English

TranCIT: Transient Causal Interaction Toolbox

Machine Learning 2025-09-03 v1

Abstract

Quantifying transient causal interactions from non-stationary neural signals is a fundamental challenge in neuroscience. Traditional methods are often inadequate for brief neural events, and advanced, event-specific techniques have lacked accessible implementations within the Python ecosystem. Here, we introduce trancit (Transient Causal Interaction Toolbox), an open-source Python package designed to bridge this gap. TranCIT implements a comprehensive analysis pipeline, including Granger Causality, Transfer Entropy, and the more robust Structural Causal Model-based Dynamic Causal Strength (DCS) and relative Dynamic Causal Strength (rDCS) for accurately detecting event-driven causal effects. We demonstrate TranCIT's utility by successfully capturing causality in high-synchrony regimes where traditional methods fail and by identifying the known transient information flow from hippocampal CA3 to CA1 during sharp-wave ripple events in real-world data. The package offers a user-friendly, validated solution for investigating the transient causal dynamics that govern complex systems.

Keywords

Cite

@article{arxiv.2509.00602,
  title  = {TranCIT: Transient Causal Interaction Toolbox},
  author = {Salar Nouri and Kaidi Shao and Shervin Safavi},
  journal= {arXiv preprint arXiv:2509.00602},
  year   = {2025}
}
R2 v1 2026-07-01T05:13:41.112Z