The aim of this study was to investigate the anthropometric characteristics of streetlifting athletes in the different body weight categories and to develop specific equations to predict the individual performance in the different exercises included in competitive programs (chin-up, dip, muscle-up and squat). A total of 79 athletes (60 men and 19 women; age: 26.1 ± 6.4 y; body mass: 72.7 ± 13.2 kg; height: 171.7 ± 8.9 cm) were tested in accordance with the Italian National cham- pionships. Athletes were tested for anthropometry and body composition before the competition, and the performance in each lift was registered. A partial correlation of 0.47 and 0.60 was detected between arm girth and chin-up and dip performance, respectively. On the contrary, body fat was negatively correlated with the same exercises (r = −0.42). Squat performance appeared mainly deter- mined by fat-free mass and thigh cross-sectional area, while body fat did not affect the performance in this exercise. The prediction equations developed were based on anthropometric and body compo- sition parameters and showed near-perfect correlations with the participants’ competitive results (R2 between 0.66 and 0.90). The normative data presented in this investigation and the prediction equations developed may help coaches and practitioners in athlete evaluation and comprehension of the key factor of streetlifting performance.

Giuseppe Rosaci, Davide Latini, Sandro Bartolomei, Federico Nigro (2024). Relationships between Anthropometric and Strength Profiles of Streetlifting Athletes. APPLIED SCIENCES, 14(16), 1-11 [10.3390/app14167172].

Relationships between Anthropometric and Strength Profiles of Streetlifting Athletes

Giuseppe Rosaci
Primo
Conceptualization
;
Davide Latini
Secondo
Writing – Review & Editing
;
Sandro Bartolomei
Penultimo
Methodology
;
Federico Nigro
Ultimo
Formal Analysis
2024

Abstract

The aim of this study was to investigate the anthropometric characteristics of streetlifting athletes in the different body weight categories and to develop specific equations to predict the individual performance in the different exercises included in competitive programs (chin-up, dip, muscle-up and squat). A total of 79 athletes (60 men and 19 women; age: 26.1 ± 6.4 y; body mass: 72.7 ± 13.2 kg; height: 171.7 ± 8.9 cm) were tested in accordance with the Italian National cham- pionships. Athletes were tested for anthropometry and body composition before the competition, and the performance in each lift was registered. A partial correlation of 0.47 and 0.60 was detected between arm girth and chin-up and dip performance, respectively. On the contrary, body fat was negatively correlated with the same exercises (r = −0.42). Squat performance appeared mainly deter- mined by fat-free mass and thigh cross-sectional area, while body fat did not affect the performance in this exercise. The prediction equations developed were based on anthropometric and body compo- sition parameters and showed near-perfect correlations with the participants’ competitive results (R2 between 0.66 and 0.90). The normative data presented in this investigation and the prediction equations developed may help coaches and practitioners in athlete evaluation and comprehension of the key factor of streetlifting performance.
2024
Giuseppe Rosaci, Davide Latini, Sandro Bartolomei, Federico Nigro (2024). Relationships between Anthropometric and Strength Profiles of Streetlifting Athletes. APPLIED SCIENCES, 14(16), 1-11 [10.3390/app14167172].
Giuseppe Rosaci; Davide Latini; Sandro Bartolomei; Federico Nigro;
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/977894
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