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Changes in Optimal Childcare Practices in Kenya: Insights from the 2003, 2008-9 and 2014 Demographic and Health Surveys

  • Dennis Juma Matanda,

    Affiliations Population Council, Nairobi, Kenya, Multicultural Venues in Health, Gender and Social Justice Research Group, University of Bergen, Bergen, Norway

  • Helga Bjørnøy Urke ,

    helga.urke@uib.no

    Affiliations Multicultural Venues in Health, Gender and Social Justice Research Group, University of Bergen, Bergen, Norway, Department of Health Promotion and Development, Faculty of Psychology, University of Bergen, Bergen, Norway

  • Maurice B. Mittelmark

    Affiliations Multicultural Venues in Health, Gender and Social Justice Research Group, University of Bergen, Bergen, Norway, Department of Health Promotion and Development, Faculty of Psychology, University of Bergen, Bergen, Norway

Abstract

Objective(s)

Using nationally representative surveys conducted in Kenya, this study examined optimal health promoting childcare practices in 2003, 2008–9 and 2014. This was undertaken in the context of continuous child health promotion activities conducted by government and non-government organizations throughout Kenya. It was the aim of such activities to increase the prevalence of health promoting childcare practices; to what extent have there been changes in optimal childcare practices in Kenya during the 11-year period under study?

Methods

Cross-sectional data were obtained from the Kenya Demographic and Health Surveys conducted in 2003, 2008–9 and 2014. Women 15–49 years old with children 0–59 months were interviewed about a range of childcare practices. Logistic regression analysis was used to examine changes in, and correlates of, optimal childcare practices using the 2003, 2008–9 and 2014 data. Samples of 5949, 6079 and 20964 women interviewed in 2003, 2008–9 and 2014 respectively were used in the analysis.

Results

Between 2003 and 2014, there were increases in all health facility-based childcare practices with major increases observed in seeking medical treatment for diarrhoea and complete child vaccination. Mixed results were observed in home-based care where increases were noted in the use of insecticide treated bed nets, sanitary stool disposal and use of oral rehydration solutions, while decreases were observed in the prevalence of urging more fluid/food during diarrhoea and consumption of a minimum acceptable diet. Logit models showed that area of residence (region), household wealth, maternal education, parity, mother's age, child’s age and pregnancy history were significant determinants of optimal childcare practices across the three surveys.

Conclusions

The study observed variation in the uptake of the recommended optimal childcare practices in Kenya. National, regional and local child health promotion activities, coupled with changes in society and in living conditions between 2003 and 2014, could have influenced uptake of certain recommended childcare practices in Kenya. Decreases in the prevalence of children who were offered same/more fluid/food when they had diarrhea and children who consumed the minimum acceptable diet is alarming and perhaps a red flag to stakeholders who may have focused more on health facility-based care at the expense of home-based care. Concerted efforts are needed to address the consistent inequities in the uptake of the recommended childcare practices. Such efforts should be cognizant of the underlying factors that affect childcare in Kenya, herein defined as region, household wealth, maternal education, parity, mother's age, child’s age and pregnancy history.

Introduction

The past decades have seen intensive global efforts in combating child mortality and morbidity, and promoting child health and wellbeing. The Millennium Development Goals have been an important global initiative, inspiring a range of health promotion initiatives. Although substantial progress has been made, the 2015 Millennium Development Goals report shows that the challenge of ensuring progress in child health across the globe persists [1]. In 2012, it was reported that six million children died annually before reaching five years; half of which lived in sub-Saharan Africa [1]. Most of the under-five deaths are due to preventable diseases, like pneumonia, diarrhea, and malaria [1]. In Kenya, the 2014 Demographic and Health Survey indicates that one in every 19 children die before they attain the age of five years [2]. The survey also shows that a quarter of Kenyan children under the age five are stunted. Poor child health has many carryon effects manifest in poor adult health, low educational attainment, and facilitation of intergenerational poverty [3].

Society’s medicalized orientation leads many child health experts, and perhaps many parents, to focus mostly on disease diagnosis, risk factor prevention and treatment. Yet the fundamental factor in promoting good child health is the quality of ordinary childcare in the home [4]. A neglected or mistreated child cannot thrive no matter how sophisticated the health and medical services may be. Conversely, a nurturing home environment may foster child health even under harsh living conditions including poor availability of health care services. The importance of good quality childcare in promoting child and subsequent adult health has been firmly conceptualized in the child health and development field [57]. Empirically, studies have shown the enormous potential of care in scaling down mortality rates [8,9].

