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1.
Article in Chinese | WPRIM | ID: wpr-991412

ABSTRACT

The objectives of the paper is to more accurate understand the use demands of wise classrooms for medical students, and provide scientific basis for wise classroom managers when formulating wise classroom environment optimization strategies. In the paper, the questionnaire survey method was used to investigate 23 indicators in 4 dimensions of hardware facilities, information technology, teaching methods and medical wise classroom features. And the data of 1 074 questionnaires were analyzed using KANO model analysis technology and satisfaction importance quadrant chart. Among the 23 demand indicators, there are 6 required attributes, 7 expected attributes, 9 charm attributes and 1 non-differential attribute. According to the theoretical importance ranking of the KANO model, wise classroom managers should first improve the quality of indicators related to necessary attributes, give priority to the quality of indicators related to expected attributes, and finally meet the requirements of indicators related to charm attributes. Relevant policies and construction suggestions for smart classrooms are put forward from the three levels of school top-level design, teachers and managers in the paper.

2.
Article in Chinese | WPRIM | ID: wpr-991449

ABSTRACT

This study summarizes related studies on readiness for online teaching in China and globally and constructs an online teaching readiness scale for higher education teachers with reference to related studies on online teaching competency, blended teaching readiness, and influencing factors for online teaching. This scale includes five dimensions, i.e., belief, teaching readiness, technical readiness, online communication readiness, and institutional support. A questionnaire survey and statistical analyses were performed to investigate the rationality of the scale, and then the scale was modified. The results show that the indicators of the scale have a good degree of fitting, and this study provides a necessary standard for examining the online teaching readiness of higher education teachers and new ideas for online teaching in colleges and universities.

3.
Article in Chinese | WPRIM | ID: wpr-955653

ABSTRACT

There are many difficulties in digital medical teaching, including new course content, multiple key and difficult points, wide knowledge coverage, large knowledge structure span, high requirements for teachers, and few shared resources for online teaching during the epidemic. This research aims to give full play to the advantages of our team in the field of digital medicine, and promote the construction of network resources of this course and its extensive development in more universities through the exploratory and research on the course construction and teaching mode of the Digital Medicine MOOC (massive open online course). The questionnaire study found that the satisfaction score of the average satisfaction score of MOOC teaching in terms of students' pre-class preview, quick grasp of knowledge points in class and after-class review reached more than 90 points, and the score of improving students' learning initiative was (88.10±10.87) points. It can be seen that the use of MOOC teaching mode can significantly help students to preview before class, master knowledge points in class and review after class, and improve students' initiative in learning. The research suggests that the production of Digital Medicine MOOC should keep the consistency and individuality of all knowledge points under the framework of digital medical knowledge; teachers should focus on the explanation of basic knowledge points and deepen in further step integrated with frontiers of this field; it’s suggested to make a separate MOOC on frontier knowledge and application explanation, so as to cope with the outdated courseware content caused by the development and update of this subject.

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