Literature DB >> 26506563

Missed Opportunities for Measles, Mumps, and Rubella (MMR) Immunization in Mesoamerica: Potential Impact on Coverage and Days at Risk.

Ali H Mokdad1, Marielle C Gagnier1, K Ellicott Colson2, Emily Dansereau1, Paola Zúñiga-Brenes3, Diego Ríos-Zertuche3, Annie Haakenstad1, Casey K Johanns1, Erin B Palmisano1, Bernardo Hernandez1, Emma Iriarte3.   

Abstract

BACKGROUND: Recent outbreaks of measles in the Americas have received news and popular attention, noting the importance of vaccination to population health. To estimate the potential increase in immunization coverage and reduction in days at risk if every opportunity to vaccinate a child was used, we analyzed vaccination histories of children 11-59 months of age from large household surveys in Mesoamerica.
METHODS: Our study included 22,234 children aged less than 59 months in El Salvador, Guatemala, Honduras, Mexico, Nicaragua, and Panama. Child vaccination cards were used to calculate coverage of measles, mumps, and rubella (MMR) and to compute the number of days lived at risk. A child had a missed opportunity for vaccination if their card indicated a visit for vaccinations at which the child was not caught up to schedule for MMR. A Cox proportional hazards model was used to compute the hazard ratio associated with the reduction in days at risk, accounting for missed opportunities.
RESULTS: El Salvador had the highest proportion of children with a vaccine card (91.2%) while Nicaragua had the lowest (76.5%). Card MMR coverage ranged from 44.6% in Mexico to 79.6% in Honduras while potential coverage accounting for missed opportunities ranged from 70.8% in Nicaragua to 96.4% in El Salvador. Younger children were less likely to have a missed opportunity. In Panama, children from households with higher expenditure were more likely to have a missed opportunity for MMR vaccination compared to the poorest (OR 1.62, 95% CI: 1.06-2.47). In Nicaragua, compared to children of mothers with no education, children of mothers with primary education and secondary education were less likely to have a missed opportunity (OR 0.46, 95% CI: 0.24-0.88 and OR 0.25, 95% CI: 0.096-0.65, respectively). Mean days at risk for MMR ranged from 158 in Panama to 483 in Mexico while potential days at risk ranged from 92 in Panama to 239 in El Salvador.
CONCLUSIONS: Our study found high levels of missed opportunities for immunizing children in Mesoamerica. Our findings cause great concern, as they indicate that families are bringing their children to health facilities, but these children are not receiving all appropriate vaccinations during visits. This points to serious problems in current immunization practices and protocols in poor areas in Mesoamerica. Our study calls for programs to ensure that vaccines are available and that health professionals use every opportunity to vaccinate a child.

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Year:  2015        PMID: 26506563      PMCID: PMC4624243          DOI: 10.1371/journal.pone.0139680

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Measles mortality dropped globally from 733,000 deaths in 2000 to 164,000 in 2008 [1]. An estimated 13.8 million deaths were avoided between 2000 and 2012 because of measles vaccinations [2]. These great gains have led the World Health Organization to target measles for elimination [3,4]. In the Americas, recent outbreaks of measles, which is generally imported from other countries, have attracted media and popular attention [5,6]. Many children are not immunized, leaving them at risk for contracting the disease. Measles vaccinations remain a key public health measure in the fight against infectious disease in the Americas. In this study, we assess the presence of missed opportunities to vaccinate using a large household survey in Mesoamerica. We estimate the potential increase in immunization coverage and reduction in days at risk for children aged 11–59 months if every opportunity to vaccinate a child was taken advantage of.

