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eISSN: 2378-315X

Biometrics & Biostatistics International Journal

Research Article Volume 8 Issue 2

Bayesian generalized linear model for identifying predictors of child nutritional status in Ethiopia

Reta Habtamu Bacha, Megersa Tadesse

Department of Statistics, Jimma University, Ethiopia

Correspondence: Reta Habtamu Bacha, Department of Statistics, Jimma University, Jimma, Ethiopia

Received: December 29, 2018 | Published: April 30, 2019

Citation: Bacha RH, Tadesse M. Bayesian generalized linear model for identifying predictors of child nutritional status in Ethiopia. Biom Biostat Int J. 2019;8(2):65-74. DOI: 10.15406/bbij.2019.08.00273

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Abstract

Background: In Ethiopia, child malnutrition is one of the most serious public health problem and the highest in the world. The overall prevalence of underweight among children under five years old in Ethiopia was 25% and 7% are severely and moderate underweight in 2014 respectively. Malnutrition in sub-Saharan Africa contributes to high rates of childhood morbidity and mortality. However, little information on the nutritional status of children is available from informal settlements. The primary aim of this study was then to determine the determinants of children malnutrition in Ethiopia using Bayesian generalized linear model. The overall prevalence of underweight among children in Ethiopia was 36.4.

Methods: Data was obtained from 2011 Ethiopian Demographic and Health Survey (EDHS). Bayesian Generalized regression model was used to identify the effects of selected socioeconomic, demographic, health and environmental covariates. Bayesian approach with Markov Chain Monte Carlo (MCMC) technique was used.

Results: The analysis result revealed that out of the 11, 654 number cases examined in this study 32.8% of male children were underweight and 33.6% of female children were underweight. It was found that the covariates succeeding birth interval, sex of child, child by choice not by chance, vaccination and cough were the most important determinants of children nutritional status in Ethiopia.

Conclusion: Inference is the fully Bayesian and classical generalized linear model based on recent Markov chain Monte Carlo techniques.Some of the socioeconomic, demographic and environmental determinants included in the study were found to be statistically significant. The result was suggested that for reducing childhood malnutrition, due emphasis should be given in improving the knowledge and practice of parents on appropriate young child feeding practice and frequent growth monitoring together with appropriate and timely interventions.

Keywords: nutrition, weight-for-age, malnutrition, anthrometric measurement, mcmc, bayesian generalized linear model

Introduction

Malnutrition is the underlying cause of more than million child deaths each year. Globally significant numbers of people are affected by malnutrition(undernutrition). The Food and Agriculture Organization(FAO) estimated that undernutrition affects approximately million people in 2014-16.1,2 The prevalence of undernourshment and underweight among children under age five were primarily used internationally to measure and compare the burden of undernutrition.2 The global trend in undernourishment has shown a substantial improvement.3 The total number of people undernourished indeveloping countries significantly decreased from 990 million people in 1990-92 to 789 million people in 2014-16. However, a closer look at the change in the proportion of undernourishment over the years tells us that this has not changed in developing countries. There is a wide variation in prevalence of undernourshment among regions. Two regions, southern Asia and Sub-Saharan Africa account for approximately and of the shares of global undernourishment, respectively.2 Next to southern Asia, Sub-Saharan African countries, especially eastern African countries, have the highest burden of undernutrition than any region in the world. The continent of Africa has not shown good progress in terms of reducing the prevalence of undernourishment compared to Asia and Latin America. Ethiopia have also a larger share of the global burden of undernutrition.4 Under nutrition and food insecurity, secondarily to poor or untimely rainfall, are significant concerns in Ethiopia. Ethiopia has one of the highest number of undernourishment people among the countries in eastern African countries, with an estimated 31.4 million people undernourished in 2014.2 However, the country has demonstrated a significant decline in the prevalence of undernourishment over the period from 1990-92 to 2014-16. For example, the proportion of undernourished people in Ethiopia had declined by from in 1990-92 to in 2014-16.2 The most common macronutrient deficiencies in Ethiopia include stunting, wasting and underweight among children under five age, as well as chronic energy deficiency among women of reproductive age group. The rates of stunting and underweight have decreased over the past 15 year5,6 but remain high, with of children under age five stunted underweight. The progress in the reduction of stunting and underweight prevalence is not uniform across the regions, and pocket studies indicated a significant variability in the magnitudes within the country. Micronutrient deficiencies among children under five are also among the nutritional problems of public health importance. Vitamin A, iron, and iodine deficiencies greatly contribute to the burden of chiildhood morbidity and mortality. In addition to this, of children of age group from six to 23 months are anaemic rate (EDHS, 2011). Breast feeding and complimentary feeding practices are essential to help the nutritional needs of children in the first years of life. In 2008, the World Health Organization(WHO) put a core set of eight indicator (i.e three breast feeding and five complimentary feeding) to help measure the appropriateness of feeding practices among children from six to 23 months.7 The eight core indicator include the initiation of breast feeding, exclusive breast feeding and continuing breast feeding for atleast one year and complimentary feeding which includes minimum dietary diversity, minimum meal frequency, minimum meal acceptable diet and consumption of iron rich foods. The objective of this study is to identify the effects of some predictor variables on nutritional status of child.