In the past decades, a plethora of disease prevention and health promotion campaigns and programmes have been implemented to combat child malnutrition, malaria, HIV/AIDS, diarrhea, and promote healthy and happy children. In this work, the role of childcare practices has been given increased attention. The United Nations Children’s Fund (UNICEF) in collaboration with the World Health Organization (WHO) identified 12 family and community practices essential in enhancing child survival, growth and development [10]. Among these practices are initiating care before birth (with the pregnant woman attending antenatal care), providing full course immunization before the child’s first birthday, disposing properly of the child’s feces, placing the sleeping child under an insecticide treated bed net (ITN), engaging in nutritious complementary feeding at the child’s weaning, caring for the sick child by offering more to eat and drink including breastfeeding, and ensuring that the child with an infection gets treatment [10].

Despite the fundamental importance to child health of basic childcare in the home, worrying gaps exist between the ideal and reality [11]. Notwithstanding the increase in the number of pregnant mothers attending at least one ANC visit, few women in the south of the Sahara attend the recommended four or more visits [12,13]. Immunization rates have improved but one-in-five children are unimmunized [10]. Despite a sustained campaign urging the use of ITNs to prevent malaria, ITNs are still underutilized [14]. Home care to reduce diarrhea is effective, but key practices are not yet fully embraced [1517].

In Kenya a range of national strategies, policy guidelines and programmes (referred to hereafter as ‘health promotion activities’ or ‘campaigns’) have been implemented with the aim of improving the health and wellbeing of the population as a whole and of children in particular. Some of the notable programmes that were underway in the period between 2003 and 2014 are:

  • the Kenya Economic Recovery Strategy for Wealth and Employment Creation 2003–2007 [18],
  • the National Health Sector Strategic Plan I 1999–2004 [19],
  • the National Health Sector Strategic Plan II 2005–2010 [20],
  • the National Expanded Programme on Immunization [21],
  • the National Malaria Strategy 2001–2010 [22],
  • the National Strategy on Infant and Young Child Feeding 2007–2010 [23],
  • the Integrated Management of Childhood Illness Strategy [24].
  • the 2004, 2007 and 2013 changes in policy on user fees in health facilities in Kenya [25,26].

It is reasonable to expect that the sum of these extensive efforts would have contributed to improved childcare in Kenya, and that the prevalence of health promoting childcare practices would have increased significantly over the 11-year period under study. While cause and effect relationships between health promotion activities and health practices changes cannot be established with certainty, it can at least be expected that during the course of multiple, intensive, long-running activities, some gains in childcare would be manifest. The only practical way to assess progress is to study patterns of optimal childcare practices across time, in populations as a whole and in various sociodemographic sub-groups.

The role of sociodemographic and -economic factors is widely studied in relation to child health and nutrition in developing countries [2731]. Research with a particular focus on urban-rural differences has found that children tend to fare better in urban compared to rural areas [2731]. However, several of the same studies have also examined the role of socioeconomic and other social factors in the urban-rural differences, and concluded that a large proportion of the differences is due to differences in socioeconomic status [27,28,30]. A review of several countries of sub-Saharan Africa found that in Kenya (and several of the other countries included) the urban-rural differences disappeared when socioeconomic status was taken into account [28]. Research conducted on urban-rural differences in childcare practices, has found significant differences in treatment seeking for child fever [32] and child illness [33] favoring urban compared to rural households. Matanda and colleagues found different time trend patterns of breast- and complementary feeding depending on geographic region and urban/rural residence in Kenya [34]. Other studies have also found indications that urban poor children are actually worse off than their rural counterparts [29,30]. The rapid population growth and urbanization might be changing urban-rural or other geographic patterns of childcare as well as the role played by socioeconomic factors in these patterns. Hence, the role of context in a comprehensive analysis including socioeconomic and other background factors is relevant in examining development and status of childcare practices.

Policy makers need such analyses to inform more effective health promotion activities. However in Kenya until now, the studies that have investigated childcare practices have focused on single care practices, and/or used data that are not nationally representative, and/or have not examined patterns of optimal childcare over a period of time [33,3537]. There is consequently a need for a comprehensive, longitudinal examination of patterns of childcare practices in Kenya, including urban-rural, regional and socioeconomic differences. The aim of this study was to contribute to the knowledge about possible changes in optimal childcare practices in Kenya, with a specific focus on potential differences in childcare between geographic regions and between urban and rural residence. Specifically, the study examined to what extent there has been changes in optimal childcare practices in Kenya using nationally representative surveys conducted in 2003, 2008–9 and 2014.

