Prediction of Rectus Femoris Graft Size in ACL Reconstruction
Summary
This is a clinical trial registry entry for observational study NCT07538245, registered with the NIH. The study aims to develop and validate a predictive model for estimating the diameter of a quadrupled rectus femoris tendon graft used in anterior cruciate ligament reconstruction. Researchers will analyze patient anthropometric characteristics and intraoperative tendon measurements to identify reliable predictors of graft size.
What changed
A new observational study (NCT07538245) has been registered with the NIH ClinicalTrials.gov database. The study will develop and validate a predictive model for estimating the diameter of a quadrupled rectus femoris tendon graft in anterior cruciate ligament reconstruction by analyzing patient anthropometric characteristics and intraoperative tendon measurements.
Clinical investigators conducting ACL reconstruction procedures may track this study for emerging evidence on preoperative graft size prediction. The registry entry does not create any new compliance obligations, reporting requirements, or regulatory deadlines for affected parties.
Scheduled event
- Date
- 2026-04-20
Archived snapshot
Apr 21, 2026GovPing captured this document from the original source. If the source has since changed or been removed, this is the text as it existed at that time.
Prediction of Rectus Femoris Graft Size in ACL Reconstruction
Observational NCT07538245 Kind: OBSERVATIONAL Apr 20, 2026
Abstract
This study aims to develop and validate a predictive model for estimating the diameter of a quadrupled rectus femoris tendon graft used in anterior cruciate ligament (ACL) reconstruction. By analyzing patient anthropometric characteristics and intraoperative tendon measurements, we aim to identify reliable predictors of graft size to improve preoperative planning and surgical decision-making.
Conditions: Anterior Curciate Ligament
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