| Literature DB >> 26825496 |
H R Holt1,2, R Selby3, C Mumba4, G B Napier5, J Guitian6,7.
Abstract
BACKGROUND: Animal African trypanosomiasis (AAT) is one of the biggest constraints to livestock production and a threat to food security in sub-Saharan Africa. In order to optimise the allocation of resources for AAT control, decision makers need to target geographic areas where control programmes are most likely to be successful and sustainable and select control methods that will maximise the benefits obtained from resources invested.Entities:
Mesh:
Year: 2016 PMID: 26825496 PMCID: PMC4733274 DOI: 10.1186/s13071-016-1336-5
Source DB: PubMed Journal: Parasit Vectors ISSN: 1756-3305 Impact factor: 3.876
Brief description of the study areas based on previous tsetse & trypanosome information. Note: survey estimates in cattle were not necessarily from representative samples (hh’s = households)
| Countries | Study areas | HH’s | Trypanosome cattle (%) | Trypanosome species | Tsetse species | Ref |
|---|---|---|---|---|---|---|
| Burkina Faso | Ioba & Sissili | 123 | 4.3 % to 10 % |
|
| [ |
| Kénédougou | 61 | |||||
| Léraba | 41 | |||||
| Cameroon | North Faro & Faro et Deo | 131 | 35.1 % |
| G | [ |
| South Faro | 91 | 4.3 % | ||||
| Mayo Rey | 77 | 9.86 % | ||||
| Ethiopia | Goma & Setema | 45 | 8.6 %–20.4 % |
|
| [ |
| Goro & Cheha | 36 | |||||
| Limmu Seka (East) | 34 | |||||
| Limmu Seka (West) | 36 | |||||
| Uganda | Tororo | 139 | 15.3 % |
|
| [ |
| Buyende & Pallisa | 78 | 27.5 %–35.7 % | ||||
| Kumi & Ngora | 83 | 29.0 % | ||||
| Busia & Iganga | 74 | |||||
| Zambia | Lundazi – plateau | 99 |
| G | [ | |
| Lundazi – valley | 57 | 17.8 % | ||||
| Mambwe | 54 | 28.4 % |
Variables selected for inclusion in the MCA, and there classifications
| Variable | Classification | |
|---|---|---|
| Exposure | Perceived incidence in the community | Whether the majority of cattle-owners reported AAT challenge as “rare”, “frequent” or “constant” |
| Seasonality | Whether the majority of cattle-owners reported a seasonal effect of AAT | |
| Sensitivity | Cattle breeds | Whether any cattle-owners owned |
| Main cattle rearing systems | Whether farmers in the community were practicing tethering in addition to communal-grazing | |
| Tsetse control present | Whether at least 40 % of cattle-owning households reported existence of any form of tsetse control method in the community | |
| Herd size | Average herd size in the community classified into 3 bins of equal size | |
| Treatment failure | Whether the majority of farmers reported that treatment failure is “never” “rare” or “frequent” | |
| Treatment | Whether farmers report that they treat the disease themselves, or whether they rely on trained animal health workers, veterinary assistants or similar. | |
| Capacity to adapt | Insecticide treated cattle (ITC) | Whether cattle-owning households reported the use of ITC as a measure of tsetse control in the community |
| Tsetse control present | Whether cattle-owning households reported existence of any tsetse trapping in the community | |
| Farmer knowledge of AAT control | Whether the majority of farmers could recognise a picture of a tsetse trap and/or name tsetse control measures | |
| Losses to draft | Whether the majority of cattle-owning households report that AAT impacts their livelihood due to reductions in draft power | |
| Reported mortalities | Average number of mortalities reported by cattle owning households categorised into three bins | |