Materials and Methods

Data sources and study samples

The analyses in this study are based on data from Demographic and Health Surveys (DHS) conducted in Kenya in 2003, 2008–9 and 2014. The surveys were implemented by the Kenya National Bureau of Statistics in collaboration with other governmental and non-governmental entities, and with technical assistance from the international MEASURE DHS [2,19,20]. All person-identifying information was removed from these publically-available datasets prior to their release for analysis.

The 2003, 2008–9 and 2014 Kenya Demographic and Health Surveys (KDHS) are nationally representative household-based surveys that utilize a two-stage sampling design. First, data collection points or clusters are selected from the national master frame followed by a systematic sampling of households from the clusters. In the 2003 survey, 400 clusters comprising of 133 urban and 267 rural areas were selected from the master frame while the 2008–9 survey had 400 clusters selected representing 129 urban and 271 rural areas. The 2014 survey was a little different as it was designed to produce representative estimates for most of the survey indicators at the national level, for urban and rural areas separately, at the regional level (since the promulgation of the 2010 constitution, provinces were renamed as regions and 47 counties were created which serve as devolved units of administration), and for selected indicators at the county level. Consequently, more households were sampled in 2014 as compared to previous surveys. Therefore, in the 2014 survey, 1612 clusters were selected representing 617 in urban areas and 995 clusters in rural areas. In the 2003, 2008–9 and 2014 surveys, 9057, 8561 and 36430 household interviews were conducted with 96, 98, and 99 percent response rates respectively. Individual interviews were conducted among women of ages 15–49 years to collect data on both their health and that of their under-five children. A total of 5949, 6079 and 20964 women interviewed in 2003, 2008–9 and 2014 respectively were used in the analysis.

Measures

Optimal childcare practices are the outcome variables and were classified into two main categories: health facility-based childcare practices and home-based childcare practices.

Health facility-based childcare practices.

Complete immunization: Age specific immunization status whereby children at ages ≤ 1 month received Bacillus Calmette-Guerin (BCG); ≥ 2 and < 4 months received BCG, vaccinated against Diphtheria, Pertussis and Tetanus (DPT1), and Polio (Polio1); ≥ 4 and < 6 months received BCG, DPT1, Polio1, DPT2 and Polio2; ≥ 6 and < 12 months received BCG, DPT1, Polio1, DPT2, Polio2, DPT3 and Polio3; ≥ 12 and ≤ 59 months received BCG, DPT1, Polio1, DPT2, Polio2, DPT3, Polio3 and Measles.

Antenatal visits: Mothers visited a health facility four or more times during their pregnancy for antenatal care.

Medical treatment for fever: Children taken to a health facility for treatment if they had fever/cough in the course of the past two weeks prior to the survey.

Medical treatment for diarrhea: Children taken to a health facility for treatment it they had diarrhea in the course of the past two weeks prior to the survey.

Home-based childcare practices.

Use of insecticide-treated bed net (ITNs): Children slept under ITNs the night prior to the survey.

Sanitary disposal of stool: Children’s stool disposed in a toilet or latrine.

Use of oral rehydration solutions (ORS) during diarrhea: Children given a fluid made from a special packet called Oralite/Oral dehydration salts if they had diarrhea in the course of the past two weeks prior to the survey.

Amount offered to drink during diarrhea: Children given same amount or more than usual to drink if they had diarrhea in the course of the past two weeks prior to the survey.

Amount offered to eat during diarrhea: Children given same amount or more than usual to eat if they had diarrhea in the course of the past two weeks prior to the survey.

Consumption of minimum acceptable diet: Children of ages 6–23 months who received a minimum acceptable diet as recommend by WHO [38]. This variable was computed by combining breastfed and non-breastfed children of ages 6–23 months who had at least the minimum recommended dietary diversity and meal frequency. Specifications for breastfed children was that they received foods from 4 or more food groups for their minimum dietary diversity requirement, and received meals 2 times for ages 6–8 months and 3 times for ages 9–23 months for their minimum meal frequency, 24 hours prior to the survey. For non-breastfed children, the condition was that they received foods from 4 or more food groups for their minimum dietary diversity requirement, and that they received meals 4 times for their minimum meal frequency 24 hours prior to the survey. We constructed six food groups: i) Grains, roots and tubers; ii) Legumes and nuts; iii) Dairy products (milk, yogurt, cheese); iv) Animal products (meat, eggs, fish, poultry and liver/organ meats); v) vitamin-A rich fruits and vegetables; vi) other fruits and vegetables. It is important to note that WHO recommends eggs be grouped in its own food category [38] but this was not possible in this study since KDHS combined eggs and other animal products into one variable during data collection.

