Literature DB >> 25418052

Trends in educational inequalities in cause specific mortality in Norway from 1960 to 2010: a turning point for educational inequalities in cause specific mortality of Norwegian men after the millennium?

Bjørn Heine Strand1, Ólöf Anna Steingrímsdóttir, Else-Karin Grøholt, Inger Ariansen, Sidsel Graff-Iversen, Øyvind Næss.   

Abstract

BACKGROUND: Educational inequalities in total mortality in Norway have widened during 1960-2000. We wanted to investigate if inequalities have continued to increase in the post millennium decade, and which causes of deaths were the main drivers.
METHODS: All deaths (total and cause specific) in the adult Norwegian population aged 45-74 years over five decades, until 2010 were included; in all 708,449 deaths and over 62 million person years. Two indices of inequalities were used to measure inequality and changes in inequalities over time, on the relative scale (Relative Index of Inequality, RII) and on the absolute scale (Slope Index of Inequality, SII).
RESULTS: Relative inequalities in total mortality increased over the five decades in both genders. Among men absolute inequalities stabilized during 2000-2010, after steady, significant increases each decade back to the 1960s, while in women, absolute inequalities continued to increase significantly during the last decade. The stabilization in absolute inequalities among men in the last decade was mostly due to a fall in inequalities in cardiovascular disease (CVD) mortality and lung cancer and respiratory disease mortality. Still, in this last decade, the absolute inequalities in cause-specific mortality among men were mostly due to cardiovascular diseases (CVD) (34% of total mortality inequality), lung cancer and respiratory diseases (21%). Among women the absolute inequalities in mortality were mostly due to lung cancer and chronic lower respiratory tract diseases (30%) and CVD (27%).
CONCLUSIONS: In men, absolute inequalities in mortality have stopped increasing, seemingly due to reduction in inequalities in CVD mortality. Absolute inequality in mortality continues to widen among women, mostly due to death from lung cancer and chronic lung disease. Relative educational inequalities in mortality are still on the rise for Norwegian men and women.

Entities:  

Mesh:

Year:  2014        PMID: 25418052      PMCID: PMC4256917          DOI: 10.1186/1471-2458-14-1208

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Why socioeconomic health inequalities persist and even widen in the modern welfare states of Western Europe has been denoted a paradox [1]. Even in the Nordic countries, where the welfare state regime is generous with a focus on equality, there have been widening inequalities in the last decades, both on an absolute and a relative scale [2-4]. The Nordic countries differ from other welfare state regimes [5], and stand out from the other Western European countries with lower level of income inequality, lower prevalence of poverty, generous social security benefits and a health care system mostly publicly funded [6]. Previously, we reported widening educational inequalities (both relative and absolute) in mortality among middle aged Norwegians in the period 1960–2000 [2]. Cardiovascular mortality was the main driver behind the inequalities the whole period. The increase in inequality during the period was driven by cardiovascular mortality in men, and by deaths due to chronic lower respiratory tract diseases and lung cancer in women. We have also reported a flattening of educational inequalities in life expectancy in men after year 2000, while inequalities continue to increase in women [7]. Using national cause specific mortality data, we build on our previous work to examine if the educational inequalities in mortality in Norway have continued to increase after the millennium, and which causes are important regarding the educational inequalities.

