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Nested Learning in Higher Education: Integrating Generative AI, Neuroimaging, and Multimodal Deep Learning for a Sustainable and Innovative Ecosystem

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  • Rubén Juárez

    (Department of Education, Faculty of Humanities and Educational Sciences, University of Jaén, 23071 Jaén, Spain)

  • Antonio Hernández-Fernández

    (Department of Education, Faculty of Humanities and Educational Sciences, University of Jaén, 23071 Jaén, Spain)

  • Claudia Barros Camargo

    (Department MIDE I, Faculty of Education, National University of Distance Education (UNED), 28040 Madrid, Spain)

  • David Molero

    (Department of Education, Faculty of Humanities and Educational Sciences, University of Jaén, 23071 Jaén, Spain
    Research Group “Lifelong Education, Neuropedagogical Integration (LE:NI)”, University of Jaén, 23071 Jaén, Spain)

Abstract

Industry 5.0 challenges higher education to adopt human-centred and sustainable uses of artificial intelligence, yet many current deployments still treat generative AI as a stand-alone tool, neurophysiological sensing as largely laboratory-bound, and governance as an external add-on rather than a design constraint. This article introduces Nested Learning as a neuro-adaptive ecosystem design in which generative-AI agents, IoT infrastructures and multimodal deep learning orchestrate instructional support while preserving student agency and a “pedagogy of hope”. We report an exploratory two-phase mixed-methods study as an initial empirical illustration. First, a neuro-experimental calibration with 18 undergraduate students used mobile EEG while they interacted with ChatGPT in problem-solving tasks structured as challenge–support–reflection micro-cycles. Second, a field implementation at a university in Madrid involved 380 participants (300 students and 80 lecturers), embedding the Nested Learning ecosystem into regular courses. Data sources included EEG (P300) signals, interaction logs, self-report measures of engagement, self-regulated learning and cognitive safety (with strong internal consistency; α / ω ≥ 0.82 ), and open-ended responses capturing emotional experience and ethical concerns. In Phase 1, P300 dynamics aligned with key instructional micro-events, providing feasibility evidence that low-cost neuro-adaptive pipelines can be sensitive to pedagogical flow in ecologically relevant tasks. In Phase 2, participants reported high levels of perceived nested support and cognitive safety, and observed associations between perceived Nested Learning, perceived neuro-adaptive adjustments, engagement and self-regulation were moderate to strong ( r = 0.41 – 0.63 , p < 0.001 ). Qualitative data converged on themes of clarity, adaptive support and non-punitive error culture, alongside recurring concerns about privacy and cognitive sovereignty. We argue that, under robust ethical, data-protection and sustainability-by-design constraints, Nested Learning can strengthen academic resilience, learner autonomy and human-centred uses of AI in higher education.

Suggested Citation

  • Rubén Juárez & Antonio Hernández-Fernández & Claudia Barros Camargo & David Molero, 2026. "Nested Learning in Higher Education: Integrating Generative AI, Neuroimaging, and Multimodal Deep Learning for a Sustainable and Innovative Ecosystem," Sustainability, MDPI, vol. 18(2), pages 1-43, January.
  • Handle: RePEc:gam:jsusta:v:18:y:2026:i:2:p:656-:d:1836164
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