| Literature DB >> 29127232 |
Sophie W Galson1,2, Catherine A Staton1,2,3, Francis Karia4, Kajiru Kilonzo5, Joseph Lunyera6, Uptal D Patel7, Julian T Hertz1,2, John W Stanifer2,8.
Abstract
INTRODUCTION: Sub-Saharan Africa is particularly vulnerable to the growing global burden of hypertension, but epidemiological studies are limited and barriers to optimal management are poorly understood. Therefore, we undertook a community-based mixed-methods study in Tanzania to investigate the epidemiology of hypertension and barriers to care.Entities:
Keywords: Health Disparities; Hypertension; Non-communicable diseases; Qualitative research
Mesh:
Substances:
Year: 2017 PMID: 29127232 PMCID: PMC5695455 DOI: 10.1136/bmjopen-2017-018829
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Baseline characteristics for the quantitative study
| Variable (n, %) | Total | Normotensive (n=332) | Hypertensive | P value |
| Gender | 0.12 | |||
| Male | 123 (25.6%) | 78 (23.5%) | 45 (30.2%) | |
| Female | 358 (74.4%) | 254 (76.5%) | 104 (69.8%) | |
| Age | <0.01 | |||
| 18–39 years | 172 (35.8%) | 152 (45.8%) | 20 (13.4%) | |
| 40–59 years | 191 (39.7%) | 132 (39.8%) | 59 (39.6%) | |
| 60+ years | 118 (24.5%) | 48 (14.5%) | 70 (47.0%) | |
| Ethnicity | 0.40 | |||
| Chagga | 288 (59.9%) | 193 (58.1%) | 95 (63.7%) | |
| Pare | 66 (13.7%) | 51 (15.4%) | 15 (10.1%) | |
| Sambaa | 27 (5.6%) | 20 (6.0%) | 7 (4.7%) | |
| Other* | 100 (20.8%) | 68 (20.5%) | 32 (21.5%) | |
| Education | <0.01 | |||
| None | 31 (6.4%) | 11 (3.31%) | 20 (13.4%) | |
| Primary | 349 (72.6%) | 246 (74.1%) | 103 (69.1%) | |
| Secondary | 74 (15.4%) | 54 (16.3%) | 20 (13.4%) | |
| Postsecondary | 27 (5.6%) | 21 (6.3%) | 6 (4.03%) | |
| Occupation | <0.01 | |||
| Unemployed† | 74 (15.4%) | 55 (16.6%) | 19 (12.8%) | |
| Farmer/wage earner | 199 (41.4%) | 135 (40.7%) | 64 (43.0%) | |
| Small business/vendors | 158 (32.8%) | 121 (36.5%) | 37 (24.8%) | |
| Professional‡ | 50 (10.4%) | 21 (6.3%) | 29 (19.5%) | |
| Lifestyle practices | ||||
| Ongoing tobacco use | 50 (10.4%) | 34 (10.2%) | 16 (10.7%) | 0.87 |
| Ongoing alcohol use | 198 (41.2%) | 121 (36.4%) | 77 (51.7%) | 0.02 |
| Traditional medicine use | 272 (56.6%) | 196 (59.0%) | 76 (51.0%) | 0.10 |
| Self-reported medical history | ||||
| Diabetes | 61 (12.7%) | 29 (8.7%) | 32 (21.5%) | <0.01 |
| Hypertension | 134 (28.0%) | 62 (18.8%) | 72 (48.3%) | <0.01 |
| Stroke | 8 (1.7%) | 2 (0.6%) | 6 (4.0%) | 0.01 |
| Heart disease§ | 18 (3.7%) | 7 (2.1%) | 7 (4.7%) | 0.08 |
| Kidney disease | 14 (2.9%) | 10 (3.0%) | 4 (2.7%) | 0.84 |
*Other tribal ethnicities represented in our groups include Luguru, Kilindi, Kurya, Mziguwa, Mnyisanzu, Rangi, Jita, Nyambo, and Kaguru
†Includes housewives and students
‡Professional includes any salaried position (eg, nurse, teacher, government employee, etc) and retired persons
§Heart Disease includes coronary disease, heart failure, or structural diseases
Baseline characteristics for the qualitative study