| Importance of cattle in the community | Whether the majority of cattle-owning households (>60 %) reported livestock as the primary agricultural income source, or if cropping or mixed farming systems are considered more important |
Fig. 1contribution of the variables to the formation of dimensions 1 and 2
Fig. 2coordinates of each variable category on dimensions 1 and 2
Fig. 3coordinates of each community on dimensions 1 and 2 and their cluster
distribution of the variables retained in the final MCA and HCA, according to cluster
| Cluster 1 | Cluster 2 | Cluster 3 | |
|---|---|---|---|
| AAT challenge | |||
| AAT constant | 87.0 % | 60.0 % | 37.9 % |
| AAT frequent | 8.7 % | 6.7 % | 37.9 % |
| AAT rare | 4.3 % | 33.3 % | 24.1 % |
| Seasonality | |||
| No pattern | 71.7 % | 16.7 % | 50.6 % |
| Seasonal | 28.3 % | 83.3 % | 49.4 % |
| Breeds kept | |||
| Indicus | 87.0 % | 66.7 % | 100 % |
| Indicus/Cross | 13.0 % | 1.7 % | - |
| Taurine/Indicus/Cross | - | 31.7 % | - |
| Livestock rearing (day) | |||
| Communal grazing | 100 % | 98.3 % | 36.8 % |
| Communal & tethered | - | 1.7 % | 63.2 % |
| Average herd size | |||
| Small (<7) | 2.2 % | 18.3 % | 52.9 % |
| Moderate (7 to 13) | 4.3 % | 55.0 % | 41.4 % |
| Large (>13) | 93.5 % | 26.7 % | 5.7 % |
| Treatment failure | |||
| No treatment failure | 2.2 % | 45.0 % | 23.0 % |
| Rare treatment failure | 28.3 % | 31.7 % | 46.0 % |
| Frequent treatment failure | 69.6 % | 23.3 % | 31.0 % |
| Primary income | |||
| Crop | 2.2 % | 83.3 % | 10.3 % |
| Livestock | 87.0 % | 1.7 % | 3.4 % |
| Mixed | 10.9 % | 15.0 % | 86.2 % |
| Knowledge of tsetse control | |||
| Good knowledge control | 63.0 % | 20.0 % | 70.1 % |
| Low knowledge control | 37.0 % | 80.0 % | 29.9 % |
| Tsetse trapping community | |||
| No tsetse trapping | 80.4 % | 90.0 % | 31.0 % |
| Tsetse trapping | 19.6 % | 10.0 % | 69.0 % |
distribution of the communities according to country and cluster
| Country | Cluster 1 | Cluster 2 | Cluster 3 |
|---|---|---|---|
| Burkina Faso | 4.8 % | 95.2 % | - |
| Cameroon | 91.1 % | 8.9 % | - |
| Ethiopia | 8.7 % | 30.4 % | 60.9 % |
| Uganda | 2.7 % | 6.6 % | 90.4 % |
| Zambia | - | 77.4 % | 22.6 % |
distribution of the supplementary variables according to cluster
| Cluster 1 | Cluster 2 | Cluster 3 | |
|---|---|---|---|
| ITC | |||
| No ITC | 82.6 % | 85.0 % | 83.9 % |
| ITC | 17.4 % | 15.0 % | 16.1 % |
| Responsible for AAT control | |||
| Communities | 4.3 % | 16.7 % | - |
| Individuals | 6.5 % | 33.3 % | 24.1 % |
| District officials | 4.3 % | 28.3 % | 46.0 % |
| Centralised governments | 67.4 % | 8.3 % | 24.1 % |
| NGOs | 17.4 % | 13.3 % | 5.7 % |
| Diagnosis | |||
| Farmers | 89.1 % | 63.3 % | 50.6 % |
| Trained | 10.9 % | 36.7 % | 49.4 % |
| Treatment | |||
| Farmers | 73.9 % | 43.3 % | 37.9 % |
| Trained | 26.1 % | 56.7 % | 62.1 % |
| Reasons for treatment failure | |||
| Misdosing | 21.7 % | 11.7 % | 16.1 % |
| Drug quality | 60.9 % | 20.0 % | 37.9 % |
| Misdiagnosis | 30.4 % | 25.0 % | 28.7 % |
| Resistance | 30.4 % | 63.3 % | 57.5 % |
| Total cost AAT | |||
| Low (<$15) | 17.4 % | 28.3 % | 42.5 % |
| Medium ($15 to $55) | 19.6 % | 40.0 % | 41.4 % |
| High (>$55) | 63.0 % | 31.7 % | 16.1 % |
| Cattle mortalities | |||
| Low | 4.3 % | 4.9 % | 4.7 % |
| Medium | 39.1 % | 35.0 % | 26.7 % |
| High | 56.5 % | 61.7 % | 67.4 % |
| Draught losses | |||
| No | 67.4 % | 53.3 % | 49.4 % |
| Yes | 32.6 % | 46.7 % | 50.6 % |
Fig. 4overall summary of the results of selected communities in five sub-Saharan African countries based on determinants of AAT vulnerability