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Pericapsular Nerve Group Block + Local Infiltration Analgesia After Total Hip Arthroplasty

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Ace Report Cover
December 2024

Pericapsular Nerve Group Block + Local Infiltration Analgesia After Total Hip Arthroplasty

Vol: 306| Issue: 12| Number:56| ISSN#: 2564-2537
Study Type:Therapy
OE Level Evidence:1
Journal Level of Evidence:1

Pericapsular nerve group (PENG) block combined with local infiltration analgesia is not superior to local infiltration analgesia for the management of postoperative pain after primary elective total hip arthroplasty: A prospective, randomized, controlled,

BMC Anesthesiol . 2022 Aug 6;22(1):252.

Contributing Authors:
F Ferre J Rey L Bosch R Menut A Ferrier C Ba C Halimi I Collinson B Tissot F Labaste N Reina V Minville

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Synopsis

Sixty-four patients undergoing elective total hip arthroplasty were randomized to receive either PENG block combined with local infiltration analgesia (n=32) or LIA alone (n=32). The primary outcome was oral morphine equivalent (OME) consumption at postoperative day 1. Secondary outcomes included postoperative pain scores, Timed Up and Go (TUG) test results, thigh adduction strength, and patient s...

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