Long-Term Intracortical Neural Activity and Kinematics (LINK): An Intracortical Neural Dataset for Chronic Brain-Machine Interfaces, Neuroscience, and Machine Learning
Abstract
Intracortical brain-machine interfaces (iBMIs) have enabled movement and speech in people living with paralysis by using neural data to decode behaviors in real-time. However, intracortical neural recordings exhibit significant instabilities over time, which poses problems for iBMIs, neuroscience, and machine learning. For iBMIs, neural instabilities require frequent decoder recalibration to maintain high performance, a critical bottleneck for real-world translation. Several approaches have been developed to address this issue, and the field has recognized the need for standardized datasets on which to compare them, but no standard dataset exists for evaluation over year-long timescales. In neuroscience, a growing body of research attempts to elucidate the latent computations performed by populations of neurons. Nonstationarity in neural recordings imposes significant challenges to the design of these studies, so a dataset containing recordings over large time spans would improve methods to account for instabilities. In machine learning, continuous domain adaptation of temporal data is an area of active research, and a dataset containing shift distributions on long time scales would be beneficial to researchers. To address these gaps, we present the LINK Dataset (Long-term Intracortical Neural activity and Kinematics), which contains intracortical spiking activity and kinematic data from 312 sessions of a non-human primate performing a dexterous, 2 degree-of-freedom finger movement task, spanning 1,242 days. We also present longitudinal analyses of the dataset’s neural spiking activity and its relationship to kinematics, as well as overall decoding performance using linear and neural network models. The LINK dataset and code are freely available to the public through the dataset website (\url{https://chesteklab.github.io/LINK_dataset/}).
Cite
Text
Temmar et al. "Long-Term Intracortical Neural Activity and Kinematics (LINK): An Intracortical Neural Dataset for Chronic Brain-Machine Interfaces, Neuroscience, and Machine Learning." Advances in Neural Information Processing Systems, 2025.Markdown
[Temmar et al. "Long-Term Intracortical Neural Activity and Kinematics (LINK): An Intracortical Neural Dataset for Chronic Brain-Machine Interfaces, Neuroscience, and Machine Learning." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/temmar2025neurips-longterm/)BibTeX
@inproceedings{temmar2025neurips-longterm,
title = {{Long-Term Intracortical Neural Activity and Kinematics (LINK): An Intracortical Neural Dataset for Chronic Brain-Machine Interfaces, Neuroscience, and Machine Learning}},
author = {Temmar, Hisham and Wang, Yixuan and Gill, Nina and Mellon, Nicholas and Liu, Chang and Cubillos, Luis Hernan and Parsons, Rio I. and Costello, Joseph T and Ceradini, Matteo and Kelberman, Madison M. and Mender, Matthew and Hite, Aren and Wallace, Dylan Michael and Nason-Tomaszewski, Samuel R. and Patil, Parag Ganapati and Willsey, Matt and Draelos, Anne and Chestek, Cynthia},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/temmar2025neurips-longterm/}
}