2018
DOI: 10.1016/j.ssmph.2018.01.003
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Gender differences in the pathways from childhood disadvantage to metabolic syndrome in adulthood: An examination of health lifestyles

Abstract: We investigate whether socioeconomic status (SES) in childhood shapes adult health lifestyles in domains of physical activity (leisure, work, chores) and diet (servings of healthy [i.e., nutrient-dense] vs. unhealthy [energy-dense] foods). Physical activity and food choices vary by gender and are key factors in the development of metabolic syndrome (MetS). Thus, we examined gender differences in the intervening role of these behaviors in linking early-life SES and MetS in adulthood. We used survey data (n = 10… Show more

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Cited by 20 publications
(17 citation statements)
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“…First, only in girls, a significant and negative association between physical activity level and age was observed; second, the negative relationship between SVI with both fitness and cognitive performance was stronger in girls than in boys, and third, SVI was associated positively with BMIz, but particularly in girls. Therefore, these outcomes highlight an early stage sex gap (41,69) and demonstrate the relevance and priority for implementing programs to promote healthy lifestyles (increase physical activity, fitness, and prevent obesity), emphasising opportunities to girls (75,76).…”
Section: Sex Differencesmentioning
confidence: 97%
“…First, only in girls, a significant and negative association between physical activity level and age was observed; second, the negative relationship between SVI with both fitness and cognitive performance was stronger in girls than in boys, and third, SVI was associated positively with BMIz, but particularly in girls. Therefore, these outcomes highlight an early stage sex gap (41,69) and demonstrate the relevance and priority for implementing programs to promote healthy lifestyles (increase physical activity, fitness, and prevent obesity), emphasising opportunities to girls (75,76).…”
Section: Sex Differencesmentioning
confidence: 97%
“…Although health lifestyle theory suggests that lifestyles are a key determinant of health, social class may be the underlying explanation for any association between midlife health lifestyles and health outcomes. The fact that class circumstances have a powerful association with health lifestyles is seen in the enduring and positive correlation between multiple operationalizations of social class, health, and health behaviors (Clouston, Richards, Caadar, & Hofer, 2015;Cockerham, 2005Cockerham, , 2013aCockerham, , 2013bJones et al, 2011;Lee et al, 2018;McGovern & Nazroo, 2015;Missinne, Daenekindt, & Bracke, 2015). Social class is typically measured with indicators of SES like family income, educational attainment, and occupational status.…”
Section: Theoretical Frameworkmentioning
confidence: 99%
“…Currently, we do not have a definitive answer for this question because relatively little research on health lifestyles has examined late middle age (for two notable exceptions, see Burgard, Lin, Segal, Elliott, & Seelye, 2018;Shaw, McGeever, Vasquez, Agahi, & Fors, 2014). Our current knowledge is largely concentrated in the earlier half of the life course, namely, childhood and adolescence (Burdette, Needham, Harper, & Hill, 2017;Daw, Margolis, & Wright, 2017;Lawrence, Mollborn, & Hummer, 2017;Lee, Tsenkova, Boylan, & Ryff, 2018; Mollborn, James-Hawkins, Lawrence, & Fomby, 2014;…”
mentioning
confidence: 99%
“…First, the associations observed in this study are likely to be explained, in part, by societal processes, such as disinvestments in areas of concentrated disadvantage, 41 and related sex-specific health behaviors, such as physical activity and diet. 42 We lacked data on the full complement of health behaviors relevant to cardiometabolic dysfunction, and the available variables (eg, physical activity) were subject to errors inherent in large epidemiologic surveys. However, these errors likely occurred at random; thus, our estimates were likely to be conservative.…”
Section: Limitationsmentioning
confidence: 99%