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Search Results (2,323)

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Keywords = educational technology integration

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26 pages, 2099 KB  
Article
MIIAM: An Algorithmic Model for Predicting Multimedia Effectiveness in eLearning Systems
by Samuel Chikasha, Wim Van Petegem and Zvinodashe Revesai
Digital 2025, 5(4), 58; https://doi.org/10.3390/digital5040058 (registering DOI) - 2 Nov 2025
Abstract
Multimedia learning effectiveness varies widely across cultural contexts and individual learner characteristics, yet existing educational technologies lack computational frameworks that predict and optimize these interactions. This study introduces the Multimedia Integration Impact Assessment Model (MIIAM), a machine learning framework integrating cognitive style detection, [...] Read more.
Multimedia learning effectiveness varies widely across cultural contexts and individual learner characteristics, yet existing educational technologies lack computational frameworks that predict and optimize these interactions. This study introduces the Multimedia Integration Impact Assessment Model (MIIAM), a machine learning framework integrating cognitive style detection, cultural background inference, multimedia complexity optimization, and ensemble prediction into a unified architecture. MIIAM was validated with 493 software engineering students from Zimbabwe and South Africa through the analysis of 4.1 million learning interactions. The framework applied Random Forests for automated cognitive style classification, hierarchical clustering for cultural inference, and a complexity optimization engine for content analysis, while predictive performance was enhanced by an ensemble of Random Forests, XGBoost, and Neural Networks. The results demonstrated that MIIAM achieved 87% prediction accuracy, representing a 14% improvement over demographic-only baselines (p < 0.001). Cross-cultural validation confirmed strong generalization, with only a 2% accuracy drop compared to 11–15% for traditional models, while fairness analysis indicated substantially reduced bias (Statistical Parity Difference = 0.08). Real-time testing confirmed deployment feasibility with an average 156 ms processing time. MIIAM also optimized multimedia content, improving knowledge retention by 15%, reducing cognitive overload by 28%, and increasing completion rates by 22%. These findings establish MIIAM as a robust, culturally responsive framework for adaptive multimedia learning environments. Full article
(This article belongs to the Collection Multimedia-Based Digital Learning)
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38 pages, 3209 KB  
Article
Toward a Coherent AI Literacy Pathway in Technology Education: Bibliometric Synthesis and Cross-Sectional Assessment
by Denis Rupnik and Stanislav Avsec
Educ. Sci. 2025, 15(11), 1455; https://doi.org/10.3390/educsci15111455 (registering DOI) - 1 Nov 2025
Abstract
Rapid advances in artificial intelligence (AI) are reshaping curricula and work, yet technology and engineering education lack a coherent, critical AI literacy pathway. In this study, we (1) mapped dominant themes and intellectual bases and (2) compared AI literacy between secondary technical students [...] Read more.
Rapid advances in artificial intelligence (AI) are reshaping curricula and work, yet technology and engineering education lack a coherent, critical AI literacy pathway. In this study, we (1) mapped dominant themes and intellectual bases and (2) compared AI literacy between secondary technical students and pre-service technology and engineering teachers to inform curriculum design. Moreover, we conducted a Web of Science bibliometric analysis (2015–2025) and derived a four-pillar framework (Foundational Knowledge, Critical Appraisal, Participatory Design, and Pedagogical Integration) of themes consolidated around GenAI/LLMs and ethics, with strong growth (1259 documents, 587 sources). Phase 2 was a cross-sectional field study (n = 145; secondary n = 77, higher education n = 68) using the AI literacy test. ANOVA showed higher total scores for pre-service teachers than secondary technical students (p = 0.02) and a sex effect favoring males (p = 0.01), with no interaction. MANCOVA found no multivariate group differences across 14 competencies, but univariate advantages for pre-service technology teachers were found in understanding intelligence (p = 0.002) and programmability (p = 0.045); critical AI literacy composites did not differ by group, while males outperformed females in interdisciplinarity and ethics. We conclude that structured, performance-based curricula aligned to the framework—emphasizing data practices, ethics/governance, and human–AI design—are needed in both sectors, alongside measures to close gender gaps. Full article
(This article belongs to the Special Issue Technology-Enhanced Education for Engineering Students)
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22 pages, 864 KB  
Article
Design and Implementation of a Gamified Math Game for Learning Whole Numbers in Secondary Education Using Genially
by Cristian Uchima-Marin, Julián Ospina, Víctor Ospina, Luis Salvador-Acosta and Patricia Acosta-Vargas
Sustainability 2025, 17(21), 9759; https://doi.org/10.3390/su17219759 (registering DOI) - 1 Nov 2025
Abstract
This study explores the implementation of gamification as an instructional strategy to support the learning of whole numbers in a rural Colombian school with limited technological resources. The intervention involved 23 sixth-grade students who participated in a Genially based digital escape room titled [...] Read more.
