| Literature DB >> 30945155 |
O Opoola1,2, R Mrode3, G Banos4,3, J Ojango5, C Banga6, G Simm4, M G G Chagunda7.
Abstract
An online survey on the state of existing dairy data, dairy improvement infrastructure and human capacity in sub-Saharan Africa (SSA) was undertaken with the aim of assessing whether the state of existing animal recording, dairy improvement methods and key issues facing dairy production together with means of addressing the issues differ among countries and regions of SSA. Respondents comprised experts and practitioners in livestock production and genetic resources from research institutes, animal breeding companies, universities, non-governmental organisations and government agricultural ministries. The main dairy farming system in which the respondents were involved was mixed crop-livestock system (30.2%), and this was mainly practised in the private land tenure system (46.3%). Data were analysed using linear model and paired Student t test in R software package. Respondents identified key issues affecting dairy production as poor genetic assessment of imported exotic breeds and crosses in Africa (62.3%), fluctuations in milk prices within both the formal and informal markets (50.9%), no comprehensive sire ranking systems (39.6%), housing and health management regimes which adversely affect milk yield (32.1%), poor market networks for dairy products (25.5%), poor feeding (13.3%), inadequate genetic technologies (9.4%) and poor animal performance recording systems (9.4%). Respondents emphasised the need for updated breeding policies, sire ranking systems, adequate farm management systems, capacity building, across-country collaborations and joint genetic assessments of dairy breeds found in sub-Saharan Africa. The current situation of dairy production though similar for the different countries, differed in order of emphasis and magnitude across the countries and regions in sub-Saharan Africa.Entities:
Keywords: Across-country collaboration; Dairy farming systems; Genetic gain; Joint genetic assessments; Milk yield; Sub-Saharan Africa
Mesh:
Year: 2019 PMID: 30945155 PMCID: PMC6597593 DOI: 10.1007/s11250-019-01871-9
Source DB: PubMed Journal: Trop Anim Health Prod ISSN: 0049-4747 Impact factor: 1.559
General status of dairy production in the 15 countries from three regions of sub-Saharan Africa
| Category | Average | Standard deviation | Coefficient of Variation (CV %) |
|---|---|---|---|
| Number of exotic breeds | 2.8 | 1.66 | 59 |
| Number of indigenous breeds | 2.2 | 1.52 | 69 |
| Milk consumed as liquid (%) | 79.0 | 26.01 | 33 |
| Milk processed (%) | 21.0 | 12.36 | 53 |
| Number of dairy production systems | 4.3 | 3.85 | 89 |
| Number of land tenure/ownership systems | 2.1 | 1.32 | 63 |
Number of dairy breeds and dairy systems in different regions of SSA (marginal means from linear model)
| Dairy breeds | Dairy systems | |||||||
|---|---|---|---|---|---|---|---|---|
| Exotic | Indigenous | Production systems | Land tenure systems | |||||