Methods

Data was compiled by Statistics Norway and based on individual records from the Norwegian Cause of Death Registry and the National Education Data Base, and linked using the personal identification number unique to every Norwegian resident. Number of person years and numbers of deaths were summed up for each year 1961 to 2010 for those aged 45 to 74 years that individual year. Five decades were constructed by adding up person years and deaths between January 1st and December 31st in the periods 1961–1969, 1970–1979, 1980–1989, 1990–1999, and 2000–2009. The study included 708,449 deaths and 62.3 million person years (Table 1). Data was stratified by gender, five year age groups and in the three educational groups basic, secondary and tertiary. Basic education comprised those with nine years of schooling (seven years in the 1960s), the secondary group comprised those with primary and secondary education (10–12 years), and the tertiary group comprised those with post-secondary education (13+ years; college and university). Data on education was almost complete with only 0.9–1.3% missing all decades. The education stratification for all our analyses, and all decades, is based on Statistics Norway’s revision of 2006, when the definitions were changed to be more in line with international criteria [8]. The new criteria are stricter regarding reaching secondary education, and with the new classification the basic education group increased from 19.0% to 32.8% in 2005, while the secondary education group was reduced from 56.7% to 42.4% [8]. Tertiary education had only a minor change from 24.3% to 24.8%. In this report we have re-analyzed the data from all periods according to the new criteria. Overall, the tertiary educated group increased steadily in size from 6% in the 1960s to 25% in the 2000s in men and from 3% to 22% in women (Table 1).
Table 1

Background table

1960s1970s1980s1990s2000s
Educational level Number of deaths
Men
 Basic5755868257604984329827688
 Secondary1972531488370903502830839
 Tertiary34895532672381619013
 Total807721052771043118648767540
Women
 Basic4353945396383943005420526
 Secondary810513906158851721217450
 Tertiary14191888232632044758
 Total5306361190566055047042734
Number of person years (%)
Men
 Basic3318547 (66)3367182 (56)2726452 (47)2145114 (34)1836114 (25)
 Secondary1437370 (29)2136814 (36)2381412 (41)2907905 (46)3584177 (50)
 Tertiary282055 (6)494505 (8)699045 (12)1203933 (19)1813014 (25)
 Total5037972 (100)5998501 (100)5806909 (100)6256952 (100)7233305 (100)
Women
 Basic4081861 (75)4214395 (65)3544338 (57)2766130 (42)2232559 (31)
 Secondary1149819 (21)1944846 (30)2257147 (36)2867124 (44)3420863 (47)
 Tertiary186186 (3)314531 (5)464903 (7)898462 (14)1639013 (22)
 Total5417866 (100)6473772 (100)6266388 (100)6531716 (100)7292435 (100)
Mortality rate (per 100 000 py), age adjusted
Men
 Basic1618.11742.21713.11557.41302.3
 Secondary1506.91512.61423.11170.3883.1
 Tertiary1320.21224.11041.5803.9574.3
 Total1569.71617.71513.31232.5912.1
Women
 Basic938.1871.4785.7779.9746.4
 Secondary767.5689.2630.3569.5495.9
 Tertiary738.5587.1529.8434.2360.7
 Total895.0802.9710.7640.0542.2

Number of deaths, person years and mortality rate by educational level, period and gender for age 45–74 years.

Background table Number of deaths, person years and mortality rate by educational level, period and gender for age 45–74 years. Causes of death were categorized according to the International Classification of Diseases using the 8th and ninth revision until 1996 and the 10th revision thereafter. Deaths were grouped in seven groups (ICD-10 codes): cancer of lung (C32-C34), other cancer (C00-C32, C35-C97), cardiovascular diseases (I00-I99), suicide (X60-X84), external causes (excluding suicide) (V01-Y89), chronic lower respiratory tract diseases (J40-J47), and other causes. Bridging between versions of ICD-8 to ICD-10 was done using Eurostat’s European Short List of Causes of Death [9].

