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Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017

BACKGROUND: The opportunity to quantitatively predict next-season injury risk in the National Hockey League (NHL) has become a reality with the advent of advanced computational processors and machine learning (ML) architecture. Unlike static regression analyses that provide a momentary prediction, M...

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Autores principales: Luu, Bryan C., Wright, Audrey L., Haeberle, Heather S., Karnuta, Jaret M., Schickendantz, Mark S., Makhni, Eric C., Nwachukwu, Benedict U., Williams, Riley J., Ramkumar, Prem N.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7522848/
https://www.ncbi.nlm.nih.gov/pubmed/33029545
http://dx.doi.org/10.1177/2325967120953404
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author Luu, Bryan C.
Wright, Audrey L.
Haeberle, Heather S.
Karnuta, Jaret M.
Schickendantz, Mark S.
Makhni, Eric C.
Nwachukwu, Benedict U.
Williams, Riley J.
Ramkumar, Prem N.
author_facet Luu, Bryan C.
Wright, Audrey L.
Haeberle, Heather S.
Karnuta, Jaret M.
Schickendantz, Mark S.
Makhni, Eric C.
Nwachukwu, Benedict U.
Williams, Riley J.
Ramkumar, Prem N.
author_sort Luu, Bryan C.
collection PubMed
description BACKGROUND: The opportunity to quantitatively predict next-season injury risk in the National Hockey League (NHL) has become a reality with the advent of advanced computational processors and machine learning (ML) architecture. Unlike static regression analyses that provide a momentary prediction, ML algorithms are dynamic in that they are readily capable of imbibing historical data to build a framework that improves with additive data. PURPOSE: To (1) characterize the epidemiology of publicly reported NHL injuries from 2007 to 2017, (2) determine the validity of a machine learning model in predicting next-season injury risk for both goalies and position players, and (3) compare the performance of modern ML algorithms versus logistic regression (LR) analyses. STUDY DESIGN: Descriptive epidemiology study. METHODS: Professional NHL player data were compiled for the years 2007 to 2017 from 2 publicly reported databases in the absence of an official NHL-approved database. Attributes acquired from each NHL player from each professional year included age, 85 performance metrics, and injury history. A total of 5 ML algorithms were created for both position player and goalie data: random forest, K Nearest Neighbors, Naïve Bayes, XGBoost, and Top 3 Ensemble. LR was also performed for both position player and goalie data. Area under the receiver operating characteristic curve (AUC) primarily determined validation. RESULTS: Player data were generated from 2109 position players and 213 goalies. For models predicting next-season injury risk for position players, XGBoost performed the best with an AUC of 0.948, compared with an AUC of 0.937 for LR (P < .0001). For models predicting next-season injury risk for goalies, XGBoost had the highest AUC with 0.956, compared with an AUC of 0.947 for LR (P < .0001). CONCLUSION: Advanced ML models such as XGBoost outperformed LR and demonstrated good to excellent capability of predicting whether a publicly reportable injury is likely to occur the next season.
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spelling pubmed-75228482020-10-06 Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017 Luu, Bryan C. Wright, Audrey L. Haeberle, Heather S. Karnuta, Jaret M. Schickendantz, Mark S. Makhni, Eric C. Nwachukwu, Benedict U. Williams, Riley J. Ramkumar, Prem N. Orthop J Sports Med Article BACKGROUND: The opportunity to quantitatively predict next-season injury risk in the National Hockey League (NHL) has become a reality with the advent of advanced computational processors and machine learning (ML) architecture. Unlike static regression analyses that provide a momentary prediction, ML algorithms are dynamic in that they are readily capable of imbibing historical data to build a framework that improves with additive data. PURPOSE: To (1) characterize the epidemiology of publicly reported NHL injuries from 2007 to 2017, (2) determine the validity of a machine learning model in predicting next-season injury risk for both goalies and position players, and (3) compare the performance of modern ML algorithms versus logistic regression (LR) analyses. STUDY DESIGN: Descriptive epidemiology study. METHODS: Professional NHL player data were compiled for the years 2007 to 2017 from 2 publicly reported databases in the absence of an official NHL-approved database. Attributes acquired from each NHL player from each professional year included age, 85 performance metrics, and injury history. A total of 5 ML algorithms were created for both position player and goalie data: random forest, K Nearest Neighbors, Naïve Bayes, XGBoost, and Top 3 Ensemble. LR was also performed for both position player and goalie data. Area under the receiver operating characteristic curve (AUC) primarily determined validation. RESULTS: Player data were generated from 2109 position players and 213 goalies. For models predicting next-season injury risk for position players, XGBoost performed the best with an AUC of 0.948, compared with an AUC of 0.937 for LR (P < .0001). For models predicting next-season injury risk for goalies, XGBoost had the highest AUC with 0.956, compared with an AUC of 0.947 for LR (P < .0001). CONCLUSION: Advanced ML models such as XGBoost outperformed LR and demonstrated good to excellent capability of predicting whether a publicly reportable injury is likely to occur the next season. SAGE Publications 2020-09-25 /pmc/articles/PMC7522848/ /pubmed/33029545 http://dx.doi.org/10.1177/2325967120953404 Text en © The Author(s) 2020 https://creativecommons.org/licenses/by-nc-nd/4.0/ This article is distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 License (https://creativecommons.org/licenses/by-nc-nd/4.0/) which permits non-commercial use, reproduction and distribution of the work as published without adaptation or alteration, without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Article
Luu, Bryan C.
Wright, Audrey L.
Haeberle, Heather S.
Karnuta, Jaret M.
Schickendantz, Mark S.
Makhni, Eric C.
Nwachukwu, Benedict U.
Williams, Riley J.
Ramkumar, Prem N.
Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title_full Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title_fullStr Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title_full_unstemmed Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title_short Machine Learning Outperforms Logistic Regression Analysis to Predict Next-Season NHL Player Injury: An Analysis of 2322 Players From 2007 to 2017
title_sort machine learning outperforms logistic regression analysis to predict next-season nhl player injury: an analysis of 2322 players from 2007 to 2017
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7522848/
https://www.ncbi.nlm.nih.gov/pubmed/33029545
http://dx.doi.org/10.1177/2325967120953404
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