Optimal Transport for Latent Integration with An Application to Heterogeneous Neuronal Activity Data
Yubai Yuan, Babak Shahbaba, Norbert Fortin, Keiland Cooper, Qing Nie,, Annie Qu

TL;DR
This paper introduces a novel optimal transport-based framework for integrating heterogeneous neuronal activity data, enabling the detection of shared dynamic patterns across subjects even with limited samples.
Contribution
The proposed method uniquely aligns latent representations across subjects without auxiliary information, improving pattern detection in small-sample neurobiological studies.
Findings
Effective in small sample sizes
Aligns data without auxiliary matching information
Captures shared neural dynamics across subjects
Abstract
Detecting dynamic patterns of task-specific responses shared across heterogeneous datasets is an essential and challenging problem in many scientific applications in medical science and neuroscience. In our motivating example of rodent electrophysiological data, identifying the dynamical patterns in neuronal activity associated with ongoing cognitive demands and behavior is key to uncovering the neural mechanisms of memory. One of the greatest challenges in investigating a cross-subject biological process is that the systematic heterogeneity across individuals could significantly undermine the power of existing machine learning methods to identify the underlying biological dynamics. In addition, many technically challenging neurobiological experiments are conducted on only a handful of subjects where rich longitudinal data are available for each subject. The low sample sizes of such…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks · Machine Learning and Data Classification
MethodsALIGN
