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In-Whi Hwang; Soo-Ji Hwang; Jun-Hao Shen; Jisu Kim; Jung-Min Lee – Measurement in Physical Education and Exercise Science, 2025
This study examined the impact of Catch-Up Sleep Ratio (CSR) on health outcomes in Korean adults. Adjusted for age and gender, 2,484 participants were categorized into three groups: Weekday (CSR <1.0), Average (1.0 = CSR < 1.5), and Weekend (1.5 = CSR). Weekday participants were less likely to meet WHO's moderate physical activity guidelines…
Descriptors: Foreign Countries, Sleep, Adults, Age Differences
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Siegel, S. R.; True, L.; Pfeiffer, K. A.; Wilson, J. D.; Martin, E. M.; Branta, C. F.; Pacewicz, C.; Battista, R. A. – Measurement in Physical Education and Exercise Science, 2021
Sexual maturation is one method by which researchers account for developmental timing during growth. In a longitudinal motor performance study (MPS), mothers reported their own recalled age at menarche and their daughters.' Approximately twenty years later, a sample of those daughters provided their recalled age at menarche. Study purposes were to…
Descriptors: Maturity (Individuals), Females, Physiology, Mothers
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Nielson, David E.; George, James D.; Vehrs, Pat R.; Hager, Ron L.; Webb, Carrie V. – Measurement in Physical Education and Exercise Science, 2010
The purpose of this study was to develop a multiple linear regression model to predict treadmill VO[subscript 2max] scores using both exercise and non-exercise data. One hundred five college-aged participants (53 male, 52 female) successfully completed a submaximal cycle ergometer test and a maximal graded exercise test on a motorized treadmill.…
Descriptors: Metabolism, Body Composition, Physical Activities, Predictor Variables
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Nagasawa, Yoshinori; Demura, Shinichi – Measurement in Physical Education and Exercise Science, 2009
This study aimed to examine the age and sex differences in controlled force exertion measured by the bar chart display in 207 males (age 42.1 [plus or minus] 19.8 years) and 249 females (age 41.7 [plus or minus] 19.1 years) aged 15 to 86 years. The subjects matched their submaximal grip strength to changing demand values, which appeared as a…
Descriptors: Intervals, Statistical Analysis, Gender Differences, Comparative Analysis
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Vanderburgh, Paul M.; Laubach, Lloyd L. – Measurement in Physical Education and Exercise Science, 2007
The adverse effect of increasing age and/or body weight on distance run performance has been well documented. Accordingly, nearly all five kilometer (5K) road races employ age categories and, sometimes, a heavier body weight classification. Problems with such conventions include small numbers of runners within older age categories and the…
Descriptors: Physiology, Physical Activities, Body Weight, Models
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George, James D.; Bradshaw, Danielle I.; Hyde, Annette; Vehrs, Pat R.; Hager, Ronald L.; Yanowitz, Frank G. – Measurement in Physical Education and Exercise Science, 2007
The purpose of this study was to develop an age-generalized regression model to predict maximal oxygen uptake (VO sub 2 max) based on a maximal treadmill graded exercise test (GXT; George, 1996). Participants (N = 100), ages 18-65 years, reached a maximal level of exertion (mean plus or minus standard deviation [SD]; maximal heart rate [HR sub…
Descriptors: Metabolism, Body Composition, Multiple Regression Analysis, Error of Measurement