Methods

Study design and participants

The data presented were collected as part of the baseline evaluation for Salud Mesoamérica 2015 (SM2015), an initiative established to address the health issues faced by the poorest quintile of the population in El Salvador, Guatemala, Honduras, Nicaragua, Belize, Costa Rica, Panama, and Mexico. In target areas of each country, surveys were conducted in households and health facilities. Censuses were conducted within each selected primary sampling unit, a segment of approximately 150 households, to identify households with women aged 15–49 years and children under 5 years old. Among eligible households, a randomly selected subset was chosen for the SM2015 Household Survey. The household survey had three components. A household questionnaire captured information on assets, wealth, and characteristics of the home. Each woman aged 15–49 years was asked to complete a maternal health questionnaire that captured demographic, health behavior, and reproductive health information. Caregivers were asked to complete a child health questionnaire on health, diet, and vaccination history for children aged 0–59 months. Trained anthropometrists also conducted physical measurements and anemia tests for these children. SM2015 baseline surveys were conducted from March 1, 2011 to August 31, 2013. The data were collected using computer‐assisted personal interview (CAPI) software by trained interviewers. Data were continuously monitored by the Institute for Health Metrics and Evaluation (IHME). All data were collected after obtaining informed consent. The field surveyors explained the purpose of this study to participants. Then, written informed consent was obtained from all study participants who agreed to participate prior to data collection. The study received approval from the University of Washington's Institutional Review Board (IRB), and in-country Ministry of Health IRBs, including approval for the procedure for obtaining and recording consent. We used Stata 12.1 and Stata 13.1 for the analyses and all estimates were computed using survey weights, unless otherwise noted. Additional details on SM2015 methodology and implementation are available in a capstone publication on SM2015 [7].

Definitions

The age of each child was captured in months in the census and household survey (we did not receive the birth day of the children for confidentiality). In order to assess vaccination history, we converted months to days by multiplying reported age in months by 30.4 and adding 15.2 days. We wanted to be more conservative rather than assuming the child birth day is at the beginning or end of their age-month. We then added the number of days between the census survey and the household survey, at which up-to-date vaccination information was captured. This value of age in days was used to determine eligibility for vaccines and calculate time at risk. Measles, mumps, and rubella (MMR) vaccination is required at 12 months of age in all countries in Mesoamerica. An estimation of MMR coverage was calculated using caregiver recall and vaccine card information. A child was considered compliant if they were 13 months of age or older at the time of the household survey, and they had at least one caregiver-reported or card-documented MMR dose. All children younger than 13 months were considered compliant for MMR. Basically, we gave a grace period of one month by not counting children aged less than 13 months at risk for vaccination. An estimate of card-only coverage was also calculated using the same approach above for card and recall. In order to account for vaccine timelines, we considered children who were vaccinated for MMR before age 11.5 months and did not receive another dose thereafter to be non-compliant since the vaccine was given before age 12 months. The required vaccines were similar in all countries with slight differences. Children without a vaccination card were excluded from estimation of time at risk. A vaccine was counted as valid when given within 15.2 days of the recommended age in months or any time thereafter. MMR vaccination was valid if administered after age 11.5 months and considered as in the recommended interval if administered between 11.5 and 13.5 months. Children who received an early vaccine were considered at risk starting at the end of the recommended age interval. Days at risk were computed as the number of days from the end of the recommended vaccine interval until receipt of a vaccine. For children with no record of receipt of a vaccine or children who were vaccinated too early, days at risk were computed as their age at the time of the interview minus the date when the vaccine was recommended. This provides a conservative estimate of days at risk, because the number of days at risk for children unvaccinated at the time of interview would increase with time. A child incurred a “missed opportunity” if their vaccination card indicated a vaccination visit after the recommended vaccine date, but MMR vaccine was not administered at that time. We defined potential coverage as the population vaccination coverage if vaccines were given at missed opportunity visits. Potential days at risk are the number of days that a child went without a vaccine, assuming that the child was caught up at his or her next vaccination visit following recommended vaccine age. Basically, we used the date of the receipt of the vaccine when given later or the time of the survey if the vaccine was not given. The health facility typically visited for vaccination, as reported by the caregiver, was extracted from the survey and matched to health facilities in the SM2015 baseline Health Facility Survey. Facilities were categorized as providing child services based on the availability of MMR vaccine and stock of oral rehydration salts (ORS). Survey-weighted estimates of MMR coverage, according to the vaccine card, were calculated between children attending facilities with and without MMR and ORS in stock.

