Fysiotek Spine & Sports Lab, Athens, Greece.
Queen Mary University of London, Centre for Sports and Exercise Medicine, London, UK; Thessaloniki MSK Sports Medicine Clinic Thessaloniki, Greece; National Sports Medicine Clinic, SEGAS, Thessaloniki, Greece.
Injury. 2020 Aug;51 Suppl 3:S63-S65. doi: 10.1016/j.injury.2019.08.033. Epub 2019 Aug 19.
Injuries exert an enormous impact on athletes and teams. This is seen especially in professional soccer, with a marked negative impact on team performance and considerable costs of rehabilitation for players. Existing studies provide some preliminary understanding of which factors are mostly associated with injury risk, but scientific systematic evaluation of the potential of statistical models in forecasting injuries is still missing. Some factors raise the risk of a sport injury, but there are also elements that predispose athletes to sports injuries. The biological mechanisms involved in non-contact musculoskeletal soft tissue injuries are poorly understood. Genetic risk factors may be associated with susceptibility to injuries, and may exert marked influence on recovery times. Athletes are complex systems, and depend on internal and external factors to attain and maintain stability of their health and their performance. Organisms, participants or traits within a dynamic system adapt and change when factors within that system change. Scientists routinely predict risk in a variety of dynamic systems, including weather, political forecasting and projecting traffic fatalities and the last years have started the use of predictive models in the human health industry. We propose that the use of artificial intelligence may well help in assessing risk and help to predict the occurrence of sport injuries.
伤病对运动员和球队都有巨大的影响。这在职业足球中尤为明显,伤病对球队的表现有明显的负面影响,而且球员的康复费用也相当高。现有研究对哪些因素与受伤风险关系最大有了一些初步的了解,但对统计模型在预测伤病方面的潜力进行科学系统的评估仍然缺失。一些因素会增加运动损伤的风险,但也有一些因素会使运动员更容易受伤。非接触性肌肉骨骼软组织损伤的生物学机制还不太清楚。遗传风险因素可能与易受伤有关,并可能对恢复时间产生显著影响。运动员是复杂的系统,需要依靠内部和外部因素来维持其健康和表现的稳定性。当系统内的因素发生变化时,生物体、参与者或动态系统内的特征会适应和改变。科学家们经常在各种动态系统中预测风险,包括天气、政治预测以及预测交通事故死亡人数,近年来,预测模型已开始应用于人类健康行业。我们提出,人工智能的使用可能有助于评估风险,并有助于预测运动损伤的发生。