Age classification is an important feature of modern sport and is implemented with the intended effect of increasing sport participation by reducing the impact of aging on the outcome of competition. Marathon athletes compete in 5-year age groups and this study provided the first empirical evaluation of the relative age effects in male and female marathon athletes. The findings from this study are summarised as follows: 1) significant intra-class effects were observed within the male 20-24 age group, 30-34 age group, 40-44 age group and all age groups over 50 years, 2) significant intra-class effects were observed within the female 20-24 age group and all age groups over 40 years, 3) significant inter-class effects were found in males between the 20-24 and 25-29 age groups, the 30-34 and 35-39 age groups, and between all age groups over 50 years, and 4) significant inter-class effects were found in females between the 20-24 and 25-29 age groups and all age groups over 35 years. The significant and large intra-class effects observed in all male age groups over 50 years and all female age groups over 40 years were the key findings of the current study. These results indicated that relatively older athletes in these age groups were significantly slower compared to their younger counterparts. These results were most likely due to the accelerated impact of aging on marathon running performance in older athletes which is thought to be caused by a progressive decline in VO2max and strength, secondary to reduced active muscle mass (Faulkner et al., 2008; Reaburn and Dascombe, 2008; Tanaka and Seals, 2008). The regression model shown in Figure 3 and the regression models in previous studies were in agreement that a curvilinear relationship exists between age and marathon performance with a more pronounced deterioration in older athletes (Lara et al., 2014; Leyk et al., 2009). In support of the model, the results of the current study showed larger effects of aging on marathon performance in older athletes compared to those in middle-age. For example, the average male marathon time increased by 9% between 35-50 years, a change of less than 1% per year. However, there was a 33% increase between 50-65 years which corresponded to a change of more than 2% per year. These results provided preliminary but robust evidence that relatively older male athletes in age groups over 50 years and relatively older females in age groups over 40 years are competitively disadvantaged compared to relatively younger athletes. One practical approach to address this issue is to increase the number of age groups (Medic et al., 2009), however further research would be required to determine the optimal class configuration. The results of the current study showed an inter-class and intra-class deterioration in marathon participation with aging which corresponded to the deterioration in marathon performance. In order to finish in the top ten of an age group, a marathon athlete requires a lifestyle which is lacking factors that negatively impact running performance and permits consistent athletic training over many years (Leyk et al., 2009). It is likely that a combination of many external lifestyle factors such as increased work commitments and family responsibilities (Caspersen et al., 2000), physiological decline as a result of the aging process and injury are responsible for the reduced participation with aging. An intra-class decline in participation within masters age groups indicates an unequal distribution of participants which could be a contributory factor toward the intra-class performance effects we observed in the current study. For this reason a previous study controlled for participation frequency to avoid making a type I error (Medic et al., 2009). However, in the current study we decided against controlling for participation frequency for two main reasons. First it was not possible to determine causation between participation and performance outcomes from our results. While it is possible that an unequal distribution of participants within a class directly affected marathon performance between constituent ages, the prospect of close competition is a motivator for taking part in sport (Vallerand and Rousseau, 2001) and, given that masters athletes are aware of the inherent advantages conferred to younger athletes (Medic et al., 2013), it remains a possibility that marathon athletes withdraw from competition as they become relatively older in their age group because they become unable to achieve a satisfactory finishing time or a high finishing position in their class. Consequently intrinsic motivation, perceived competence and task goal motivation are reduced (Medic et al., 2007) which decreases the prospect of training and competitive racing in the future. On this basis, controlling for participation would increase the probability of failing to detect a true effect (i.e. a type II error). Second, the possibility that reduced participation is a major contributory factor toward the decline in masters athletic performance has previously been explored but results from a study that controlled for participation frequencies were similar to those from a study that did not control for participation frequency (Medic et al., 2007; 2009). In both studies the likelihood of setting a track and field record was higher for the relatively younger athletes in each class. Significant and large intra-class effects were observed in the 20-24 age class in males and females showing that the younger athletes in this class were slower compared to the relatively older athletes. Moreover, the 20-24 age class was significantly slower than the 25-29 age class which was the fastest class in both males and females. These results are most likely due to the effects of prolonged physical training on marathon running in young athletes up to the age of peak performance. Initially young athletes tend to show a strong VO2max response to aerobic training which tends to stabilise at approximately 20 years (Mikulic, 2011; Wang et al., 2014). Thereafter other submaximal performance-related variables improve until the optimal age of peak performance is reached (Mikulic, 2011) which varies with the sport. In power-based sports such as sprinting, performance tends to peak relatively earlier at 23-24 years, and in Ironman triathlon performance peaks relatively later at 33-34 years (Rust et al., 2012; Schulz and Curnow, 1988). Our results are in agreement with those from Lara et al. (2014) indicating that marathon athletes achieve optimal performance on average between 25-29 years. The significant intra-class effect in the male 30-34 class and the significant inter-class effect between the 30-34 and 35-39 age groups should be interpreted with some caution because these effects were most likely due to performance variation in our sample rather than true age-related effects. While our data showed peak marathon performance in the 25-29 age class, many elite marathon athletes have maintained a high performance level into their thirties. For example, the previous world record for the marathon was achieved by Wilson Kipsang Kiprotich aged 31 years in 2013, and Haile Gebrselassie was aged 35 years when he set a previous marathon world record in 2008 (Knechtle et al., 2014). Similarly, the effects in the 40-49 age groups are somewhat difficult to interpret because of inconsistent intra-class and inter-class results. Consequently, definitive conclusions cannot be made with respect to the validity of male age groups between 30-49 years. A limitation of the study was that we were unable to fully control for other features which are known to affect distance running performance. These features include marathon experience, training volume and physiological factors (Lara et al., 2014). In order to mitigate this issue, data from the fastest ten athletes in each age group were analysed to increase the likelihood that the sample was homogeneous in their general approach to marathon competition and physiology. The results of this study are relevant for competitive masters athletes and their coaches. Masters athletes who perceive they are competing in one-sided competition are potentially at the greatest risk of reduced motivation to participate in future events. The results of this study provide athletes with the knowledge of the age groups in which performance significantly declines. In turn this knowledge reinforces the notion that competitiveness in masters athletics is cyclical thereby motivating competitive masters athletes to continue to train and compete until they are eligible for the subsequent age group. |