Self-report measures are an accessible tool with potential to benefit athletic preparation and performance, provided athletes are compliant users (Coutts and Cormack, 2014; Halson, 2014; Meeusen et al., 2013). The present study aimed to characterize the uptake and compliance of a newly implemented ASRM, and investigate how perceptions and factors influencing ASRM implementation may differ across sport contexts. The interest in ASRM was evident from initial recruitment. However, of those athletes who completed the study, uptake and compliance was poor for self-directed athletes, yet considerably higher for supported athletes. Participation in an individual or team sport, or at a higher or lower participation level had little apparent effect on uptake and compliance. Therefore, discussion will focus on implementation in self-directed and supported sport contexts. The observed uptake and compliance with an ASRM may be explained using the theory of approach-avoidance conflict (Dollard and Miller, 1950). According to this theory, an athlete may pursue the appealing goal of using an ASRM to improve their athletic performance, yet as they approach this goal, the strength of unappealing factors increases (e.g., realization of the effort required). If the unappealing factors outweigh the appeal, the athlete will discontinue or revert in their approach. In the present study, both appealing and unappealing factors of ASRM implementation were investigated. The presence and relative importance of these factors were notably different between self-directed and supported sport contexts. For self-directed athletes, the appeal of improved training management must be balanced against the effort required to not only record data, but also to interpret and act upon the data. To comply with an ASRM, self-directed athletes must be intrinsically motivated, and gain pleasure from exploring and potentially learning something new from the process (Pelletier et al., 1995). Therefore, the content of an ASRM was rated as particularly important for these athletes. Self-directed athletes reported that they wanted a measure which could be customized to accommodate any data which they felt was relevant to their preparation, and not be burdened by input they felt was irrelevant. The effort dictated by the design and time burden of the ASRM became more important for sustained use. This agrees with the experiences of the general population, whereby self-directed users of mobile health and fitness applications rated time and difficulty as the top reasons to discontinue use (Mobiquity, 2014). Therefore, a measure should seek to maximize interest and minimize burden to gain initial and ongoing compliance from self-directed athletes. For supported athletes, the burden of completing an ASRM is more likely to be outweighed by the appeal of using an ASRM, such as improved communication with staff, coordinated training management, and ultimately improved performance (Saw et al., 2015b). In some supported settings, the appeal may also relate to avoiding negative consequences of non-compliance (Saw et al., 2015a). In light of a lack of intrinsic motivation, buy-in and data output were less important to initiate ASRM use. However, these factors became more important to sustain use. Athlete buy-in may inherently develop with ongoing use as athletes start to appreciate the importance to their preparation (Berglund and Safstrom, 1994). The provision of data output, including feedback from staff, may also serve to facilitate buy-in (Saw et al., 2015a). The buy-in of others, in particular the coach and other influential personnel of a sports program, is therefore necessary to encourage initial use and provide feedback to foster the development of buy-in amongst supported athletes. Another key consideration for supported athletes is that their data is accessible by their coach and potentially several other staff involved in a sports program. Previous research amongst supported elite athletes has highlighted concerns of who had access to their data, and implications of how they may be perceived and compared against other athletes (Saw et al., 2015a). Yet surprisingly, supported athletes in the present study were no more concerned than self-directed athletes about assurance of data being secure and not misused. The apparent lack of particular concern of assurance amongst supported athletes in the present study may simply reflect a lower relative importance compared to the other factors of the measure and social environment. Alternatively, a positive social environment may have abated any need for concern, with athletes not considering or being aware of any potential misuse of data in the first 16 weeks of use. Potential issues with the security of data also extend to all ASRM users, with the use of online ASRM introducing additional data security issues including possible exploitation by external parties (Lupton, 2014). Privacy concerns have been identified as a key barrier to the use of mobile health and fitness applications by the general population (Mobiquity, 2014). Yet across all athletes in the present study, such concerns were ranked as least likely to interfere with ASRM use. Regardless of whether this response reflects a lack of concern or a lack of awareness by athletes, this important aspect deserves due consideration by ASRM software providers. A further consideration for ASRM software providers is the content of an ASRM. The present study demonstrated self-directed athletes desired an ASRM which is customizable to their sport, interests and intended purpose. This preference has also been noted amongst high-level sports programs (Gastin et al., 2013; Kavaliauskas, 2010; Taylor et al., 2012). Whilst sports programs have the benefit of staff with experience and expertise to guide customization, such an approach may be at the expense of validity and reliability. Customization may also disrupt data continuity and applicability to improving knowledge and practice. Therefore, careful consideration is required by ASRM providers to determine the extent to which their software enables customization, and by ASRM users before proceeding with such customization. Further research into the content of ASRM for applied practice is also necessary. Athletes also expressed a desire for an ASRM to be compatible with other sources of athlete monitoring data. This is consistent with recommendations that ASRM be employed alongside more traditional monitoring such as training, performance and physiological measures (Coutts and Cormack, 2014; Halson, 2014; Kellmann, 2010; Twist and Highton, 2013). Recent advances in consumer technology present additional data sources which athletes may employ such as wearable devices (e.g., sleep/activity monitor, heart rate monitor, global positioning system device) and mobile health and fitness applications. Furthermore, supported athletes may also have data inputted by their coach and other support staff as part of an integrated approach to athletic preparation (Verhagen and Bolling, 2015). Therefore it is recommended that ASRM enable collation and analysis of athlete monitoring data from multiple sources to provide a more comprehensive overview of an athlete’s preparation. A strength of this research is the diverse athlete sample and naturalistic observation approach. However a low response rate to the survey after 16 weeks may have introduced a sampling bias, perhaps favoring those who were either engaged with the ASRM provided, or had particularly strong views as to why they chose not to. Nevertheless, the survey sought athlete’s experiences with ASRM, which were not exclusive to the ASRM provided, and demonstrated key considerations for ASRM implementation. |