Literature DB >> 31335292

Decoding Hidden Cognitive States From Behavior and Physiology Using a Bayesian Approach.

Ali Yousefi1, Ishita Basu2, Angelique C Paulk3, Noam Peled4, Emad N Eskandar5, Darin D Dougherty6, Sydney S Cash7, Alik S Widge8, Uri T Eden9.   

Abstract

Cognitive processes, such as learning and cognitive flexibility, are both difficult to measure and to sample continuously using objective tools because cognitive processes arise from distributed, high-dimensional neural activity. For both research and clinical applications, that dimensionality must be reduced. To reduce dimensionality and measure underlying cognitive processes, we propose a modeling framework in which a cognitive process is defined as a low-dimensional dynamical latent variable-called a cognitive state, which links high-dimensional neural recordings and multidimensional behavioral readouts. This framework allows us to decompose the hard problem of modeling the relationship between neural and behavioral data into separable encoding-decoding approaches. We first use a state-space modeling framework, the behavioral decoder, to articulate the relationship between an objective behavioral readout (e.g., response times) and cognitive state. The second step, the neural encoder, involves using a generalized linear model (GLM) to identify the relationship between the cognitive state and neural signals, such as local field potential (LFP). We then use the neural encoder model and a Bayesian filter to estimate cognitive state using neural data (LFP power) to generate the neural decoder. We provide goodness-of-fit analysis and model selection criteria in support of the encoding-decoding result. We apply this framework to estimate an underlying cognitive state from neural data in human participants (N=8) performing a cognitive conflict task. We successfully estimated the cognitive state within the 95% confidence intervals of that estimated using behavior readout for an average of 90% of task trials across participants. In contrast to previous encoder-decoder models, our proposed modeling framework incorporates LFP spectral power to encode and decode a cognitive state. The framework allowed us to capture the temporal evolution of the underlying cognitive processes, which could be key to the development of closed-loop experiments and treatments.

Entities:  

Year:  2019        PMID: 31335292     DOI: 10.1162/neco_a_01196

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  7 in total

1.  A statistical framework to assess cross-frequency coupling while accounting for confounding analysis effects.

Authors:  Jessica K Nadalin; Louis-Emmanuel Martinet; Ethan B Blackwood; Meng-Chen Lo; Alik S Widge; Sydney S Cash; Uri T Eden; Mark A Kramer
Journal:  Elife       Date:  2019-10-16       Impact factor: 8.140

2.  Closed-loop enhancement and neural decoding of cognitive control in humans.

Authors:  Sydney S Cash; Alik S Widge; Ishita Basu; Ali Yousefi; Britni Crocker; Rina Zelmann; Angelique C Paulk; Noam Peled; Kristen K Ellard; Daniel S Weisholtz; G Rees Cosgrove; Thilo Deckersbach; Uri T Eden; Emad N Eskandar; Darin D Dougherty
Journal:  Nat Biomed Eng       Date:  2021-11-01       Impact factor: 29.234

3.  A state space modeling approach to real-time phase estimation.

Authors:  Anirudh Wodeyar; Mark Schatza; Alik S Widge; Uri T Eden; Mark A Kramer
Journal:  Elife       Date:  2021-09-27       Impact factor: 8.140

4.  Decoding task engagement from distributed network electrophysiology in humans.

Authors:  Nicole R Provenza; Angelique C Paulk; Noam Peled; Maria I Restrepo; Sydney S Cash; Darin D Dougherty; Emad N Eskandar; David A Borton; Alik S Widge
Journal:  J Neural Eng       Date:  2019-08-16       Impact factor: 5.379

5.  The Nencki-Symfonia electroencephalography/event-related potential dataset: Multiple cognitive tasks and resting-state data collected in a sample of healthy adults.

Authors:  Patrycja Dzianok; Ingrida Antonova; Jakub Wojciechowski; Joanna Dreszer; Ewa Kublik
Journal:  Gigascience       Date:  2022-03-07       Impact factor: 6.524

6.  Driver drowsiness estimation using EEG signals with a dynamical encoder-decoder modeling framework.

Authors:  Sadegh Arefnezhad; James Hamet; Arno Eichberger; Matthias Frühwirth; Anja Ischebeck; Ioana Victoria Koglbauer; Maximilian Moser; Ali Yousefi
Journal:  Sci Rep       Date:  2022-02-16       Impact factor: 4.379

7.  Physiologically informed neuromodulation.

Authors:  Karen Wendt; Timothy Denison; Gaynor Foster; Lothar Krinke; Alix Thomson; Saydra Wilson; Alik S Widge
Journal:  J Neurol Sci       Date:  2021-12-28       Impact factor: 3.181

  7 in total

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