| Literature DB >> 28725259 |
Dylan R J Collins1, Kiran Jobanputra2, Thomas Frost1, Shoaib Muhammed3, Alison Ward1, Abed Alrazzaq Shafei4, Taissir Fardous4, Sadeq Gabashneh4, Carl Heneghan1.
Abstract
BACKGROUND: The growing burden of non-communicable diseases (NCDs) presented new challenges for medical humanitarian aid and little was known about primary health care approaches for these diseases in humanitarian response. We aimed to evaluate Médecins Sans Frontières (MSF's) use of total CVD risk based prevention strategies amongst Syrian refugees in northern Jordan to identify opportunities to improve total CVD risk based guidance for humanitarian settings.Entities:
Keywords: Cardiovascular disease; Cardiovascular risk assessment; Jordan; Primary health care; Refugee; Syria; WHO PEN; World Health Organisation Package of Essential NCD Interventions for Primary Health Care in Low Resource Settings
Year: 2017 PMID: 28725259 PMCID: PMC5512828 DOI: 10.1186/s13031-017-0115-z
Source DB: PubMed Journal: Confl Health ISSN: 1752-1505 Impact factor: 2.723
Fig. 1Flow chart of patients included in the quantitative strand analysis
Prevalence of CVD risk by WHO/ISH risk category and summary of salient patient characteristics
| WHO/ISH risk category | History of CVD ( | |||||
|---|---|---|---|---|---|---|
| <10% ( | 10 to <20% ( | 20 to <30% ( | 30 to <40% ( | ≥ 40% ( | ||
| Percent of Total Population (95% CI) | 56.8 (54.9, 58.6) | 11.2 (10.1 12.4) | 4.8 (4.0 5.6) | 2.4 (1.9, 3.1) | 4.0 (3.3, 4.7) | 20.9 (19.5, 22.4) |
| Median Age (IQR) | 50 (42–57) | 64 (60–71) | 66 (61.0–72.5) | 64 (61.25–71) | 66 (62–71) | 61 (53–68) |
| Percent Male (95% CI) | 33.8 (31.5, 36.2) | 41.2 (35.9, 46.8) | 41.7 (33.5, 50.4) | 34.3 (23.6, 46.7) | 40.9 (31.9, 50.4) | 53.5 (49.4, 57.5) |
| Percent with type one diabetes (95% CI) | 2.4 (1.7, 3.2) | 0.3 (0.0, 2.0) | 0.7 (0.0, 4.5) | 0.0 (0.0, 6.5) | 0.9 (0.0, 5.5) | 0.2 (0.0, 1.1) |
| Percent with type two diabetes (95% CI) | 42.5 (40.1, 45.0) | 63.1 (57.5, 68.3) | 64.7 (56.1, 72.5) | 80.0 (68.4, 88.3) | 80.0 (71.3, 86.70 | 52.3 (48.2, 56.3) |
| Percent who smoke (95% CI) | 23.7 (21.7, 25.8) | 19.7 (15.6, 24.5) | 32.4 (24.8, 40.9) | 28.6 (18.7, 40.8) | 28.7 (20.8, 38.0) | 31.2 (27.6, 35.1) |
| Mean SBP (mmHg) (SD) | 124.39 (17.60) | 139.74 (18.62) | 146.58 (20.95) | 156.07 (15.39) | 171.64 (20.47) | 129.03 (22.96) |
| Mean total cholesterol (mmol/L) (SD) | 5.16 (0.96) | 5.18 (1.13) | 5.41 (1.61) | 5.64 (1.25) | 6.28 (1.59) | 4.74 (1.11) |
| Percent with total cholesterol ≥8 mmol/L or (diabetes & age ≥ 40) (95% CI) | 38.4 (36.1, 40.8) | 63.7 (58.2, 68.9) | 66.2 (57.6, 73.9) | 81.4 (70.0, 89.4) | 80.9 (72.3, 87.4) | 52.5 (48.4, 56.5) |
| Percent with a family history of diabetes (95% CI) | 69.0 (66.7, 71.2) | 65.2 (59.7, 70.3) | 48.9 (40.4, 57.5) | 65.7 (53.3, 76.4) | 63.5 (53.9, 72.1) | 62.5 (58.5, 66.3) |
| Percent with a family history of premature CVD (95% CI) | 39.2 (36.9, 41.6) | 25.8 (21.2, 31.0) | 29.5 (22.2, 37.9) | 21.4 (12.9, 33.2) | 29.6 (21.6, 38.9) | 42.3 (38.3, 46.3) |
| Percent with high waist circumference (95% CI) | 79.5 (77.5, 81.4) | 79.7 (74.8, 83.8) | 73.4 (65.1, 80.3) | 85.7 (74.8, 92.6) | 83.5 (75.1, 89.5) | 72.7 (68.9, 76.2) |
Abbreviations: SBP systolic blood pressure
Lipid-lowering treatment prescribing patterns based on calculated CVD risk category, shown as mutually exclusive categories
| Secondary Prevention | Primary Prevention | ||||
