Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface

Integration of advanced artificial intelligence with neurotechnology offers transformative potential for assistive communication. This perspective article examines the emerging convergence between non-invasive brain–computer interface (BCI) spellers and large language models (LLMs), with a focus on...

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Main Author: Andrea Carìa
Format: Article
Language:English
Published: MDPI AG 2025-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/25/13/3987
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author Andrea Carìa
author_facet Andrea Carìa
author_sort Andrea Carìa
collection DOAJ
description Integration of advanced artificial intelligence with neurotechnology offers transformative potential for assistive communication. This perspective article examines the emerging convergence between non-invasive brain–computer interface (BCI) spellers and large language models (LLMs), with a focus on predictive communication for individuals with motor or language impairments. First, I will review the evolution of language models—from early rule-based systems to contemporary deep learning architectures—and their role in enhancing predictive writing. Second, I will survey existing implementations of BCI spellers that incorporate language modeling and highlight recent pilot studies exploring the integration of LLMs into BCI. Third, I will examine how, despite advancements in typing speed, accuracy, and user adaptability, the fusion of LLMs and BCI spellers still faces key challenges such as real-time processing, robustness to noise, and the integration of neural decoding outputs with probabilistic language generation frameworks. Finally, I will discuss how fully integrating LLMs with BCI technology could substantially improve the speed and usability of BCI-mediated communication, offering a path toward more intuitive, adaptive, and effective neurotechnological solutions for both clinical and non-clinical users.
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spelling doaj-art-12a6f6ae0c5745d4864d7ee1a5d8e7ed2025-08-20T03:28:58ZengMDPI AGSensors1424-82202025-06-012513398710.3390/s25133987Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer InterfaceAndrea Carìa0Department of Psychology and Cognitive Science, University of Trento, 38068 Rovereto, ItalyIntegration of advanced artificial intelligence with neurotechnology offers transformative potential for assistive communication. This perspective article examines the emerging convergence between non-invasive brain–computer interface (BCI) spellers and large language models (LLMs), with a focus on predictive communication for individuals with motor or language impairments. First, I will review the evolution of language models—from early rule-based systems to contemporary deep learning architectures—and their role in enhancing predictive writing. Second, I will survey existing implementations of BCI spellers that incorporate language modeling and highlight recent pilot studies exploring the integration of LLMs into BCI. Third, I will examine how, despite advancements in typing speed, accuracy, and user adaptability, the fusion of LLMs and BCI spellers still faces key challenges such as real-time processing, robustness to noise, and the integration of neural decoding outputs with probabilistic language generation frameworks. Finally, I will discuss how fully integrating LLMs with BCI technology could substantially improve the speed and usability of BCI-mediated communication, offering a path toward more intuitive, adaptive, and effective neurotechnological solutions for both clinical and non-clinical users.https://www.mdpi.com/1424-8220/25/13/3987brain–computer interfaceEEGelectroencephalographyhuman–computer interaction (HCI)human–machine interaction (HMI)deep learning
spellingShingle Andrea Carìa
Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
Sensors
brain–computer interface
EEG
electroencephalography
human–computer interaction (HCI)
human–machine interaction (HMI)
deep learning
title Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
title_full Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
title_fullStr Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
title_full_unstemmed Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
title_short Towards Predictive Communication: The Fusion of Large Language Models and Brain–Computer Interface
title_sort towards predictive communication the fusion of large language models and brain computer interface
topic brain–computer interface
EEG
electroencephalography
human–computer interaction (HCI)
human–machine interaction (HMI)
deep learning
url https://www.mdpi.com/1424-8220/25/13/3987
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