ACE: A Novel Approach for the Statistical Analysis of Pairwise Connectivity
Krempl, Georg, Kottke, Daniel, Pham Minh, Tuan

TL;DR
ACE introduces a fast, flexible statistical method for analyzing delayed pairwise connectivity in neural spike train data, capable of detecting various delays and suitable for online processing.
Contribution
It presents a novel hypothesis testing approach that improves upon existing methods by handling diverse delays and enabling incremental, real-time analysis of neural connectivity.
Findings
Effective detection of neural connections with unknown delays
Outperforms existing methods in realistic datasets
Suitable for online, incremental analysis
Abstract
Analysing correlations between streams of events is an important problem. It arises for example in Neurosciences, when the connectivity of neurons should be inferred from spike trains that record neurons' individual spiking activity. While recently some approaches for inferring delayed synaptic connections have been proposed, they are limited in the types of connectivities and delays they are able to handle, or require computation-intensive procedures. This paper proposes a faster and more flexible approach for analysing such delayed correlated activity: a statistical approach for the Analysis of Connectivity in spiking Events (ACE), based on the idea of hypothesis testing. It first computes for any pair of a source and a target neuron the inter-spike delays between subsequent source- and target-spikes. Then, it derives a null model for the distribution of inter-spike delays for…
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Taxonomy
TopicsComplex Network Analysis Techniques
