Aydemir Burakhan, Aydoğan Muhammed Talha, Boz Emre, Kul Murat, Kırkbir Fatih, Özkara Abdullah Bora
Department of Physical Education, Karadeniz Technical University, 61080 Trabzon, Türkiye.
Sports Science Faculty, Bayburt University, 69000 Bayburt, Türkiye.
Sensors (Basel). 2025 Sep 7;25(17):5580. doi: 10.3390/s25175580.
This study aimed to examine the validity and reliability of the AI-based DeepSport application by comparing its outcomes with those from the reference device, OptoJump. The primary dependent variables measured were jump height and anaerobic power during vertical jump assessments. Twelve elite male basketball players voluntarily participated in the study (age = 21.53 ± 1.14 years; sports experience = 6.47 ± 1.01 years). DeepSport uses AI-based image processing from standard cameras, while OptoJump uses optical sensor technology. Both DeepSport and OptoJump systems were utilized to assess participants' Countermovement Jump (CMJ) and Squat Jump (SJ) performances. A G*Power (version 3.1.9.7) analysis determined the required sample size, adopting a 95% confidence level, 90% test power, and an effect size of 0.25. Validity assessments were conducted using Bland-Altman plots and ordinary least products (OLP) regression analysis, while reliability was evaluated through intraclass correlation coefficient (ICC), coefficient of variation (CV), standard error of measurement (SEM), and smallest detectable change (SDC) analyses. DeepSport showed excellent reliability in CMJ and SJ tests with ICC values > 0.90, and CV ranged between 2.12% and 4.95%. Results were consistent with OptoJump, showing no significant differences according to -test results ( > 0.05). Bland-Altman analyses indicated no systematic bias and random distribution. These findings confirm that both DeepSport and OptoJump devices demonstrate high reliability and consistency, suggesting their validity and reliability for use in athlete performance assessments by coaches and athletes.
本研究旨在通过将基于人工智能的DeepSport应用程序的结果与参考设备OptoJump的结果进行比较,来检验其有效性和可靠性。在垂直跳跃评估中测量的主要因变量是跳跃高度和无氧功率。12名精英男性篮球运动员自愿参与了该研究(年龄=21.53±1.14岁;运动经验=6.47±1.01年)。DeepSport使用基于人工智能的标准相机图像处理技术,而OptoJump使用光学传感器技术。DeepSport和OptoJump系统均用于评估参与者的反向移动跳跃(CMJ)和深蹲跳跃(SJ)表现。通过G*Power(版本3.1.9.7)分析确定所需样本量,采用95%置信水平、90%检验效能和0.25的效应量。使用Bland-Altman图和普通最小乘积(OLP)回归分析进行效度评估,同时通过组内相关系数(ICC)、变异系数(CV)、测量标准误差(SEM)和最小可检测变化(SDC)分析来评估可靠性。DeepSport在CMJ和SJ测试中显示出优异的可靠性,ICC值>0.90,CV在2.12%至4.95%之间。结果与OptoJump一致,根据检验结果无显著差异(>0.05)。Bland-Altman分析表明无系统偏差和随机分布。这些发现证实,DeepSport和OptoJump设备都具有很高的可靠性和一致性,表明它们在教练和运动员进行运动员表现评估中具有有效性和可靠性。