The present study aimed to explore the relationships between RPE and various objective training load measures across a diverse range of drills, showing that these correlations are highly context-dependent and vary significantly based on the specific drill performed. Our findings showed that physiological indicators such as heart rate (HRaverage, HRmax) generally exhibited large positive associations with RPE, particularly in small-sided games and conditioning drills, although this pattern was weaker or non-significant in certain formats such as the 10x5 positional game and the 11v11 format. By contrast, the magnitude and even direction of correlations with other variables, including the VIFT and specific high-speed running distances (Z4 and Z5), were highly contingent upon the drill format. This observed variability underscores the importance of considering the specific demands and characteristics of each training drill when interpreting RPE and integrating it into training monitoring strategies. When grouped by drill type, clearer patterns emerge. Small-sided games (e.g., 3v3, 6v6) consistently showed very large positive correlations between RPE and both internal and external load metrics, reflecting their high-intensity, intermittent nature. In contrast, large-sided games (9v9, 11v11) displayed weaker or even negative associations with certain variables such as VIFT and high-speed running, likely due to pacing strategies, positional roles, and greater tactical complexity. Conditioning-based drills (e.g., repeated sprint training, muscular endurance circuits) showed RPE strongly aligned with heart rate measures but less consistently with locomotor variables. These results indicate that while RPE tracks cardiovascular strain across all drill types, its sensitivity to external load is most evident in small-sided formats and less predictable in larger tactical games. The present findings reveal a consistent and largely large positive correlation between RPE and heart rate-based measures (HRaverage and HRmax) across most drills, in specific in the 3v3 format, 6v6 format, repeated sprint training, muscular endurance circuit training, and slalom exercise. This strong association aligns with a substantial body of existing literature that consistently reports high correlations between RPE and internal physiological load markers such as heart rate, particularly in soccer as the study which showed very strong correlations between RPE and HR measures during the season (Kelly et al., 2016) or another study which found strong correlations between these variables in small-sided games (David and Julen, 2015). This relationship can be explained by the integrated regulation model of perceived exertion, which posits that RPE is a composite signal arising from both central and peripheral inputs (Hampson et al., 2001). As exercise intensity increases, leading to elevated heart rate responses - a direct reflection of increased cardiovascular demand and metabolic rate - there is a concomitant rise in peripheral signals (e.g., muscle acidosis, temperature, and metabolite accumulation) (Tornero-Aguilera et al., 2022) and central commands (Sarma et al., 2021). Beyond physiological regulation models, alternative theoretical frameworks also provide useful perspectives for interpreting our findings. The psychobiological model of endurance performance (Marcora and Staiano, 2010) conceptualizes RPE as a conscious effort-based signal shaped not only by physiological strain but also by motivation, prior experience, and perceived ability to sustain the task. From this view, the lower RPE observed in fitter players during larger-sided games may partly reflect greater self-efficacy and pacing strategies. The present research revealed a varied, yet large negative correlation between RPE and the VIFT in larger-sided game formats (11v11, 9v9), suggesting that a higher level of intermittent aerobic fitness is associated with lower perceived exertion in these contexts. Conversely, a small positive correlation was observed in the 3v3 format. This dominant inverse relationship between aerobic fitness and RPE for a given absolute workload is observed in studies in running (Garcin et al., 2004) and general exercise (Travlos and Marisi, 1996) which suggests that individuals with superior aerobic capacity can perform at a lower relative physiological strain. Possibly, a higher VIFT reflects better locomotor profile, improved efficiency, and recovery kinetics, allowing athletes to execute demands with reduced cardiovascular and metabolic perturbations as observed in a previous study in small-sided games (Clemente et al., 2022). Possibly, these individuals experience attenuated afferent signals from central and peripheral sources - such as lower heart rate responses, reduced lactate accumulation, and less respiratory demand for a given effort - thereby leading to a lower overall perception of effort. The relationships between RPE and objective measures of movement intensity, specifically distance covered per minute and average speed, showed contrasting with the more consistent correlations observed with heart rate measures. Our findings revealed large positive correlations between these speed/distance outcomes and RPE in certain contexts, particularly the 3v3 and 6v6 formats, and the slalom exercise, suggesting that increased external work and higher movement intensity in these drills may directly contribute to heightened perceived exertion. However, several other drills, including the 10x5 positional game, repeated sprint training, muscular endurance circuit training, and the 11v11 format, exhibited small, trivial, or non-significant correlations, while the 9v9 format showed a medium negative correlation for distance per minute. These weaker associations may reflect contextual factors: in repeated sprint training, recovery intervals may blunt overall cardiovascular strain despite intense bouts, while in the positional game, the tactical emphasis on ball circulation and space management may decouple exertion from locomotor load. This unexpected inverse relationship may indicate that fitter or more tactically efficient players covered greater distances yet reported lower exertion, consistent with the influence of pacing strategies and positional roles in larger-sided games. This variability shows the non-linear relationship between external load and internal perception as observed previously in a study using machine learning in soccer (Jaspers et al., 2018). Unlike physiological responses like heart rate, which more directly reflect metabolic demand, overall distance covered or average speed may not always fully capture the physiological strain leading to RPE in drills characterized by frequent accelerations, decelerations, changes of direction, or intense bursts of effort. Factors such as the individual movement economy (Dolci et