Education Quarterly Reviews
ISSN 2621-5799
Published: 30 November 2022
Personalized Cognitive Counseling Process to Promote Digital Health
Naphatsanan Suwannawong, Prachyanun Nilsook, Panita Wannapiroon
King Mongkut’s University of Technology North Bangkok, Thailand
Download Full-Text Pdf
10.31014/aior.1993.05.04.594
Pages: 326-337
Keywords: Personalized Learning, Cognitive Learning, Counseling
Abstract
The objective of this research was as follows: 1) to synthesise the Personalized Cognitive Counseling Process to Promote Digital Health. 2) to develop the Personalized Cognitive Counseling Process to Promote Digital Health. 3) to evaluate the Personalized Cognitive Counseling Process to Promote Digital Health. The documentary research method was used in this study. 4) to adapt the Personalized Cognitive Counseling model for Digital Health. The results showed a model of Personalized Cognitive Counseling Process to Promote Digital Health which consisted of four steps: Step 1: Synthesis of the Personalized Cognitive Counseling Process to Promote Digital Health. This includes the following three components: Personalized Learning, Cognitive Learning and Counseling. Step 2: The development of the Personalized Cognitive Counseling Process to Promote Digital Health. The researchers found that a model of Personalized Cognitive Counseling Process to Promote Digital Health consists of five processes: 1) Understanding 2) Design 3) Development 4) Choosing and Using Tools 5) Evaluation. Step 3: The evaluation of the Personalized Cognitive Counseling Process to Promote Digital Health. The results of the evaluation in terms of suitability revealed that the design process was deemed to be at the highest level. Step 4: Adapting Result of the Personalized Cognitive Counseling model for Digital Health
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