Statistical methods

Age adjusted mortality rates per 100,000 person years were calculated using the direct method and European standard population weights (ISD1976) [10]. Two regression based indices of inequality were used to take into account the change in educational distribution over the five decades [11]. When studying mortality over time, and in the situation with falling mortality rates across all educational strata, absolute inequalities may be stable over time, while relative inequalities are increasing. Because of this we included both an absolute and a relative measure of inequality, which is recommended when studying health inequalities [12]. The Slope Index of Inequality (SII) is an epidemiological measure of absolute inequality in health applicable to ordinal socioeconomic variables [12], and the corresponding measure on the relative scale is The Relative Index of Inequality (RII). When we refer to results regarding absolute mortality inequalities in the paper it is the SII we refer to, and regarding relative mortality inequalities we refer to the RII. These indices take into account the distribution of educational groups and are useful when comparing social inequalities over time or between countries. These indices can be interpreted as the increased risk of dying related to be on a lower level in the educational hierarchy. To calculate these indices the educational groups were ordered from lowest to highest level of education and each group was assigned a so-called Ridit-score (which is the percentage of the population with higher socioeconomic position, here education) [12]. The Poisson regression model was used to estimate the two inequality indices with 95% confidence intervals, regressing the age adjusted number of deaths (age adjusted rate multiplied with the person years) on the Ridit-score (continuous) and decade (categorical variable) and their interaction terms, specifically for each gender: ln(age adjusted number of deaths)=ln(personyears)+a+b*ridit +c*decade1970+d*decade1980+e*decade1990+f*decade2000 +g*ridit_decade1970+h*ridit_decade1980+i*ridit_decade1990+j*ridit_decade2000 +error, where ln(person years) is the natural logarithm for person years, a is the intercept, b is the coefficient for the Ridit-score, c-f are the coefficients for the decades and g-j are the coefficients for the interaction terms Ridit-score by decade. The SII (for the 1960s) was calculated post-regression (using the nlcom-command in Stata) as a nonlinear combination of the estimated coefficients as: SII_1960 = 100,000*exp([a + b]/a). For other decades, for example 1970, SII was estimated as: SII_1970 = 100,000*exp([a + b + c + g]/[a + c]). A similar approach was used to estimate SII for the other decades using the appropriate decade-variables and the interaction term Ridit-score by decade. To test for differences in SII between decades, combinations of the above estimates were used, for example the difference between 1970 and 1960: SII_1970 - SII_1960. By including the interaction term Ridit-score by decade it was possible to test for difference in SII between decades. For a test of the trend over the whole period a similar model as specified above was used, with decade as a continuous variable labelled 0, 1, 2, 3, 4, where 0 represented 1960s, 1 represented 1970s, and so on. A similar approach as described above was used to estimate the RII, and the estimation was based on the exact same model as used for the SII. The post-regression-calculation is a bit simpler for the RII than the SII because the RII is just the exponentiated Ridit-score-coefficient. Thus, the RII for the 1960s is RII_1960 = exp([b]), and for the subsequent periods the relevant interaction terms are added. Stata version 12 was used for all analyses. The study has been performed with the approval of The Regional Committee for Medical and Health Research Ethics in Norway, and is in compliance with the Helsinki Declaration.

Results

In men, absolute educational inequalities (SII) in total mortality flattened out after year 2000 – in fact there was a 2% non-significant (p = 0.56) drop between the periods 1990–99 and 2000–09 (calculated as: (SII_2000 – SII_1990)/SII_2000 = (1035–1050)/1050 (Table 2). This happened after steadily, significantly increasing absolute inequalities all the way back to the 1960s. In women there was a drop in absolute inequalities from the 1970s to 1980s, but thereafter a steady increase, also after year 2000 (p-value < 0.01). Relative inequalities (RII) increased sharply in men and women in all decades (p < 0.001), except from 1970s to 1980s in women where inequalities were stable (Table 2).
Table 2

Absolute and relative educational inequalities in mortality in Norway over five decades, by gender

