Factors Influencing Individual’s Intention to Adopt Smart Healthcare Based on Big Data Development Strategy

ผู้แต่ง

  • Yazhou Wang School of Management, Shinawatra University
  • Dheetawat Nukulkij School of Management, Shinawatra University

คำสำคัญ:

Factors Influencing, the Intention to Adopt, Smart Healthcare, Big Data Development Strategy

บทคัดย่อ

The purposes of this study were 1) to explore different factors influencing the intention to adopt mobile healthcare as well as construct a theoretical model of the intention to adopt mobile healthcare. 2) To reveal the mechanism of the intention to adopt mobile healthcare. 3) To make empirical validation of the role of different influencing factors in the process of creating the intention to adopt mobile healthcare. The sample was 350 residents in Weiyang district, Xian, China. They were selected by random sampling. The research instrument for collecting data was a questionnaire, and the analysis of data was through the descriptive statistics and content analysis.
The research results were found as follows: 1) Perceived usefulness and ease of use, compatibility, social impact, and personal innovation had positive impacts on the intention to adopt mobile healthcare, 2) Change resistance and perceived risks did not affect users’ intention to adopt, 3) Among the predictors, perceived ease of use, compatibility, social impact, and personal innovation all had positive impacts on perceived usefulness; and social impact had a positive impact on perceived ease of use. 4) Age, education level, and income level of individual had positive impacts on the intention to adopt mobile healthcare. 5) Gender and health status of individual influenced the intention to adopt mobile healthcare.

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ดาวน์โหลด

เผยแพร่แล้ว

2025-04-30

รูปแบบการอ้างอิง

Wang, Y., & Nukulkij, D. (2025). Factors Influencing Individual’s Intention to Adopt Smart Healthcare Based on Big Data Development Strategy. วารสารเซนต์จอห์น (สาขามนุษยศาสตร์และสังคมศาสตร์), 27(40), 116–139. สืบค้น จาก https://so13.tci-thaijo.org/index.php/SJUJOURNAL/article/view/1790

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