Predictor variables comprised of socio-economic and demographic factors which included: wealth quintiles using the DHS wealth index WI (a proxy for standard of living based on household ownership of assets and housing quality) [39], maternal education (completion of formal levels of education), religion (Christian or not), residence (living in urban or rural administrative area), radio exposure (media exposure through radio at least once in a week), and maternal literacy (ability to read simple text). Maternal decision making latitude variable referred to a woman’s independence in making household and own health decisions (having a final say on her own healthcare, purchase of large household goods, purchase of daily household goods, visiting friends/relatives, and the type of food to be cooked), while maternal wife beating attitude variable was constructed by considering whether a woman believed that wife beating was justified when she goes out without permission, neglects children, when she argues with the husband, refuses sex with the husband, and burns food. We also constructed a season's variable based on the month the KDHS data was collected and the Kenyan weather pattern: January, February and March (Dry season); April, May and June (Long rains season); and July, August, September, October, November and December (Short rains season).

Data analysis

Fig 1 is an analytical framework used to guide the analysis. The framework hypothesizes that contextual factors such as place of residence and season affect resources available at the household and individual levels. Resources at the household and individual levels affect the type of care given to children which then affects their health and development. Based on the analytical framework, patterns of optimal childcare practices were ascertained by comparing changes in prevalence of facility- and home-based care between 2003 and 2014. We then used logistic regression to examine correlates of optimal childcare practices in 2003, 2008–9 and 2014. Logit models were organized to first assess the gross effects of place of residence on optimal childcare practices (logit model 1), followed by an assessment of net effects of place of residence on optimal childcare practices adjusting for other socio-economic and demographic variables (logit model 2). To take into account the oversampling of urban areas and the multi-stage KDHS sampling design, SPSS’s complex samples module was used to incorporate sample weight, cluster and strata in all the analyses.

Results

Characteristics of respondents in the three surveys are given in Table 1. The table shows that there were minimal differences in samples across the three surveys stratified by the different socio-demographic segments. Table 2 shows patterns of facility- and home-based care practices in 2003, 2008–9 and 2014. Comparing the 2003 and 2014 prevalence, there were changes in the prevalence of all childcare practices. However, not all practices increased in prevalence; quality care during child’s bouts of diarrhea and consumption of a minimum acceptable diet actually decreased. Among the childcare practices that increased in prevalence, the largest improvements were in bed net use (home-based care) and medical treatment for diarrhea (facility-based care). Of these, bed net use improved remarkably, from 6% in the 2003 data to 57% in the 2014 data.

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Table 1. Comparison of the socio-demographic characteristics of KDHS 2003, 2008–9 and the 2014 samples.

https://doi.org/10.1371/journal.pone.0161221.t001

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Table 2. National patterns: Health facility- and home-based optimal childcare practices.

https://doi.org/10.1371/journal.pone.0161221.t002

Tables 36 show results of logistic regression analyses. Here, it is important to note that due to limited space and to avoid presentation of overwhelming data, we have only presented logit models of optimal childcare practices that showed some consistency in their predictions (statistically significant predictor variables appearing across the three surveys). Detailed logistic regression results for all the other optimal childcare practices are available in S1S5 Tables.

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Table 6. Correlates of disposal of child's stool in a toilet/latrine.

https://doi.org/10.1371/journal.pone.0161221.t006

Table 3 shows logistic regression results for correlates of complete child immunization. Examining the two logit models, region of residence persisted as a significant predictor of a child’s complete immunization status across the three surveys. Children residing in Nyanza region were two times more likely not to be fully immunized in 2003 (OR = 2.8, p < 0.001) and in 2014 (OR = 2.2, p < 0.05) as compared to children in Nairobi. Another significant predictor of child immunization was maternal parity whereby an increase in parity was associated with an increase in the odds of children not achieving complete immunization status: 2003 (OR = 1.1, p < 0.001), 2008–9 (OR = 1.1, p < 0.05) and 2014 (OR = 1.1, p < 0.01).

