Our results demonstrate that a high training load is accompanied by a low incidence of days of training lost due to self-reported days of sickness, and is compatible with our previous suggestion (Malm, 2006). Our findings agree with those of Moreira et al. (Moreira, Delgado, Moreira and Haahtela, 2009) in which a combination of the classic J-curve proposed by Nieman (1994a) and the S-curve proposed by Malm (2006) was presented. The combined model suggests that the risk of sickness in less-fit individuals can be displayed as a J-curve, while the curve tends to flatten as fitness increases. Moderate physical activity lowers the risk for infection in non-athletic adults from that of inactive adults, which is reflected in the J-curve nature of the results for such subjects (Nieman, 1994b; Nieman et al., 2011). It may be necessary to separate less-fit individuals from well-trained individuals when interpreting the effects of exercise on infection (Matthews et al., 2002), because of the demonstrated increased self-reported upper respiratory tract infection in elite, compared to recreational athletes (Gleeson et al., 2013) Many studies have examined endurance running events such as marathons, and report that there is an increased risk of acquiring an infection in the weeks following such an event. However, Ilback et al. (1991) (in rats) and Ekblom et al. (2006) (in humans) have shown that pre-effort infection is the probable cause of the increase in post-effort infection rates, not the post-effort sensitivity to infections. The present study did not investigate immune function, but others have reported a different immune response in elite compared to sedentary individuals (Walsh et al., 2011). Different inclusion criteria could therefore partly explain the difference in results between the present and previous (Nieman, 1994a; 1994b) studies. It can be argued that an immune system capable of fighting infection also during and after repetitive, strenuous exercise is necessary in order to become a successful elite athlete. Thus, measurements of infection rates in elite athletes are biased due to positive selection, and this could explain the S-curve/flattened J-curve (Malm, 2006). Elite athletes, such as the participants in this study, have the ambition to train every healthy day, and thus more training hours can be completed in years with fewer infections. These arguments are not in contradiction to such findings as by Spence et al. (Spence et al., 2007), showing that elite athletes have higher reported episodes of infections than non-elite subjects. All athletes participating in the present study performed at an elite level in their sport, and had the ambition to reach high training volumes every year in order to compete on a national and international elite level; they were all accepted to the School of Sports Science at Umeå University. However, because of infections, they were not able to reach their goals every season, manifested as the data points at the low end of Training hours per year in Figure 2. Thus, the argument that infections caused low training volumes, may be equally valid as the opposite; that high training volumes will cause infections. The latter being practically and statistically impossible, as 500-800 training hours per year will demand very few sick days, regardless cause and pathology. Consequently, a large variation in the number of sick days will be present in any study including elite athletes, unless a biased selection of only health elite subjects is done. The results in the present study do not by any means explain the cause, but are in line with our pilot study (Malm, 2006) as well as our conclusion regarding infection rates in marathon runners (Ekblom et al., 2006); In elite athletes, exercise load is negatively correlated with self-diagnosed Exercise Constrained Sick Days. A recent review by Moreira et al. (2009) also conclude that “among elite athletes, the relationship between exercise load and immune dysfunction tends to flat”. The demands associated with elite sports require an immune system that is capable of fighting off infections also in situations with extreme physical and mental challenges. Because this study is based on retrospectively summarize training logs, self-reported sickness, and a relatively few athletes, future studies should include a much larger number of subjects, as well as pathogen identification to investigate the mechanisms that govern the immunological response and clinical outcome of exercise training and competition. Of interested would also be to correlate sick days and training volumes to diet, performance and other co-founding factors in a prospective approach. This could benefit our understanding not only of the mechanisms behind the function of the immune system, and its adaptation in elite athletes, but also the clinical application of exercise to optimize both immune function and performance. |