| Literature DB >> 29276616 |
M Ramsay1,2, N Crowther3, E Tambo1, G Agongo1,2,4, V Baloyi5, S Dikotope6, X Gómez-Olivé7, N Jaff3,8, H Sorgho9, R Wagner7, C Khayeka-Wandabwa10, A Choudhury1, S Hazelhurst1,11, K Kahn7,12, Z Lombard1,2, F Mukomana1, C Soo1, H Soodyall2, A Wade7, S Afolabi7, I Agorinya4, L Amenga-Etego4, S A Ali1, J D Bognini9, R P Boua9, C Debpuur4, S Diallo9, E Fato4, A Kazienga9, S Z Konkobo9, P M Kouraogo9, F Mashinya6, L Micklesfield5, S Nakanabo-Diallo9, B Njamwea10, E Nonterah4, S Ouedraogo9, V Pillay1,2, A M Somande9, P Tindana4, R Twine7, M Alberts6, C Kyobutungi10, S A Norris5, A R Oduro4, H Tinto9, S Tollman7,12, O Sankoh8,12,13.
Abstract
Africa is experiencing a rapid increase in adult obesity and associated cardiometabolic diseases (CMDs). The H3Africa AWI-Gen Collaborative Centre was established to examine genomic and environmental factors that influence body composition, body fat distribution and CMD risk, with the aim to provide insights towards effective treatment and intervention strategies. It provides a research platform of over 10 500 participants, 40-60 years old, from Burkina Faso, Ghana, Kenya and South Africa. Following a process that involved community engagement, training of project staff and participant informed consent, participants were administered detailed questionnaires, anthropometric measurements were taken and biospecimens collected. This generated a wealth of demographic, health history, environmental, behavioural and biomarker data. The H3Africa SNP array will be used for genome-wide association studies. AWI-Gen is building capacity to perform large epidemiological, genomic and epigenomic studies across several African counties and strives to become a valuable resource for research collaborations in Africa.Entities:
Keywords: AWI-Gen; H3Africa; NCD; body composition; cardiometabolic disease; diabetes; disease outcome; environmental risk factors; genomic studies; health transition; hypertension; non-communicable disease in Africa; obesity; stroke
Year: 2016 PMID: 29276616 PMCID: PMC5732578 DOI: 10.1017/gheg.2016.17
Source DB: PubMed Journal: Glob Health Epidemiol Genom ISSN: 2054-4200
Population data, non-communicable disease (NCD) mortality and adult risk factors in Burkina Faso, Ghana, Kenya and South Africa
| Country | Burkina Faso | Ghana | Kenya | South Africa | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Total population | 16 460 000 | 25 366 000 | 43 178 000 | 52 386 000 | ||||||||
| Income group | Low | Lower middle | Low | Upper middle | ||||||||
| Proportion of population 30 to 70 years | 25.3% | 30.9% | 27.3% | 38.3% | ||||||||
| Total deaths estimated to be attributable to NCDs | 23% | 42% | 27% | 43% | ||||||||
| NCDs mortality | ||||||||||||
| Cardiovascular disease | 12% | 18% | 8% | 18% | ||||||||
| Diabetes | 2% | 2% | 1% | 6% | ||||||||
| Cancer | 4% | 5% | 7% | 7% | ||||||||
| Chronic respiratory disease | 2% | 2% | 1% | 3% | ||||||||
| Others | 12% | 14% | 9% | 10% | ||||||||
| Premature mortality due to NCD | 24% | 20% | 18% | 27% | ||||||||
| Adult NCD risk factors | Tot | W | M | Tot | W | M | Tot | W | M | Tot | W | M |
| Current tobacco smoking % (2011) | – | – | – | 10 | 7 | 14 | 13 | <1 | 26 | 18 | 8 | 28 |
| Total alcohol per capita consumption (2010) | 6.8 | 2.8 | 11.2 | 4.8 | 1.9 | 7.8 | 4.3 | 1.3 | 7.4 | 11.0 | 4.2 | 18.4 |
| Raised blood pressure % (2008) | 29.4 | 28.8 | 29.9 | 27.3 | 26.5 | 28.2 | 28.7 | 26.7 | 30.7 | 33.7 | 32.4 | 35.2 |
| Obesity % (2008) | 2.3 | 3.0 | 1.5 | 7.5 | 10.9 | 4.1 | 4.2 | 6.2 | 2.1 | 31.3 | 41.0 | 21.0 |
–, Data not available; W, women; M, men; Tot, mean for men and women.
World Health Organization: Non-communicable Diseases (NCD) Country Profiles, 2014.