Table 4 shows the raw and net effects of place of residence as a predictor of mothers attending at least four antenatal care (ANC) visits during their pregnancy. The unadjusted model shows that place of residence is a strong predictor of attending at least four ANC visits but its ability to predict ANC attendance weakens when other socio-demographic variables are adjusted. The adjusted model shows that household wealth, mother’s age, parity, maternal education and pregnancy history are significant predictors of attending at least four ANC visits. Women in poorer wealth quintile were two times more likely not to attend at least four ANC visits in 2008–9 (OR = 2.3, p < 0.001) and in 2014 (OR = 1.9, p < 0.01) as compared to women in the richest wealth quintile. Older women were more likely to attend at least four ANC visits with increase in age being associated with a decrease in the likelihood of not attending at least four ANC visits: 2003 (OR = 0.96, p < 0.01), 2008–9 (OR = 0.97, p < 0.05) and 2014 (OR = 0.97, p < 0.01). An increase in parity on the other hand was associated with an increase in the likelihood of not attending at least four ANC visits in 2003 (OR = 1.2, p < 0.001) and in 2014 (OR = 1.1, p < 0.001). In regard to maternal education, mothers with only some or complete primary education had higher odds of not attending four ANC visits in 2003 (OR = 1.3, p < 0.05), 2008–9 (OR = 1.5, p < 0.05) and 2014 (OR = 1.4, p < 0.05) as compared to mothers with secondary or higher education. Another predictor of ANC attendance was maternal pregnancy history whereby compared to mothers whose pregnancy was wanted, mothers whose pregnancy was mistimed or unwanted were at a higher risk of not attending the recommended four or more ANC visits: 2003 (OR = 1.5, p < 0.001), 2008–9 (OR = 1.5, p < 0.001) and 2014 (OR = 1.3, p < 0.01).

The gross and net effects of place of residence as a predictor of whether a child slept under an insecticide treated bed net (ITN) is shown in Table 5. Examining logit models 1 and 2 show that region of residence is a consistent significant predictor of ITN use in both the unadjusted and adjusted logit models. On the other hand, the effect of urban/rural residence in predicting ITN use was only strong in the unadjusted logit model but weakened when other sociodemographic variables were introduced in the regression equation. Controlling for other socio-demographic variables, children residing in almost all regions in Kenya were more likely to sleep under an insecticide treated bed net in 2008–9 and 2014 as compared to those residing in Nairobi.

Other significant determinants of ITN use were household wealth and child’s age. Children from poor households were significantly at a higher risk of not sleeping under an insecticide treated bed net. For example, comparing the richest against the poorest households shows that children in the poorest households had consistently higher odds of not sleeping under an insecticide treated bed net in 2003 (OR = 14.8, p < 0.001), 2008–9 (OR = 2.1, p < 0.05) and 2014 (OR = 2.3, p < 0.001). In relation to child’s age, the 2008–9 and 2014 data showed that an increase in the child’s age was associated with an increase in the odds of not sleeping under an insecticide treated bed net: 2008–9 (OR = 1.02, p < 0.001) and 2014 (OR = 1.01, p < 0.001).

Table 6 shows logistic regression findings of the correlates of sanitary disposal of child's stool. Logit models 1 and 2 show that region of residence was a consistent predictor of sanitary disposal of a child’s stool. In 2014, households in all the other regions in Kenya were more likely to dispose their children’s stool in a toilet/latrine than households in Nairobi. Of significance is the change in odds between 2008–9 and 2014 in Rift Valley, Nyanza, Eastern and Coast regions. As compared to Nairobi region, households in the aforementioned regions were more likely not to dispose their children’s stool in a toilet/latrine in 2008–9 but this changed in 2014 whereby they were now more likely to dispose their children’s stool in a toilet/latrine with households in Nairobi as a reference.

Household wealth, maternal age, parity, educational attainment, and child’s age were other significant predictors of sanitary disposal of child’s stool. Starting with household wealth, households in the poorest wealth quintile were more likely to engage in unsanitary disposal of their children’s stool as compared to households in the richest wealth quintile: 2003 (OR = 3.8, p < 0.001), 2008–9 (OR = 9.2, p < 0.001) and 2014 (OR = 5.3, p < 0.001). An increase in maternal age was associated with a decrease in unsanitary disposal of a child’s stool in 2003 (OR = 0.94, p < 0.001), 2008–9 (OR = 0.94, p < 0.01) and 2014 (OR = 0.95, p < 0.01). On the other hand, an increase in maternal parity was associated with an increase in the odds of not disposing a child’s stool in a toilet/latrine in 2003 (OR = 1.2, p < 0.001), 2008–9 (OR = 1.2, p < 0.001) and 2014 (OR = 1.1, p < 0.05). With regard to maternal education, mothers with no education were more likely to engage in unsanitary disposal of their children’s stool than those who had attained secondary or higher education: 2003 (OR = 2.5, p < 0.01), 2008–9 (OR = 3.9, p < 0.01) and 2014 (OR = 2.7, p < 0.01). Lastly, an increase in a child’s age was associated with a decrease in unsanitary disposal of the child’s stool in 2003 (OR = 0.97, p < 0.001), 2008–9 (OR = 0.99, p < 0.001) and 2014 (OR = 0.98, p < 0.001).

