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논문 기본 정보

자료유형
학술저널
저자정보
박기준 (가야대학교)
저널정보
대한신경치료학회 신경치료 임상인체동작과학회지 제28권 제2호
발행연도
2024.7
수록면
19 - 25 (7page)

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초록· 키워드

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Purpose This study aimed to analyze the current status of rapid weight loss based on sex and to examine the physical and mental challenges faced by elite adolescent taekwondo athletes who competed in both domestic and international events in 2023. Methods The Rapid Weight Loss Questionnaire was used as the survey tool. Taekwondo athletes completed the questionnaire twice within a week after the official competition, and the average values were used as data. The T test was employed to determine the weight loss period and weight loss of Taekwondo athletes based on sex. Additionally, the chi square test was conducted to ascertain whether there were differences in weight loss methods and physical and mental changes. The level of statistical significance was set at P<.05, and data processing was carried out using SPSS version 27. Results The average weight loss period for Taekwondo athletes was 8.85 ± 3.73 days, with an average weight loss of 3.60 ± 0.62 kg. The weight loss period and weight loss amount were similar for male and female athletes. Both sexes used dehydration and food intake restrictions, to achieve weight loss. The physical and mental challenges experienced during weight loss, including lack of energy, dizziness, muscle spasms, irritation, and decreased concentration, were similar for male and female athletes. Both male and female athletes obtained information about weight loss mainly from colleagues, coaches, and the Internet. Conclusion Elite adolescent taekwondo athletes engage in rapid weight loss, leading to similar physical and mental distress across the sexes. Therefore, a safe and systematic weight loss method is necessary.

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