Data and statistical model

Source of data

This study is based on the 2011 Ethiopian Demographic and Health Survey (EDHS) data obtained from the Central Statistics Agency of Ethiopia. In this study, to assess the nutritional status of children, we have three anthropometric indices: weight-for-age, height-for-age and weight-for-height which are considered as the indicators of nutritional status.

Variables of the study

In this study socio-economic, demographic, health and environmental characteristics are to be proximate determinants of nutritional status. In our application on childhood nutritional status the variables are Weight-for-age (underweight) which is measured by Z-score and body mass index(BMI). Body mass index is a measure of weight adjusted for height. It is calculated as weight in kilograms divided by the square of height in meters.8 These variables are continuous. Since the nutritional status of children(weight-for age) and body mass index are affected by a number of factors, the predictor variables to be analyzed in this study as determinants of nutritional status of children are grouped as socio-economic, demographic, health and environmental factors. These factors include the child"s age, sex of child, birth order, preceding birth interval, duration of breast feeding, region, wealth index, mother education level, types of place of residence, number of household member, source of drinking water, ever had vaccination and children by choice not by chance.

Statistical analysis

The NemrodW software29 was used to build the experimental design and to conduct all data calculations and processing. The regression model was evaluated by analyzing the values of the regression coefficients, analysis of variance (ANOVA), the P-value and the F-value. The Student"s t-test was applied to determine the significance of each variable.

UV-Vis analysis of products generated after Tubantin Brown GGL treatment

Decolorization percentage of TB GGL after treatment by binary mixture (H. desertis G11 and M. trichothecenolyticum TL13) was analyzed by UV-Vis spectrophotometer (Shimadzu UV-1800 PC model Kyoto, Japan) by scanning centrifuged cell-free supernatant samples in the range 200–800 nm. The supernatant used was obtained after centrifugation 10000 rpm for 15 min at 4°C.

Methods

Let be the random observation, parameter space, and p densities the result will be

pΘypyΘpΘpy

As _1,_2..._j r a n d o m a n d p(y)= p y Θ p Θ d Θ is fixed and constant.

Thus the posterior distribution can be expressed as:

pΘypyΘpΘ    (1)

Where pyΘ is likelihood function, pΘy is posterior distribution, pΘ is prior distribution in this, we will analyze the effects of the different types of covariates on the response variables body mass index and nutritional status by using weight-for-age (underweight) Z-score as continuous variable with the assumption that each of the covariates has a linear effect on the response variable. Since we assume each covariate has a linear effect the approach we follow in this step is Bayesian Gaussian linear regression parametric approach.

Bayesian generalized linear regression model

When the effect of covariates on the response variables is linear we follow Bayesian Gaussian linear regression parametric approach. One of the most popular and useful tools in data analysis is the linear regression analysis model. Consider the normal linear regression model in which a response variableis related to one or more explanatory or predictor variables X1,...,Xp1. For a random sample of n individuals, the model becomes:

yiβ0+β1xi1+β2xi2+...+βp1xip1+εi   (2)

where p=19 and i=1,,,,11,654. We typically assume that εi is normally distributed with mean 0 and variance σ2,εi and εi and are independent of one another for ij i.e εi~iidNσ2 . In the Bayesian approach probability distributions are used to quantify uncertainty. Thus, in contrast to the frequentest approach, a joint probability model for response and parameters β,σ2 is specified. The distribution of the dependent variable y is specified conditional on the parameters (β and σ2)[8]. The analysts certainty or uncertainty about the parameter before the data analysis is represented by the prior distribution for the parameters β,σ2. After observing the sample data yi,Xi, the prior distribution is updated by the empirical data applying Bayes theorem, as in equation (1) and regression model in (2) we obtain equation (3).

pβ,σ2ypyβ,σ2pβ,σ2pyβ,σ2pβ,σ2dβ,σ2   (3)

Yielding the so called posterior distribution pβ,σ2y of the parameters β,σ2. For our specific application to multiple linear regression, we use a noncommittal, vague prior. For each regression coefficient, the prior distribution is a very broad normal distribution, with a mean of zero and a standard deviation that is large enough 1000.