Statistical analyses

We used the χ2 test of independence to compare children with and without a vaccine card by socio-demographic variables, stratified by country. The χ2 test of independence was also used to compare children who were and were not covered for MMR according to their vaccination card, and children with and without missed opportunities for MMR by socio-demographic variables, stratified by country. Survey-weighted logistic regression was used to determine the association of socio-demographic characteristics with a child having a vaccination card, being covered for MMR according to their vaccination card, and having a missed opportunity for MMR vaccination. All logistic regressions were stratified by country. We used the Cox proportional hazards model to compute the hazard ratio associated with the reduction in days at risk, after accounting for missed opportunities, and to adjust for other known risk factors in two stages (first, with only country fixed effects, child sex, maternal education, and maternal age; second, with additional covariates) [8]. An unadjusted Kaplan-Meier estimation of time to vaccination was also computed. Responses of children who had not been vaccinated at the time of interview were treated as censored. In each model, indicator variables (0,1) were created to designate individual membership in discrete categories of each of the potential risk factors. Socio-demographic characteristics were considered at the child, mother, and household level. Child characteristics include gender and categorical age in years. Characteristics of the child’s mother include attained education level (no education, primary education, or secondary or higher education), literacy, age in years at the time of the survey, parity, employment status, and marital status. Household characteristics include household size, gender of the head of household, within-country household monthly expenditure quintile, asset index, and urban or rural locality.

Results

A total of 22,234 children aged 11–59 months in El Salvador, Guatemala, Honduras, Mexico, Nicaragua, and Panama had vaccination information. Of these, 18,868 had vaccination cards observed on the day of the survey. Table 1 compares child, maternal, and household characteristics of children with and without a vaccine card. The distribution of age, education, and wealth characteristics varies significantly between groups. Child age was an important predictor for having a vaccination card in most countries (Table 2). Older children in El Salvador, Honduras, Nicaragua, and Panama were less likely to have a card than younger children. In Honduras, children whose mothers had secondary or more education were less likely to have a vaccine card than uneducated mothers (odds ratio [OR] 0.390, 95% confidence interval [CI]: 0.202–0.755). Female children in Mexico were more likely to have a vaccine card than males (OR 1.311, 95% CI: 1.125–1.528). Conversely, female children were less likely to have a vaccine card in Nicaragua (OR 0.778, 95% CI: 0.611–0.990). Children in El Salvador were less likely to have a vaccine card if the head of household was female (OR 0.663, 95% CI: 0.485–0.907). In El Salvador and Nicaragua, children of mothers older than 20 were more likely to have a vaccine card. Children in households with more assets were more likely to have a vaccine card in El Salvador (OR 3.225, 95% CI: 1.187–8.760) and Nicaragua (OR 6.220, 95% CI: 1.540–25.11). Mother’s marital status and urbanicity were not significantly associated with a child having a vaccine card in any country when adjusting for other factors.
Table 1

Descriptive characteristics comparing children with and without a vaccine card (% unless otherwise noted).