This study explores the implementation of gamification as an instructional strategy to support the learning of whole numbers in a rural Colombian school with limited technological resources. The intervention involved 23 sixth-grade students who participated in a Genially based digital escape room titled “Agent 00+7.” The activity was structured around five missions designed to foster motivation, collaboration, and active participation. A survey instrument encompassing five dimensions—motivation, role performance, task completion, learning/interaction, and gro integration—was administered across all missions, producing 180 valid responses. The instrument demonstrated strong internal consistency (Cronbach’s α = 0.872). Data were analyzed using one-way ANOVA, revealing significant mission-level variations in students’ perceived motivation, role performance, task completion, and integration, while learning/interaction remained stable. These outcomes suggest that gamified digital environments may shape students’ perceptions of engagement and teamwork, even in resource-constrained settings. Although the results are exploratory and descriptive, given the absence of a control group or pre–post comparison, they provide preliminary evidence of the feasibility and pedagogical promise of gamification in rural educational contexts, contributing to the advancement of Sustainable Development Goals (SDGs) 4, 9, and 10. Full article
(This article belongs to the Special Issue Innovative Learning Environments and Sustainable Development)
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16 pages, 1433 KB  
Article
Intelligent Algorithms for the Detection of Suspicious Transactions in Payment Data Management Systems Based on LSTM Neural Networks
by Abdinabi Mukhamadiyev, Fayzullo Nazarov, Sherzod Yarmatov and Jinsoo Cho
Sensors 2025, 25(21), 6683; https://doi.org/10.3390/s25216683 (registering DOI) - 1 Nov 2025
Abstract
Today, a number of works are being carried out all over the world to develop data processing and management systems, as well as to apply artificial intelligence and information technologies in the fields of production, science, education, and healthcare. The optimization of the [...] Read more.
Today, a number of works are being carried out all over the world to develop data processing and management systems, as well as to apply artificial intelligence and information technologies in the fields of production, science, education, and healthcare. The optimization of the management of socio-economic process systems, and the management and reliability of databases of the digital payment information-based information systems of enterprises and organizations are relevant. This research work investigates the issue of increasing the reliability of information in information systems working with payment information. The characteristics of ambiguous suspicious transactions in payment systems are analyzed, and based on the analysis, preliminary data preparation stages are carried out for the intelligent detection of ambiguous suspicious transactions. Traditional and neural network models of machine learning for the detection of suspicious transactions in payment information management systems are developed, and a comparative analysis is carried out. Furthermore, to enhance the performance of the core LSTM model, an Artificial Bee Colony (ABC) optimization algorithm was integrated for automated hyperparameter tuning, which improved the model’s accuracy and efficiency in identifying complex fraudulent patterns. Full article
(This article belongs to the Special Issue Advanced Sensor Technologies for Multimodal Decision-Making)
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20 pages, 1011 KB  
Article
Cultivating Talents at Tertiary Agricultural Institutions in China for Sustainable and Intelligent Development
by Jun Shi, Zhifeng Zhang, Rui Gao and Zhi Chen
Sustainability 2025, 17(21), 9754; https://doi.org/10.3390/su17219754 (registering DOI) - 1 Nov 2025
Abstract
In response to the dual challenge of global agricultural greening and digital transformation, it is imperative for agricultural colleges and universities in China to restructure talent cultivation models to support the development of sustainable and intelligent agriculture. This study combines literature analysis, case [...] Read more.
