| Literature DB >> 29554881 |
Shenghua Li1, Fei Xu2,3, Jing He3, Zhiyong Wang2, Lap Ah Tse4, Yaqing Xiong5, Daowen Chen6.
Abstract
BACKGROUND: The present association between socioeconomic status (SES) and stroke is positive in developing communities, but it is negative in developed countries where a positive SES-stroke relationship was recorded several decades ago. We hypothesized that the SES-stroke relationship in developing societies mirrors the trajectory of the Western countries at some stage of economic development. This study aimed to examine whether this inflexion is approaching in China.Entities:
Keywords: Family average income; Prevalence; Socioeconomic status; Stroke
Mesh:
Year: 2018 PMID: 29554881 PMCID: PMC5859657 DOI: 10.1186/s12889-018-5279-y
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Selected socio-demographic characteristics of participants in survey 2000 and 2011 in Nanjing, China
| Variables | Survey 2000 ( | Survey 2011 ( | |
|---|---|---|---|
| % (n) | % (n) | ||
| Age (yrs) | |||
| 35–49 | 44.3 (8793) | 40.3 (3154) | < 0.01 |
| 50–64 | 34.5 (6849) | 34.0 (2662) | |
| 65+ | 21.2 (4219) | 25.7 (2008) | |
| Gender | |||
| Female | 50.3 (9990) | 49.4 (3867) | 0.68 |
| Male | 49.7 (9871) | 50.6 (3957) | |
| Educational attainment (yrs) | |||
| 0–9 | 54.6 (10849) | 59.8 (4681) | < 0.01 |
| 10–12 | 25.2 (4996) | 24.6 (1928) | |
| 13+ | 20.2 (4016) | 15.5 (1215) | |
| Occupationa | |||
| Blue collar | 51.2 (10178) | 49.7 (3889) | 0.01 |
| White collar | 48.8 (9683) | 50.3 (3935) | |
| Healthcare insurance | |||
| Insured | 71.9 (14282) | 75.3 (5894) | < 0.01 |
| Non-insured | 28.1 (5579) | 24.7 (1930) | |
| FAI (¥/m) | 551.3 ± 426.7 | 1575.6 ± 1243.2 | < 0.001 |
aBlue collar = farmer, factory worker, forestry worker, fisher and military person, salespeople, house worker and vehicle driver; White collar = office worker, teacher, doctor and academic researcher, government officer
bChi-square test was calculated to compare the categorical socio-demographic characteristics of participants
Prevalence of self-reported stroke by age and gender among urban residents in 2000 and 2011 in Nanjing, China
| Variables | Prevalence of self-reported stroke (%, n) | |
|---|---|---|
| Survey 2000 ( | Survey 2011 ( | |
| Overall | ||
| 2.1 (416) | 5.1 (400) | |
| Age (yrs) | ||
| 35–49 | 0.1 (13) | 0.7 (21) |
| 50–64 | 1.8 (125) | 4.7 (124) |
| 65+ | 6.6 (278) | 12.7 (255) |
| Gender | ||
| Women | 1.7 (171) | 4.3 (168) |
| Men | 2.5 (245) | 5.9 (232) |
| Education (yrs) | ||
| 0–9 | 2.1 (232) | 5.7 (267) |
| 10–12 | 1.4 (70) | 4.2 (81) |
| 13+ | 2.8 (114) | 4.3 (52) |
| Occupation† | ||
| Blue collar | 0.9 (91) | 2.3 (88) |
| White collar | 3.4 (325) | 7.9 (312) |
| Healthcare payment | ||
| Insured | 2.4 (342) | 5.8 (344) |
| Non-insured | 1.3 (74) | 2.9 (56) |
†Blue collar = farmer, factory worker, forestry worker, fisher and military person, salespeople, house worker and vehicle driver; White collar = office worker, teacher, doctor and academic researcher, government officer
