Institute of Sport Science, University of Bern, Switzerland.
J Sports Sci Med. 2022 Dec 1;21(4):640-657. doi: 10.52082/jssm.2022.639. eCollection 2022 Dec.
When identifying talent, the confounding influence of maturity status on motor performances is an acknowledged problem. To solve this problem, correction mechanisms have been proposed to transform maturity-biased test scores into maturity-unbiased ones. Whether or not such corrections also improve predictive validity remains unclear. To address this question, we calculated correlations between maturity indicators and motor performance variables among a sample of 121 fifteen-year-old elite youth football players in Switzerland. We corrected motor performance scores identified as maturity-biased, and we assessed correction procedure efficacy. Subsequently, we examined whether corrected scores better predicted levels of performance achievement 6 years after data collection (47 professionals vs. 74 non-professional players) compared with raw scores using point biserial correlations, binary logistic regression models, and DeLong tests. Expectedly, maturity indicators correlated with raw scores (0.16 ≤ | | ≤ 0.72; s < 0.05), yet not with corrected scores. Contrary to expectations, corrected scores were not associated with an additional predictive benefit (univariate: no significant -change; multivariate: 0.02 ≤ ΔAUC ≤ 0.03, s > 0.05). We do not interpret raw and corrected score equivalent predictions as a sign of correction mechanism futility (more work for the same output); rather we view them as an invitation to take corrected scores seriously into account (same output, one fewer problem) and to revise correction-related expectations according to initial predictive validity of motor variables, validity of maturity indicators, initial maturity-bias, and selection systems. Recommending maturity-based corrections is legitimate, yet currently based on theoretical rather than empirical (predictive) arguments.
在识别人才时,成熟状态对运动表现的混杂影响是一个公认的问题。为了解决这个问题,已经提出了校正机制,将成熟偏差的测试分数转换为成熟无偏差的分数。这些校正是否也能提高预测的有效性仍然不清楚。为了解决这个问题,我们在瑞士的一个 121 名 15 岁精英青年足球运动员的样本中计算了成熟指标和运动表现变量之间的相关性。我们校正了被认为是成熟偏差的运动表现分数,并评估了校正程序的效果。随后,我们使用点二项式相关、二元逻辑回归模型和 DeLong 检验,比较了原始分数和校正分数对数据收集 6 年后(47 名职业球员与 74 名非职业球员)的运动表现水平的预测能力。如预期的那样,成熟指标与原始分数相关(0.16 ≤ | | ≤ 0.72;s < 0.05),但与校正分数不相关。与预期相反,校正分数与额外的预测益处无关(单变量:无显著变化;多变量:0.02 ≤ ΔAUC ≤ 0.03,s > 0.05)。我们不将原始和校正分数的等效预测解释为校正机制无效的迹象(更多的工作,相同的输出);相反,我们认为它们是认真考虑校正分数的邀请(相同的输出,一个更少的问题),并根据运动变量的初始预测有效性、成熟指标的有效性、初始成熟偏差和选择系统来修改与校正相关的预期。基于成熟度的校正建议是合理的,但目前基于理论而非经验(预测)论据。