Prior distribution

In Bayesian inference, the unknown function fj , j =1,...,p , the fixed effects parameters γγ1,...,γr,aswell as the variance parameterar τ2 are considered as random variables and have to be supplemented by appropriate prior assumptions. In the absence of any prior knowledge we assume independent diffuse priors γjconst, j=1,...,r for the parameters of fixed effects. In this study, for the continuous covariates child age in month and Mother age at first birth those assumed to have a possibly nonlinear effect on the Z-score are modeled non-parametrically as cubic P-spline with second order random walk priors.

The general form of the priors

Suppose thatis the vector of corresponding function evaluations at observed values of x. Then, the general form of the prior for f is

fτ2exp12τ2fKf   (4)

where, K is a penalty matrix that penalizes too abrupt jumps between neighboring parameters. In most cases K will be rank deficient; therefore the prior for f would be improper. We choose an inverse gamma distribution with hyperparamters a and b, i.e.

τ2~IGa,b

with probability density function given by:

pτ2a,bτ2a1expbτ2

Common choices for a and b are a = 1 and b = 0 . 005 (or b = 0 . 0005 ). Alternatively, one may take a=b=0.001.

Priors for fFixed effects

As indicated above for the parameter vector γ of fixed effects we choose a diffuse prior γjconst, j=1,...,r Another choice would be to work with a multivariate Gaussian distribution γ~Nγ0,σγ0. In this study, diffuse priors will be used for the fixed effects.

Priors for continuous effects under linear setup

Priors for the unknown functions f1,...,fp depend on the type of the covariates and on prior beliefs about the smoothness of fj. In the following we express the vector of function evaluations fj=(fj(x1j),,,,fj(xnj)) of a function fj as the matrix product of a design matrix Xj and a vector of unknown parameters βjs", i.e fjXjβj.

First and second order random walk priors

Let us consider the case of a continuous covariate x with equally spaced observations xi, i = 1,..., m, mn, then,x(1)<...x(m) defines the ordered sequence of distinct covariate values. Here m denotes the number of different observations for x in the data set. A common approach in dynamic or state space models is to estimate one parameter f(t) for each distinct x(t); i.e., define, f(t)=f(x(t)) and let f=(f(1),,,,,,f(m)) denote the vector of function evaluation.

Bayesian P-splines

Any smoother depends heavily on the choice of smoothing parameter, and for P spline in a mixed (fixed and continuous) framework. A closely related approach for continuous covariates is based on the P-splines approach introduced by Eilers and Marx (1996). The basic assumption of this approach is that the unknown functionca fj be approximated by a spline of degree l with equally spaced knots xmin=ξ0<ξ1<...ξr-1<ξr=xmax within the domain of xj.

Posterior inference

In this case, the specific form of the posterior depends only on the parameterization of the regression terms in the model. Then, we use Markov Chain Monte Carlo (MCMC) simulations to draw samples from the posterior and statistical inference is done by means of Markov Chain Monte Carlo techniques in a full Bayesian setting. Now we restrict the presentation to models with predictor. Full Bayesian inference is based on the entire posterior distribution. Letbe the vector of all unknown parameters, then the posterior is given by.

p(α/y)L(y, β 1 , τ 1 , β 2 , τ 2 ,..., β p , τ p ,γ) j=1 p p( β j/ τ j 2 p( τ j 2 ) MathType@MTEF@5@5@+=feaagaart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLnhiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr4rNCHbGeaGqkY=wjYJH8sqFD0xXdHaVhbbf9v8qqaqFr0xc9pk0xbba9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr0=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@70AD@

L(y, β 1 , τ 1 , β 2 , τ 2 ,..., β p , τ p ,γ) MathType@MTEF@5@5@+=feaagaart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLnhiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr4rNCHbGeaGqkY=wjYJH8sqFD0xXdHaVhbbf9v8qqaqFr0xc9pk0xbba9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiabg2Hi1kaadYeacaaIOaGaamyEaiaaiYcacqaHYoGydaWgaaWcbaGaaGymaaqabaGccaaISaGaeqiXdq3aaSbaaSqaaiaaigdaaeqaaOGaaGilaiabek7aInaaBaaaleaacaaIYaaabeaakiaaiYcacqaHepaDdaWgaaWcbaGaaGOmaaqabaGccaaISaGaaGOlaiaai6cacaaIUaGaaGilaiabek7aInaaBaaaleaacaWGWbaabeaakiaaiYcacqaHepaDdaWgaaWcbaGaamiCaaqabaGccaaISaGaeq4SdCMaaGykaaaa@56A2@

j=1 p 1 ( τ j 2 ) rk( k j 2 ) exp( 1 2 τ j 2 β j ' K j β j ) j=1 p ( τ j 2 ) a j 1 exp( b j τ j 2 ) MathType@MTEF@5@5@+=feaagaart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLnhiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr4rNCHbGeaGqkY=wjYJH8sqFD0xXdHaVhbbf9v8qqaqFr0xc9pk0xbba9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr0=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@76D9@