In response to the dual challenge of global agricultural greening and digital transformation, it is imperative for agricultural colleges and universities in China to restructure talent cultivation models to support the development of sustainable and intelligent agriculture. This study combines literature analysis, case studies, and questionnaire surveys to identify misalignments between the current agricultural education system and industry needs. Focusing on educational objectives, curricula, practical training, and faculty expertise, the authors propose a novel four-dimensional collaborative cultivation model, “Objectives–Curriculum–Practice–Faculty”. This model centers on interdisciplinary course clusters (e.g., agricultural artificial intelligence and blockchain traceability), industry–academia-integrated training platforms (e.g., smart agriculture innovation centers), and a Dynamic Adjustment Mechanism (DCAM). To support the implementation of this model, this study advances policy recommendations from three perspectives. First, governments should accelerate reforms by providing special funding support and formulating legislation on industry–academia integration. Second, universities must establish early-warning response mechanisms. Third, enterprises must participate in developing education on ecosystems. This paper establishes both a theoretical framework and a practical pathway to transform agricultural education, offering significant referential value for global agricultural institutions adapting to technological revolutions. Full article
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30 pages, 2817 KB  
Article
Developing and Validating an AI-TPACK Assessment Framework: Enhancing Teacher Educators’ Professional Practice Through Authentic Artifacts
by Liat Eyal
Educ. Sci. 2025, 15(11), 1452; https://doi.org/10.3390/educsci15111452 (registering DOI) - 1 Nov 2025
Abstract
In today’s digital era, teachers are expected to incorporate artificial intelligence (AI) into the classroom. Teacher educators must therefore model its use while evaluating their own AI-related knowledge to guide future teachers effectively. Existing assessments often rely on self-reporting questionnaires, which may introduce [...] Read more.
In today’s digital era, teachers are expected to incorporate artificial intelligence (AI) into the classroom. Teacher educators must therefore model its use while evaluating their own AI-related knowledge to guide future teachers effectively. Existing assessments often rely on self-reporting questionnaires, which may introduce bias, and the TPACK (Technological-Pedagogical-Content-Knowledge) framework, which overlooks distinctive AI characteristics. This study develops and validates an AI-TPACK assessment tool for teacher educators, grounded in authentic pedagogy and systematically designed through the ADDIE model (Analysis, Design, Development, Implementation, and Evaluation). The study aims to identify AI-relevant TPACK components and add new ones; test the tool’s validity; and analyze teacher-educator competency patterns. The development involved dual literature reviews (22 TPACK studies; 34 AI studies) and empirical analysis of 60 authentic instructional artifacts. Five experts confirmed their content validity (CVR = 0.86, CVI = 0.91) and the inter-rater reliability (ICC = 0.84, range 0.76–0.88). The tool comprises 4 components—AIK, AIPK, AICK, and Integration—14 criteria, and 65 indicators, and reveals four competency patterns: technological innovator; pedagogical integrator; content developer; and beginner. The strong correlation (r = 0.78) between AIPK and integration underscores the importance of synergy. The tool contributes theoretically and practically to advancing teacher-educators’ AI knowledge and competency assessments. Full article
(This article belongs to the Special Issue Supporting Teaching Staff Development for Professional Education)
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21 pages, 2010 KB  
Article
PV-Scope Test System: Photovoltaic Module Characterization with Maximum Power, Efficiency, and Environmental Sensing
by Christi K. Madsen and Bitian Jiang
Electronics 2025, 14(21), 4305; https://doi.org/10.3390/electronics14214305 (registering DOI) - 31 Oct 2025
Abstract
An integrated ESP32-based measurement system called PV-Scope is presented for real-time photovoltaic (PV) module efficiency characterization and small off-grid system testing under field conditions. The system includes pyranometer-calibrated irradiance sensors using a solar simulator, maximum power point tracking, and comprehensive environmental monitoring to [...] Read more.
