To unlock this feature and to subscribe to our weekly evidence emails, please create a FREE orthoEvidence account.

SIGNUP

Already Have an Account?

Loading...
Visit our Evidence-Based Covid-19 Website and Stay Up to Date with the latest Research.
Ace Report Cover

AAOS: An automated gas-actuated sucker tip is superior to conventional suckers in TKA/THA

Download
Share
Reprints
Cite This
About
+ Favorites
Share
Reprints
Cite This
About
+ Favorites
Ace Report Cover
March 2014

AAOS: An automated gas-actuated sucker tip is superior to conventional suckers in TKA/THA

Vol: 3| Issue: 3| Number:57| ISSN#: 2564-2537
Study Type:Randomized Trial
OE Level Evidence:N/A
Journal Level of Evidence:N/A

Efficacy of Automated Self-Unplugging Sucker Tip: Randomized Control Trial

Contributing Authors:
JB Stiehl

Did you know you're eligible to earn 0.5 CME credits for reading this report? Click Here

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

In 40 total knee arthroplasties (TKA) and 30 total hip arthroplasties (THA), surgeons were randomly instructed to use either the \'super sucker\', the Yankaur sucker, or a new gas-actuated sucker. The purpose of this study was to compare these three approaches with respect to both objective and subjective performance evaluations completed by surgeons. Results indicated that a complete plug of the ...

CME Image

Did you know that you’re eligible to earn 0.5 CME credits for reading this report!

LEARN MORE

Join the Conversation

Please Login or Join to leave comments.

Learn about our AI Driven
High Impact Search Feature

High Impact Icon

Our AI driven High Impact metric calculates the impact an article will have by considering both the publishing journal and the content of the article itself. Built using the latest advances in natural language processing, OE High Impact predicts an article’s future number of citations better than impact factor alone.

Continue