In a fully Bayesian approach, parameter estimates are generated by drawing random samples from the posterior via MCMC simulation techniques. The variance parameters τj2 can be estimated simultaneously with the regression coefficients γj by assigning additional hyper-prior to them. The most common assumption is, that the are independently τ j 2 MathType@MTEF@5@5@+=feaagaart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLnhiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr4rNCHbGeaGqkY=wjYJH8sqFD0xXdHaVhbbf9v8qqaqFr0xc9pk0xbba9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiabes8a0naaDaaaleaacaWGQbaabaGaaGOmaaaaaaa@3BBE@ τj2 inverse gamma distributed, i.e. τj2I(Gaj,bj), with hyper-parameters aj and bj specified a prior. A standard choice is to use a j = b j =0.001 MathType@MTEF@5@5@+=feaagaart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLnhiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr4rNCHbGeaGqkY=wjYJH8sqFD0xXdHaVhbbf9v8qqaqFr0xc9pk0xbba9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadggadaWgaaWcbaGaamOAaaqabaGccaaI9aGaamOyamaaBaaaleaacaWGQbaabeaakiaai2dacaaIWaGaaGOlaiaaicdacaaIWaGaaGymaaaa@4167@

Model diagnostic

Once a model has been developed, we now would like to know how effective the model is in describing the outcome. This is referred to as goodness of fit. The most common ways of checking goodness of fit are: diagnosis for convergence and mixing and posterior-predictive check. For convergence tests, the researcher used time series plot.

Model selection and comparison

Model selection is to select the best model among several choices based on evaluation of the performance of the models. One immediate question is how to measure goodness of fit? There are many choices. The simplest one is residual sum of squares.9

(yiy^i)

Where y i is the observed responses and y ^ i is the fitted value. This measure is also called mean squared error, and commonly used as the default measure. For GLM, deviance is a quality of fit for a model that depends on the likelihood. The researcher skip the details and the underlying theory of the definition, but pointing out that the statistical software can compute the quantity automatically. The next question is why we should consider model selection? There are several reasons. First, people tend to believe or can understand simpler models with fewer predictors and less complicated structure. Second, one can certainly add more and more features into the model without screening and get better and better fit, till perfect fit, but the problem is over fitting. Remember that the researcher want to find the best-predicting model not the best fitting model. In this study, AIC(Akaike Information Criterion), BIC(Bayesian Information Criterion), CV(Cross-Validation) and DIC (The deviance information criterion) are used to compare the linear frequent and the linear Bayesian approach with their smallest values to be better model. In this study, authors used R software(version 3.4.0) to analyze the determinant of factors under five years children nutritional status in Ethiopia.

Results and discussion

Descriptive analysis of the data

As one can see from Table 1, among the cases examined in this study of male children were underweight and of female children were underweight. The highest prevalence of child malnutrition was observed among children whose preceding birth interval was less than 24 months ( 35%) unlike to the lowest prevalence of child malnutrition which was recorded from children whose preceding birth interval is 48 and above (31.9% ). The proportion of underweight children as we can seen from Table 1, it is also differs by type of place of residence: urban and rural. Accordingly, higher numbers of underweight children (33.6% )) reside in rural areas, and relatively less numbers of underweight children (31.2% ) reside in urban centers. The evidence given in Table 1 shows that the percentage nutritional statuses of children who had diarrhea recently seem to be high probability of underweight than those children which had no diarrhea recently. Likewise, one can observe that the percentages nutritional status of children who had fever recently seemed high probability of underweight than those children who have no fever recent (33.9% ,33.1% , respectively). The evidence given in Table 1 shows that the percentages nutritional status of children in households who had used other water sources seemed to be more underweight than those children in households which used water from public source. The family education level has also it"s effect on the nutritional status of children that a mother with higher educational level(father education level) had a child with better nutritional status. Since the percentages of underweight is decreasing from no education to secondary and above education level. Children who had disease are affected by malnutrition e.g child who had cough is more affected than child who had not cough as we observe from Table 1.

