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Journal Information
- Current Issue: 2023، Volume 10، Number 2
- Print ISSN: 2423-3870
- Online ISSN: 2423-3498
- Director-in-Charge: Reza Khajouei, Ph.D
- Editor-in-Chief: Roghayeh Ershad Sarabi, Ph.D
- Publisher: Kerman University of Medical Sciences
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