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1.
Eur J Dent Educ ; 28(1): 212-226, 2024 Feb.
Artículo en Inglés | MEDLINE | ID: mdl-37574773

RESUMEN

INTRODUCTION: The last two decades have seen a shift towards blended learning in education due to technological advancements. This study focuses on dental education, comparing two blended learning models -enriched virtual and fully online flipped classroom - in terms of academic achievement, aligning with the Association for Dental Education in Europe's competencies. MATERIALS AND METHODS: The research was modelled in a quantitative design with a pre-post-test control group experimental design. The study was conducted at Ege University Faculty of Dentistry in Turkey for 4 weeks with the experimental (n = 44) and control (n = 39) groups divided into two groups by impartial assignment. To the experimental group, the theoretical part of the course was tried to be conveyed before each lesson with video lessons prepared with EdPuzzle containing reinforcement questions and a question set consisting of case questions. The practical learning objectives of the course were tried to be gained through the discussion of the previously presented case questions in the online synchronous course. As tools for collecting data, a unique academic achievement test, a course evaluation form and a semi-structured qualitative data collection form were used. RESULTS: It was seen that the flipped classroom model had a more positive effect on students' academic achievement than the enriched virtual classroom model. The general satisfaction levels of the participants regarding these two models are also higher in favour of the flipped classroom model. CONCLUSION: This study provides significant findings for educational institutions, policymakers and educators about the impact of fully online teaching methods on academic achievement. In this context, the flipped classroom method can be preferred both in cases where education is blocked and in dental education institutions that want to ensure digital transformation efficiently and partially remotely.


Asunto(s)
Éxito Académico , Humanos , Educación en Odontología , Aprendizaje , Estudiantes , Turquía , Curriculum , Aprendizaje Basado en Problemas
2.
PLoS One ; 17(7): e0271872, 2022.
Artículo en Inglés | MEDLINE | ID: mdl-35862401

RESUMEN

BACKGROUND: Artificial intelligence (AI) has affected our day-to-day in a great extent. Healthcare industry is one of the mainstream fields among those and produced a noticeable change in treatment and education. Medical students must comprehend well why AI technologies mediate and frame their decisions on medical issues. Formalizing of instruction on AI concepts can facilitate learners to grasp AI outcomes in association with their sensory perceptions and thinking in the dynamic and ambiguous reality of daily medical practice. The purpose of this study is to provide consensus on the competencies required by medical graduates to be ready for artificial intelligence technologies and possible applications in medicine and reporting the results. MATERIALS AND METHODS: A three-round e-Delphi survey was conducted between February 2020 and November 2020. The Delphi panel accorporated experts from different backgrounds; (i) healthcare professionals/ academicians; (ii) computer and data science professionals/ academics; (iii) law and ethics professionals/ academics; and (iv) medical students. Round 1 in the Delphi survey began with exploratory open-ended questions. Responses received in the first round evaluated and refined to a 27-item questionnaire which then sent to the experts to be rated using a 7-point Likert type scale (1: Strongly Disagree-7: Strongly Agree). Similar to the second round, the participants repeated their assessments in the third round by using the second-round analysis. The agreement level and strength of the consensus was decided based on third phase results. Median scores was used to calculate the agreement level and the interquartile range (IQR) was used for determining the strength of the consensus. RESULTS: Among 128 invitees, a total of 94 agreed to become members of the expert panel. Of them 75 (79.8%) completed the Round 1 questionnaire, 69/75 (92.0%) completed the Round 2 and 60/69 (87.0%) responded to the Round 3. There was a strong agreement on the 23 items and weak agreement on the 4 items. CONCLUSIONS: This study has provided a consensus list of the competencies required by the medical graduates to be ready for AI implications that would bring new perspectives to medical education curricula. The unique feature of the current research is providing a guiding role in integrating AI into curriculum processes, syllabus content and training of medical students.