An integrated ESP32-based measurement system called PV-Scope is presented for real-time photovoltaic (PV) module efficiency characterization and small off-grid system testing under field conditions. The system includes pyranometer-calibrated irradiance sensors using a solar simulator, maximum power point tracking, and comprehensive environmental monitoring to enable accurate performance assessment of PV modules across diverse technologies, manufacturers and installation conditions. Unlike standard test condition (STC) measurements at cell temperatures of 25 °C, this system captures the interactions between efficiency and environmental variables that significantly impact real-world efficiency. In particular, measurement of temperature-dependent efficiency under local conditions and validation of temperature-dependent models for extending the results to other environmental conditions are enabled with cell temperature monitoring in addition to ambient temperature, humidity, and wind speed. PV-Scope is designed for integrated sensing versatility, portable outdoor testing, and order-of-magnitude cost savings compared to commercial equipment to meet measurement needs across research, education, and practical PV innovation, including bifacial module testing, assessment of cooling techniques, tandem and multi-junction testing, and agrivoltaics. Full article
21 pages, 739 KB  
Article
The Digital Centaur as a Type of Technologically Augmented Human in the AI Era: Personal and Digital Predictors
by Galina U. Soldatova, Svetlana V. Chigarkova and Svetlana N. Ilyukhina
Behav. Sci. 2025, 15(11), 1487; https://doi.org/10.3390/bs15111487 (registering DOI) - 31 Oct 2025
Abstract
Industry 4.0 is steadily advancing a reality of deepening integration between humans and technology, a phenomenon aptly described by the metaphor of the “technologically augmented human”. This study identifies the digital and personal factors that predict a preference for the “digital centaur” strategy [...] Read more.
Industry 4.0 is steadily advancing a reality of deepening integration between humans and technology, a phenomenon aptly described by the metaphor of the “technologically augmented human”. This study identifies the digital and personal factors that predict a preference for the “digital centaur” strategy among adolescents and young adults. This strategy is defined as a model of human–AI collaboration designed to enhance personal capabilities. A sample of 1841 participants aged 14–39 completed measures assessing digital centaur preference and identification, emotional intelligence (EI), mindfulness, digital competence, technology attitudes, and AI usage, as well as AI-induced emotions and fears. The results indicate that 27.3% of respondents currently identify as digital centaurs, with an additional 41.3% aspiring to adopt this identity within the next decade. This aspiration was most prevalent among 18- to 23-year-olds. Hierarchical regression showed that interpersonal and intrapersonal EI and mindfulness are personal predictors of the digital centaur preference, while digital competence, technophilia, technopessimism (inversely), and daily internet use emerged as significant digital predictors. Notably, intrapersonal EI and mindfulness became non-significant when technology attitudes were included. Digital centaurs predominantly used AI functionally and reported positive emotions (curiosity, pleasure, trust, gratitude) but expressed concerns about human misuse of AI. These findings position the digital centaur as an adaptive and preadaptive strategy for the technologically augmented human. This has direct implications for education, highlighting the need to foster balanced human–AI collaboration. Full article
(This article belongs to the Section Social Psychology)
15 pages, 886 KB  
Article
Evaluating a Metahuman-Integrated Computer-Based Training Tool for Nursing Interventions: Usability and Expert Heuristic Analysis
by Aeri Jang, Hyunju Jeong and Yunhee Kim
Appl. Sci. 2025, 15(21), 11650; https://doi.org/10.3390/app152111650 (registering DOI) - 31 Oct 2025
Abstract
Advances in immersive technologies, such as Metahuman Creator integrated with Unreal Engine, offer new opportunities for interactive and realistic digital learning in nursing education. While computer-based training (CBT) has demonstrated benefits for self-directed learning, limited research has examined the usability and reliability of [...] Read more.
Advances in immersive technologies, such as Metahuman Creator integrated with Unreal Engine, offer new opportunities for interactive and realistic digital learning in nursing education. While computer-based training (CBT) has demonstrated benefits for self-directed learning, limited research has examined the usability and reliability of Metahuman-based digital textbooks (DTs) in clinical nursing education. This study aims to evaluate the usability of a Metahuman-based CBT DT for nursing interventions using a multi-method approach combining user testing and expert heuristic evaluation. A total of 12 undergraduate nursing students and 4 nursing education experts used the program, which included two clinical scenarios (nursing care for ileus and upper gastrointestinal bleeding), and completed the user version of the Mobile App Rating Scale (uMARS). Experts conducted a heuristic evaluation based on eight mobile usability principles. Quantitative data were analyzed using descriptive statistics, and qualitative feedback was evaluated through inductive content analysis. The students rated the overall usability as high (mean uMARS score = 4.25/5), particularly for layout and graphics. Experts provided moderately positive ratings (mean = 3.71/5) but identified critical issues in error prevention, consistency, and user control. Qualitative feedback emphasized the need for automatic data saving, clearer navigation, improved credibility of information sources, and enhanced interactivity. Full article
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21 pages, 2680 KB  
Review
Big Data and AI-Enabled Construction of a Novel Gemstone Database: Challenges, Methodologies, and Future Perspectives
by Yu Zhang and Guanghai Shi
Minerals 2025, 15(11), 1149; https://doi.org/10.3390/min15111149 (registering DOI) - 31 Oct 2025
Abstract
Gemstone samples, as objects of study in gemology, carry rich geological information and cultural value, playing an irreplaceable role in teaching, research, and public science communication. In the current age of big data, machine learning and artificial intelligence techniques based on gemstone databases [...] Read more.
