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LatenZy

Onderzoeksgroep Heimel
Publicatiejaar 2025
Gepubliceerd in Journal of Neurophysiology
Auteur(s) Robin Haak, J Alexander Heimel

Many studies require reliable estimation of when neural activity is modulated by sensory, cognitive, or behavioral events. Standard methods often rely on arbitrary parameter choices such as bin widths or response thresholds, limiting reproducibility and comparability. Here, we introduce two non-parametric, binning-free methods: latenZy, which estimates response onset latency, and latenZy2, which detects when spiking activity diverges between experimental conditions. Both methods analyze spike times directly using cumulative statistics and iterative refinement, without assuming any specific response shape. Validated on electrophysiological datasets from mouse visual cortex, latenZy produced more precise and stable latency estimates than conventional bin-based methods, reliably capturing contrast-dependent latency shifts and hierarchical timing differences across visual areas. Power analyses showed it required fewer neurons to detect significant latency differences, thereby enhancing statistical efficiency. LatenZy2 revealed earlier attentional modulation in macaque higher visual cortex, consistent with top-down feedback, and outperformed bin-based methods in sensitivity and sample size efficiency. Together, these tools offer scalable, parameter-free solutions for reliable latency estimation in large-scale neural recordings. Open-source implementations are available in Python and MATLAB.

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