MenWomen
DecadeAbsolute inequality* (95% CI)Absolute change in inequality* from previous periodAbsolute inequality* (95% CI)Absolute change in inequality* from previous period
1960s313 (265, 361)376 (336, 416)
1970s626 (583, 670)313 (p < 0.01)427 (395, 458)51 (p = 0.05)
1980s838 (796, 879)211 (p < 0.01)364 (336, 391)−63 (p < 0.01)
1990s1050 (1013, 1087)212 (p < 0.01)495 (470, 519)130 (p < 0.01)
2000s1035 (1005, 1066)−14 (p = 0.561)551 (529, 572)56 (p < 0.01)
P-value for linear trend 0.018 0.025
Men Women
Decade Relative inequality** (95% CI) Change in relative inequality from previous period*** Relative inequality** (95% CI) Change in relative inequality from previous period***
1960s1.21 (1.18, 1.26)1.52 (1.46, 1.59)
1970s1.46 (1.42, 1.50)0.18 (p < 0.01)1.69 (1.63, 1.76)0.11 (p < 0.01)
1980s1.71 (1.67, 1.76)0.16 (p < 0.01)1.67 (1.61, 1.73)−0.01 (p = 0.59)
1990s2.24 (2.18, 2.30)0.27 (p < 0.01)2.14 (2.07, 2.22)0.25 (p < 0.01)
2000s2.95 (2.86, 3.03)0.27 (p < 0.01)2.72 (2.62, 2.82)0.24 (p < 0.01)
P-value for linear trend <0.001 0.013

*Slope Index of Inequality, SII. The number can be interpreted as the difference in absolute risk (unit is deaths per 100,000 person years) of dying related to be on a lower level in the educational hierarchy compared to be at the top.

**Relative Index if Inequality, RII. The number can be interpreted as the mortality incidence rate ratio for those in the lower level in the educational hierarchy relative to those at the top.

***Change in ln(RII). Since RII is estimated on a log-scale, we investigate change using ln(RII) as this converts it to linear scale.

Absolute and relative educational inequalities in mortality in Norway over five decades, by gender *Slope Index of Inequality, SII. The number can be interpreted as the difference in absolute risk (unit is deaths per 100,000 person years) of dying related to be on a lower level in the educational hierarchy compared to be at the top. **Relative Index if Inequality, RII. The number can be interpreted as the mortality incidence rate ratio for those in the lower level in the educational hierarchy relative to those at the top. ***Change in ln(RII). Since RII is estimated on a log-scale, we investigate change using ln(RII) as this converts it to linear scale. Another noteworthy change in the post millennium decade from previous decades was the large drop in absolute inequality in CVD mortality among men; the SII for CVD dropped from 508 to 357 deaths per 100,000 (test of change in absolute inequalities: p < 0.001) (Figure 1a). Since the 1960s CVD has been the largest driver of the absolute educational inequalities in total mortality in both men and women. Overall, there was a drop in CVD mortality for all educational groups the last decades, in both men and women, and in the last decade this drop was greatest in the lowest educational group (Table 3). The impact of educational inequalities in CVD mortality to the total absolute mortality gap by education was reduced from 48% to 34% in men, and from 46% to 27% in women (Figures 1a and b). In men, death inequalities for all other causes increased in the same period (Figure 1a). In women there was a steady decrease in absolute CVD inequalities since the 1970s, and this decrease continued after millennium (test of change in absolute inequalities between 1990–99 and 2000–09: p < 0.001) (Figure 1b).
Figure 1

Absolute inequality (SII) in total and cause specific mortality over five decades (1961–2009), age adjusted. a. Men. Absolute educational inequality* in cause specific mortality for Norwegians aged 45–74 years over five decades (1961–2009), age-adjusted. The total height of the bars represent absolute inequality in all-cause mortality (per 100,000 person years). b. Women. Absolute educational inequality* in cause specific mortality for Norwegians aged 45–74 years over five decades (1961–2009), age-adjusted. The total height of the bars represent absolute inequality in all-cause mortality (per 100,000 person years).