Gemstone samples, as objects of study in gemology, carry rich geological information and cultural value, playing an irreplaceable role in teaching, research, and public science communication. In the current age of big data, machine learning and artificial intelligence techniques based on gemstone databases have emerged as a cutting-edge area of gemology. However, traditional gemstone databases have three major limitations: an absence of standardized data schemas, incomplete core datasets (e.g., records of synthetic and treated gemstones and inclusion characteristics), and poor data interoperability. These deficiencies hinder the application of advanced technologies, such as machine learning (ML) and AI techniques. This paper reviews gemstone data and applications, as well as existing gem-related sample databases, and proposes a framework for a new gemstone database based on standardization (FAIR principles), integration (blockchain technology), and dynamism (real-time updates). This framework could transform the gemstone industry, shifting it from “experience-driven” to “data-driven” practices. Powered by big data technology, this novel database will revolutionize gemological research, jewelry authentication, market transactions, and educational outreach, fostering innovation in academic research and practical applications. Full article
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19 pages, 3182 KB  
Article
Acceptance of a Mobile Application for Circular Economy Learning Through Gamification: A Case Study of University Students in Peru
by José Antonio Arévalo-Tuesta, Guillermo Morales-Romero, Adrián Quispe-Andía, Nicéforo Trinidad-Loli, César León-Velarde, Maritza Arones, Irma Aybar-Bellido and Omar Chamorro-Atalaya
Sustainability 2025, 17(21), 9694; https://doi.org/10.3390/su17219694 - 31 Oct 2025
Viewed by 118
Abstract
Circular economy learning fosters competencies in sustainable resource management and environmental protection, which have been recognized by the OECD (Organization for Economic Cooperation and Development) to be essential for cross-curricular training and higher education. However, implementing gamification techniques through mobile applications remains challenging, [...] Read more.
Circular economy learning fosters competencies in sustainable resource management and environmental protection, which have been recognized by the OECD (Organization for Economic Cooperation and Development) to be essential for cross-curricular training and higher education. However, implementing gamification techniques through mobile applications remains challenging, as their effectiveness depends on students’ willingness to adopt them. This study evaluated acceptance of a gamified mobile application for circular economy learning among university students in Peru, analyzing the relationships between the constructs of the Technology Acceptance Model (TAM). A quantitative correlational case study involving 76 students was conducted. The results showed a moderate-to-high acceptance rate of 73.69%, with significant correlations identified between the TAM constructs. This study contributes to closing gaps in empirical evidence on the acceptance of technology for sustainability education in diverse contexts. Future studies should integrate generative artificial intelligence into gamified apps to deliver personalized feedback and employ learning analytics tools for progress tracking, supporting global efforts toward SGD 4 (Quality Education) and SDG 12 (Responsible Production and Consumption) for the transition to circular economies. Full article
(This article belongs to the Special Issue Innovative Learning Environments and Sustainable Development)
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33 pages, 2942 KB  
Article
(Un)invited Assistant: AI as a Structural Element of the University Environment
by Valery Okulich-Kazarin and Artem Artyukhov
Societies 2025, 15(11), 297; https://doi.org/10.3390/soc15110297 - 30 Oct 2025
Viewed by 392
Abstract
In the digital age, generative artificial intelligence (GenAI) development has brought about structural transformations in higher education. This study examines how students’ regular use of artificial intelligence tools brings a new active player into the educational process. This is an “uninvited assistant” that [...] Read more.
