Acknowledgement
This work was supported by the Faculty of Medicine, Chiang Mai University, grant no. 069-2565 for research funding. The authors are also gratefully thankful for the support from the Excellence Center in Osteology Research and Training Center (ORTC) with partial support from Chiang Mai University.
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