Table 3

Cause specific mortality rates (in 7 cause specific groups) by gender, educational level and period for the ages 45–74 years

1960s1970s1980s1990s2000s
Educational level
1. Lung cancer mortality rate (per 100 000 py), age adjusted
Men
 Basic57.188.3121.8140.7144.7
 Secondary54.176.095.097.491.4
 Tertiary40.152.155.153.745.1
 Total50.472.190.697.293.8
Women
 Basic9.215.330.161.893.8
 Secondary7.914.926.038.349.6
 Tertiary14.112.520.424.326.1
 Total10.414.225.541.556.5
2. COPD mortality rate (per 100 000 py), age adjusted
Men
 Basic21.330.535.445.058.5
 Secondary14.925.125.930.931.3
 Tertiary9.113.911.513.211.7
 Total15.123.224.329.733.9
Women
 Basic6.58.812.828.250.4
 Secondary3.95.08.515.122.1
 Tertiary3.13.06.07.57.3
 Total4.55.69.116.926.6
3. CVD mortality rate (per 100 000 py), age adjusted
Men
 Basic804.4886.6843.7667.2404.4
 Secondary809.0794.2707.9483.7259.7
 Tertiary708.7635.6500.0305.2156.3
 Total774.0772.1683.8485.4273.5
Women
 Basic423.4377.5304.3244.2157.9
 Secondary313.2258.3201.9146.990.7
 Tertiary296.0203.1148.989.252.9
 Total344.2279.6218.4160.1100.5
4. Other cancer mortality rate (per 100 000 py), age adjusted
Men
 Basic296.1318.8321.4321.4289.2
 Secondary283.7299.9303.2290.4253.3
 Tertiary265.9271.0262.9246.7201.7
 Total281.9296.6295.8286.2248.0
Women
 Basic272.5282.6274.8273.9248.3
 Secondary268.0268.8260.4248.1213.9
 Tertiary258.4243.1246.6218.7190.5
 Total266.3264.9260.6246.9217.6
5. External causes mortality rate (per 100 000 py), age adjusted
Men
 Basic79.185.177.367.965.1
 Secondary51.456.855.045.240.5
 Tertiary36.641.737.226.623.2
 Total55.761.256.546.643.0
Women
 Basic19.420.820.517.725.5
 Secondary19.420.818.815.914.7
 Tertiary22.919.017.613.612.4
 Total20.620.219.015.717.5
6. Suicide mortality rate (per 100 000 py), age adjusted
Men
 Basic21.826.836.231.328.5
 Secondary16.722.127.823.318.6
 Tertiary18.622.627.419.314.4
 Total19.023.830.524.620.5
Women
 Basic5.88.012.510.29.5
 Secondary7.210.313.610.48.6
 Tertiary10.314.216.711.39.1
 Total7.710.814.310.69.1
7. Other causes mortality rate (per 100 000 py), age adjusted
Men
 Basic302.5304.4273.9273.0293.0
 Secondary254.1237.1203.7190.3173.8
 Tertiary225.2186.3143.1128.1111.6
 Total260.6242.6206.9197.1192.8
Women
 Basic172.9157.8128.7140.2154.1
 Secondary132.2110.799.691.891.1
 Tertiary115.490.872.966.159.1
 Total140.2119.9100.499.4101.4
Absolute inequality (SII) in total and cause specific mortality over five decades (1961–2009), age adjusted. a. Men. Absolute educational inequality* in cause specific mortality for Norwegians aged 45–74 years over five decades (1961–2009), age-adjusted. The total height of the bars represent absolute inequality in all-cause mortality (per 100,000 person years). b. Women. Absolute educational inequality* in cause specific mortality for Norwegians aged 45–74 years over five decades (1961–2009), age-adjusted. The total height of the bars represent absolute inequality in all-cause mortality (per 100,000 person years). Cause specific mortality rates (in 7 cause specific groups) by gender, educational level and period for the ages 45–74 years Furthermore an important finding is the substantial widening in absolute inequalities in lung cancer and chronic respiratory disease in the post millennium decade among women (test of change in absolute inequalities between 1990–99 and 2000–09: p < 0.001, Figure 1b). In women, this widening gap for these causes is a continuation of a significantly widening trend since the 1980s (test of change in absolute inequalities: p < 0.001 between each decade 1980s to 2000s). In women, educational inequalities in deaths due to lung cancer and chronic respiratory diseases combined constituted 30% of the total absolute mortality inequality in the post millennium decade, and were thereby more important than CVD (27%) regarding the total mortality gap by education (Figure 1b). In comparison, in all previous decades inequalities in deaths from CVD constituted most of the total mortality gap in women (69% in the 1960s, 65% in the 1970s and 1980s, 46% in the 1990s, Figure 1b). Also in men, absolute inequalities in lung cancer and chronic respiratory diseases increased in the last decade 2000–2009, and this increase was significant each decade since the 1970s (lung cancer and chronic respiratory diseases combined constituted 10% of absolute inequalities in total mortality in the 1960s, 9% in the 1970s, 14% in the 1980s and 16% in the 1990s, Figure 1a). In men, these causes combined constituted 21% of the total absolute mortality inequality during 2000–2009, but CVD was still more important (34%), as it was in the previous three decades (43% in the 1970s, 49% in the 1980s and 48% in the 1990s) (Figure 1a). Absolute educational inequalities in external causes and suicide were stable over time in men, and constituted in combination 8% of the total absolute male mortality inequality during 2000–2009. In women the corresponding figure was 4%. Absolute educational inequalities in other cancers and other causes increased after millennium and constituted 37% and 39% of the total educational inequalities in mortality in men and women respectively.

