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Article Abstract

Learning and dissemination of obesity physiology and etiology knowledge are essential to prevention and treatment of this chronic disease through concerted efforts from both professionals and general public. In this paper, we describe an innovative Gain in Research Ability Test per Literature (GRATL) framework that integrates artificial intelligence (AI) into experiential learning (EL) of obesity physiology and etiology through community outreach projects. The GRATL framework sets seven areas of research competencies, i.e., Identify, Question, Plan, Conduct, Analyze, Conclude, and Communicate, as the anticipated learning outcomes (ALOs), and it navigates the design and implementation of research and learning activities. The quantitative matrix of GRATL navigated AI application through rigorous verification and assessed the growth of students' research ability. Our data suggest that the GRATL framework enhanced students' discipline knowledge, research ability, and career competency skills including communication, problem-solving, critical thinking, knowledge construction with AI assistance, teamwork, leadership, and self-management. In addition, the students helped the communities gain a better understanding of obesity and appreciated the roles of lifestyle behaviors in chronic disease. As the seven areas of research competencies are valued and observed across disciplines, the GRATL framework coupled with AI-assisted EL may be adjustable and scalable in teaching and learning of other subjects.

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http://dx.doi.org/10.1152/advan.00025.2025DOI Listing

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Learning and dissemination of obesity physiology and etiology knowledge are essential to prevention and treatment of this chronic disease through concerted efforts from both professionals and general public. In this paper, we describe an innovative Gain in Research Ability Test per Literature (GRATL) framework that integrates artificial intelligence (AI) into experiential learning (EL) of obesity physiology and etiology through community outreach projects. The GRATL framework sets seven areas of research competencies, i.

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