Factors Affecting the Adoption of Artificial Intelligence-Driven Wearable Technology in the Malaysian Healthcare Sector: A Conceptual Framework DOI: https://doi.org/10.33093/ijomfa.2026.7.1.7

Main Article Content

Syeda Hafsa Rizwan
Anusuyah Subbarao
Nasreen Khan
Farrukh Ahmed Khan
Shaikh Fazlur Rahman
Nimra Aziz
Syed Muntazir Azhar Shah

Abstract

This conceptual paper examines the adoption of Artificial Intelligence (AI)-driven wearable technology, including smartwatches, fitness trackers, wearable ECGs, glucose monitors, and pain management devices, in transforming healthcare in Malaysia. Despite the extreme potential to enhance patient care and healthcare monitoring, the adoption of AI-driven wearable technology remains limited due to several persistent barriers. The purpose of this study is to examine these challenges and propose a framework to improve the integration of AI-driven wearable technology in Malaysia’s healthcare system. Grounded in the Diffusion of Innovation (DOI) theory, this study examines how five key innovation attributes —relative advantage, compatibility, complexity, trialability, and observability—impact patient trust and the adoption of wearable technologies. A quantitative research design will be employed, utilizing structured surveys to collect data and analyze the relationships among the DOI factors, patient trust, and technology adoption. The expected outcome is a validated conceptual framework that identifies the barriers to adoption and provides empirical insights for strengthening digital healthcare initiatives. This research aligns with Malaysia’s Shared Prosperity Vision 2030 and contributes to both academic literature and policy, ultimately offering actionable recommendations to enhance trust, accessibility, and the successful implementation of digital health technologies across Malaysia.

Article Details

How to Cite
Rizwan, S. H., Subbarao, A. ., Khan, N. ., Ahmed Khan, F., Fazlur Rahman, S., Aziz, N., & Azhar Shah, S. M. . (2026). Factors Affecting the Adoption of Artificial Intelligence-Driven Wearable Technology in the Malaysian Healthcare Sector: A Conceptual Framework: DOI: https://doi.org/10.33093/ijomfa.2026.7.1.7. International Journal of Management, Finance and Accounting, 7(1), 193–220. https://doi.org/10.33093/ijomfa.2026.7.1.7
Section
Management, Finance and Accounting

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