In the digital age, generative artificial intelligence (GenAI) development has brought about structural transformations in higher education. This study examines how students’ regular use of artificial intelligence tools brings a new active player into the educational process. This is an “uninvited assistant” that changes traditional models of teaching and learning. This study was conducted using the following standard methods: bibliometric analysis, student survey using an electronic questionnaire, primary processing and graphical visualization of empirical data, calculation of statistical indicators, t-statistics, and z-statistics. As the results of the bibliometric analysis show, the evolution in the perception and integration of artificial intelligence within higher education discussions, as evidenced by the comparison of network visualizations from 2020 to the present, reveals a significant transformation. Based on a quantitative survey of 1197 undergraduate students in five Eastern European countries, this paper proposes a conceptual shift from the classic two-dimensional (2D) model of higher education services based on university teacher–student interactions to a three-dimensional (3D) model that includes artificial intelligence as a functional third player (an uninvited assistant). Statistical hypothesis testing confirms that students need AI and regularly use it in the learning process, facilitating the emergence of this new player. Based on empirical data, this study presents a hypothetical 3D model (X:Y:Z), where the Z-axis reflects the intensity of AI use. This model challenges traditional didactic frameworks and calls for updating educational policies, ethical standards, and higher education governance systems. By merging digital technologies and social change, the results provide a theoretical and practical basis for rethinking pedagogical relationships and institutional roles in the digital age. Full article
(This article belongs to the Special Issue Technology and Social Change in the Digital Age)
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12 pages, 394 KB  
Article
The Influence of Anesthesiologist Gender and Experience on Risk Understanding and Anxiety Changes After Online Preoperative Patient Education: A Sub-Analysis of the iPREDICT Randomized Controlled Trial
by Alma Puskarevic, Heidi Ehrentraut, Andrea Kunsorg, Izdar Abulizi, Andreas Mayr, Milan Jung, Maximilian Schillings, Caroline Temme, Annika Pütz, Mark Coburn and Maria Wittmann
J. Clin. Med. 2025, 14(21), 7643; https://doi.org/10.3390/jcm14217643 - 28 Oct 2025
Viewed by 176
Abstract
Background/Objectives: Digital health technologies are increasingly integrated into perioperative care to standardize information delivery and improve patient empowerment. However, the overall effectiveness of preoperative education depends not only on digital tools but also on interpersonal factors, such as physician gender and clinical experience, [...] Read more.
Background/Objectives: Digital health technologies are increasingly integrated into perioperative care to standardize information delivery and improve patient empowerment. However, the overall effectiveness of preoperative education depends not only on digital tools but also on interpersonal factors, such as physician gender and clinical experience, which may shape patients’ perceptions and responses to digitally delivered content. Methods: Patients scheduled for elective surgery were included in the iPREDICT randomized trial prior to their preoperative anesthesia assessment. After preoperative anesthetic assessment, the anesthesiologist documented the communication quality and the risks explained. Patients completed a questionnaire to assess their knowledge of anesthesia-related risks and whether the consultation alleviated their fears. Results: A total of 275 included patients were consulted by 94 anesthesiologists, 65% of whom were female. Risk recall was mainly determined by patient-related factors, with online education significantly improving recall over time (β = 1.24, p = 0.034). Anesthesiologists with 1–4 years of clinical experience explained more risks than those with <1 year of professional experience (β = 2.30, p = 0.024). A reduction in post-consultation anxiety was noted when the anesthetist was female (β = 0.21, p = 0.022). Communication was overall rated as good, with higher ratings when anesthetists had more than 10 years of experience (β = 0.09, p = 0.049). Conclusions: Although we have shown with the iPREDICT study (registered in the German CTS; DRKS00032514; on 21 August 2023) that online education improves patients’ recall of anesthesia-related risks, the current sub-analysis emphasizes that interpersonal interactions remain essential for alleviating fears and improving the quality of communication. Together, these findings underscore the complementary roles of digital education and face-to-face consultations in optimizing preoperative preparation. Full article
(This article belongs to the Special Issue Perioperative Anesthesia: State of the Art and the Perspectives)
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25 pages, 2253 KB  
Entry
Artificial Intelligence in Higher Education: A State-of-the-Art Overview of Pedagogical Integrity, Artificial Intelligence Literacy, and Policy Integration
by Manolis Adamakis and Theodoros Rachiotis
Encyclopedia 2025, 5(4), 180; https://doi.org/10.3390/encyclopedia5040180 - 28 Oct 2025
Viewed by 524
Definition
Artificial Intelligence (AI), particularly Generative AI (GenAI) and Large Language Models (LLMs), is rapidly reshaping higher education by transforming teaching, learning, assessment, research, and institutional management. This entry provides a state-of-the-art, comprehensive, evidence-based synthesis of established AI applications and their implications within the [...] Read more.
