Effect of implementing the acute pain service model on the process of epidural self-controlled analgesia.

Asian J Surg

Inner Mongolia Medical University, Health Management Center, Affiliated Hospital of Inner Mongolia Medical University, Huhehot North Street, Inner Mongolia, 010050, China. Electronic address:

Published: May 2024


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