Discussion

For the first time in five decades absolute mortality inequalities have stopped to increase among men, even with a tendency toward a drop the last decade. This levelling out in inequalities among men is mainly due to a large and significant drop in CVD mortality inequalities. Due to falling mortality rates across all educational strata, relative educational inequalities in mortality are still on the rise for Norwegian men and women, as is the case in North, West and East of Europe [13]. For women this increase also holds for absolute inequalities, in line with our previous reports [2, 7]. The impact of educational inequalities in CVD on the total mortality gap was substantially reduced in both men and women the last decade. In women this decrease in inequality started already in the 1990s, but for men, the fall in CVD mortality inequalities was first seen in the last decade. The overall rates of CVD mortality have decreased markedly from 1970s, and particularly marked from the middle of 1980s for ischemic heart disease, especially in men [14]. In both men and women, this fall in CVD mortality was more pronounced in the higher educational groups until year 2000, while from 2000 the fall was greatest in the lowest educational group, leading to flattening educational inequalities in the last decade. For women this CVD-driven drop of inequality was not out-weighted by the large increase in inequalities in deaths from lung cancer and chronic respiratory diseases, resulting in a continued increase of the gap in total mortality between those at the top and bottom in the educational hierarchy. Thus, even if CVD mortality inequalities continued to narrow in women the last decade, inequalities in total mortality increased. A population-based regional Norwegian survey found that the educational trend in serum cholesterol levels weakened significantly between 1994 and 2008 [15]. If these results are nationally representative, this trend predicts cessation of the increase in the educational gap in CVD mortality, consistent with our findings in men. As the decrease in coronary heart disease mortality in the Western countries during the last decades of the last century is related to better treatment [16], more coronary heart disease patients are living with rather than dying from coronary heart disease and thus are at risk of dying of other risk factor-related diseases, especially long term smoking-related diseases such as chronic obstructive pulmonary disease and cancer. Also, smoking cessation affects cardiovascular health more immediately than cancers [17]. Norway has the position as the country in Europe with the largest educational inequalities in smoking [18], and in Norway educational inequalities in smoking have been on the rise since the 1970s [19], with a possible fall after 2009 [20]. It seems that smoking matters more in Norway regarding educational inequalities in total mortality compared with other European countries [21-23]. In Finland there are large educational inequalities in female smoking, and smoking was the main driver behind the increased inequalities in female mortality during 1971–2010, while among men smoking was not as important [24]. Similar findings have been reported in New-Zealand [25]. In South-European countries there are smaller educational inequalities in smoking, which is also reflected in smaller differences in smoking-related deaths [21]. Also in US there seems to be other causes than the smoking, which are driving the increased educational inequalities in mortality [26]. Lung cancer mortality started declining in adult men during the mid 1990s, after steady increase since the 1950s, while in women lung cancer mortality incidence started to increase later, around 1970, and did not decline until 2010 [14, 27]. In line with the world-wide tobacco epidemic described by Lopez et al. in 1994 [28], higher educated people are being affected mostly in the epidemic’s early stages [27, 29]. Those in the higher educational groups were the first to pick up smoking and also the first to abstain or quit [27], especially among women [30]. In men, the prevalence of daily smoking started decreasing around 1970, from 52% in 1973 to 19% in 2010, while in women the corresponding figures were 32% and 19% [31]. Prevalence has continued to decrease to 15% in men and 14% in women in 2013.

