To provide percentile curves for short-course swimming events, including 5 swimming strokes, 6 race distances, and both sexes, as well as to compare differences in race times between cross-sectional analysis and longitudinal tracking, a total of 31,645,621 race times of male and female swimmers were analyzed. Two percentile datasets were established from individual swimmers' annual best times and a two-way analysis of variance (ANOVA) was used to determine differences between cross-sectional analysis and longitudinal tracking. A software-based percentile calculator was provided to extract the exact percentile for a given race time. Longitudinal tracking reduced the number of annual best times that were included in the percentiles by 98.35% to 262,071 and showed faster mean race times (Pâ<â0.05) compared to the cross-sectional analysis. This difference was found in the lower percentiles (1st to 20th) across all age categories (Pâ<â0.05); however, in the upper percentiles (80th to 99th), longitudinal tracking showed faster race times during early and late junior age only (Pâ<â0.05), after which race times approximated cross-sectional tracking. The percentile calculator provides quick and easy data access to facilitate practical application of percentiles in training or competition. Longitudinal tracking that accounts for drop-out may predict performance progression towards elite age, particularly for high-performance swimmers.
Comparing cross-sectional and longitudinal tracking to establish percentile data and assess performance progression in swimmers.
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作者:Born Dennis-Peter, Rüeger Eva, Beaven C Martyn, Romann Michael
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2022 | 起止号: | 2022 Jun 18; 12(1):10292 |
| doi: | 10.1038/s41598-022-13837-3 | ||
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