This present study did not identify any relevant training-induced adaptations over time for either the squat or the bench press in terms of 1RM and MCV at 1RM, indicating that repeated strength assessments alone did not lead to noticeable improvements in maximal strength or movement velocity. However, exercise-specific differences were evident, with higher absolute loads and mean concentric velocities observed in the squat compared to the bench press. Furthermore, the MDC values (10.0 kg for the squat and 5.6 kg for the bench press) highlight the minimum detectable strength changes required to exceed measurement variability. Similarly, no significant changes over time were observed for VL-Slope or PP-Position, suggesting that load-velocity and power profiles remained stable throughout the study period. Nevertheless, PP-Position was significantly higher in the squat compared to the bench press, indicating that peak power output occurs at a higher relative load in the squat. Our findings revealed no meaningful changes over time in either 1RM or MCV at 1RM across the five testing sessions, indicating that repeated maximal strength assessments alone do not induce measurable training adaptations. This finding aligns with previous dose-response research demonstrating that significant strength gains generally require a structured resistance training intervention (Rhea et al., 2003; Suchomel et al., 2018). Although the weekly testing protocol involved high intensities (≥90-100% 1RM) and moderate per-session volume, including warm-up and incremental 1RM attempts, the overall training dose was low, especially in terms of frequency, progression and cumulative workload. According to Peterson et al. (2005), trained individuals require at least 2 sessions per week, with an average intensity of 80-85% 1RM, and ~4 sets per muscle group to elicit significant strength gains. Grgic et al. (2018) similarly found that higher training frequencies (≥2x/week) are more effective, but effects are largely volume-dependent, not frequency per se. Although our protocol involved very high intensities, it falls below the recommended frequency and volume thresholds, especially for trained individuals with >1 year of resistance training experience. Another possible explanation for the lack of improvement could be the training history of the participants. Strength adaptations are known to result from a combination of neural and morphological factors, with early gains primarily driven by neural adaptations and hypertrophic changes typically requiring at least 6-8 weeks (Folland and Williams, 2007; Balshaw et al., 2019). The sample consisted of individuals with an average of 2.1 ± 2.0 years of resistance training experience, suggesting that most participants had already undergone some degree of neuromuscular adaptation. This is relevant, as untrained individuals often show faster initial strength improvements compared to trained athletes due to rapid neural adaptations (Moritani and deVries, 1979; Sale, 1988). In more advanced stages of strength development, progress typically requires higher training volumes or greater stimulus variation (Grgic and Schoenfeld, 2018). Additionally, the absence of a structured progression in load or volume during the testing period may have contributed to the lack of significant strength changes. Studies have demonstrated that progressive overload is a key factor for long-term strength development (Peterson et al., 2005; Schoenfeld et al., 2021). The repeated 1RM tests in the present study did not follow a structured training protocol but rather served as assessments, which may not have provided sufficient stimulus for adaptation (Wernbom et al., 2007; Zaras et al., 2014). Furthermore, a possible “familiarization effect” could have influenced the results. Research suggests that multiple testing sessions may be required for individuals to express their true maximal strength, especially in technically demanding exercises (Hopkins et al., 2001; Seo et al., 2012). However, since participants in the present study were already familiar with both the exercises and testing procedures, this factor was likely minimized. The MCV values at 1RM observed in this study (0.23 ± 0.05 m/s for the bench press and 0.37 ± 0.08 m/s for the squat) were higher than commonly reported reference values, which typically range around 0.17 m/s and 0.30 m/s, respectively (Weakley et al., 2021). In contrast to well-trained or elite power lifters, moderately trained individuals, such as participated in this study, often lack the neuromuscular efficiency to fully express their maximal dynamic strength. As a result, 1RM attempts are frequently performed at a greater distance from the individual’s isometric force capacity, which inherently allows for higher barbell velocities during the final repetition. Additionally, minor contributions may result from interindividual differences in movement strategy, bar path, and explosiveness, as well as the fact that all tests were performed with free weights, which tend to show slightly more variability in velocity profiles. Finally, even though a structured and progressive testing protocol was used, it cannot be ruled out that some participants terminated their attempts prior to reaching true maximal capacity, resulting in slightly submaximal lifts with correspondingly higher velocities. Our analysis of VL-Slope or PP-Position showed no relevant changes over time, implying that the load-velocity relationship remains stable across multiple testing sessions. This finding aligns with previous research indicating that the slope of the load-velocity relationship (VL-Slope) is relatively consistent within individuals and primarily influenced by biomechanical and neuromuscular factors rather than short-term adaptations (García-Ramos et al., 2018; Pérez-Castilla et al., 2020). One possible