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Development of a BCI-based gaming application to enhance cognitive control in psychiatric disorders

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Abstract

Assessing an individual’s attentional capabilities in an interactive way with the help of EEG-based signal and utilizing it to enhance cognitive control in obsessive–compulsive disorder is the primary focus of this paper. To realize this objective, BCI technology is used by studying the EEG signals emitted by the brain and processing the data in real time. In this paper, we presented the development of a BCI-based gaming application with a mode of interactive media that takes advantage of the EEG signal gathered from the hardware used. Further, we discussed the scope of enhancing cognitive control capabilities in various psychiatric disorders in an interactive way with the help of the developed application.

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Acknowledgements

The study was longitudinal and randomized controlled in design. The study was done during 2016–2019 at Institute of Neuroscience, Kolkata, Indian Institute of Engineering Science and Technology, Shibpur and Department of Computer Science & Engineering, Institute of Engineering & Management, Salt Lake, Kolkata. The authors would like to thank all the participating institutions for their contributions in this study by providing access to the laboratories. Procedure for ethical approval was followed in Institute of Neuroscience, Kolkata.

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Correspondence to Nilanjana Dutta Roy.

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Dutta, S., Banerjee, T., Roy, N.D. et al. Development of a BCI-based gaming application to enhance cognitive control in psychiatric disorders. Innovations Syst Softw Eng 17, 99–107 (2021). https://doi.org/10.1007/s11334-020-00370-7

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  • DOI: https://doi.org/10.1007/s11334-020-00370-7

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