about
Do people with risky behaviours participate in biomedical cohort studies?Risk factors, health effects and behaviour in older people during extreme heat: a survey in South AustraliaWeighting of the data and analytical approaches may account for differences in overcoming the inadequate representativeness of the respondents to the third wave of a cohort study.Population attributable risk (PAR) of overweight and obesity on chronic diseases: South Australian representative, cross-sectional data, 2004-2006.A population-based cross-sectional study that defined normative population data for the Life-Space Mobility Assessment-composite score.Methodological issues associated with collecting sensitive information over the telephone--experience from an Australian non-suicidal self-injury (NSSI) prevalence study.Mental ill-health across the continuum of body mass index.Reliability of self-reported health risk factors and chronic conditions questions collected using the telephone in South Australia, Australia.Ten-year trends in major lifestyle risk factors using an ongoing population surveillance system in Australia.Relationships between body mass index, mental health, and suicidal ideation: population perspective using two methods.The North West Adelaide Health Study: detailed methods and baseline segmentation of a cohort for selected chronic diseases.Measuring social capital in a known disadvantaged urban community--health policy implicationsA survey of retirement intentions of Baby Boomers: an overview of health, social and economic determinants.Underdiagnosed asthma in South Australia.Effect of social mobility in family financial situation and housing tenure on mental health conditions among South Australian adults: results from a population health surveillance system, 2009 to 2011.Pre-Survey Text Messages (SMS) Improve Participation Rate in an Australian Mobile Telephone Survey: An Experimental Study.Population comparison of two clinical approaches to the metabolic syndrome: implications of the new International Diabetes Federation consensus definition.Gender differences in asthma prevalence: variations with socioeconomic disadvantage.Who provides care for people dying of cancer? A comparison of a rural and metropolitan cohort in a South Australian bereaved population study.Health Estimates Using Survey Raked-Weighting Techniques in an Australian Population Health Surveillance System.Measuring physical inactivity: do current measures provide an accurate view of "sedentary" video game time?Prevalence of influenza immunisation in Australia and suggestions for future targeting of campaigns.Are baby boomers booming too much?Suicidal ideation in a random community sample: attributable risk due to depression and psychosocial and traumatic events.Association between soft drink consumption and asthma and chronic obstructive pulmonary disease among adults in Australia.How valid are self-reported height and weight? A comparison between CATI self-report and clinic measurements using a large cohort study.Population attributable risk of major depression for suicidal ideation in a random and representative community sample.Uncovering an invisible network of direct caregivers at the end of life: a population study.The use of chronic disease risk factor surveillance systems for evidence-based decision-making: physical activity and nutrition as examples.Population-attributable risk of childhood sexual abuse for symptoms of depression and suicidal ideation in adulthood.Have education and publicity about depression made a difference? Comparison of prevalence, service use and excess costs in South Australia: 1998 and 2004.Factors associated with gamblers: a population-based cross-sectional study of South Australian adults.Beware the pitfalls of ill-placed questions - revisiting questionnaire ordering.Coexistent chronic conditions and asthma quality of life: a population-based study.Bipolar I and II disorders in a random and representative Australian population.Subsyndromal depression: prevalence, use of health services and quality of life in an Australian population.Heat-health behaviours of older people in two Australian statesMonosodium glutamate intake increases hemoglobin level over 5 years among Chinese adultsDo trial-and-error practices and the use of the internet influence how medicines are used?Self reported overall health status: Implications for intervention strategies
P50
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P50
description
hulumtuese
@sq
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Eleonora Dal Grande
@ast
Eleonora Dal Grande
@en
Eleonora Dal Grande
@es
Eleonora Dal Grande
@sl
type
label
Eleonora Dal Grande
@ast
Eleonora Dal Grande
@en
Eleonora Dal Grande
@es
Eleonora Dal Grande
@sl
prefLabel
Eleonora Dal Grande
@ast
Eleonora Dal Grande
@en
Eleonora Dal Grande
@es
Eleonora Dal Grande
@sl
P106
P1153
6602304967
P21
P31
P496
0000-0002-5919-3893