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Reintroduction of Running After Anterior Cruciate Ligament Reconstruction With a Hamstrings Graft: Can We Predict Short-Term Success? | LitMetric

AI Article Synopsis

  • The study explored a structured running program for individuals recovering from anterior cruciate ligament reconstruction (ACLR) to assess if it’s feasible and to identify predictors of success.
  • Out of 35 participants, 33 completed the program, with most experiencing only mild, temporary symptoms; the initial knee function score (IKDC) was identified as a key predictor for successful outcomes.
  • An IKDC score above 63.7 significantly increased the likelihood of successfully returning to running, indicating that this score can help guide recovery strategies for ACLR patients.

Article Abstract

Context: Return to running (RTR) after anterior cruciate ligament reconstruction (ACLR) is a crucial milestone. However, how and when to start a running program are uncertain.

Objective: To explore the feasibility of a structured program to reintroduce running after ACLR and evaluate the predictive value of potential predictors of short-term success.

Design: Longitudinal cohort study.

Setting: Local research center and participants' homes.

Patients Or Other Participants: Thirty-five participants were recruited after ACLR.

Intervention(s): Program with a progression algorithm to reintroduce running (10 running sessions in 14 days).

Main Outcome Measure(s): The criterion for short-term success was no exacerbation of symptoms. Potential predictors were (1) the International Knee Documentation Committee (IKDC) subjective knee form score, (2) ACL Return to Sport after Injury questionnaire score, (3) quadriceps and hamstrings strength, (4) step-down endurance test, and (5) modified Star Excursion Balance test. Descriptive statistics were performed to study the feasibility of the RTR program, and Poisson regression analysis was used to evaluate predictors of success.

Results: Of the 34 participants, 33 completed the RTR program. Sixteen participants experienced some temporary exacerbation of symptoms, but only 1 had to stop the program. The initial IKDC score was the only significant predictor of a successful RTR, with an area under the receiver operating characteristic curve of 80.4%. An IKDC cut-off of 63.7/100 differentiated responders and nonresponders with the highest sensitivity and specificity (77.8% and 75.0%, respectively). A participant with an IKDC score above this threshold had a 3-fold greater chance of success.

Conclusions: Our results confirm the feasibility of our RTR program and progression algorithm after ACLR. Clinicians should use an IKDC score of >64 as a criterion to reintroduce running after ACLR to increase the likelihood of short-term success.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9387380PMC
http://dx.doi.org/10.4085/1062-6050-0407.21DOI Listing

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