Covariates         

 Categories

 Stunted

 Wasted

 Underweight

Region

Tigray

379(34.4%)

351(31.8%)

 373(33.8%)

Affar

358(36.5%)

272(27.6%)

355(36.0%)

Amhara

420(35.6%)

361(30.6%)

 398(33.8%)

Oromia

540(34.2%)

492(31.2%)

 546(34.6%)

Somali

377(42.3%)

243(27.3%)

 271(30.4%)

Benishangul-Gumuz

294(32.8%)

304(34.0%)

297(33.2%)

SNNP

516(35.5%)

466(32.0%)

473(32.5%)

Gambela

273(37.4%)

228(31.3%)

228(31.3%)

Harari

241(40.3%)

176(29.4%)

 181(30.3%)

Addis Ababa

143(39.0%)

103(28.1%)

121(33.0%)

Dire Dawa

226(35.8%)

191(30.2%)

 215(34.0%)

Place of residence

Urban

697(39.8%)

507(29.0%)

547(31.2%)

 Wealth index

Poorest

1172(36.4%)

950(29.5%)

1100(34.1%)

Poorer

663(35.1%)

607(32.1%)

621(32.8%)

Middle

565(33.4%)

536(31.7%)

589(34.9%)

Richer

602(35.7%)

537(31.8%)

548(32.5%)

Richest

765(39.8%)

557(29.0%)

600(31.2%)

Sex

Male

1918(36.2%)

1646(31.0%)

1741(32.8%)

Female

1849(36.3%)

1541(30.2%)

1717(33.6%)

Children by choice

No

3027(36.1%)

2559(30.5%)

2798(33.4%)

Yes

735(36.4%)

628(31.1%)

659(32.6%)

Mother edu.level

No education

2665(36.6%)

2187(30.0%)

2427(33.3%)

Primary

900(34.5%)

833(31.9%)

875(33.1%)

Secondary and above

202(38.5%)

167(31.8%)

156(29.7%)

Father edu.level

No education

1903(35.8%)

1604(30.1%)

1816(34.1%)

Primary

1339(35.5%)

1193(31.6%)

1244(32.9%)

Secondary and above

442(39.2%)

338(30.0%)

347(30.8%)

 Drinking water

Public

1607(36.7%)

1324(30.2%)

1447(33.1%)

Others

2158(35.8%)

1862(30.9%)

2010(33.3%)

Ever had vaccination

No

881(38.9%)

675(29.8%)

708(31.3%)

Yes

1990(35.6%)

1693(30.3%)

1912(34.2%)

Rural

3070(35.4%)

2680(30.9%)

2911(33.6%)

Had diarrhea recently

No

3221(36.6%)

2709(30.8%)

2867(32.6%)

Yes

530(33.3%)

475(29.8%)

588(36.9%)

Had child fever

No

3028(36.3%)

2548(30.6%)

2757(33.1%)

Yes

719(35.3%)

627(30.8%)

691(33.9%)

Had cough recently

No

3029(36.5%)

2507(30.2%)

2757(33.2%)

Yes

723(34.6%)

674(32.2%)

695(33.9%)

Preceding birth interval

less than 24

1022(36.6%)

825(29.5%)

969(35.0%)

24-48

999(37.0%)

839(31.1%)

945(33.8%)

Above 48

946(34.2%)

853(30.8%)

861(31.9%)

Breast feeding

Never breastfed

61(39.1%)

45(28.8%)

50(35.1%)

Ever breastfed(not cur)

1983(36.0%)

1689(30.7%)

1832(32.3%)

Still breast feeding

1700(36.1%)

1442(30.6%)

1570(30.3%)

Table 1 Summary of covariates with the response variable (weight-for-age)

From Table 2 the highest malnourished region are SNNP, Oromia, Gambela, Affar and Tigray. From all of these region the smallest malnourished region is Harari. The place of residence has also its impact as result the highest malnourished lives in rural comparing with urban.

Covariates                           

 Categories

malnourished

 well-nourished

Region

Tigray

550(49.7%)

556(50.3%)

Affar

494(49.8%)

498(50.2%)

Amhara

558(47.3%)

622(52.7%)

Oromia

795(50.1%)

793(49.9%)

Somali

423(47.3%)

471(52.7%)

Benishangul-Gumuz

472(52.6%)

426(47.4%)

SNNP

782(53.5%)

680(46.5%)

Gambela

329(44.9%)

403(55.1%)

Harari

249(41.6%)

349(58.4%)

Addis Ababa

157(42.7%)

211(57.3%)

Dire Dawa

311(49.0%)

324(51.0%)

Place of residence

Urban

802(45.6%)

955(54.4%)

Rural

4318(49.7%)

4378(50.3%)

Wealth index

Poorest

1610(49.8%)

