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Submitted: 17 Jun 2025
Revision: 10 Dec 2025
Accepted: 20 Dec 2025
ePublished: 31 Dec 2025
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J Educ Community Health. 2025;12(4): 213-224.
doi: 10.34172/jech.3495
  Abstract View: 3
  PDF Download: 2

General

Original Article

Assessing the Readiness for Artificial Intelligence Integration Into Healthcare Among Medical Students in Sumatra, Indonesia

Rizma Adlia Syakurah 1* ORCID logo, Meiliza Izzatika 2,3, Muhimatul Mufarikhah 2,4, Mariatul Fadilah 5

1 Public Health Sciences Study Program, Faculty of Public Health, Universitas Sriwijaya, Ogan Ilir, Indonesia
2 Azzahra Clinic Education and Training Unit, Palembang, Indonesia
3 Faculty of Public Health, Universitas Sriwijaya, Palembang, Indonesia
4 Department of Health Policy and Administrator, Akademi Kebidanan Rangga Husada, Prabumulih, Indonesia
5 Department of Family Medicine, Faculty of Medicine, Universitas Prima Indonesia, Medan, Indonesia
*Corresponding Author: Rizma Adlia Syakurah, Email: rizma.syakurah@gmail.com

Abstract

Introduction: Artificial Intelligence (AI) is increasingly applied in healthcare as it helps healthcare workers to improve the quality of care. Medical students should prepare themselves with the competence to properly and ethically use AI, especially in areas with socioeconomic challenges and limited educational resources. This study assessed medical students’ current readiness in healthcare in Sumatra.

Methods: This cross-sectional study was conducted on medical students in Sumatra from November 2024 to February 2025. AI readiness was evaluated using the MAIRS-MS questionnaire. Data were analyzed using chi-square for bivariate tests and multivariate logistic regression to identify significant predictors of readiness.

Results: Overall, 1,053 respondents from 22 universities in Sumatra were included in this study. Nearly 74.7% lacked formal AI training, and 90.9% relied on general tools like ChatGPT. The overall AI readiness mean was 74.36 (±14.03). Students received the highest score in ethics (10.96±2.46) and ability (28.20±5.57), but the lowest score in cognition (24.48±5.92). Prior AI training was the primary predictor for overall readiness (OR=1.90; 95% CI: 1.44–2.61). Coding experience significantly boosted cognitive readiness (OR=1.84; 95% CI: 1.33–2.54), while public university affiliation was strongly associated with higher vision (OR=2.20; 95% CI: 1.70–2.86) and ethical readiness (OR=2.10; 95% CI: 1.63–2.72).

Conclusion: Medical students in Sumatra revealed moderate-to-high readiness, particularly in ethics and technical interest, yet lacked foundational cognitive proficiency. Structured curricula, hands-on practice, and early programming exposure are essential. Formal AI training is the key predictor to bridge this “literacy paradox” and ensure effective, ethical clinical integration.



Please cite this article as follows: Syakurah RA, Izzatika M, Mufarikhah M, Fadilah M. Assessing the readiness for artificial intelligence integration in healthcare among medical students in Sumatera, Indonesia. J Educ Community Health 2025; 12(4):213-224. doi:10.34172/jech.3495
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