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Murthy, Y.S., Bansal, R., Chodisetty, R.S.C.M., Chakravorty, C. and Sai, K.P. (2025) Transforming Minds AI and Machine Learning Applications in Cognitive Neuroscience. In: Bansal, R., Maqableh, T., Shuklaa, G., Rabby, F. and Lathabhavan, R., Eds., Transforming Neuropsychology and Cognitive Psychology with AI and Machine Learning, IGI Global, 107-128.
https://doi.org/10.4018/979-8-3693-9341-3.ch005
has been cited by the following article:
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TITLE:
The Hybrid Mind in Precision Neurorehabilitation: Integrating AI-Driven Neurotechnologies and Ethical Governance
AUTHORS:
Rosimar Jose de Lima Dias
KEYWORDS:
Hybrid Mind, AI-Driven Neurorehabilitation, Brain-Computer Interfaces (BCIs), Deep Brain Stimulation (DBS), Neuroadaptive Algorithms
JOURNAL NAME:
World Journal of Neuroscience,
Vol.15 No.2,
May
26,
2025
ABSTRACT: Artificial intelligence (AI) and neurotechnologies are redefining neuropsychological rehabilitation, enabling precision-guided, real-time neuromodulation. This review introduces the hybrid mind paradigm—a convergence of biological and artificial cognition—operationalized through AI-enhanced braincomputer interfaces (BCIs), deep brain stimulation (DBS), and adaptive neurofeedback. These technologies integrate closed-loop modulation and neuroadaptive algorithms to optimize neuroplasticity and functional recovery. While AI-driven systems show promise in cognitive and motor domains, translational barriers persist, including algorithmic opacity, neural data governance, and fragmented regulation. We synthesize recent evidence and outline strategic priorities: implementation of explainable AI frameworks, development of non-invasive neuromodulatory alternatives, and global harmonization of ethical standards. As AI and neuroscience converge, the hybrid mind paradigm signals a pivotal shift toward individualized, ethically guided neurorehabilitation.