1621(50.2%)

Poorer

925(48.5%)

982(51.5%)

Middle

867(51.1%)

830(48.9%)

Richer

834(49.4%)

855(50.6%)

Richest

884(45.8%)

1045(54.2%)

Sex

Male

2654(49.8%)

2664(50.2%)

Female

2463(48.0%)

2673(52%)

Source of drinking water

public

2141(48.7%)

2252(51.3%)

others

2975(49.1%)

3081(50.9%)

Had diarrhea

No

4290(48.6%)

4543(51.4%)

Yes

51.5(823%)

775(48.5%)

Had child fever

No

4064(48.6%)

26644301(51.4%)

Yes

1037(50.7%)

1009(49.3%)

Had cough recently

No

4037(48.5%)

4285(51.5%)

Yes

1076(51.1%)

1028(48.9%)

preceding birth interv

less than 24

1407(50.1%)

1400(49.9%)

24-48

1319(48.8%)

1386(51.2%)

above 48

1394(46.1%)

8613(53.9%)

Duration of bf

never breastfed

81(50.9%)

78(49.1%)

ever bf, not currently

2634(47.6%)

2897(52.4%)

still bf

2281(5.8%)

2441(54.2%)

Table 2 Summary of Covariates with the response variable(Body mass index)

Bayesian generalized linear regression model

Results of generalized linear regression analysis weight-for-age revealed that, the intercept is estimated to be -692.832. It can be interpreted as the value you would predict for weight for age if all predictor variables are set to minimum. We would expect an average Z-sore value of approximately -692.832 for weight for age (under weight). Results of generalized linear model analysis weight for age shows that sex of child is significant(estim -145.487, p-value 0.0315)which indicate that, Weight-for-age(underweight) of a female is lowered by 145.487 as compared to a male child. Children by choice not by chance is significant( estim -214.050, p-value 0.0432) that is Underweight of children by choice not by chance is lowered by 214.0.050 as compared to children by chance. Mother education level at secondary and above is significant level. And it is positively related to weight-for-age of children (estim 838.0805, p-value 0.0873). Weight-for-age declines with increasing mother education level. Ever had vaccination is significant(estim -194.487, p-value 0.0270). Weight-for-age of children who had ever vaccination is lowered by 194.487 as compared to no had never vaccination. Had cough is significant. Weight-for-age of children who had cough is increased by 282.807 as compared to who had no cough. Duration of breast feeding who had ever breasted, not currently breastfeeding is positively related to weight-for-age (etim 314.196, p-value=0.0655), significant at level. Weight-for-age declines with increase in duration of breast feeding of a child. Results of generalized linear model for frequentist approach for body mass index shows that the intercept value is approximately -553.208 , the y-intercept, can be interpreted as the value you would predict for body mass index if all predictor variables are zero. We would expect an average value of approximately -553.208 for body mass index (malnourished). However, this is only a meaningful interpretation if it is reasonable that all the predictors equal to zero, and if the data set actually included values for all predictors that were near 0. If neither of these conditions are true, then really has no meaningful interpretation. It just shift the regression line in the right place. The current study revealed that, Child age in month is significant at level. Body mass index of child is negatively related to child age(estm 6.340, p-value 0.0812). Which implies as child age increases the body mass index is deceased. Succeeding birth interval is positively related to body mass index (etim 6.558, p-value=0.0722), significant at level. Body mass index increase with increasing in succeeding birth interval of a child. Sex of child (gender) is significant. Body mass index of a female is lowered by 140. as compared to a male child. Children by choice not chance is significant. Body mass index of child is negatively related to children by choice not chance. Child ever had vaccination is significant. Body mass index of child is negatively related to ever had vaccination. Child who had cough is significant at . Body mass index of child is positively related to child who had cough. Duration of beast feeding is significant. Body mass index of child is positively to duration of breast feeding.

Table 3 gives results for the fixed effects (categorical covariates) on the nutritional status of children under age five in Ethiopia. The output gives posterior means along with their standard deviations and credible intervals. Since the confidence interval do not include zero, sex of child, child by choice not by chance, ever had vaccination and had cough were found statistically significant at significance level. But, regions, mother education level, source of drinking water and duration of breast feeding were found statistically insignificant. One can observe that child who had vaccinated contributes to better nourishment for children under five age. In this study, the relative chance to be underweight for the children was found to decrease with the increase of vaccination for children. The children who had no vaccination were more likely to be malnourished as compared to children ever had vaccination. And also the analysis shows that female children are better nourished than male children. On the other hand, one can observe that underweight is higher for children who had cough than child who had no cough. So children who had cough should be treated at early stage. We can see the output matches up with frequentest(traditional) approach. As the sample size increase the result should converge to the same values. One of the benefits of the Bayesian perspective (for any analysis) is that it allows us to make credible interval statements. Credible intervals are similar to confidence intervals, but in the Bayesian framework, the interval REALLY IS believed to contain the true population parameter. For instance: a credible interval for a parameter being estimated is interpreted as, there is a probability that the actual parameter is included in that interval. This is because the interval is based on information from the posterior distribution, of for instance, one of the predictor"s coefficient posterior distribution. For example, we can say there is a probability that the true population value of the Child"s sex (Female) coefficient is between -271.255 and -11.280.

