Workload Risk Factors for Pitching-Related Injuries in High School Baseball Pitchers

Jason L. Zaremski, Marissa Pazik, Terrie Vasilopoulos, MaryBeth Horodyski
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Abstract

Background:Pitch counts are only one measure of the true workload of baseball pitchers. Newer research indicates that workload measurement and prevention of injury must include additional factors. Thus, current monitoring systems gauging pitcher workload may be considered inadequate.Purpose/Hypothesis:The purpose of this study was to develop a novel method to determine workload in baseball pitchers and improve processes for prevention of throwing-related injuries. It was hypothesized that our pitching workload model would better predict throwing-related injuries occurring throughout the baseball season than a standard pitch count model.Study Design:Cohort study; Level of evidence, 2.Methods:This prospective observational study was conducted at an academic medical center and community baseball fields during the 2019 to 2023 seasons. Pitchers aged 13 to 18 years were monitored for pitching-related injuries and workload (which included pitching velocity; intensity, using preseason and in-season velocity as a marker of effort; and pitch counts).Results:A total of 71 pitchers had 313 recorded pitcher outings, 11 pitching-related injuries, and 24,228 pitches thrown. Gameday pitch counts for all pitchers ranged from 19 to 219 (mean, 77.5 ± 41.0). Velocity ranged from 46.8 to 85.7 mph (mean, 71.3 ± 5.8 mph). Intensity ranged from 0.7 to 1.3 (mean, 1.0 ± 0.08). The mean workload was 74.7 ± 40.1 for all pitchers. Risk factors significant for injury included throwing at a higher velocity in game ( P = .001), increased intensity (eg, an increase in mean velocity thrown from preseason to in-season; P < .001), and being an older pitcher ( P = .014). No differences were found for workload between injured and noninjured pitchers because the analysis was underpowered.Conclusion:Our workload model indicated that throwing at a higher velocity, throwing at a higher intensity, and older age were risk factors for injury. Thus, this novel workload model should be considered as a means to identify pitchers who may be at greater risk for injury.
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高中棒球投球手投球相关损伤的工作量风险因素
背景:投球数只是衡量棒球投手真实工作量的一个指标。最新研究表明,工作量测量和伤害预防必须包括其他因素。目的/假设:本研究旨在开发一种新方法来确定棒球投手的工作量,并改进投掷相关损伤的预防过程。研究设计:队列研究;证据级别,2。方法:这项前瞻性观察研究于 2019 年至 2023 年球季期间在一家学术医疗中心和社区棒球场进行。对 13 至 18 岁的投手进行了投球相关伤害和工作量(包括投球速度、强度,使用季前和赛季中的速度作为努力的标志;以及投球数)的监测。所有投手的比赛日投球数从 19 到 219 不等(平均值为 77.5 ± 41.0)。速度范围为 46.8 至 85.7 英里/小时(平均值为 71.3 ± 5.8 英里/小时)。强度从 0.7 到 1.3 不等(平均值为 1.0 ± 0.08)。所有投手的平均工作量为 74.7 ± 40.1。受伤的重要风险因素包括比赛中投掷速度较快(P = .001)、强度增加(例如,从季前赛到赛季中投掷的平均速度增加;P < .001)以及年龄较大的投手(P = .014)。结论:我们的工作量模型表明,较高的投掷速度、较高的投掷强度和较大的年龄是受伤的危险因素。因此,这种新颖的工作量模型应被视为识别受伤风险较高的投手的一种方法。
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