| Study population | FGD1 | FGD2 | FGD3 | FGD4 | FGD5 | In-depth interviews |
| Clinic patients | General | Clinic | General population | Medical doctors | Patients from healers and vendors | |
| Participants (N) | 15 | 12 | 16 | 12 | 4 | 11 |
| Gender | ||||||
| Male | 0 (0%) | 0 (0%) | 16 (100%) | 12 (100%) | 2 (50%) | 5 (45%) |
| Female | 15 (100%) | 12 (100%) | 0 (0%) | 0 (0%) | 2 (50%) | 6 (55%) |
| Age range (years) | 25–61 | 26–65 | 18–70 | 18–74 | 30–36 | 19–60 |
| Ethnicity | ||||||
| Chagga | 11 (73%) | 9 (75%) | 11 (69%) | 4 (33%) | 2 (50%) | 2 (18%) |
| Pare | 2 (13%) | 2 (17%) | 2 (13%) | 5 (42%) | 0 | 0 |
| Maasai | 0 | 0 | 0 | 0 | 0 | 4 (36%) |
| Sambaa | 1 (7%) | 1 (8%) | 1 (6%) | 0 | 0 | 3 (27%) |
| Other* | 1 (7%) | 0 | 2 (13%) | 3 (25%) | 2 (50%) | 2 (18%) |
| Education | ||||||
| None | 0 | 0 | 0 | 0 | 0 | 2 (18%) |
| Primary | 11 (73%) | 10 (83%) | 10 (63%) | 3 (25%) | 0 | 4 (36%) |
| Secondary | 3 (20%) | 2 (17%) | 5 (31%) | 6 (50%) | 0 | 1 (9%) |
| University | 1 (7%) | 0 | 1 (6%) | 3 (25%) | 4 (100%) | 4 (36%) |
| Occupation | ||||||
| Unemployed† | 2 (13%) | 4 (33%) | 0 | 1 (8%) | 0 | 3 (27%) |
| Student | 0 | 0 | 4 (25%) | 5 (42%) | 0 | 0 |
| Farmer/wage earner | 4 (27%) | 3 (25%) | 8 (50%) | 3 (25%) | 0 | 5 (45%) |
| Small business | 3 (20%) | 2 (17%) | 3 (19%) | 2 (17%) | 0 | 1 (9%) |
| Professional‡ | 4 (27%) | 3 (25%) | 1 (6%) | 1 (8%) | 4 (100%) | 2 (18%) |
| Religion | ||||||
| Roman Catholic | 5 (33%) | 5 (42%) | 8 (50%) | 1 (8%) | 3 (75%) | 7 (64%) |
| Lutheran | 6 (40%) | 4 (33%) | 4 (25%) | 2 (17%) | 0 | 1 (9%) |
| Christian Evangelical | 1 (7%) | 1 (8%) | 2 (13%) | 5 (42%) | 1 (25%) | 1 (9%) |
| Christian (other) | 2 (13%) | 0 | 0 | 0 | 0 | 0 |
| Islam | 1 (7%) | 2 (17%) | 2 (13%) | 4 (33%) | 0 | 2 (18%) |
| Residence | ||||||
| Urban | 9 (60%) | 11 (92%) | 10 (83%) | 12 (100%) | 4 (100%) | 9 (82%) |
| Rural | 6 (40%) | 1 (8%) | 2 (17%) | 0 (0%) | 0 (0%) | 2 (18%) |
*Other tribal ethnicities represented in our groups include Luguru, Kilindi, Kurya, Mziguwa, Mnyisanzu, Rangi, Jita, Nyambo, and Kaguru
†Includes housewives and students
‡Professional includes any salaried position (eg, nurse, teacher, government employee, etc) and retired persons
FGD, focus group discussion.
Figure 1Reported reasons for using traditional medicines among participants with hypertension.
Associations between lifestyle factors and hypertension; Comprehensive Kidney Disease Assessment for Risk Factors, Epidemiology, Knowledge and Attitudes, 2015
| Variables | Prevalence risk ratios (95% CI) | |
| Unadjusted | Adjusted* | |
| Ongoing tobacco use | 1.25 (0.75 to 2.10) | 0.68 (0.41 to 1.14) |
| Traditional medicine use | ||
| Ongoing alcohol use | ||
| Overweight/obese | 1.00 (0.57 to 1.74) | 1.28 (0.84 to 1.97) |
| Urban residence | 0.58 (0.34 to 1.00) | 0.85 (0.59 to 1.22) |
Bold data indicates significance at the 5% level.
*Adjusted for age, gender and ethnicity.
Figure 2Conceptual model describing the hypothesised relationship between disease understanding and hypertension outcomes.