Artificial Intelligence (AI), particularly Generative AI (GenAI) and Large Language Models (LLMs), is rapidly reshaping higher education by transforming teaching, learning, assessment, research, and institutional management. This entry provides a state-of-the-art, comprehensive, evidence-based synthesis of established AI applications and their implications within the higher education landscape, emphasizing mature knowledge aimed at educators, researchers, and policymakers. AI technologies now support personalized learning pathways, enhance instructional efficiency, and improve academic productivity by facilitating tasks such as automated grading, adaptive feedback, and academic writing assistance. The widespread adoption of AI tools among students and faculty members has created a critical need for AI literacy—encompassing not only technical proficiency but also critical evaluation, ethical awareness, and metacognitive engagement with AI-generated content. Key opportunities include the deployment of adaptive tutoring and real-time feedback mechanisms that tailor instruction to individual learning trajectories; automated content generation, grading assistance, and administrative workflow optimization that reduce faculty workload; and AI-driven analytics that inform curriculum design and early intervention to improve student outcomes. At the same time, AI poses challenges related to academic integrity (e.g., plagiarism and misuse of generative content), algorithmic bias and data privacy, digital divides that exacerbate inequities, and risks of “cognitive debt” whereby over-reliance on AI tools may degrade working memory, creativity, and executive function. The lack of standardized AI policies and fragmented institutional governance highlight the urgent necessity for transparent frameworks that balance technological adoption with academic values. Anchored in several foundational pillars (such as a brief description of AI higher education, AI literacy, AI tools for educators and teaching staff, ethical use of AI, and institutional integration of AI in higher education), this entry emphasizes that AI is neither a panacea nor an intrinsic threat but a “technology of selection” whose impact depends on the deliberate choices of educators, institutions, and learners. When embraced with ethical discernment and educational accountability, AI holds the potential to foster a more inclusive, efficient, and democratic future for higher education; however, its success depends on purposeful integration, balancing innovation with academic values such as integrity, creativity, and inclusivity. Full article
(This article belongs to the Collection Encyclopedia of Social Sciences)
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29 pages, 1961 KB  
Article
Developing an AI-Powered Pronunciation Application to Improve English Pronunciation of Thai ESP Learners
by Jiraporn Lao-un and Dararat Khampusaen
Languages 2025, 10(11), 273; https://doi.org/10.3390/languages10110273 - 28 Oct 2025
Viewed by 316
Abstract
This study examined the effects of using specially designed AI-mediated pronunciation application in enhancing the production of English fricative consonants among Thai English for Specific Purposes (ESP) learners. The research utilized a quasi-experimental design involving intact classes of 74 undergraduate students majoring in [...] Read more.
This study examined the effects of using specially designed AI-mediated pronunciation application in enhancing the production of English fricative consonants among Thai English for Specific Purposes (ESP) learners. The research utilized a quasi-experimental design involving intact classes of 74 undergraduate students majoring in Thai Dance and Music Education, divided into control (N = 38) and experimental (N = 36) groups. Grounded in Skill Acquisition Theory, the experimental group received pronunciation training via a custom-designed AI application leveraging automatic speech recognition (ASR), offering ESP contextualized practices, real-time, and individualized feedback. In contrast, the control group underwent traditional teacher-led articulatory and teacher-assisted feedback. Pre- and post-test evaluations measured pronunciation for nine target fricatives in ESP-relevant contexts. The statistical analyses revealed significant improvements in both groups, with the AI-mediated group demonstrating substantially greater gains, particularly on challenging sounds absent in Thai, such as /θ/, /ð/, /z/, /ʃ/, and /h/. The findings underscore the potential of AI-driven interventions to address language-specific phonological challenges through personalized, immediate feedback and adaptive practices. The study provides empirical evidence for integrating advanced technology into ESP pronunciation pedagogy, informing future curriculum design for EFL contexts. Implications for theory, practice, and future research are discussed, emphasizing tailored technological solutions for language learners with specific phonological profiles. Full article
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