explanation for the stability of VL-Slope over time is that the load-velocity relationship is an inherent characteristic of an individual’s neuromuscular profile, which is not easily altered without targeted training interventions (Pérez-Castilla et al., 2020). Previous studies have shown that VL-Slope remains relatively unchanged (Ruf et al., 2018; Jukic et al., 2022). This may suggests that the slope of the load-velocity curve is largely determined by factors such as muscle fiber composition, force production capacity, and motor unit recruitment strategies, which do not fluctuate significantly over short time frames (Alcazar et al., 2018). Similarly, the lack of significant changes in PP-Position over time indicates that the relative load at which peak power output is achieved remains stable across sessions. PP-Position is a key parameter in power profiling, as it represents the optimal load for maximizing power output during resistance exercises (Cormie et al., 2007). The stability of PP-Position suggests that athletes naturally maintain a consistent force-velocity relationship, which does not fluctuate without systematic training interventions (Jiménez-Reyes et al., 2016). This finding is consistent with previous research demonstrating that PP-Position is relatively resistant to short-term changes and tends to be individualized based on movement mechanics and neuromuscular properties (Morin and Samozino, 2016). From a training perspective, the stability of VL-Slope and PP-Position supports the idea that load-velocity and power profiling can be reliably used for long-term monitoring of neuromuscular performance (Banyard et al., 2017). Since these parameters do not appear to fluctuate significantly in the absence of targeted interventions, practitioners can use VL-Slope and PP-Position to assess baseline neuromuscular characteristics and track long-term adaptations (García-Ramos et al., 2018). However, some studies suggest that velocity-based training protocols targeting specific adaptations (e.g., power development or maximal strength) can induce meaningful changes in PP-Position over longer periods (Harries et al., 2012; Jovanovic and Flanagen, 2014). This highlights the need for future research to examine whether specific training interventions can systematically shift VL-Slope or PP-Position in different populations and exercise modalities. When comparing the squat and bench press, our data demonstrated higher absolute loads and movement velocities in the squat compared to the bench press, suggesting fundamental differences in the force-velocity characteristics of these two exercises. One potential explanation for the higher loads and movement velocities in the squat is the greater muscle mass involved. Squatting engages large muscle groups, including the quadriceps, hamstrings, gluteus maximus, and lower back muscles, which collectively produce higher absolute force outputs than the primarily upper-body muscles used in the bench press (Escamilla, 2001). Additionally, the squat exhibits a larger range of motion (ROM) than the bench press, which not only allows for greater force development throughout the movement (Fry et al., 2003) but also results in greater total mechanical work, as work is defined as force multiplied by displacement. Our study also found that PP-Position was significantly higher in the squat (80.2 ± 17.7% 1RM) than in the bench press (65.6 ± 7.5% 1RM). This indicates that peak power is generated at a higher relative load in the squat compared to the bench press, which has important implications for training design and performance optimization (Morin and Samozino, 2016). From a practical standpoint, the higher PP-Position in the squat suggests that power-focused training should emphasize heavier relative loads in lower-body exercises compared to upper-body exercises. This is consistent with prior research showing that optimal power output in lower-body movements is achieved at loads between 60-80% 1RM, whereas upper-body exercises tend to peak at 30-70% 1RM (Jidovtseff et al., 2011; Jiménez-Reyes et al., 2016). This has direct applications for velocity-based training, where training loads are adjusted based on movement velocity to maximize power output (Jovanovic and Flanagen, 2014). Additionally, the MDC (Furlan and Sterr, 2018) values (10.0 kg for the squat and 5.6 kg for the bench press) highlight the minimum strength changes required to exceed measurement variability. These values are critical for practitioners seeking to track performance changes over time (Hopkins et al., 2001), as they indicate that small increases in bench press strength may be detectable earlier than in the squat due to the lower MDC threshold (Banyard et al., 2017). This suggests that strength assessments should account for exercise-specific variability when interpreting longitudinal performance data. While this study provides valuable findings on the stability of strength and velocity characteristics, several limitations must be acknowledged. Despite standardized technique assessments, potential variability in movement execution may have influenced the results, particularly in velocity-related measures. Although participants were instructed not to change their training or nutritional habits during the study, individual training behavior was not monitored and therefore could not be controlled or analyzed retrospectively. Additionally, the study did not differentiate between performance levels within the sample, limiting insights into potential subgroup differences. Future research should explore performance adaptations in distinct training populations, such as untrained individuals versus experienced lifters, and investigate alternative methods for assessing strength and velocity characteristics, including novel sensor technologies or machine-learning-based motion analysis. |