Asunto(s)
Inteligencia Artificial , Educación Médica , Consenso , Curriculum , Técnica Delphi , Humanos
3.
BMC Med Educ ; 21(1): 303, 2021 May 27.
Artículo en Inglés | MEDLINE | ID: mdl-34039344

RESUMEN

BACKGROUND: Clinical training during the COVID-19 pandemic is high risk for medical students. Medical schools in low- and middle-income countries (LMIC) have limited capacity to develop resources in the face of rapidly developing health emergencies. Here, a free Massive Open Online Course (MOOC) was developed as a COVID-19 resource for medical students working in these settings, and its effectiveness was evaluated. METHODS: The RE-AIM (reach, effectiveness, adoption, implementation, and maintenance) framework was utilized to evaluate the effectiveness of MOOC in teaching medical students about COVID-19. The data sources included the student registration forms, metrics quantifying their interactions within the modules, students' course feedback, and free-text responses. The data were collected from the Moodle learning management system and Google analytics from May 9 to September 15, 2020. The research team analyzed the quantitative data descriptively and the qualitative data thematically. RESULTS: Among the 16,237 unique visitors who accessed the course, only 6031 medical students from 71 medical schools registered, and about 4993 (83% of registrants) completed the course, indicating high levels of satisfaction (M = 8.17, SD = 1.49) on a 10-point scale. The mean scores of each assessment modules were > 90%. The free-text responses from 987 unique students revealed a total of 17 themes (e.g., knowing the general information on COVID-19, process management of the pandemic in public health, online platform use, and instructional design) across the elements of the RE-AIM framework. Mainly, the students characterized the MOOC as well-organized and effective. CONCLUSIONS: Medical students learned about COVID-19 using a self-paced and unmonitored MOOC. MOOCs could play a vital role in the dissemination of accurate information to medical students in LMIC in future public health emergencies. The students were interested in using similar MOOCs in the future.


Asunto(s)
COVID-19 , Educación a Distancia , Estudiantes de Medicina , Humanos , Pandemias , SARS-CoV-2
4.
BMC Med Educ ; 21(1): 112, 2021 Feb 18.
Artículo en Inglés | MEDLINE | ID: mdl-33602196

RESUMEN

BACKGROUND: It is unlikely that applications of artificial intelligence (AI) will completely replace physicians. However, it is very likely that AI applications will acquire many of their roles and generate new tasks in medical care. To be ready for new roles and tasks, medical students and physicians will need to understand the fundamentals of AI and data science, mathematical concepts, and related ethical and medico-legal issues in addition with the standard medical principles. Nevertheless, there is no valid and reliable instrument available in the literature to measure medical AI readiness. In this study, we have described the development of a valid and reliable psychometric measurement tool for the assessment of the perceived readiness of medical students on AI technologies and its applications in medicine. METHODS: To define medical students' required competencies on AI, a diverse set of experts' opinions were obtained by a qualitative method and were used as a theoretical framework, while creating the item pool of the scale. Exploratory Factor Analysis (EFA) and Confirmatory Factor Analysis (CFA) were applied. RESULTS: A total of 568 medical students during the EFA phase and 329 medical students during the CFA phase, enrolled in two different public universities in Turkey participated in this study. The initial 27-items finalized with a 22-items scale in a four-factor structure (cognition, ability, vision, and ethics), which explains 50.9% cumulative variance that resulted from the EFA. Cronbach's alpha reliability coefficient was 0.87. CFA indicated appropriate fit of the four-factor model (χ2/df = 3.81, RMSEA = 0.094, SRMR = 0.057, CFI = 0.938, and NNFI (TLI) = 0.928). These values showed that the four-factor model has construct validity. CONCLUSIONS: The newly developed Medical Artificial Intelligence Readiness Scale for Medical Students (MAIRS-MS) was found to be valid and reliable tool for evaluation and monitoring of perceived readiness levels of medical students on AI technologies and applications. Medical schools may follow 'a physician training perspective that is compatible with AI in medicine' to their curricula by using MAIRS-MS. This scale could be benefitted by medical and health science education institutions as a valuable curriculum development tool with its learner needs assessment and participants' end-course perceived readiness opportunities.


Asunto(s)
Estudiantes de Medicina , Inteligencia Artificial , Humanos , Psicometría , Reproducibilidad de los Resultados , Encuestas y Cuestionarios , Turquía
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