Discussion

The study examined patterns of optimal childcare practices in Kenya using surveys conducted in 2003, 2008–9 and 2014. We hypothesized that given the continuous child health promotion activities conducted by the government and by non-government organizations throughout Kenya, the prevalence of health promoting childcare practices would increase significantly during the 11-year period. Study findings at the national level showed that all facility-based childcare practices increased between 2003 and 2014. In relation to home-based care, increases in the use of ITNs, proper disposal of child’s stool and use of ORS during diarrhea were noted. Nonetheless, negative patterns in childcare practices were also experienced with decreases in the proportion of children who were offered same/more fluid/food when they had diarrhea and children who consumed a minimum acceptable diet. With regard to possible determinants of childcare practices, the study noted that area of residence (region), household wealth, maternal education, parity, mother's age, child’s age and pregnancy history were significant correlates of optimal childcare practices in Kenya. In the text that follows, we first discuss some of the health promotion activities that may have informed the observed changes in the national prevalence of optimal childcare practices, and later discuss the significance of the regression findings on the correlates of childcare practices.

The increases in complete immunization, attendance of at least four ANC visits, medical treatment of diarrhea and fever, use of ITNs, proper disposal of child’s stool, and use of ORS during diarrhea could indicate a success story for the various health promotion activities undertaken by the government in collaboration with non-governmental partners. In early 2003, the Kenyan government embarked on a five-year reform strategy in the health sector. There were specific targets geared towards increasing immunization coverage, reducing child mortality and morbidity, increasing access to safe and improved sanitation standards [19]. One notable initiative was the extensive marketing of subsidized ITNs from 2002 to 2004, and later free issuance of ITNs coupled with educational campaigns targeting pregnant women and children under-five [40].

In 2001, Kenya was among a host of countries that benefited from financial support by the Global Alliance for Vaccines and Immunization (GAVI) that aimed at introducing new vaccines and strengthening immunization services. The support was specifically directed towards expansion of vaccine clinics, training of health workers and community mobilization, all geared towards reducing cost and increasing immunization coverage [21,41]. An evaluation study on the coverage of measles vaccine delivered through the supplemental immunization activity from 2001 to 2005 showed that the program reached a greater percentage of previously unvaccinated children [42]. Improvements in the use of ORS, medical treatment for diarrhea/fever and proper disposal of children’s stool could be a result of the government’s efforts to ensure that caregivers are educated on the prevention and management of diarrhea and other childhood illnesses, as highlighted in policy guideline on the control and management of diarrheal diseases in children under-five [43].

Another notable development that could explain national increases in some of the optimal childcare practices, especially health facility-based childcare, are the changes in user fee policy in Kenya [25,26]. In 2004, the Kenyan government removed all user fees at public primary healthcare facilities (dispensaries and health centers), except for a minimum registration fee of 10 or 20 Kenya shillings. There was also a special provision for children under age five and clients with specific health conditions, including malaria and tuberculosis to be exempted from registration fees. In 2007, the government abolished all fees for deliveries in public health facilities and in 2013 it set aside a budget for compensation to lower-level facilities for providing free maternity services [25,26]. These policy changes could have eased the costs incurred by mothers when accessing health services and hence led to the observed increases in facility-based childcare practices.

Despite the encouraging childcare patterns just discussed, attention needs to be given to the decreasing prevalence in the proportion of children who received same/more fluid/food during diarrhea, and children who consumed the minimum acceptable diet. Notwithstanding increases in ORS use, it is perplexing that patterns of home treatment for diarrhea through offering same/more fluids/food declined over the study period. Studies have documented inadequate home-based management of diarrhea in Kenyan households that are clouded with confusion between ORS and other Oral Rehydration Therapies (ORT) [44,45]. Perhaps because of this confusion, it has been reported that most caregivers preferred offering ORS to other ORT and offered much less fluid and food to their children during diarrhea [44]. The present study presents a nuanced analysis, showing that during a period of increased use of ‘technical’ solutions to diarrhea (medical care and ORS), the use of ‘home’ solutions waned. This could be due to a perverse and unintended result of the health campaigns. Even if not saying so explicitly, an implicit message could have been promulgated that ‘medicine is best’.