Conclusions

In men absolute educational inequalities in total mortality stopped increasing in the post millennium decade seemingly due to a reduction in inequalities in CVD mortality. In women, inequalities (both on the absolute and relative scale) in mortality have continued to widen in Norway after millennium, mostly due to causes of death such as lung cancer and COPD. Educational inequalities in total mortality seem to be moving from CVD mortality being the single most important driver to a more heterogeneous pattern where deaths from several non-communicable diseases contribute. Inequalities in mortality should be monitored closely in the coming years.
  21 in total

1.  Are mortality differences and trends by education any better or worse in New Zealand? A comparison study with Norway, Denmark and Finland, 1980-1990s.

Authors:  Jackie Fawcett; Tony Blakely; Anton Kunst
Journal:  Eur J Epidemiol       Date:  2005       Impact factor: 8.082

2.  [Smoking and social inequality in Norway 1998-2000].

Authors:  Karl Erik Lund; Marianne Lund
Journal:  Tidsskr Nor Laegeforen       Date:  2005-03-03

3.  Socioeconomic inequalities in health in 22 European countries.

Authors:  Johan P Mackenbach; Irina Stirbu; Albert-Jan R Roskam; Maartje M Schaap; Gwenn Menvielle; Mall Leinsalu; Anton E Kunst
Journal:  N Engl J Med       Date:  2008-06-05       Impact factor: 91.245

Review 4.  Measuring the magnitude of socio-economic inequalities in health: an overview of available measures illustrated with two examples from Europe.

Authors:  J P Mackenbach; A E Kunst
Journal:  Soc Sci Med       Date:  1997-03       Impact factor: 4.634

5.  Educational differences in smoking: international comparison.

Authors:  A E Cavelaars; A E Kunst; J J Geurts; R Crialesi; L Grötvedt; U Helmert; E Lahelma; O Lundberg; J Matheson; A Mielck; N K Rasmussen; E Regidor; M do Rosário-Giraldes; T Spuhler; J P Mackenbach
Journal:  BMJ       Date:  2000-04-22

6.  [Socioeconomic differences in smoking cessation among adults].

Authors:  Marianne Lund; Karl Erik Lund; Jostein Rise
Journal:  Tidsskr Nor Laegeforen       Date:  2005-03-03

7.  Trends in inequalities in premature mortality: a study of 3.2 million deaths in 13 European countries.

Authors:  Johan P Mackenbach; Ivana Kulhánová; Gwenn Menvielle; Matthias Bopp; Carme Borrell; Giuseppe Costa; Patrick Deboosere; Santiago Esnaola; Ramune Kalediene; Katalin Kovacs; Mall Leinsalu; Pekka Martikainen; Enrique Regidor; Maica Rodriguez-Sanz; Bjørn Heine Strand; Rasmus Hoffmann; Terje A Eikemo; Olof Östergren; Olle Lundberg
Journal:  J Epidemiol Community Health       Date:  2014-06-25       Impact factor: 3.710

8.  [Tobacco consumption among men and women 1927-2007].