al., 2018), or the intermittent nature of certain activities (Halperin and Vigotsky, 2024) can modulate the relationship between mechanical work (speed/distance) and the subjective perception of effort, leading to a decoupling of these variables in specific contexts. In addition to physiological strain, RPE may also be influenced by contextual and psychological factors. Tactical complexity in larger-sided games can increase cognitive demands and decision-making load, which may heighten or dampen perceived exertion independent of physical output (Halouani et al., 2017; Nunes et al., 2020). Similarly, motivation and psychological state modulate RPE responses: motivational self-talk has been shown to reduce perceived effort during exercise (Blanchfield et al., 2014), whereas mental fatigue increases RPE and impairs performance (Pageaux et al., 2015). In our dataset, this may help explain why drills with comparable physical demands (e.g., positional games vs. conditioning circuits) yielded divergent RPE-load associations. These perspectives reinforce that perceived exertion in soccer reflects an interplay of physiological, tactical, and psychological determinants rather than a single dimension. The analysis of RPE's relationship with distances covered in high-intensity speed zones, Z4 (15-19 km/h) and Z5 (>19 km/h), revealed large positive correlations across several drills, namely in the 3v3 format, repeated sprint training, 6v6 format, and slalom exercise. This finding may indicate that accumulating greater distances at very high running speeds can impact the heightened perception of effort. This observation aligns well with some evidence suggesting that high-intensity efforts are drived for physiological strain (Pokora and Żebrowska, 2016) and, consequently, perceived exertion. Performing at speeds exceeding 15 km/h likely demands a substantial metabolic output, increasingly relying on anaerobic glycolysis, which leads to rapid glycogen depletion and the accumulation of fatigue-inducing metabolites (Place and Westerblad, 2022). Moreover, the inherent accelerations, decelerations, and changes of direction often associated with covering distance in these high-speed zones, particularly in dynamic drills, may impose significant eccentric and concentric muscular loads, contributing to increased neuromuscular fatigue (Endoh et al., 2005). Because observations were repeated within players, simple correlations may underestimate uncertainty and inflate type I error. Our complementary LMMs, which modeled random intercepts for player and fixed effects for drill, corroborated the main message: RPE closely reflects cardiovascular strain and is sensitive to high-intensity running, whereas its relationship with general distance/speed and fitness is context-dependent. The non-significant effect of VIFT after adjustment suggests that fitter players may perceive less effort primarily through their reduced physiological strain during drills rather than a direct effect of fitness per se. A contribution of the present study is its drill-level resolution. Whereas most prior work has aggregated RPE–load relationships at the session level or focused on single drill types, our dataset allowed direct comparison across eight common soccer drills ranging from small-sided games to conditioning circuits and large-sided formats. Moreover, the exclusive focus on academy-level under-17 players provides novel insight into a developmental population that remains underrepresented in the literature compared to professional adult cohorts. Finally, by simultaneously integrating internal (heart rate), external (locomotor), and fitness (VIFT) variables within an ecologically training environment, this study provides a multidimensional perspective on the determinants of perceived exertion that complements and extends earlier research. Despite providing possible interesting information on the relationships between RPE and various training load measures, this study is not without limitations. While a two-week timeframe enabled consistent data collection across standardized drills, it represents only a snapshot of the training cycle, which may limit generalization of RPE–load relationships across longer competitive periods. Additionally, only training drills were monitored, and competitive matches were not included. Our decision to focus on training ensured standardized and repeatable drill formats within the limited observation period, but future studies should extend this approach to matches to evaluate whether the present findings generalize to competitive play. Another constraint might be the specific cohort studied, potentially limiting the generalizability of these findings to other competitive levels and scenarios. Although chronological age was recorded, maturation status (e.g., biological age) was not assessed, which may influence RPE responses in adolescents. Moreover, because players were clustered within teams, contextual factors such as coaching style, tactical emphasis, and training culture may have influenced RPE and load responses. Although both teams followed similar weekly training structures, this clustering should be considered when interpreting the results. Methodologically, a limitation of the present study is the large number of correlation tests. Although we observed highly consistent and robust associations between RPE and heart rate measures, other isolated significant correlations (e.g., in specific drills) should be interpreted with caution. Furthermore, while objective measures were employed, the absence of additional physiological or neuromuscular markers (e.g., blood lactate, muscle oxygenation, power output) prevents a deeper understanding of the underlying physiological stress driving RPE. In addition, aerobic fitness was assessed solely through the 30-15 Intermittent Fitness Test, which although ecologically relevant marker of intermittent aerobic capacity in soccer does not capture other physical qualities such as neuromuscular strength, sprint ability, or fatigue resistance. Future studies should therefore integrate complementary assessments (e.g., sprint tests, countermovement jump, or fatigue-resistance protocols) to provide a more complete picture of the fitness determinants of RPE. For coaches, one possible implication is that while RPE remains a highly valuable and practical tool for internal load monitoring, its interpretation must be individualized and drill-specific. In drills emphasizing high-speed running, RPE appears to be a good reflection of the accumulated distance in high-intensity zones (Z4 and Z5). However, coaches should be mindful that general speed/distance measures or fitness levels (VIFT) may not always align directly with RPE, particularly in complex game situations, necessitating a broad approach to load management adjusted to the specific demands of each training activity. |