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  • 1
    ISSN: 1360-0443
    Quelle: Blackwell Publishing Journal Backfiles 1879-2005
    Thema: Medizin , Psychologie
    Notizen: Aims. To investigate the relative validity of retrospectively calculated pack-years (py-retro) by comparing py-retro with prospectively calculated pack-years (py-pro). 
Design. A 23-year ongoing cohort study (1977-2000). 
Participants. One hundred and fifty-four males and females, 13 years old in 1977 and 36 years old in 2000. 
Setting. Amsterdam, the Netherlands. 
Measurements. To calculate py-pro, current smoking and quitting efforts were investigated nine times in a period of 23 years with the help of an interview or a questionnaire. At the age of 36, subjects filled out a comprehensive questionnaire about their smoking history, to calculate py-retro. Individual differences between py-pro and py-retro were calculated. In addition, Cohen's kappa was calculated after categorising py-pro and py-retro into three groups. 
Findings. (1) Py-retro does not under- or overestimate life-time tobacco smoking. (2) The relative validity of py-retro was moderate due to large individual differences between py-pro and py-retro. (3) The individual differences between py-pro and py-retro became larger, the higher the number of pack-years. (4) Mean difference (and 95% limits of agreement) between py-pro and py-retro was -0.039 (-5.23, 5.32) when average pack-years was 〈5.2 and -1.17 (-10.00, 14.65) when pack-years ≥5.2. 5. Cohen's kappa between categorized py-pro and py-retro was 0.79. 
Conclusions. Future researchers in the field of smoking should be aware of the moderate relative validity of py-retro. Categorizing py-retro into smoking groups results in a misclassification error that is smaller than the quantitative error in continuous py-retro, but goes together with a loss of information.
    Materialart: Digitale Medien
    Standort Signatur Einschränkungen Verfügbarkeit
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  • 2
    ISSN: 1439-6327
    Schlagwort(e): Key words Running economy ; Aerobic power ; Scaling ; Longitudinal study
    Quelle: Springer Online Journal Archives 1860-2000
    Thema: Medizin
    Notizen: Abstract The purpose of this study was to describe the longitudinal development of running economy [defined as the oxygen uptake (V˙O2) at a submaximal running speed] in males and females from teenage to young adult age using data from the Amsterdam Growth and Health Study. Submaximal V˙O2 (in ml · kg−1· min−1) was measured in 84 males and 98 females while they ran on a treadmill at a constant speed of 8 km · h−1 for 6 min at three different treadmill slopes (0%, 2.5% and 5%). This test was carried out six times, on the same subjects at the ages of 13, 14, 15, 16, 21, and 27 years. The longitudinal development of running economy in males and females was analysed using a two-way analysis of variance for repeated measurements. At all three slopes, a significant decrease in V˙O2 with increasing age was found for both males and females, implying a significant increase in running economy for both sexes. Males showed significantly higher V˙O2 values than females at all ages measured and for all three slopes, suggesting that females have a significantly higher running economy than males. In order to make a better comparison of the V˙O2 of individuals of different sizes, allometric models were used; power function ratios were constructed in which body mass was expressed to an exponential power. Following this analysis the difference in submaximal V˙O2 and running economy between males and females appeared even larger.
    Materialart: Digitale Medien
    Standort Signatur Einschränkungen Verfügbarkeit
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