Skip to main content
Journal cover image

A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort.

Publication ,  Journal Article
MARS Group; Vasavada, K; Vasavada, V; Moran, J; Devana, S; Lee, C; Hame, SL; Jazrawi, LM; Sherman, OH; Huston, LJ; Haas, AK; Allen, CR ...
Published in: Orthop J Sports Med
November 2024

BACKGROUND: As machine learning becomes increasingly utilized in orthopaedic clinical research, the application of machine learning methodology to cohort data from the Multicenter ACL Revision Study (MARS) presents a valuable opportunity to translate data into patient-specific insights. PURPOSE: To apply novel machine learning methodology to MARS cohort data to determine a predictive model of revision anterior cruciate ligament reconstruction (rACLR) graft failure and features most predictive of failure. STUDY DESIGN: Cohort study; Level of evidence, 3. METHODS: The authors prospectively recruited patients undergoing rACLR from the MARS cohort and obtained preoperative radiographs, surgeon-reported intraoperative findings, and 2- and 6-year follow-up data on patient-reported outcomes, additional surgeries, and graft failure. Machine learning models including logistic regression (LR), XGBoost, gradient boosting (GB), random forest (RF), and a validated ensemble algorithm (AutoPrognosis) were built to predict graft failure by 6 years postoperatively. Validated performance metrics and feature importance measures were used to evaluate model performance. RESULTS: The cohort included 960 patients who completed 6-year follow-up, with 5.7% (n = 55) experiencing graft failure. AutoPrognosis demonstrated the highest discriminative power (model area under the receiver operating characteristic curve: AutoPrognosis, 0.703; RF, 0.618; GB, 0.660; XGBoost, 0.680; LR, 0.592), with well-calibrated scores (model Brier score: AutoPrognosis, 0.053; RF, 0.054; GB, 0.057; XGBoost, 0.058; LR, 0.111). The most important features for AutoPrognosis model performance were prior compromised femoral and tibial tunnels (placement and size) and allograft graft type used in current rACLR. CONCLUSION: The present study demonstrated the ability of the novel AutoPrognosis machine learning model to best predict the risk of graft failure in patients undergoing rACLR at 6 years postoperatively with moderate predictive ability. Femoral and tibial tunnel size and position in prior ACLR and allograft use in current rACLR were all risk factors for rACLR failure in the context of the AutoPrognosis model. This study describes a unique model that can be externally validated with larger data sets and contribute toward the creation of a robust rACLR bedside risk calculator in future studies. REGISTRATION: NCT00625885 (ClinicalTrials.gov identifier).

Duke Scholars

Published In

Orthop J Sports Med

DOI

ISSN

2325-9671

Publication Date

November 2024

Volume

12

Issue

11

Start / End Page

23259671241291920

Location

United States

Related Subject Headings

  • 4207 Sports science and exercise
  • 3202 Clinical sciences
  • 1106 Human Movement and Sports Sciences
  • 1103 Clinical Sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
MARS Group, Vasavada, K., Vasavada, V., Moran, J., Devana, S., Lee, C., … York, J. J. (2024). A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort. Orthop J Sports Med, 12(11), 23259671241291920. https://doi.org/10.1177/23259671241291920
MARS Group, Kinjal Vasavada, Vrinda Vasavada, Jay Moran, Sai Devana, Changhee Lee, Sharon L. Hame, et al. “A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort.Orthop J Sports Med 12, no. 11 (November 2024): 23259671241291920. https://doi.org/10.1177/23259671241291920.
MARS Group, Vasavada K, Vasavada V, Moran J, Devana S, Lee C, et al. A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort. Orthop J Sports Med. 2024 Nov;12(11):23259671241291920.
MARS Group, et al. “A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort.Orthop J Sports Med, vol. 12, no. 11, Nov. 2024, p. 23259671241291920. Pubmed, doi:10.1177/23259671241291920.
MARS Group, Vasavada K, Vasavada V, Moran J, Devana S, Lee C, Hame SL, Jazrawi LM, Sherman OH, Huston LJ, Haas AK, Allen CR, Cooper DE, DeBerardino TM, Spindler KP, Stuart MJ, Ned Amendola A, Annunziata CC, Arciero RA, Bach BR, Baker CL, Bartolozzi AR, Baumgarten KM, Berg JH, Bernas GA, Brockmeier SF, Brophy RH, Bush-Joseph CA, Butler V JB, Carey JL, Carpenter JE, Cole BJ, Cooper JM, Cox CL, Creighton RA, David TS, Dunn WR, Flanigan DC, Frederick RW, Ganley TJ, Gatt CJ, Gecha SR, Giffin JR, Hannafin JA, Lindsay Harris N, Hechtman KS, Hershman EB, Hoellrich RG, Johnson DC, Johnson TS, Jones MH, Kaeding CC, Kamath GV, Klootwyk TE, Levy BA, Ma CB, Maiers GP, Marx RG, Matava MJ, Mathien GM, McAllister DR, McCarty EC, McCormack RG, Miller BS, Nissen CW, O’Neill DF, Owens BD, Parker RD, Purnell ML, Ramappa AJ, Rauh MA, Rettig AC, Sekiya JK, Shea KG, Slauterbeck JR, Smith MV, Spang JT, Svoboda SJ, Taft TN, Tenuta JJ, Tingstad EM, Vidal AF, Viskontas DG, White RA, Williams JS, Wolcott ML, Wolf BR, Wright RW, York JJ. A Novel Machine Learning Model to Predict Revision ACL Reconstruction Failure in the MARS Cohort. Orthop J Sports Med. 2024 Nov;12(11):23259671241291920.
Journal cover image

Published In

Orthop J Sports Med

DOI

ISSN

2325-9671

Publication Date

November 2024

Volume

12

Issue

11

Start / End Page

23259671241291920

Location

United States

Related Subject Headings

  • 4207 Sports science and exercise
  • 3202 Clinical sciences
  • 1106 Human Movement and Sports Sciences
  • 1103 Clinical Sciences