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ISAKOS 2015: Subvastus vs. medial parapatellar approaches are comparable in TKA

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Ace Report Cover
June 2015

ISAKOS 2015: Subvastus vs. medial parapatellar approaches are comparable in TKA

Vol: 4| Issue: 6| Number:50| ISSN#: 2564-2537
Study Type:Randomized Trial
OE Level Evidence:N/A
Journal Level of Evidence:N/A

A Prospective Randomized Comparitive Study of Early Outcome in Total Knee Arthroplasty With Subvastus Approach VS. Medial Parapatellar Approach

Contributing Authors:
DM Choudary V Kondreddy P Selvaraj

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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

100 patients undergoing total knee arthroplasty (TKA) were randomized to either a subvastus approach or a standard medial parapatellar approach. The purpose of this study was to compare the efficacy of the subvastus approach to the conventional medial parapatellar approach in TKA. Follow-up was conducted at 24 weeks, 52 weeks, and 24 months postoperatively. Findings demonstrated that the subvastus...

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