The probability of dying between ages 30 and 70 years from the four main NCDs.
Current tobacco smoking (2011): the percentage of the population aged 15 or older who smoke any tobacco products.
Total alcohol per capita consumption, in litres of pure alcohol (2010): consumption of pure alcohol (recorded and unrecorded) per person aged 15+ during one calendar year.
Raised blood pressure (2008): the percentage of the population aged 25 or older having systolic blood pressure ≥ 140 mmHg and/or diastolic blood pressure ≥90 mmHg.
Obesity (2008): the percentage of the population aged 20 or older having a body mass index ≥30 kg/m2.
Fig. 1.Map showing the locations of the catchment areas for the AWI-Gen study in Africa.
AWI-Gen Study Centres
| Centre, country | Brief history | Research focus |
|---|---|---|
| Nanoro, Burkina Faso | The Nanoro HDSS was established at the Clinical Research Unit of Nanoro (CRUN) in 2009 and covers a population of 63 000 inhabitants in 24 villages and 8 peripheral health facilities. Vital events are collected through household visits carried out every four months | The research focus of the CRUN was traditionally malaria, infectious diseases and community-based interventions. Recently, it's research portfolio has been expanded to include NCDs that are on the rise in SSA. Up until now, the AWI-Gen project is the largest study on NCDs to be conducted by the CRUN |
| Navrongo, Ghana | The Navrongo Health Research Centre (NHRC) started in 1988 as a field site for the Ghana Vitamin A Supplementation Trial and was upgraded into a Health Research Centre in 1992 by the Ministry of Health of Ghana. Currently the major research areas are in biomedical and the social sciences. In addition, the Centre has a functional Health and Demographic Surveillance System (HDSS) which was established in 1993; the Navrongo HDSS does routine monitoring on health and demographic dynamics including pregnancies, births, morbidities, deaths, migrations, marriages and vaccination coverage. Other important support units include clinical trials, research laboratories, data centre and general administration. The Centre has an Ethics Review Board that has Federal Wide Assurance | The biomedical research focuses on clinical trials, maternal and child health, environmental health, mental health, pathogen and vector studies and genomic research. The social science research themes include adolescent and adult health, health systems, community health, health promotion and education, and ethics and behavioural studies |
| Nairobi, Kenya | The Nairobi Urban Health & Demographic Surveillance System (NUHDSS) was the pioneer urban-based Health and Demographic Surveillance System in SSA established in 2002. The platform was set up by the African Population and Health Research Centre in two informal settlements of Korogocho and Viwandani in Nairobi. Currently the NUHDSS follows a population of about 75 000 individuals in approximately 24 000 households in the two slum communities. The main objective of the site is to provide a longitudinal platform for investigating linkages between urban poverty and wellbeing outcomes including health, demography, and schooling. In addition to the routine data, it has progressively continued to provide a robust platform for nesting several studies examining the challenges of rapid urbanisation in SSA and associated health and poverty dynamics | A robust research program on cardiovascular disease risk factors is nested in the NUHDSS. Participation in AWI-Gen provides an opportunity to build on this work and grow capacity in biomedical approaches to understanding the role of environmental and social factors in health |
| Agincourt, South Africa | The Agincourt HDSS is a South African Medical Research Council and Wits University research unit. Located in rural northeast South Africa close to the Mozambique border, it was established in 1992 to support decentralised district and sub-district health systems development as South Africa transitioned from the apartheid era to democracy. Work since then has documented and responded to rapid and complex health, population and social transitions | Currently there are major trials and observational studies across key stages of the life course, including HIV and NCD prevention in adolescents and their offspring, interactions of CMDs and HIV in middle-aged and older adults, integrated management of hypertension and other chronic conditions in primary health care facilities, community mobilisation interventions to address gender norms and enhance linkage to care, key aspects of ageing including cognitive function, and social determinants including migration and health |
