neurons, showing that our approach is capable of accurately reconstructing axonal branches. We then apply the reconstruction algorithm to experimental recordings of HD-MEAs and show that it can be used to determine axonal morphologies and signal-propagation velocities at high throughput. Significance: We introduce a fully automated method to reconstruct axonal branches and estimate axonal action-potential propagation velocities using HD-MEA recordings. Our method yields highly reliable and reproducible velocity estimations, which constitute an important electrophysiological feature of neuronal preparations. Journal of Neural Engineering, 19 (2) ISSN:1741-2560 ISSN:1741-2552 |
Databáze: | OpenAIRE |
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