(Intercept)         

Mean

Sd

2.50%

50%

97.50%

-37.017

172.848

-380.801

-35.513

296.638

as.factor (Region1) Tigray

-235.028

136.785

-498.682

-236.257

35.935

as.factor (Schild) Female

-140.934

66.113

-271.255

-141.446

-11.28

as.factor (Childbychoice) Yes

-238.769

100.714

-443.776

-236.86

-47.297

as.factor (MEDL) Secondary and above

829.133

443.42

-26.276

832.555

1689.62

as.factor (SDW) Others

103.306

67.58

-26.675

103.055

236.557

as.factor (EV) Yes

-180.055

80.879

-336.825

-181.197

-21.63

as.factor (HC)Yes

217.882

93.165

38.254

219.401

397.688

as.factor (DBFa)  Ever breastfed, not current

276.466

164.331

-39.01

275.631

598.303

Table 3 Summary of Bayesian generalized linear model fixed effects estimation results of weight-for-age

Scale estimate: 2178410

N=1969 DIC=1986.847 pd=8.922508 AIC=28753.8

method=STEP family=gaussian iterations=10000 step=2

From Table 4 we also observe that number of significant variables are the same for weight for age and as the result those variables are affect body mass index. Body mass index of child sex(female) is lowered by -138.5870 comparing to male child which indicate the decrement of body mass index is highly observed in female children that can make female more susceptible to illness, impair the growth and development, cause infertility and the raise for different disease including death. Likewise from Table 4 child who had cough faces high body mass index comparing to child who had not cough and child ever vaccinated faces low body mass index. Which indicate only vaccination is not enough as result children should get sufficient macro nutrients. Generally, the Bayesian generalized linear model satisfy the normal assumption of the residual. the models in Bayesian approach MCMC post estimation diagnosis, it is also possible to extract sampling paths of parameters with function samples(), or to plot the samples directly. For instance, coefficient sampling paths for term sx(SBI) are displayed which is important to check the model convergence in the time series plot.

(Intercept)                     

 Mean

 Sd

2.50%

50%

97.50%

167.046

222.901

-262.467

168.528

601.062

Child age

-6.1193

3.5448

-13.1032

-6.1044

0.7738

SBI

7.0981

3.5063

0.3645

7.0083

14.1063

as.factor (Region1) Tigray

-199.706

135.52

-475.312

-199.459

69.1336

as.factor (Region1) SNNP

141.205

89.4776

-34.7017

143.12

317.365

as.factor (Schild) Female

-138.587

65.7587

-268.593

-137.592

-11.8307

as.factor (Childbychoice) Yes

-220.97

99.9777

-413.363

-221.502

-24.937

as.factor (MEDL ) Secondary and above

772.072

441.918

-111.42

781.612

1616.64

as.factor (EV) Yes

-163.949

80.9812

-327.144

-163.562

-2.8443

as.factor (HC) Yes

207.696

92.5048

25.2276

207.318

389

as.factor (DBFa) Ever breastfed, not current

268.439

163.619

-50.7223

266.995

591.912

Table 4 Summary of Bayesian generalized linear model fixed effects estimation results: for BMI

Scale estimate: 2126770

N=1969 DIC=1990.781 pd=10.88936 AIC=28710.6

method=STEP family=gaussian iterations=10000 step=2

Model comparison

We analyzed the DHS data set using two different approaches. It is reasonable to ask which type of model is better. The two models are listed in the following:

Model 1 = Generalized linear regression model in frequentest

Model 2 = Generalized linear regression model in Bayesian Model selection is an important part of statistical analysis, and indeed is a central to the pursuit of science in general. Many authors have examined this question, rom both frequentist and Bayesian perspective, and many tools o selecting the "better model". The models proposed in this study are quite general and the model building process can be quite challenging. Currently, an automated procedure for Bayesian model selection is not available. However, a few recommendations are possible. Users should try to incorporate everything that is theoretically possible and different Bayesian models could be compared via the DIC.10 From Table 5, when we compare Model 1 and Model 2 via AIC, the most interesting fact here is that the better models in terms of AIC. Model 2 (Generalized linear regression model in Bayesian approach) since they have less value (28753.8) and (28710.6) and they are chosen by the data analyst. The point is that models 2 are a better models than models 1 (Gaussian linear regression model in frequentest approach).

