Application of an attention-based CNN-BiLSTM framework for in vivo two-photon calcium imaging of neuronal ensembles: decoding complex bilateral forelimb movements from unilateral M1
Journal:
arXiv
Published Date:
Apr 23, 2025
Abstract
Decoding behavior, such as movement, from multiscale brain networks remains a
central objective in neuroscience. Over the past decades, artificial
intelligence and machine learning have played an increasingly significant role
in elucidating the neural mechanisms underlying motor function. The advancement
of brain-monitoring technologies, capable of capturing complex neuronal signals
with high spatial and temporal resolution, necessitates the development and
application of more sophisticated machine learning models for behavioral
decoding. In this study, we employ a hybrid deep learning framework, an
attention-based CNN-BiLSTM model, to decode skilled and complex forelimb
movements using signals obtained from in vivo two-photon calcium imaging. Our
findings demonstrate that the intricate movements of both ipsilateral and
contralateral forelimbs can be accurately decoded from unilateral M1 neuronal
ensembles. These results highlight the efficacy of advanced hybrid deep
learning models in capturing the spatiotemporal dependencies of neuronal
networks activity linked to complex movement execution.