The stability of the selected GRF variables was quantified using two test-retest methods. First, the ICC was selected as a traditional statistical method for determining stability of data. Then, the SAT was utilized to make possible a comparison with previous research on the stability of the joint kinetic variables due to jumping (Rodano and Squardone 2002), as well as with similar reports on stability of the selected GRF variables due to running (Bates et al., 1983), walking (Hamill and McNiven, 1990) and landing (James et al., 2007). Intra-class correlation analysis: In using the ICC to assess inter-cycle stability of a selected jumping GRF variable, one constructs a table in which columns are successive jumping cycles (e.g. Cycle 1, Cycle 2, etc.), whereas the row variable represents different test subjects (e. g. Subject 1, Subject 2, etc.). In the present study, the corresponding table has 20 columns and 12 rows. The cell entries in each row are values of the variable generated by a single individual on the cycle-by-cycle basis (here due to 20 cycles). The aim of the ICC analysis is to assess the inter-cycle (column) effect in relation to the inter-subject (row) effect, using two-way ANOVA statistics (Shrout and Fleiss, 1979). The ICC coefficient can be defined as a ratio (Model 3,1 after Shrout and Fleiss, 1979): where k is the number of test subjects (rows). MSB is the mean-square estimate of between-subjects variance (also called ‘inter-subject variability’) which reflects the expectation that different subjects will generate different values of the selected GRF variables across successive jumping cycles. EMS is the mean-square estimate of within-subjects variance (known as ‘intra-subject variability’), or error attributed to inability of a single subject to repeat values of selected GRF parameters on the cycle-by-cycle basis. The ρ coefficient takes values between -1/(k-1) and 1. It will approach 1 when there is no variance within subjects, i.e. the ICC will be high when any given row tends to have the same score across the columns (Haggard, 1958). Values below 0.50 represent poor stability, values between 0.50 and 0.75 suggest moderate stability, whereas values above 0.75 indicate good stability (Portney and Watkins, 2000). For any given value of ρ, such as ρ = ρ* (0< ρ*<1), there is a reasonable number of trials to form a stable average. This number can be estimated beforehand as (Shrout and Fleiss, 1979): where ρL is the lower bound from a specified confidence interval around the ICC coefficient, such as 95% interval. The confidence interval gives a range likely to include ρ*, whereas the confidence level (e.g. 95%) determines how likely the interval is to contain the given value of ICC. For a selected GRF variable, the ICC coefficient ρ defined by equation (1) was calculated initially across the first two jumping cycles, i.e. the first two columns in the corresponding 12x20 table. The calculation was then iteratively repeated in increments of one jumping cycle for the combination of successive cycles ranging from 3 to 20. The maximum ρ value for all iterations and the corresponding number of jumping cycles (i.e. column location) were determined. To add more statistical rigor to the analysis, the probability p (also called p-value) that the maximum ρ value was significantly different from zero (statistical significance was set to 0.05) was checked by the hypothesis of no intra-class correlation (Haggard, 1958). 95% confidence interval upper and lower limits of the ρ were also determined (Haggard, 1958). Moreover, the number of cycles necessary to reach ρ values of 0.80, 0.85, and 0.90 were estimated using equation (2). Nominally identical ICC analysis was also performed for each selected GRF variable due to jumping at 2 Hz, 2.4 Hz and 2.8 Hz. Segmental averaging analysis: The SAT estimates stability of a variable by analyzing stability of the cumulative mean across a number of the variable samples (Hamill and McNiven, 1990), where each sample corresponds to one jumping cycle. The cumulative mean is calculated as the average of each sample with all previous samples, thus it is also known as ‘moving average’. Therefore, the final cumulative mean in this study was equal to the overall 20 sample mean. The stability is achieved as soon as a pre-defined degree of precision is observed. Here, the criterion for stability of a GRF variable was met when a sample cumulative mean, and the cumulative mean of all following samples, fell within 20 cycle mean ± 0.25 of the mean standard deviation (Hamill and McNiven, 1990), as illustrated in Figure 4. This represents a conservative cut- off rule and has been already applied in the similar studies on running (Bates et al., 1983), walking (Hamill and McNiven, 1990) and landing (James et al., 2007). From this criterion, the number of successive jumping cycles necessary to reach a stable mean for each variable, test subject and jumping rate was calculated. These are further averaged over all variables and test subjects yielding the minimum number of successive jumps a test subject should perform at a given jumping rate in order to reach a stable mean for all GRF variables. To examine differences in stability that might result from using a different sample size, the SAT analysis was repeated for a data set comprising not 25 but 10 successive cycles and a 0.25 standard deviation criterion value. The results will be discussed in the next section. |