|---|---|---|---|---|---|
| Category | History of CVD | DM & ≥40 | TC ≥ 8 mmol/L | Risk <20% | Risk ≥20% |
| Total ( | 608 | 1072 | 11 | 1150 | 66 |
| Percent prescribed lipid-lowering treatment (95% CI) | 70.6 (66.7, 74.1) | 37.4 (34.5, 40.4) | 63.6 (31.6, 87.6) | 16.3 (14.3, 18.6) | 16.7 (9.00, 28.3) |
Abbreviations: CVD cardiovascular disease, DM diabetes mellitus, TC total cholesterol
Agreement between documented and calculated WHO/ISH CVD risk scores
| Calculated WHO/ISH CVD Risk Score | History of CVD | Total | ||||||
|---|---|---|---|---|---|---|---|---|
| <10% | 10 to <20% | 20 to <30% | 30 to <40% | ≥ 40% | ||||
| Documented WHO/ISH CVD Risk Score | <10% | 413 | 52 | 25 | 15 | 14 | 56 | 575 |
| 10 to <20% | 38 | 22 | 10 | 3 | 2 | 5 | 80 | |
| 20 to <30% | 2 | 2 | 4 | 2 | 3 | 1 | 14 | |
| 30 to <40% | 1 | 1 | 0 | 4 | 4 | 0 | 10 | |
| ≥ 40% | 0 | 0 | 0 | 0 | 1 | 0 | 1 | |
| Total | 454 | 77 | 39 | 24 | 24 | 62 | 680 | |
Agreement between documented and calculated WHO/ISH CVD after aggregating by the clinically significant threshold of WHO/ISH risk 20%, where individuals with a history of CVD are categorised as high risk
| Calculated WHO/ISH CVD Risk Score | ||||
|---|---|---|---|---|
| ≥ 20% (High) | <20% (Low) | Total | ||
| Documented WHO/ISH CVD Risk Score | ≥ 20% (High) | 19 | 6 | 25 |
| <20% (Low) | 130 | 525 | 655 | |
| Total | 149 | 531 | 680 | |
Summary of qualitative findings with example quotations
| Theme | Summary | Quotation(s) | |
|---|---|---|---|
| Provider-Centred Themes | Use of risk charts by doctors | Although some doctors used the charts correctly, there was generally confusion about when to use the charts, and an inability to calculate a risk score during the first consultation without cholesterol information |
|
| Choosing risk factor measurements for calculation of risk score | Diverse and incorrect methods used when recording and choosing risk factor measurements for the calculation of a risk score | “ | |
| Tendency to favour lifestyle interventions as first line therapy | Doctors tended to favour lifestyle intervention over drug intervention even in patients where drug intervention was indicated |
| |
| Doctors’ understanding and use of drug treatment | Doctors had a good understanding of the use of lipid-lowering treatment in secondary prevention but some weren’t certain about the role of treatment in primary prevention |
| |
| Risk Communication | Risk charts were used by doctors to help communicate with patients and make decisions; nurses did not use CVD risk charts, but felt they could be helpful during counselling sessions. |
| |
| Patient-Centred Themes | Patient reaction and adherence to drug intervention | Patients were reluctant to start, stop, or change medication and were often not adherent |
|
| Antagonistic role of health myths | Many health myths existed amongst the Syrian community and these myths can antagonise the advice of clinicians |
| |
| Patients’ ability to modify risk factors | Security concerns, socio-economic deprivation, shame, and stress can reduce the ability of patients to adhere to modify their risk factors |
| |
| Health education | Individual health education sessions were often co-opted by more immediate needs of patients; education in a group was seen as more effective |
|
Fig. 2Integration map of qualitative and quantitative strands illustrating the relationships between qualitative themes and with the main quantitative findings