| Regions | Frequency | s.e | Frequency | s.e | Frequency | s.e | Frequency | s.e |
| Eastern | 3.2 α | 0.3 | 2.1 | 0.3 | 3.5 | 0.2 | 2.0α | 0.13 |
| Southern | 4.7 β | 0.5 | 2.1α | 0.4 | 3.7 | 0.3 | 2.5β | 0.22 |
| Western | 2.2β | 0.3 | 3.6β | 0.3 | 4.0 | 0.2 | 2.2β | 0.15 |
Different superscript in each trait denotes significant differences between regions (P < 0.05)
αSignificant
βSignificant with other regions
Fig. 1Existing capacity of respondents by country and region
Fig. 2Proportion of milk sold in formal and informal markets in countries of SSA
Comparison among countries regarding current status of dairy production and marketing routes (Marginal means from linear model analyses)
| Region | Country | Milk liquid (%) | Milk processed (%) | Formal market (%) | Informal market (%) | No. of exotic breeds | No. of indigenous breeds | No of production systemsθ | No. of land tenure systemsθ |
|---|---|---|---|---|---|---|---|---|---|
| Eastern | BR | 95.0 (5.0)α | 2.5 (5.0)β | 47.5 (4.0)α | 52.5 (4.0)α | 1.0 (0.37)β | 1.0 (0.4)β | 4.0 (0.5) | 1.0 (0.2) |
| ET | 85.0 (4.1)α,β | 15.0 (4.0)β,θ | 31.7 (3.3)β | 68.3 (3.3)β | 2.0 (0.31)β | 1.0 (0.3)β,θ | 1.0 (0.4) | 2.0 (0.1) | |
| KE | 88.6 (1.6)α,β | 11.4 (1.6)β | 32.5 (1.3)β | 67.5 (1.3)θ,β | 4.3 (0.12)α,β | 2.3 (0.1)α | 3.7 (0.2) | 2.0 (0.1) | |
| SU | 20.0 (5.0)α | 80.0 (5.0)β | 20.0 (4.0)β | 20.0 (4.0)α,β | 1.0 (0.37)β | 5.0 (0.4)α | 3.0 (0.5) | 1.0 (0.2) | |
| TZ | 88.3 (2.9)α | 11.7 (2.9)β | 22.5 (2.3)β | 2.3 (3.3)β | 2.3 (0.22)β | 1.5 (0.2)β | 4.0 (0.3) | 3.0 (0.1) | |
| UG | 100.0 (5.0)α | 0.0 (5.0)β | 70.0 (4.0)α,β | 30.0 (4.0)α,β | 2.0 (0.37)β | 1.0 (0.4)β | 4.0 (0.5) | 1.0 (0.2) | |
| Southern | ML | 58.3 (4.1)β | 41.7 (4.0)α,θ | 30.0 (3.3)β,θ | 70.0 (3.3)βθ | 1.0 (0.31)β | 2.0 (0.3)β | 4.0 (0.4) | 2.0 (0.1) |
| ZM | 65.0 (5.0)β | 35.0 (5.0)θ | 70.0 (4.0)α | 30.0 (4.0)α | 4.0 (0.37)α,β | 5.0 (0.4)α | 3.0 (0.5) | 4.0 (0.2) | |
| SA | 98.0 (2.9)α | 2.0 (2.9)β | 82.5 (2.3)α,β | 17.5 (2.3)α,β | 6.8 (0.22)α,β | 1.2 (0.2)β | 3.8 (0.3) | 2.2 (0.1) | |
| Western | BF | 40.0 (5.0)α | 0.0 (5.0)α,β | 20.0 (4.0)α | 80.0 (4.0)α | 2.0 (0.37)α | 1.0 (0.4)β | 4.0 (0.5) | 1.0 (0.2) |
| GA | 100.0 (5.0)α | 0.0 (5.0)β | 30.0 (4.0)β | 70.0 (4.0)θ | 3.0 (0.37)β | 1.0 (0.4)α | 1.0 (0.5) | 1.0 (0.2) | |
| IC | 58.3 (4.1)β | 41.7 (4.0)α | 23.3 (3.3)β | 76.7 (3.3)β | 3.0 (0.31)β,θ | 3.0 (0.3)α | 5.0 (0.4) | 4.0 (0.1) | |
| NG | 94.6 (2.0)α | 5.4 (1.9)β | 1.6 (1.6)β | 74.6 (1.6)β | 2.0 (0.15)β | 4.6 (0.2)α | 3.9 (0.2) | 2.0 (0.1) | |
| SE | 100.0 (5.0)α | 0.0 (5.0)β | 27.5 (4.0)β | 72.5 (4.0)β,θ | 2.5 (0.37)β | 5.0 (0.4)α | 5.5 (0.5) | 2.5 (0.2) | |
| CA | 100.0 (4.1)α | 0.0 (4.0)β | 23.3 (3.3)β | 76.7 (3.3)β | 1.3 (0.31)β | 2.7 (0.3)β,θ | 4.0 (0.4) | 2.0 (0.1) |
BF Burkina Faso; BR Burundi; CA Cameroon; ET Ethiopia; GA Gambia; IC Ivory Coast; KE Kenya; ML Malawi; NG Nigeria; SE Senegal; SA South Africa; SU Sudan; TZ Tanzania; UG Uganda; ZM Zimbabwe
αHighly significant
βSignificant with other countries
θNot significantly different from other countries