| Dikgale, South Africa | The Dikgale HDSS was started in 1996, is situated about 40 km north-east of Polokwane, the capital of the Limpopo Province, and includes approximately 7000 households covering a population of about 36 000. An annual survey of life events, including verbal autopsies to establish cause of death is conducted | The research focus is on chronic diseases in a rural setting with an emphasis on nutrition, physical activity and biochemical markers of disease risk |
| Soweto, South Africa | MRC Developmental Pathways for Health Research Unit (DPHRU) started in 2010 and is based at Chris Hani Baragwanath Academic Hospital in Soweto. DPHRU builds upon long-term ties with the Soweto community. A flag-ship project of DPHRU is the Birth to Twenty cohort, a birth cohort established in 1990 that has followed over 3000 mothers and babies born in the Soweto-Johannesburg area for 25 years. They are now following three generations from this cohort | The research activities of DPHRU align with two national priorities: improving maternal and child health, and tackling obesity and metabolic disease risk |
Categories of AWI-Gen data collected
| Category | Variable |
|---|---|
| Socio-demographic | Age |
| Sex | |
| Country | |
| Home language | |
| Self-reported ethnicity/tribe | |
| Family composition | |
| Pregnancy status | |
| Marital status | |
| Employment | |
| Level of education | |
| Household attributes for social economic status (SES) | |
| Health History (Cardiometabolic risk factors and general health) | Diabetes, stroke, hypertension, angina, heart attack, congestive heart failure, high cholesterol, thyroid disease, kidney diseases, breast/cervical/prostate/other cancers, asthma or reactive air diseases, weight problem/obesity |
| Anthropometry | Weight |
| Height | |
| Blood pressure | |
| Pulse | |
| Waist circumference | |
| Hip circumference | |
| Ultrasonography | Visceral fat |
| Subcutaneous fat | |
| Carotid intima media thickness (cIMT) | |
| Environmental | Tobacco use |
| Alcohol use | |
| Drug use | |
| Diet | |
| Exercise/general physical activity questionnaire (GPAQ) | |
| Exposure to pesticides | |
| Infection history | Malaria, Tuberculosis, HIV |
Blood and urine biomarkers tested in AWI-Gen participants
| Sample type | Variable |
|---|---|
| Fasting blood (serum) | HDL |
| LDL | |
| Total cholesterol | |
| Total triglycerides | |
| Fasting insulin | |
| Fasting blood (plasma) | Fasting glucose |
| Urine | Albumin |
| Total protein | |
| Creatinine |
Fig. 2.Complex interactions between the environment and behaviour, heritable factors and outcomes like anthropometry and biomarkers and their contribution to cardiometabolic endpoints are illustrated. These factors and interactions are further influenced by fixed non-modifiable factors including sex, age and ethnicity.
Fig. 3.Characterisation of the AWI-Gen participants between the ages of 40 and 60 years showing sex distribution of participants as absolute numbers (A) and as a percentage (B) as recruited by each study center. Age distribution is shown for men (C) and women (D). Please note that participants outside the 40–60-year age range have not been included in the figures. The harmonisation with the HAALSI study at the Agincourt centre has resulted in the recruitment of additional participants over the age of 60 years.
Self-reported ethnic distribution of AWI-Gen participants across the six study centres
| South Africa | Burkina Faso | Ghana | Kenya | |||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Ethnicity | Agincourt | Dikgale | Soweto | Total | Ethnicity | Nanoro | Ethnicty | Navrongo | Ethnicity | Nairobi |
| Tsonga | 1244 | 57 | 138 | 1439 | Mossi | 1937 | Kassena | 1009 | Kikuyu | 698 |
| BaPedi | 31 | 1204 | 121 | 1356 | Gourounsi | 109 | Nankana | 876 | Kamba | 384 |
| Zulu | 33 | 12 | 674 | 719 | Peulh | 14 | Bulsa | 43 | Luo | 359 |
| Sotho | 69 | 11 | 327 | 407 | Dagara | 2 | Mampruga | 23 | Luhya | 316 |
| Tswana | 1 | 16 | 258 | 275 | Dioula | 3 | Frafra | 21 | Kisii | 62 |
| Xhosa | 2 | 6 | 191 | 199 | Samo | 3 | Kantosi | 7 | Somali | 51 |
| Swati | 56 | 2 | 63 | 121 | Gourmatche | 2 | Mossi | 3 | Meru | 30 |
| Venda | 5 | 26 | 63 | 94 | Other | 5 | Other | 4 | Embu | 21 |
| Ndebele | 2 | 17 | 21 | 40 | Unknown | 4 | Unknown | 2 | Borana | 8 |
| Other | 1 | 3 | 12 | 16 | Gari | 3 | ||||
| Unknown | 21 | 3 | 158 | 182 | Kalenjin | 3 | ||||
| Maasai | 2 | |||||||||
| Other | 5 | |||||||||
| Total | 1465 | 1357 | 2026 | 4848 | Total | 2079 | 1988 | 1942 | ||
In Soweto, language was used as a proxy for self-reported ethnicity.
The category ‘other’ was used when there were only one or two individuals in a specific ethic category.
The category ‘unknown’ was used when the person did not provide information on ethnicity.