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HIKM 2024 : Health Informatics Knowledge Management Conference

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Conference Series : Healthcare Information and Knowledge Management
 
Link: https://hikm.org/
 
When Jan 30, 2024 - Feb 1, 2024
Where Online
Submission Deadline Dec 11, 2023
Notification Due Jan 7, 2024
Final Version Due Mar 1, 2024
Categories    digital health   health informatics
 

Call For Papers

Now in its 17th year, HIKM is the leading high-impact conference for Health Information Science researchers across Asia-Pacific and beyond. It is held annually at the same time as the Australasian Computer Science Week and accepted papers are published by the Association for Computing Machinery (ACM) following blind reviewing by at least two reviewers. HIKM 2024 has been designed to be accessible to all research students, health practitioners and researchers with Low registration fees for authors to present accepted long or short papers, and free registration for all delegates to attend paper presentations and tutorials.

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