Abstract
Brain-based technologies for human augmentation face challenges in personalization and real-world translation. We present an AI-driven personalized Bayesian optimization algorithm that remotely adjusts neurostimulation parameters based on baseline ability and head anatomy to enhance sustained attention at home. Validated through in silico modeling and a double-blind, sham-controlled study, our approach aligns with MRI-based models and neurobiological theories, maximizing efficacy and enabling scalable, personalized cognitive enhancement and therapy in real-world settings.
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CITATION STYLE
Cohen Kadosh, R., Ciobotaru, D., Karstens, M. I., & Nguyen, V. (2025). Personalized home based neurostimulation via AI optimization augments sustained attention. Npj Digital Medicine, 8(1). https://doi.org/10.1038/s41746-025-01744-6
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