A Modular Implementation to Handle and Benchmark Drift Correction for High-Density Extracellular Recordings.
Samuel GarciaCharlie WindolfJulien BoussardBenjamin DichterAlessio P BuccinoPierre YgerPublished in: eNeuro (2024)
High-density neural devices are now offering the possibility to record from neuronal populations in vivo at unprecedented scale. However, the mechanical drifts often observed in these recordings are currently a major issue for "spike sorting," an essential analysis step to identify the activity of single neurons from extracellular signals. Although several strategies have been proposed to compensate for such drifts, the lack of proper benchmarks makes it hard to assess the quality and effectiveness of motion correction. In this paper, we present a benchmark study to precisely and quantitatively evaluate the performance of several state-of-the-art motion correction algorithms introduced in the literature. Using simulated recordings with induced drifts, we dissect the origins of the errors performed while applying a motion correction algorithm as a preprocessing step in the spike sorting pipeline. We show how important it is to properly estimate the positions of the neurons from extracellular traces in order to correctly estimate the probe motion, compare several interpolation procedures, and highlight what are the current limits for motion correction approaches.
Keyphrases
- high density
- high speed
- machine learning
- systematic review
- spinal cord
- deep learning
- randomized controlled trial
- healthcare
- primary care
- quality improvement
- patient safety
- emergency department
- oxidative stress
- spinal cord injury
- quantum dots
- high glucose
- mass spectrometry
- blood brain barrier
- brain injury
- endothelial cells
- living cells
- cerebral ischemia
- stress induced