Brain-Inspired Spatio-Temporal Associative Memories for Neuroimaging Data Classification: EEG and fMRI

Bioengineering (Basel). 2023 Nov 21;10(12):1341. doi: 10.3390/bioengineering10121341.

Abstract

Humans learn from a lot of information sources to make decisions. Once this information is learned in the brain, spatio-temporal associations are made, connecting all these sources (variables) in space and time represented as brain connectivity. In reality, to make a decision, we usually have only part of the information, either as a limited number of variables, limited time to make the decision, or both. The brain functions as a spatio-temporal associative memory. Inspired by the ability of the human brain, a brain-inspired spatio-temporal associative memory was proposed earlier that utilized the NeuCube brain-inspired spiking neural network framework. Here we applied the STAM framework to develop STAM for neuroimaging data, on the cases of EEG and fMRI, resulting in STAM-EEG and STAM-fMRI. This paper showed that once a NeuCube STAM classification model was trained on a complete spatio-temporal EEG or fMRI data, it could be recalled using only part of the time series, or/and only part of the used variables. We evaluated both temporal and spatial association and generalization accuracy accordingly. This was a pilot study that opens the field for the development of classification systems on other neuroimaging data, such as longitudinal MRI data, trained on complete data but recalled on partial data. Future research includes STAM that will work on data, collected across different settings, in different labs and clinics, that may vary in terms of the variables and time of data collection, along with other parameters. The proposed STAM will be further investigated for early diagnosis and prognosis of brain conditions and for diagnostic/prognostic marker discovery.

Keywords: EEG; NeuCube; STAM; fMRI; neuroimage classification; neuroimaging data; spatio-temporal associative memory; spiking neural networks.

Grants and funding

N.K.K, M.D. and A.W. are partially supported by projects co-funded by the Ministry of Business, Innovation and Enterprise (MBIE) of New Zealand and the Singapore Data Science Consortium (SDSC), projects 13287/AUTX2001 (N.K.K. and M.D.) and UOAX2001 (A.W.), 2021–2023. A.W. was also funded by the Marsden Fund Project 22-UOA-120 and the Health Research Council of New Zealand’s project 21/144.