The relationship between family average income and self-reported stroke prevalence in 2000 and 2011 among urban residents in Nanjing, China
| The S2000 study | The S2011 study | P value for comparison of ORs between S2000 and S2011b | P value for comparison of Adjusted ORs between S2000 and S2011b | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Variables | FAI Category | Stroke (% and n) | Unadjusted Odds ratio (95%CI) | Adjusted Odds ratioa (95%CI) | Stroke (% and n) | Unadjusted Odds ratio (95%CI) | Adjusted Odds ratioa (95%CI) | ||
| Overall | |||||||||
| Lower | 1.1 (79) | 1 | 1 | 3.5 (103) | 1 | 0.022 | 0.031 | ||
| Middle | 2.3 (144) | 2.06 (1.57,2.72) | 1.46 (1.07,1.97) | 5.5 (130) | 1.60 (1.23,2.08) | 1.37 (1.01,1.88) | |||
| Higher | 2.9 (193) | 2.65 (2.04,3.45) | 1.66 (1.19,2.32) | 6.7 (167) | 1.99 (1.55,2.56) | 1.49 (1.09,2.03) | |||
| Age (yrs) | |||||||||
| 35–49 | |||||||||
| Lower | 0.3 (10) | 1 | 1 | 0.6 (8) | 1 | 0.580 | 0.448 | ||
| Middle | 0.1 (3) | 0.41 (0.11,1.50) | 0.34 (0.09,1.36) | 0.6 (5) | 1.02 (0.33,3.14) | 1.33 (0.41,4.34) | |||
| Higher | 0.0 (0) | 0 | 0 | 0.9 (8) | 1.59 (0.60,4.25) | 2.17 (0.69,6.81) | |||
| 50–64 | |||||||||
| Lower | 1.2 (23) | 1 | 1 | 3.7 (31) | 1 | 0.041 | 0.043 | ||
| Middle | 2.2 (50) | 1.87 (1.14,3.07) | 1.51 (0.89,2.56) | 5.0 (48) | 1.37 (0.87,2.18) | 1.18 (0.69,2.01) | |||
| Higher | 2.0 (52) | 1.69 (1.03,2.78) | 1.41 (0.79,2.52) | 5.3 (45) | 1.46 (0.91,2.33) | 1.16 (0.66,2.03) | |||
| 65+ | |||||||||
| Lower | 3.3 (46) | 1 | 1 | 9.1 (64) | 1 | 0.004 | 0.013 | ||
| Middle | 6.9 (91) | 2.19 (1.52,3.15) | 1.69 (1.13,2.52) | 13.8 (77) | 1.60 (1.13,2.28) | 1.50 (0.99, 2.29) | |||
| Higher | 9.4 (141) | 3.05 (2.17,4.28) | 2.21 (1.43,3.42) | 15.2 (114) | 1.80 (1.30,2.49) | 1.58 (1.06,2.35) | |||
| Gender | |||||||||
| Women | |||||||||
| Lower | 0.9 (32) | 1 | 1 | 3.1 (45) | 1 | 0.014 | 0.011 | ||
| Middle | 1.9 (58) | 2.15 (1.39,3.32) | 1.88 (1.17,3.03) | 4.1 (52) | 1.33 (0.89,2.00) | 1.39 (0.85,2.26) | |||
| Higher | 2.5 (81) | 2.88 (1.91,4.35) | 2.21 (1.30,3.74) | 6.1 (71) | 2.02 (1.38,2.96) | 1.74 (1.06,2.84) | |||
| Men | |||||||||
| Lower | 1.4 (47) | 1 | 1 | 3.8 (58) | 1 | 0.032 | 0.052 | ||
| Middle | 2.7 (86) | 1.97 (1.38,2.82) | 1.21 (0.82,1.81) | 7.0 (78) | 1.88 (1.33,2.67) | 1.33 (0.88,2.00) | |||
| Higher | 3.4 (112) | 2.46 (1.74,3.47) | 1.36 (0.88,2.11) | 7.2 (96) | 1.95 (1.40,2.73) | 1.23 (0.82,1.85) | |||
aMixed-effects logistic regression models were used to calculate odds ratios with adjustment for age, gender, education, occupation, healthcare payment, BMI, smoking, alcohol drinking, red-meat consumption, diabetes, high blood pressure, leisure-time physical activity and survey area (potential clustering effects at survey area level)
bLogistic regression models were used to make comparison of ORs between the two studies, with stroke as the outcome variable, FAI, survey (S2000/S2011) and the FAI-by-survey interaction term as the explanatory variables. For the comparison of Adjusted ORs between tow studies, all related potential confounders were controlled in analysis