Guglielmo Pillitteri, Luca Petrigna, Salvatore Ficarra, Valerio Giustino, Ewan Thomas, Alessio Rossi, Filipe Manuel Clemente, Antonio Paoli, Marco Petrucci, Marianna Bellafiore, Antonio Palma, Giuseppe Battaglia
{"title":"利用机器学习分析职业足球运动中外部和内部负荷指标与受伤之间的关系:系统回顾和荟萃分析。","authors":"Guglielmo Pillitteri, Luca Petrigna, Salvatore Ficarra, Valerio Giustino, Ewan Thomas, Alessio Rossi, Filipe Manuel Clemente, Antonio Paoli, Marco Petrucci, Marianna Bellafiore, Antonio Palma, Giuseppe Battaglia","doi":"10.1080/15438627.2023.2297190","DOIUrl":null,"url":null,"abstract":"<p><p>This study verified the relationship between internal load (IL) and external load (EL) and their association on injury risk (IR) prediction considering machine learning (ML) approaches. Studies were included if: (1) participants were male professional soccer players; (2) carried out for at least 2 sessions, exercises, or competitions; (3) correlated training load (TL) with non-contact injuries; (4) applied ML approaches to predict TL and non-contact injuries. TL included: IL indicators (Rating of Perceived Exertion, RPE; Session-RPE, Heart Rate, HR) and EL indicators (Global Positioning System, GPS variables); the relationship between EL and IL through index, ratio, formula; ML indicators included performance measures, predictive performance of ML methods, measure of feature importance, relevant predictors, outcome variable, predictor variable, data pre-processing, features selection, ML methods. Twenty-five studies were included. Eleven addressed the relationship between EL and IL. Five used EL/IL indexes. Five studies predicted IL indicators. Three studies investigated the association between EL and IL with IR. One study predicted IR using ML. Significant positive correlations were found between S-RPE and total distance (TD) (<i>r</i> = 0.73; 95% CI (0.64 to 0.82)) as well as between S-RPE and player load (PL) (<i>r</i> = 0.76; 95% CI (0.68 to 0.84)). Association between IL and EL and their relationship with injuries were found. RPE, S-RPE, and HR were associated with different EL indicators. A positive relationship between EL and IL indicators and IR was also observed. Moreover, new indexes or ratios (integrating EL and IL) to improve knowledge regarding TL and fitness status were also applied. ML can predict IL indicators (HR and RPE), and IR. The present systematic review was registered in PROSPERO (CRD42021245312).</p>","PeriodicalId":20958,"journal":{"name":"Research in Sports Medicine","volume":" ","pages":"902-938"},"PeriodicalIF":1.9000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Relationship between external and internal load indicators and injury using machine learning in professional soccer: a systematic review and meta-analysis.\",\"authors\":\"Guglielmo Pillitteri, Luca Petrigna, Salvatore Ficarra, Valerio Giustino, Ewan Thomas, Alessio Rossi, Filipe Manuel Clemente, Antonio Paoli, Marco Petrucci, Marianna Bellafiore, Antonio Palma, Giuseppe Battaglia\",\"doi\":\"10.1080/15438627.2023.2297190\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>This study verified the relationship between internal load (IL) and external load (EL) and their association on injury risk (IR) prediction considering machine learning (ML) approaches. 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引用次数: 0
摘要
本研究采用机器学习(ML)方法验证了内部负荷(IL)和外部负荷(EL)之间的关系及其与受伤风险(IR)预测的关联。纳入的研究必须满足以下条件(1) 参与者为男性职业足球运动员;(2) 至少进行过两次训练、练习或比赛;(3) 将训练负荷 (TL) 与非接触性损伤相关联;(4) 应用 ML 方法预测 TL 和非接触性损伤。训练负荷包括IL指标(感知用力等级,RPE;会话-RPE,心率,HR)和EL指标(全球定位系统,GPS变量);EL和IL之间的关系通过指数、比率、公式表示;ML指标包括性能测量、ML方法的预测性能、特征重要性测量、相关预测因子、结果变量、预测变量、数据预处理、特征选择、ML方法。共纳入 25 项研究。其中 11 项研究探讨了 EL 和 IL 之间的关系。五项研究使用了 EL/IL 指标。五项研究预测了 IL 指标。三项研究调查了 EL 和 IL 与 IR 之间的关系。一项研究使用 ML 预测了 IR。研究发现,S-RPE 与总距离 (TD) (r = 0.73; 95% CI (0.64 to 0.82)),以及 S-RPE 与运动员负荷 (PL) (r = 0.76; 95% CI (0.68 to 0.84))之间存在显著的正相关。研究还发现了 IL 和 EL 之间的联系及其与受伤的关系。RPE、S-RPE 和 HR 与不同的 EL 指标相关。还观察到 EL 和 IL 指标与 IR 之间存在正相关关系。此外,还应用了新的指标或比率(整合 EL 和 IL),以增进对 TL 和体能状况的了解。ML 可以预测 IL 指标(HR 和 RPE)和 IR。本系统综述已在 PROSPERO(CRD42021245312)上注册。
Relationship between external and internal load indicators and injury using machine learning in professional soccer: a systematic review and meta-analysis.
This study verified the relationship between internal load (IL) and external load (EL) and their association on injury risk (IR) prediction considering machine learning (ML) approaches. Studies were included if: (1) participants were male professional soccer players; (2) carried out for at least 2 sessions, exercises, or competitions; (3) correlated training load (TL) with non-contact injuries; (4) applied ML approaches to predict TL and non-contact injuries. TL included: IL indicators (Rating of Perceived Exertion, RPE; Session-RPE, Heart Rate, HR) and EL indicators (Global Positioning System, GPS variables); the relationship between EL and IL through index, ratio, formula; ML indicators included performance measures, predictive performance of ML methods, measure of feature importance, relevant predictors, outcome variable, predictor variable, data pre-processing, features selection, ML methods. Twenty-five studies were included. Eleven addressed the relationship between EL and IL. Five used EL/IL indexes. Five studies predicted IL indicators. Three studies investigated the association between EL and IL with IR. One study predicted IR using ML. Significant positive correlations were found between S-RPE and total distance (TD) (r = 0.73; 95% CI (0.64 to 0.82)) as well as between S-RPE and player load (PL) (r = 0.76; 95% CI (0.68 to 0.84)). Association between IL and EL and their relationship with injuries were found. RPE, S-RPE, and HR were associated with different EL indicators. A positive relationship between EL and IL indicators and IR was also observed. Moreover, new indexes or ratios (integrating EL and IL) to improve knowledge regarding TL and fitness status were also applied. ML can predict IL indicators (HR and RPE), and IR. The present systematic review was registered in PROSPERO (CRD42021245312).
期刊介绍:
Research in Sports Medicine is a broad journal that aims to bridge the gap between all professionals in the fields of sports medicine. The journal serves an international audience and is of interest to professionals worldwide. The journal covers major aspects of sports medicine and sports science - prevention, management, and rehabilitation of sports, exercise and physical activity related injuries. The journal publishes original research utilizing a wide range of techniques and approaches, reviews, commentaries and short communications.