about
Assessing the quality of risk factor survey data: lessons from the WHO MONICA Project.Representativeness of participants in a cross-sectional health survey by time of day and day of week of data collection.European Health Examination Survey--towards a sustainable monitoring system.Pattern of declining blood pressure across replicate population surveys of the WHO MONICA project, mid-1980s to mid-1990s, and the role of medication.Standardization of total cholesterol measurement in population surveys--pre-analytic sources of variation and their effect on the prevalence of hypercholesterolaemia.WHO MONICA Project and its Connections to the North Karelia Project.How many longitudinal covariate measurements are needed for risk prediction?Selection bias was reduced by recontacting nonparticipants.Lifetime cumulative risk factors predict cardiovascular disease mortality in a 50-year follow-up study in Finland.Trends in coronary risk factors in the WHO MONICA project.Determinants of 40-year all-cause mortality in the European cohorts of the Seven Countries Study.Contribution of trends in survival and coronary-event rates to changes in coronary heart disease mortality: 10-year results from 37 WHO MONICA project populations. Monitoring trends and determinants in cardiovascular disease.Optimal selection of individuals for repeated covariate measurements in follow-up studies.Effect of sampling frames on response rates in the WHO MONICA risk factor surveys.25-year trends and socio-demographic differences in response rates: Finnish adult health behaviour survey.European health examination surveys – a tool for collecting objective information about the health of the population.Blood pressure profiles, and awareness and treatment of hypertension in Europe – results from the EHES Pilot ProjectTrends in obesity and energy supply in the WHO MONICA ProjectUse of oral contraceptives and hormone replacement therapy in the WHO MONICA projectIncreasing health examination survey participation rates by SMS reminders and flexible examination timesDo self-reported data accurately measure health inequalities in risk factors for cardiovascular disease?
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description
forsker
@nb
onderzoeker
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researcher ORCID ID = 0000-0003-3121-4303
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name
H. Tolonen
@ast
H. Tolonen
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Hanna Tolonen
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Hanna Tolonen
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type
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H. Tolonen
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H. Tolonen
@nl
Hanna Tolonen
@en
Hanna Tolonen
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H. Tolonen
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H. Tolonen
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H. Tolonen
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Hanna Tolonen
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Hanna Tolonen
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P106
P31
P496
0000-0003-3121-4303