Modern basketball puts very complicated physical requirements on the athletes and needs unique mix of high explosive power and long endurance. Jumping for a contested board, sprinting on a fast break, changing direction quickly to contest an opponent: these all require explosive power. Endurance is needed to sustain a high intensity of play throughout the game and to recover rapidly from anaerobic bursts. But the physiological adaptations to training for these two qualities are contradictory. This is known as the interference effect. Endurance training leads to adaptations via the activatory mechanism of AMP-activated protein kinase (AMPK): increased mitochondrial biogenesis and aerobic capacity. Power training triggers the mTOR pathway: increased muscle protein synthesis and hypertrophy are the result. Without structuring it concurrently, you will get poor gains in both. An athlete who isn't powerful nor durable. This paper gives a planning structure for managing explosive energy and endurance gain in basketball players. Look into the physical causes of the interference and gives practical, evidence-backed training options to avoid it. Some key strategies that are talked about involve using a structured periodization model made up of macrocycle, mesocycle, and microcycle, integrating high intensity interval training (HIIT) and complex training to get complementary adjustments, and cleverly timing training sessions so as to maximize hormonal responses and recovery periods. Also, athlete monitoring is emphasized in the paper, vertical jump height, repeated sprint ability, and session RPE are used to give objective and subjective feedback for the athlete’s programming. The proposed model is the implementation of an intertwined, periodized, and data informed model, moving past the simple act of concurrent training to create a synergistic program that develops a resilient, powerful, and durable basketball athlete in order to meet the high-level demands of the basketball court.
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Zhao Zhuoqi
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Zhao Zhuoqi (Thu,) studied this question.
www.synapsesocial.com/papers/68d463e931b076d99fa6359f — DOI: https://doi.org/10.63887/jse.2025.1.6.26