@ohnurseedu Digital Platform healthcare innovation OHN education opens up a paradigm of job opportunities for nurses in companies based on Evidence Base Practice Healthcare OHN practice and services in Indonesia
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Keywords

Digital healthcare
Occupational Health Nurse
@ohnurseedu

How to Cite

Satiman, S., Hasrullah Djabbar, H. D., & Devanda Faiqh, A. (2025). @ohnurseedu Digital Platform healthcare innovation OHN education opens up a paradigm of job opportunities for nurses in companies based on Evidence Base Practice Healthcare OHN practice and services in Indonesia. Journal of Nursing Innovation, 4(2), 58–63. https://doi.org/10.61923/jni.v4i2.63

Abstract

Introduction: Digital health technology completes the cycle of nursing informatics since technical complexity can have both beneficial and detrimental consequences depending on how we use it. These concepts and relationships generate and enable nursing ideas and evidence. service recipients in a range of contexts, such as families, communities, individuals, and demographic groups.  

Objective: Experts in occupational health and safety In 49 countries, it has been accepted by occupational hygienists, occupational physicians, professional nurses, safety engineers, ergonomists/physiotherapists, psychologists.

Method: This qualitative study employs exploratory descriptive analysis and features a phenomenological research design.

Results: The study found that @ohnurseedu is the first dedicated digital platform in Indonesia for Occuptional Health Nursing (OHN) education, providing centralized access to job vacanies, competency-based training, and industy-relevant knowledge. Participants reported that its webinars, workshops, and curated resoures significantly improved their understanding of OHN practices and industrial HSE standards, filling a gap not addrssed in conventional nusing curricula.

Conclusion: In this research, it can be concluded that in 2024, the momentum for the Occupational Health Nurse profession in Indonesia will be promoted, through the digital platform @ohnurseedu all information about OHN and Paramedics.

https://doi.org/10.61923/jni.v4i2.63
PDF (Bahasa Indonesia)

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Copyright (c) 2025 Satiman Satiman, Hasrullah Djabbar Hasrullah Djabbar, Albyn Devanda Faiqh

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