Results of the present study on child feeding are alarming as they not only show that very few children in Kenya are consuming the minimum acceptable diet, but also that the proportion has significantly reduced from the 2003 to the 2014 survey. This finding is of great public health concern as it comes in the wake of a recent study that showed that trends in child growth in Kenya have either stagnated or gotten worse from 1993 to 2009 [31]. Given that dietary diversity and food frequency are among the proximate determinants of child growth and development [4,46] poor patterns in child consumption of minimum acceptable diet paint a grim picture for efforts to improve child health in Kenya. Research on the food fed to Kenyan children has shown that the food lacks in quantity and more so in quality [47,48]. Various government food policies seem to be falling short, despite laudable aims to support food self-sufficiency and more equitable distribution of quality food to the population [23].

This study hypothesized that health promotion activities between 2003 and 2014 would contribute to significant increases in the prevalence of health promoting childcare practices in Kenya. Yet, many factors other than health promotion might have been at play [49]. Period effects include the health promotion activities listed in the introduction (and many that are not listed), and the myriad of other happenings that influenced Kenyan life from 2003 to 2014. These include changes in the economic and political situations, changes in medical practice and the availability of health services, population composition changes due to in- and-out migration, and social changes due to evolving communications possibilities, evolving norms and changing social lifestyles. It is futile to attempt to precisely attribute social change (such as in childcare practices) to particular period phenomena (such as campaigns). Intertwined with period effects are cohort effects: the children born into the cohort of the 2003 survey did not have the same life exposure experience, opportunities and hindrances as the children born into the cohort of the 2008–9 and 2014 surveys.

We conducted a regression analysis using socio-economic and demographic variables to unravel some of the factors informing the observed national changes in prevalence of some of the childcare practices. Our study findings showed that region, household wealth, maternal education, parity, mother's age, child’s age and pregnancy history were significant correlates of optimal childcare practices. Beginning with region of residence, this study has demonstrated that there are significant regional differences in how children are cared for in Kenya. It is clear that while national patterns show improvements in children achieving complete immunization status, children in Nyanza were at a higher risk of not reaching such a feat. Regional differences were also noted in ITNs use and proper disposal of children’s stool. In 2014, children in almost all the other regions were more likely to have slept under an ITN and their stool properly disposed than children in Nairobi; contrasting the scenario in the earlier surveys where Nairobi was doing better than the other regions. There is a possibility that health promotion campaigns to encourage use of ITNs, proper disposal of child’s stool, and complete immunization did not yield uniform results across the country and that other contextual issues in Nairobi and Nyanza regions need to be investigated. Regional differences in other childcare practices such as breastfeeding have also been noted in other studies in Kenya [34,50,51] and have highlighted existence of complex array of factors including cultural and socioeconomic that come into play when providing care to children.

Turning to household wealth and maternal education as significant correlates of childcare practices, study findings corroborate what has been documented in other studies whereby children of mothers from lower socioeconomic status and educational background tend to receive suboptimal care [33,5254]. While improvements have been noted in the national prevalence of women attending at least four ANC visits, children sleeping under ITNs and proper disposal of children’s stool, results from the regression analysis showed that poverty and lower educational attainment are still barriers towards attaining optimal childcare practices in Kenya. This could therefore mean that changes in maternal education and household poverty in the 11-year period, both as markers of period phenomena and health promotion activities, was not significant enough to ensure that children in the lower socioeconomic class receive optimal care.

Other significant covariates of childcare practices were maternal age, parity, pregnancy history and child’s age. An increase in maternal age was associated with an increase in the likelihood of attending the recommended four or more ANC visits and proper disposal of child’s stool. Studies that have investigated maternal age and childcare practices have shown that due to poor health seeking behaviors, younger mothers were at a higher risk of receiving inadequate care during pregnancy and were less likely to provide optimal care to their children [52,55]. It is probable that due to the experience that comes with age, older women would likely observe better sanitation at home than the younger unexperienced women.

In relation to maternal parity, women with many births were associated with poor childcare practices such as failure to attend at least four ANC visits, incomplete immunization status of children and poor disposal of child’s stool. It has been argued that multiparous women are likely to have extensive experience of the changes during the pregnancy and childcare and thus less likely to pay attention to practicing healthy behaviors as compared to primiparous mothers who are anxious and more likely to seek maternal and child health services [55,56].

