| Literature DB >> 30717714 |
Peter M Macharia1, Emanuele Giorgi2, Pamela N Thuranira3, Noel K Joseph3, Benn Sartorius4, Robert W Snow3,5, Emelda A Okiro3.
Abstract
BACKGROUND: Despite significant declines in under five mortality (U5M) over the last 3 decades, Kenya did not achieve Millennium Development Goal 4 (MDG 4) by 2015. To better understand trends and inequalities in child mortality, analysis of U5M variation at subnational decision making units is required. Here the comprehensive compilation and analysis of birth history data was used to understand spatio-temporal variation, inequalities and progress towards achieving the reductions targets of U5M between 1965 and 2013 and projected to 2015 at decentralized health planning units (counties) in Kenya.Entities:
Keywords: Inequalities; Kenya; Spatio-temporal; Sub national; Under-five mortality; Variation
Mesh:
Year: 2019 PMID: 30717714 PMCID: PMC6360661 DOI: 10.1186/s12889-019-6474-1
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Fig. 1Map of Kenya showing 8 provinces (colored) and the 47 sub-national units (counties) as dark lines water bodies and major rivers are shown in blue. Coast province: Mombasa [1], Kwale [2], Kilifi [3], Tana River [4], Lamu [5], Taita Taveta [6]; North Eastern province: Garissa [7], Wajir [8], Mandera [9]; Eastern province: Marsabit [10], Isiolo [11], Meru [12], Tharaka Nithi [13], Embu [14], Kitui [15], Machakos [16], Makueni [17]; Central province: Nyandarua [18], Nyeri [19], Kirinyaga [20], Murang’a [21], Kiambu [22]; Rift Valley province: Turkana [23], West Pokot [24], Samburu [25], Trans Nzoia [26], Uasin Gishu [27], Elgeyo Marakwet [28], Nandi [29], Baringo [30], Laikipia [31], Nakuru [32], Narok [33], Kajiado [34], Kericho [35], Bomet [36]; Western province: Kakamega [37], Vihiga [38], Bungoma [39], Busia [40]; Nyanza province: Siaya [41], Kisumu [42], Homa Bay [43], Migori [44], Kisii [45], Nyamira [46]; Nairobi province: Nairobi [47]
Surveys and censuses undertaken in Kenya with data on either summary birth history (SBH) and/or complete birth history (CBH) since 1989 comprising of six Demographic and Health Surveys (DHS), four Multiple Indicator Cluster Surveys (MICS) and three population censuses. Table includes the number of counties covered, the sample size by source, and the exposure variable: whether maternal age (MA), and/or time since first birth (TFB) variables were collected
| Survey | Year of Survey | Counties with data | Female | Birth History | Exposure |
|---|---|---|---|---|---|
| Demography and Health Survey (DHS) | 1989 | 38 | 7150 | SBH and CBH | MA and TFB |
| 1993 | 40 | 7540 | SBH and CBH | MA and TFB | |
| 1998 | 38 | 7881 | SBH and CBH | MA and TFB | |
| 2003 | 47 | 8195 | SBH and CBH | MA and TFB | |
| 2008/09 | 47 | 8444 | SBH and CBH | MA and TFB | |
| 2014 | 47 | 31,079 | SBH and CBH | MA and TFB | |
| Multiple Indicator Cluster Survey (MICS) | 2000 | 45 | 10,537 | SBH | MA and TFB |
| 2007 | 3 | 881 | SBH | MA and TFB | |
| 2008 | 8 | 13,606 | SBH | MA only | |
| 2011 | 6 | 5908 | SBH and CBH | MA and TFB | |
| Population census | 1989–5% | 47 | 238,027 | SBH | MA only |
| 1999–5% | 47 | 345,647 | SBH | MA only | |
| 2009–10% | 47 | 934,904 | SBH | MA only |
2009 MICS conducted in the informal settlements of Mombasa was excluded since U5M in urban areas was not represented while 2013/14 MICS covering three counties was excluded due to under reporting of under-5 deaths
Fig. 2The national annual mean (black line), 2·5–97·5% (light green boundary) interquartile credibility range (ICR) and 25–75% ICR (dark green boundary) of all cause-under five mortality per 1000 live births (U5M) in Kenya between 1965 to 2015 computed using direct demographic methods. The 2014–2015 U5M rates were computed using the average annual rate of reduction between 2000 and 2013 and shown as a dotted line. The U5M reduction target for World Summit for Children by 2000 is shown by a black dotted horizontal line while the red indicates the Millennium Development Goal 4 target. The graphs of county specific mean U5M and the corresponding 2·5–97·5% ICR are presented in the appendix (Additional file 5)
Fig. 3Mean under five mortality per 1000 live births (U5M) at each of the 47 counties of Kenya every two years between 1965 and 2013 classified into six classes of < 50 (dark green), 50 - < 75 (light green), 75 - < 100 (light yellow), 100 - < 150 (brown), 150 - < 200 (red), and ≥ 200 (dark brow)
Fig. 4A scatter plot showing changes in mean under five mortality per 1000 live births (U5M) per county between 1965 and 2013. The provinces are differentiated by shapes; Coast (ӿ), North Eastern (♦), Eastern (+), Central (▲), Rift valley (●), Western (x), Nyanza (■) and Nairobi (−) and counties with colors (indexed in Table 2). The bold dark line shows inequality ratio calculated by dividing U5M of 40% of the counties with high U5M with the U5M of 10% of counties with low U5M between 1965 and 2013
Progress of the 47 counties in meeting global under five mortality (U5M) reduction targets set during the World Summit for Children and the Millennium Development Goal 4 including the 2000, 2013 and 2015 projections U5M rates in Kenya
Counties that achieved the targets are shown in green, amber shows those that missed the target by a small margin (20%), while red indicates counties that missed the target with a large margin. The numbers (Fig. 1) and colors (Fig. 4) indicate the counties while the shapes (Fig. 4) indicate the 8 provinces of Kenya