Pitch-Tracking Metrics as a Predictor of Future Shoulder and Elbow Injuries in Major League Baseball Pitchers: A Machine-Learning and Game-Theory Based Analysis.

Major League Baseball artificial intelligence machine learning pitching metrics shoulder and elbow injuries

Journal

Orthopaedic journal of sports medicine
ISSN: 2325-9671
Titre abrégé: Orthop J Sports Med
Pays: United States
ID NLM: 101620522

Informations de publication

Date de publication:
Aug 2024
Historique:
received: 10 01 2024
accepted: 02 02 2024
medline: 4 9 2024
pubmed: 4 9 2024
entrez: 4 9 2024
Statut: epublish

Résumé

Understanding interactions between multiple risk factors for shoulder and elbow injuries in Major League Baseball (MLB) pitchers is important to identify potential avenues by which risk can be reduced while minimizing impact on player performance. To apply a novel game theory-based approach to develop a machine-learning model predictive of next-season shoulder and elbow injuries in MLB pitchers and use this model to understand interdependencies and interaction effects between the most important risk factors. Case-control study; Level of evidence, 3. Pitcher demographics, workload measures, pitch-tracking metrics, and injury data between 2017 and 2022 were used to construct a database of MLB pitcher-years, where each item in the database corresponded to a pitcher's information and metrics for that year. An extreme gradient boosting machine-learning model was trained to predict next-season shoulder and elbow injuries utilizing Shapley additive explanation values to quantify feature importance as well as interdependencies and interaction effects between predictive variables. A total of 3808 pitcher-years were included in this analysis; 606 (15.9%) of these involved a shoulder or elbow injury resulting in placement on the MLB injured list. Of the >65 candidate features (including workload, demographic, and pitch-tracking metrics), the most important contributors to predicting shoulder/elbow injury were increased: pitch velocity (all pitch types), utilization of sliders (SLs), fastball (FB) spin rate, FB horizontal movement, and player age. The strongest game theory interaction effects were that higher FB velocity did not alter a younger pitcher's predicted risk of shoulder/elbow injury versus older pitchers, risk of shoulder/elbow injury increased with the number of high-velocity pitches thrown (regardless of pitch type and in an additive fashion), and FB velocity <95 mph (<152.9 kph) demonstrated strong negative interaction effects with higher SL percentage, suggesting that the overall predicted risk of injury for pitchers throwing a high number of SLs could be attenuated by lower FB velocity. Pitch-tracking metrics were substantially more predictive of future injury than player demographics and workload metrics. There were many significant game theory interdependencies of injury risk. Notably, the increased risk of injury that was conferred by throwing with a high velocity was even further magnified if the pitchers were also older, threw a high percentage of SLs, and/or threw a greater number of pitches.

Sections du résumé

Background UNASSIGNED
Understanding interactions between multiple risk factors for shoulder and elbow injuries in Major League Baseball (MLB) pitchers is important to identify potential avenues by which risk can be reduced while minimizing impact on player performance.
Purpose UNASSIGNED
To apply a novel game theory-based approach to develop a machine-learning model predictive of next-season shoulder and elbow injuries in MLB pitchers and use this model to understand interdependencies and interaction effects between the most important risk factors.
Study Design UNASSIGNED
Case-control study; Level of evidence, 3.
Methods UNASSIGNED
Pitcher demographics, workload measures, pitch-tracking metrics, and injury data between 2017 and 2022 were used to construct a database of MLB pitcher-years, where each item in the database corresponded to a pitcher's information and metrics for that year. An extreme gradient boosting machine-learning model was trained to predict next-season shoulder and elbow injuries utilizing Shapley additive explanation values to quantify feature importance as well as interdependencies and interaction effects between predictive variables.
Results UNASSIGNED
A total of 3808 pitcher-years were included in this analysis; 606 (15.9%) of these involved a shoulder or elbow injury resulting in placement on the MLB injured list. Of the >65 candidate features (including workload, demographic, and pitch-tracking metrics), the most important contributors to predicting shoulder/elbow injury were increased: pitch velocity (all pitch types), utilization of sliders (SLs), fastball (FB) spin rate, FB horizontal movement, and player age. The strongest game theory interaction effects were that higher FB velocity did not alter a younger pitcher's predicted risk of shoulder/elbow injury versus older pitchers, risk of shoulder/elbow injury increased with the number of high-velocity pitches thrown (regardless of pitch type and in an additive fashion), and FB velocity <95 mph (<152.9 kph) demonstrated strong negative interaction effects with higher SL percentage, suggesting that the overall predicted risk of injury for pitchers throwing a high number of SLs could be attenuated by lower FB velocity.
Conclusion UNASSIGNED
Pitch-tracking metrics were substantially more predictive of future injury than player demographics and workload metrics. There were many significant game theory interdependencies of injury risk. Notably, the increased risk of injury that was conferred by throwing with a high velocity was even further magnified if the pitchers were also older, threw a high percentage of SLs, and/or threw a greater number of pitches.

Identifiants

pubmed: 39228808
doi: 10.1177/23259671241264260
pii: 10.1177_23259671241264260
pmc: PMC11369970
doi:

Types de publication

Journal Article

Langues

eng

Pagination

23259671241264260

Informations de copyright

© The Author(s) 2024.

Déclaration de conflit d'intérêts

One or more of the authors has declared the following potential conflict of interest or source of funding: J.F.O. has received consulting fees from Kaliber.ai. G.M. has received consulting fees from Smith+Nephew. C.L.C. has received research support from Major League Baseball; education payments, consulting fees, and nonconsulting fees from Arthrex; and publishing royalties from Springer. AOSSM checks author disclosures against the Open Payments Database (OPD). AOSSM has not conducted an independent investigation on the OPD and disclaims any liability or responsibility relating thereto.

Auteurs

Jacob F Oeding (JF)

Alix School of Medicine, Mayo Clinic, Rochester, Minnesota, USA.
Department of Orthopaedics, Institute of Clinical Sciences, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.

Alexander M Boos (AM)

Department of Orthopedic Surgery, Mayo Clinic, Rochester, Minnesota, USA.

Josh R Kalk (JR)

Minnesota Twins Baseball Club, Minneapolis, Minnesota, USA.

Dane Sorenson (D)

Minnesota Twins Baseball Club, Minneapolis, Minnesota, USA.

F Martijn Verhooven (FM)

Minnesota Twins Baseball Club, Minneapolis, Minnesota, USA.

Gilbert Moatshe (G)

Oslo Sports Trauma Research Center, Norwegian School of Sport Sciences, Oslo, Norway.

Christopher L Camp (CL)

Department of Orthopedic Surgery, Mayo Clinic, Rochester, Minnesota, USA.
Minnesota Twins Baseball Club, Minneapolis, Minnesota, USA.

Classifications MeSH