Literature DB >> 18775813

Effects of age, period and cohort on stroke mortality among a middle-aged Lithuanian urban population from 1980 to 2004.

Regina Reklaitiene1, Vytautas Janilionis, Marius Noreika, Abdonas Tamosiūnas, Dalia Virviciūte, Diana Sopagiene.   

Abstract

AIMS: The main purpose of this paper was to assess the effect of age, period, and cohort on stroke mortality rates among a Lithuanian urban population aged 25-64 years (1041 men and 724 women) between 1980 and 2004.
METHODS: Routine stroke mortality data were obtained from official Kaunas region mortality register by codes 430-438 and I60-I69 in the 9th and in the 10th revisions of the International Classifications of Diseases (ICD), respectively. Mortality rates per 100,000 persons for men and women were age-adjusted using the age distribution of the European Standard Population. Age-specific mortality rates were analysed by sex, period, and birth cohort in eight 5-year age groups and five 5-year age groups. Goodness of fit of the Poisson regression models were evaluated using Pearson and Freeman-Tukey residuals. The age-period and age-period-cohort models provided a significantly better fit than a model with the factors "age'' and "cohort''.
RESULTS: During the study period, mortality rates decreased from 46.8 to 33.0 per 100,000 for men, and from 20.2 to 18.1 per 100,000 for women (average annual decrease of -1.3%, p<0.1 for men, and -1.6%, p<0.03 for women). An age effect was present in both sexes. The definite upward period effect was observed from 1990 to 1994 both among men and women, and was followed by a sharp fall during 2000-4. Cohort and period effects have contained relevant information which partially explained trends in stroke mortality among a 25-64 year-old Lithuanian urban population.
CONCLUSIONS: During the period of 1980-2004, the mortality trend declined among women only. The period effect contains relevant information for the explanation of increasing mortality rates during 2000-4 among men and women. The Poisson regression models could be applied for the examination and explanation of the different causes of the population mortality.

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Year:  2008        PMID: 18775813     DOI: 10.1177/1403494807089652

Source DB:  PubMed          Journal:  Scand J Public Health        ISSN: 1403-4948            Impact factor:   3.021


  1 in total

1.  Trends in major risk factors and mortality from main non-communicable diseases in Lithuania, 1985-2013.

Authors:  Abdonas Tamosiunas; Jurate Klumbiene; Janina Petkeviciene; Ricardas Radisauskas; Olga Vikhireva; Dalia Luksiene; Dalia Virviciute
Journal:  BMC Public Health       Date:  2016-08-04       Impact factor: 3.295

  1 in total

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