Authors:  Karl Erik Lund; Marianne Lund; Anders Bryhni
Journal:  Tidsskr Nor Laegeforen       Date:  2009-09-24

9.  Mortality in relation to smoking history: 13 years' follow-up of 68,000 Norwegian men and women 35-49 years.

Authors:  A Tverdal; D Thelle; I Stensvold; P Leren; K Bjartveit
Journal:  J Clin Epidemiol       Date:  1993-05       Impact factor: 6.437

10.  Explaining the decrease in U.S. deaths from coronary disease, 1980-2000.

Authors:  Earl S Ford; Umed A Ajani; Janet B Croft; Julia A Critchley; Darwin R Labarthe; Thomas E Kottke; Wayne H Giles; Simon Capewell
Journal:  N Engl J Med       Date:  2007-06-07       Impact factor: 91.245

View more
  17 in total

Review 1.  Socioeconomic Status and Cardiovascular Disease: an Update.

Authors:  Carlos de Mestral; Silvia Stringhini
Journal:  Curr Cardiol Rep       Date:  2017-09-30       Impact factor: 2.931

2.  Prospective register-based study of the impact of immigration on educational inequalities in mortality in Norway.

Authors:  Jon Ivar Elstad; Einar Øverbye; Espen Dahl
Journal:  BMC Public Health       Date:  2015-04-11       Impact factor: 3.295

3.  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

4.  Marital status, educational attainment, and suicide risk: a Norwegian register-based population study.

Authors:  Carine Øien-Ødegaard; Lars Johan Hauge; Anne Reneflot
Journal:  Popul Health Metr       Date:  2021-07-12

5.  The value of general health perception in health equity research: A community-based cohort study of long-term mortality risk (Finnmark cohort study 1987-2017).

Authors:  Knut Fylkesnes; Monika Dybdahl Jakobsen; Nils Oddbjørn Henriksen
Journal:  SSM Popul Health       Date:  2021-06-18

6.  Ethnic inequalities in cancer incidence and mortality: census-linked cohort studies with 87 million years of person-time follow-up.

Authors:  Andrea M Teng; June Atkinson; George Disney; Nick Wilson; Diana Sarfati; Melissa McLeod; Tony Blakely
Journal:  BMC Cancer       Date:  2016-09-26       Impact factor: 4.430

7.  Changes in mortality inequalities over two decades: register based study of European countries.

Authors:  Johan P Mackenbach; Ivana Kulhánová; Barbara Artnik; Matthias Bopp; Carme Borrell; Tom Clemens; Giuseppe Costa; Chris Dibben; Ramune Kalediene; Olle Lundberg; Pekka Martikainen; Gwenn Menvielle; Olof Östergren; Remigijus Prochorskas; Maica Rodríguez-Sanz; Bjørn Heine Strand; Caspar W N Looman; Rianne de Gelder
Journal:  BMJ       Date:  2016-04-11

8.  Educational attainment and differences in relative survival after acute myocardial infarction in Norway: a registry-based population study.

Authors:  Søren Toksvig Klitkou; Knut R Wangen
Journal:  BMJ Open       Date:  2017-08-28       Impact factor: 2.692

9.  Long-term trends of inequalities in mortality in 6 European countries.

Authors:  Rianne de Gelder; Gwenn Menvielle; Giuseppe Costa; Katalin Kovács; Pekka Martikainen; Bjørn Heine Strand; Johan P Mackenbach
Journal:  Int J Public Health       Date:  2016-12-09       Impact factor: 3.380

10.  Association of Clinical and Social Factors With Excess Hypertension Risk in Black Compared With White US Adults.

Authors:  George Howard; Mary Cushman; Claudia S Moy; Suzanne Oparil; Paul Muntner; Daniel T Lackland; Jennifer J Manly; Matthew L Flaherty; Suzanne E Judd; Virginia G Wadley; D Leann Long; Virginia J Howard
Journal:  JAMA       Date:  2018-10-02       Impact factor: 56.272

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.