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PENG Block on Postoperative Pain & Length of Stay After Total Hip Arthroplasty

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Ace Report Cover
May 2024

PENG Block on Postoperative Pain & Length of Stay After Total Hip Arthroplasty

Vol: 306| Issue: 5| Number:114| ISSN#: 2564-2537
Study Type:Randomized Trial
OE Level Evidence:N/A
Journal Level of Evidence:N/A

The PENG block in primary anterior total hip arthroplasty and its effect on postoperative pain and length of stay: a multidisciplinary prospective randomized double-blind controlled trial

Contributing Authors:
M Hanauer A Heimann P Kricka D Martin A Moosemann V Popa C Zurmuehle JH Schwab M Tannast

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CONFERENCE ACE REPORTS

This ACE Report is a summary of a conference presentation or abstract. The information provided has limited the ability to provide an accurate assessment of the risk of bias or the overall quality. Please interpret the results with caution as trials may be in progress and select results may have been presented.

Synopsis

Sixty patients with elective primary anterior total hip arthroplasty were randomized to receive either a PENG block with 0.5% ropivacaine (n=31) or a placebo injection with 0.9% NaCl (n=29). The primary outcome of interest was postoperative patient-reported pain, measured using the Visual Analogue Scale (VAS) at 1, 6, 12, and 24 hours postoperatively. Secondary outcomes included total morphine con...

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