With regard to pregnancy history, mistimed or unwanted pregnancies were associated with poor antenatal care. In a study that investigated the relationship between pregnancy history and receipt of childcare practices in Bolivia, Egypt, Kenya, Peru, and the Philippines, Marston et al., found a significant systematic association between unwanted pregnancy history and poor antenatal care across the five countries [57]. Wanting or planning pregnancy affects a woman's recognition of pregnancy symptoms which determines her early or late entry into prenatal care. Thus, pregnancies that are mistimed or wanted are more likely to be recognized later with fewer visits to the health facility [56,58].

On the relationship between child’s age and childcare practices, higher child age was associated with poor ITNs use but better sanitary stool disposal. Investigating intra-household ITNs use in Ethiopia, Ghana, Mali, Nigeria, Senegal, and Zambia, Baume and Marin [59] found that younger children, especially those under 2 years, were more likely to sleep under a net because they were considered more vulnerable to malaria than older children. On child stool disposal, it has been documented that the use of latrines or toilets is not considered appropriate for younger children until they are three to four years old [60]. Therefore, it is logical that households with older children are likely to observe sanitary disposal of stool as compared to households with younger children.

This study has strengths and limitations. The major strength relates to the use of nationally representative data that enabled national estimates of prevalence and correlates of optimal childcare practices in 2003, 2008–9 and 2014. By studying a combination of childcare practices, this study embraced the importance of conceptualizing care for children as a continuum that spans from inception throughout a child’s life rather than a single event [8]. The major limitation of this study is the use of retrospective, self-reported behavior that is subject to recall bias [61,62]. Nonetheless, the use of maternal reports as a method of data collection is widely used in survey research despite some limitations [63,64].

Conclusions

We examined changes in facility- and home-based optimal childcare practices in Kenya using data from 2003, 2008–9 and 2014. Between 2003 and 2014, increases were observed in the proportions of pregnant women who attended four or more ANC visits, complete immunization, medical treatment of diarrhea and fever, use of ORS during diarrhea, use of ITNs, and proper disposal of child’s stool. To the contrary, decreases were observed among children who were offered same/more fluid/food when they had diarrhea and children who consumed the minimum acceptable diet. Area of residence (region), household wealth, maternal education, parity, mother's age, child’s age and pregnancy history were significant determinants of optimal childcare practices across the three surveys.

National, regional and local child health promotion activities, coupled with changes in society and in living conditions between 2003 and 2014, could have influenced uptake of certain recommended childcare practices in Kenya, while other practices worsened. Concerted efforts are needed to address the consistent inequities in the uptake of the recommended childcare practices. Such efforts should be cognizant of the underlying factors that affect childcare in Kenya such as region of residence, household wealth, maternal education, parity, mother's age, child’s age and pregnancy history. Also important is linking child health education promotion activities that are informed by recent advances in health communication scholarship [65,66].

Supporting Information

S1 Table. Logistic regression results of determinants of complete immunization and antenatal visits (≥4).

https://doi.org/10.1371/journal.pone.0161221.s001

(XLSX)

S2 Table. Logistic regression results of determinants of medial treatment for fever and diarrhea.

https://doi.org/10.1371/journal.pone.0161221.s002

(XLSX)

S3 Table. Logistic regression results of determinants of insecticide treated bednets use and sanitary disposal of child’s stools.

https://doi.org/10.1371/journal.pone.0161221.s003

(XLSX)

S4 Table. Logistic regression results of determinants of amount offered to drink and eat during diarrhea.

https://doi.org/10.1371/journal.pone.0161221.s004

(XLSX)

S5 Table. Logistic regression results of determinants of oral rehydration salts use during diarrhea and consumption of a minimum acceptable diet.

https://doi.org/10.1371/journal.pone.0161221.s005

(XLSX)

Acknowledgments

We acknowledge gratefully the Kenyan government, the NGOs and the entire KDHS team that sponsored/conducted the 2003, 2008–9 and 2014 surveys. We deeply appreciate the contribution of the survey respondents.

Author Contributions

  1. Conceived and designed the experiments: DM MM.
  2. Performed the experiments: DM HBU MM.
  3. Analyzed the data: DM.
  4. Contributed reagents/materials/analysis tools: DM HBU MM.
  5. Wrote the paper: DM HBU MM.

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