Investigation of hip flexibility training on dancesport optimization using machine learning video analysis

  • Mingyang Gao Sports Training Institute, Jilin Sport University, Changchun 130000, Jilin, China
  • Liu Yang College of Sports Arts, Jilin Sport University, Changchun 130000, Jilin, China
Keywords: biomechanical effect; dancesport optimization; hip flexibility training; movement patterns; physiological metrics; machine learning; receptive field block
Article ID: 348

Abstract

Dancesport, particularly the Paso Doble, requires high agility, coordination, and flexibility, especially in the hips. This study investigates the impact of an eight-week targeted Hip Flexibility Training (HFT) program on the performance of professional Paso Doble dancers. The need for this research stems from the lack of objective, data-driven evaluations in the field, where traditional methods rely heavily on subjective assessments. Previous studies have examined general flexibility in dance, but few have focused on the direct Biomechanical Effects (BF) and Physiological Effects (PE) of specific HFT on dancers. Further, such studies could not accurately measure hip joint movements and their coordination in order to achieve dance performance efficiency. The proposed study used motion-capturing devices to collect key movement data that impacts performance efficiency. The collected data is analyzed using the hybrid receptive field block (RFB) and residual network (ResNET) ML models to study the pre- and post-HFT results. Twelve highly trained dancers were assigned to have biomechanical and physiological metrics measured after and before the training. The data analysis has shown that there has been a significant increase in hip flexion from 65.4 ± 4.5° to 75.2 ± 3.7° (P < 0.05), hip extension from 25.3 ± 2.4° to 30.1 ± 2.1° (P < 0.05), and joint velocity from 1.18 ± 0.15 m/s to 1.32 ± 0.12 m/s (P < 0.05). Physiological metrics also showed improvements, such as a reduction in Oxygen Consumption (OC) from 2.02 ± 0.21 L/min to 1.85 ± 0.18 L/min (P < 0.05) and Energy Cost (EC) from 50.1 ± 7.2 kJ/min to 45.6 ± 6.4 kJ/min (P < 0.05).

References

1. Magdalena RM, & Virgil EV. Theoretical Framework Regarding the Training in Dancesport Rumba. Ovidius University Annals; 2023.

2. Magdalena RM, & Virgil EV. Challenges And Opportunities in Optimizing Physical Training: Impact on Competitive Performances in Dance Sport. The Annals of Dunarea de Jos University of Galati Fascicle XV Physical Education and Sport Management. 2024; 1: 46-53. doi: 10.35219/efms.2024.1.06

3. Seifert Gonzales AM, Stenson MC. Physiological Demands of Competitive Collegiate Dance. Journal of Strength & Conditioning Research. 2024; 38(9): e503-e509. doi: 10.1519/jsc.0000000000004833

4. Haas JG. Dance anatomy. Human kinetics; 2024.

5. McClure M. Dancing Another Role: Gender, Sexuality, and the Lead-Follow System in Korean Social Partner Dance Communities [PhD thesis]. University of Hawaiʻi at Mānoa; 2023.

6. Flores GA. Dancing Language: The Politics of Bodily Movement and Gesture in Latin America [PhD thesis]. The University of Arizona; 2023.

7. Henderson F. A Functional Cross-Training Approach to Enhance Strength, Cardiovascular Function, and Movement Execution of Contemporary Floorwork in Collegiate Dancers [Master’s thesis]. University of California, Irvine; 2023.

8. Liang F, Hongfeng H, Ying Z. The effects of eccentric training on hamstring flexibility and strength in young dance students. Scientific Reports. 2024; 14(1). doi: 10.1038/s41598-024-53987-0

9. Dang Y, Chen R, Koutedakis Y, et al. The Efficacy of Physical Fitness Training on Dance Injury: A Systematic Review. International Journal of Sports Medicine. 2022; 44(02): 108-116. doi: 10.1055/a-1930-5376

10. Behm D. The Science and Physiology of Flexibility and Stretching. Routledge. 2024. doi: 10.4324/9781032709086

11. Bean J. Effect of Lumbopelvic-Hip Complex Stability Training on Clinical Measures of Postural Stability and Landing Biomechanics [Master’s thesis]. The University of Toledo; 2023.

12. Krzysztofik M, Jarosz J, Urbański R, et al. Effects of 6 weeks of complex training on athletic performance and post-activation performance enhancement effect magnitude in soccer players: a cross-sectional randomized study. Biology of Sport. 2025. doi: 10.5114/biolsport.2025.139849

13. Tanasă AR, Abalașei BA, Dumitru IM, et al. Investigating the Influence of Personalized Training on the Optimization of Some Psychomotor Behaviors Among Junior Gymnasts in the Training Process (Moldova Region, Romania). BRAIN Broad Research in Artificial Intelligence and Neuroscience. 2024; 15(1): 459-479. doi: 10.18662/brain/15.1/562

14. Giguere M. Beginning modern dance. Human Kinetics; 2023.

15. Choong JSY. (2023). Discovering the Essence of” Good” Dancing: Looking into Dance Aesthetics, Movement Efficiency, & Performance Quality [Master’s thesis]. Arizona State University; 2023.

16. Ngo JK, Lu J, Cloak R, et al. Strength and conditioning in dance: A systematic review and meta‐analysis. European Journal of Sport Science. 2024; 24(6): 637-652. doi: 10.1002/ejsc.12111

17. Mattiussi AM, Shaw JW, Price P, et al. The association of range of motion, lower limb strength, and load during jump landings in professional ballet dancers. Journal of Biomechanics. 2024; 168: 112119. doi: 10.1016/j.jbiomech.2024.112119

18. Catiil MHD, Gomez ON. Enhancement of Hip Joint Flexibility using Flexor and Unilateral Exercises. British Journal of Multidisciplinary and Advanced Studies. 2024; 5(1): 11-30. doi: 10.37745/bjmas.2022.0425

19. Skopal LK, Drinkwater EJ, Behm DG. Application of mobility training methods in sporting populations: A systematic review of performance adaptations. Journal of Sports Sciences. 2024; 42(1): 46-60. doi: 10.1080/02640414.2024.2321006

20. Sievers C. (2023). How Reliable is Performance-Based Assessment? Comparing Holistic, Analytic, and Comparative Judgment Approaches [PhD thesis]. University of Groningen; 2023.

21. Ho IMK, Weldon A, Yong JTH, et al. Using Machine Learning Algorithms to Pool Data from Meta-Analysis for the Prediction of Countermovement Jump Improvement. International Journal of Environmental Research and Public Health. 2023; 20(10): 5881. doi: 10.3390/ijerph20105881

22. Xu D, Zhou H, Quan W, et al. A new method proposed for realizing human gait pattern recognition: Inspirations for the application of sports and clinical gait analysis. Gait & Posture. 2024; 107: 293-305. doi: 10.1016/j.gaitpost.2023.10.019

Published
2024-11-05
How to Cite
Gao, M., & Yang, L. (2024). Investigation of hip flexibility training on dancesport optimization using machine learning video analysis. Molecular & Cellular Biomechanics, 21(2), 348. https://doi.org/10.62617/mcb.v21i2.348
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Article