 AIC

 GCV

 DIC

 AIC

 GCV

 DIC

Model 1

34378

 -

 -

 Model 1

34334

 -

 -

Model 2

28753.8

 -

1986.847

 Model 2

28710.6

 -

1990.781

Table 5 Summary result of models comparison criteria for weight-for-age on the left and body mass index on right hand side

Discussion

This study was intended to identify the determinants of the nutritional status of children under five years old in Ethiopia based on EDHS 2011 data. The nutritional status was measured by the weight-for-age and body mass index is measured by weight/height. Accordingly, Bayesian Generalized linear model analysis on underweight was employed to identify flexibly the effect of covariates on nutritional status of the children. In this study, underweight was analyzed based on the modified anthropometric measurement indicators of the nutritional status of children calculated using new growth standards published by the World Health Organization in 2006. The results obtained are discussed as follows. The total number of children covered in the present study was 11,654, among which 34.4% were underweight. The Bayesian Generalized linear model analysis revealed that the covariates: sex of child, children by choice not by chance, ever had cough and ever had vaccination were found statistically significant. But, region, mother education level, source of drinking water and duration of beast feeding were found statistically insignificant. In this section, sex of child (female) was also played statistically significant role in identify children malnutrition in Ethiopia. This finding is consistent with the study in the context of child"s malnutrition study in Ethiopia,11 which reported that child"s sex has a strong and significant effect on nutritional status of children. Under body mass index for Bayesian Generalized linear model analysis covariates like succeeding birth interval, sex of child, children by choice not by chance, ever had vaccination and cough were found statistical significant. But, child age in month, region, mothers education level and duration of breast feeding were statistically insignificant which is some what consistent with.12 The findings of this study also showed that children who had cough are vulnerable to malnutrition problem than those who had not. This finding is consistent with other studies.13,14 This may be due to the fact that cough accelerates the onset of malnutrition by reducing food intake. In consequence, these results increased risk of childhood diseases, which contribute to malnutrition. As shown in the analysis, urban children were less likely to be malnourished than their rural counterparts because the quality of health environment and sanitation is better in urban areas, whereas, the living condition in rural areas were associated with poor health condition, and lack of personal hygiene, which were the risk factors in determining malnutrition. This is contradict with some studies, where place of residence has a statistical insignificant effect on children nutritional status.15,16 The findings of this study also showed that children who had ever vaccinated are not such vulnerable to malnutrition problem than those who had not vaccinated. This result is unique from all of the previous research since ever had vaccination is insignificant for the previous one.15–39

Conclusion

The results found that children living in the Affar and Oromia region of Ethiopia are associated with weight for age (underweight). While the children which are living in Harari and Somali are less associated with underweight comparing with other regions. Determinants that affects levels of nutritional status of children have been explored using different models like Generalized linear models in frequentest and Bayesian approaches. In these model, the analysis shows that child sex, children by choice not by chance, vaccination, source of drinking water, duration of breast feeding and cough important fixed factors which affect the weight for age of children in Ethiopia. Variables like succeeding birth interval, child sex, children by choice not by chance, vaccination, and cough are also affect body mass index. Mother education level, which is related to wealth index, is a determinant of good child care knowledge and practices. In this study, the education attainment of mothers does not have a significant effect on the underweight of a child in Ethiopia in separate analysis. This result is against the suggestion that an educated mother assumes the responsibility of taking a sick child to receive care health. Mother education level, which is related to succeeding birth interval have also determine the body mass index since they are significant effect.

Recommendations

In addition to the efforts being made to reduce malnutrition in general, specific attention should be given to reduce the prevalence of malnutrition by taking the following in to consideration. The concerned body:
  1. Should give due attention to the high risk factors identified as contributing high risk of malnutrition in children under five years of age due emphasis.
  2. Should be given better source of water for community in more facilitated manner.
  3. And also male and female children should be equally treated and have similar care and support since female children were more likely to be underweight than male children in Ethiopia.
  4. Finally, further findings should be incorporating for additional risk factors which are associated with childhood malnutrition in Ethiopia regional wise.

Acknowledgments

The authors gratefully acknowledge Central Statistics Agency for providing the data. This work was financially supported by the College of Natural Science, Hawassa University.

Conflicts of interest

Author declares that there is no conflicts of interest.

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