The aims of the present study were to test the existence of RAEs in young German male tennis players and to examine if these effects were influenced by age and/or skill level. A further aim was to investigate whether players born later in the selection year but still selected into the elite squads were likely to be similar across a range of anthropometric and fitness attributes compared with those born earlier in the year. The main findings of the present study were as follows: 1) an uneven birth distribution was present in German youth competitive tennis; 2) the observed effect was present in all of the age groups analyzed and more pronounced with an increased competition level in youth players; 3) the RAE was less apparent at elite senior level; 4) players born later in the selection year and still selected into the elite squads were likely to be similar across a range of anthropometric and fitness attributes compared with those born earlier in the year. In order to accurately examine the birth distribution of players, and for a precise measurement of a potential RAE, we followed the suggestions of Delorme and Raspaud (2009). These authors suggested that it is necessary to analyze all licensed players as the expected distribution, rather than to use the national population, since there might be already existing differences and there could be a misinterpretation of the results (Delorme and Raspaud, 2009). Therefore, if an asymmetric distribution is found among all licensed players, it would not be surprising to find the same tendency of distribution also among higher level players (i.e., regional and national squads). Thus, despite licensed players showing a balanced distribution, results showed that relative age effects exist in the regional and national squads, with a greater percentage of players born in the 1stQ (Table 2). Results are in line with previous research analyzing the birth dates of tennis players (e.g., 12 to 18 years old), with players born in the 1stHY accounting for 60 to 86% of the whole population analyzed (Baxter-Jones et al., 1995; Edgar and O'Donoghue, 2005b; Filipcic, 2001). Also, when ranked players were analyzed (7,165 players aged 10-17 years old), results showed significantly more players born in the 1stQ than in the last quarter of the year. Although the bias was less pronounced here (54.0%) than in the regional (65.1%) and national squads (70.2%), we can speculate that among these ranked players, there is a process of “self-elimination” in the later born players, since the selection of this group is not based on the decision of coaches and talent scouts, as in the regional and national groups. Although the causes for this self-adjusting distribution seem to be multifaceted and not clearly understood, some researchers from other sports speculate that this self-adjusting distribution could be provoked by a possible drop out of late born players as they might experience more situations of failure or inferiority, losing the ambition to compete and therefore withdraw from competitive tournaments (Delorme et al., 2010). Analyzing the possible age related differences regarding RAEs, the findings revealed a skewed distribution of birth dates over the age categories analyzed (i.e., U12 to U18; Table 2) towards an earlier birth date. However, although the skewed distribution is still evident and an effect is more prevalent at younger ages, it seems that there is a tendency showing that the relative proportion of players born in the first quarters of the year diminishes from U12 to U18, also in the national group (i.e., 54.6% of the players born in the 1stQ in U12 and 28.0% in U18). Previous research in other sports investigating age as a moderator of risk found a progressively increased effect from the child (Under 10 years) age range to the adolescent (15-18 years) category, before decreasing at the senior (>19 years) age category (Cobley et al., 2009). Interestingly, this declining tendency is found when senior players (first 50 players in the DTB ranking list) are compared with the junior national squad players (56% of the players born in the 1stHY and 44% in the 2ndHY). These results are in agreement with previous research examining team sport athletes. Although the mechanisms for this age-related effect are not known, the relative advantage of total life experience is reduced as players get older (e.g., in 12-year old players, an 11-month difference in age represents ~10% of total life experience, while in 18-year old players that means ~5%). Regarding competitive level, our results show that the percentage of players born in the 1stHY increased according to the selection level in youth tennis players (i.e., from all licensed players to the national selection of players) (Figure 1). Present results, however, concur with previous research where the magnitude of the RAEs was greater at higher competitive level in soccer players (Mujika et al., 2009; Sherar et al., 2007). Moreover, and according to the present data, it can be speculated that in the transition from junior to senior professional level a greater number of relatively older players are more likely to drop-out, which has also been reported in handball and soccer (Baker et al., 2010; Cobley et al., 2008). Therefore, in the long term, the former disadvantage might turn into an advantage as relatively younger and late mature players might develop superior technical and tactical skills once they “survive” the talent detection and development system (Schorer et al., 2011). Overall, no systematic differences were observed in any of the anthropometrical characteristics between the players born in different quarters (Table 3). However, there were some substantial differences in some variables in certain age groups, which should be noted. For example, in the U12 group, later born players have their APHV earlier (0.61 years) than their relatively older peers (i.e., 13.78 vs. 13.17 for players born in the 1stQ vs. 4thQ, respectively), possibly compensating the “disadvantage” of being relatively young with an earlier age for onset of puberty. On the contrary, in U14 and U15 players, those players born in the 1stQ already achieved their respective ages of PHV, while players born in the 4thQ were almost one year behind them (i.e., APHV in U14: 0.01 vs. -1.23 for players born in the 1stQ vs. 4thQ, respectively). Also, in the U14 and U15 players and in the U13 and U14, players born in the 1stQ were taller and heavier than their 4thQ born peers. Whilst these tendencies in anthropometry are likely to be practically important (e.g., relatively taller players would be able to serve faster (Vaverka and Cernosek, 2013), they were not accompanied by superior physical fitness (see below), which might have enabled them to minimize the potential advantages associated to superior anthropometrical parameters. No systematic differences were found in any of the physical fitness parameters analyzed when comparing players born across different quarters of the year, supporting the hypothesis that selected talented players born later in the year presented similar physical fitness values than their earlier born peers. Similarly, previous research conducted in soccer, showed that players born later in the selection year, and selected into the elite teams, had similar physical characteristics than their relatively older peers (Deprez et al., 2012). There were some limitations to this type of study. Most notably, we tested the players only once during the season. Longitudinal data of the same players during multiple years might have yield different results since some physical fitness performance and anthropometrical measures have been shown to be unstable throughout adolescence (Buchheit and Mendez-Villanueva, 2013). The regression equations used to estimate the pubertal timing according to Mirwald et al. (2002) were calculated on a sample of Canadian children. Since we used non-Canadian children, this might have an effect on the outcomes. |