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
YesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-value
Sample size (N) 3110347 4311880 2620402 5399902 1734467 1694368 
Child characteristics Female49.048.10.74850.150.70.76450.152.70.32850.444.5 0.001 ** 48.752.70.13050.154.00.183
Age in years0 years18.711.8 <0.001 *** 20.1180.05519.211.9 <0.001 *** 16.226.6 <0.001 *** 22.910.3 <0.001 *** 17.610.3 <0.001 ***
1 year22.719.922.420.621.913.922.118.421.817.823.219.8
2 years21.619.921.721.621.222.619.517.719.919.719.721.7
3 years19.423.919.72019.823.92217.818.223.121.522.8
4 years17.724.516.119.917.927.620.219.417.229.118.125.3
Maternal characteristics Attained educationNo education11.110.10.28034.733.3 0.004 ** 7.97.2 0.001 ** 17.125.4 <0.001 *** 119.6 0.099 14.223.7 <0.001 ***
Primary education5652.851.748.571.963.152.349.65146.457.249.3
Secondary education or higher32.937.113.618.220.229.730.7253843.928.727
LiteracyIlliterate2322.50.84863.458.1 0.006 ** 36.438.30.53843.952.9 <0.001 *** 27.624.20.16737.645.3 0.013 *
Literate7777.536.641.963.661.756.147.172.475.862.454.7
Age in yearsAge 15–199.415.6 0.001 ** 9.910.20.2739.68.2 0.006 ** 8.111.2 0.012 * 11.612.30.85210.69.40.747
Age 20–347066.968.871.170.463.872.169.570.570.864.764.5
Age 35–4920.617.621.318.7202819.819.317.916.924.726.1
Parity1 child29.435.20.05220.924 0.042 * 26.322.40.29417.119.10.50531.330.50.55911.715.80.070
2–3 children41.841.238.240.342.142.842.541.844.147.341.736.4
4–5 children15.514.42118.817.521.421.820.415.713.226.123.7
6 + children13.39.219.916.914.113.418.618.68.98.920.524.1
Marital statusSingle13.216.4 0.002 ** 6.89.6 0.029 * 15.417.40.5091.52.10.33715.820.70.05887.30.390
Married3625.537.935.73331.135.132.732.4338.35.7
Union40.446.651.149.748.747.4586047.241.176.178
Divorced, separated, widowed, other10.411.44.152.94.15.45.24.65.37.69
Employment statusEmployed and working9.512.7 0.002 ** 3.15.6 <0.001 *** 8.314.3 0.002 ** 4.88.8 <0.001 *** 12.821.2 <0.001 *** 5.65.70.305
Homemaker88.282.494.790.489.182.393.989.784.776.39293.3
Employed but not working, student, retired, disabled2.34.92.242.73.41.31.52.52.52.41
Household characteristics Expenditure quintileQuintile 12017.3 0.013 * 19.824.1 0.014 * 21.417.8 0.001 ** 22.5 21 0.05020.321.3 0.005 ** 19.9 20.4 0.019 *
Quintile 221.816.120.116.220.516.622 20.3 21.514.8 19.4 25.3
Quintile 319.620.719.919.319.516.820.7 19.2 20.720 18.6 17.9
Quintile 41919.919.719.32021.918.8 20 2020.6 20.9 14.4
Quintile 519.525.920.521.118.726.916 19.6 17.423.2 21.3 22
Average asset index0.370.36 0.020 * 0.230.25 <0.001 *** 0.240.26 0.004 ** 0.230.22 0.021 * 0.240.23 0.005 ** 0.180.17 0.002 **
Average household size (N)3.073.030.1246.636.420.4275.756.01 0.001 ** 6.026.04 0.024 * 5.885.870.0849.319.33 <0.001 ***
UrbanicityRural household73.265.4 0.002 ** 87.782 <0.001 *** 84.377.9 0.001 ** 66.657.3 <0.001 *** 69.562.2 0.003 ** 100100 N/A
Urban household26.834.612.31815.722.133.442.730.537.800
Female head of household0.260.35 0.001 ** 0.120.15 0.017 * 0.180.23 0.033 * 0.070.080.2920.250.32 0.001 ** 0.270.21 0.045 *

† N varies by variable due to missing values.

* p<0.05

** p<0.01

*** p<0.001

Table 2

Child, maternal, and household characteristics associated with a child having a vaccine card .

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
N = 2968 N = 4677 N = 2613 N = 5840 N = 1983 N = 1679
ORCIORCIORCIORCIORCIORCI
Child characteristics Female1.133[0.863,1.488]1.000[0.839,1.192]0.812[0.618,1.066] 1.311 *** [1.125,1.528] 0.778 * [0.611,0.990]0.892[0.634,1.255]
Age in years0 years1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
1 year0.727[0.479,1.103]1.086[0.827,1.427]0.952[0.555,1.633] 1.863 *** [1.429,2.428] 0.594 * [0.378,0.932] 0.492 * [0.271,0.895]
2 years0.700[0.438,1.116]0.937[0.731,1.202] 0.545 ** [0.361,0.823] 1.771 *** [1.327,2.363] 0.416 *** [0.259,0.667] 0.380 *** [0.222,0.649]
3 years 0.556 ** [0.369,0.838]0.975[0.724,1.313] 0.484 ** [0.296,0.792] 1.944 *** [1.454,2.600] 0.348 *** [0.231,0.525] 0.389 *** [0.245,0.618]
4 years 0.467 ** [0.278,0.786]0.775[0.575,1.044] 0.348 *** [0.209,0.582] 1.680 *** [1.246,2.265] 0.262 *** [0.150,0.458] 0.305 *** [0.183,0.508]
Maternal characteristics Attained educationNo education1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Primary education0.935[0.529,1.652]1.057[0.816,1.370]0.764[0.426,1.370]1.283[0.888,1.853]1.010[0.594,1.718] 2.018 * [1.025,3.972]
Secondary educationor higher1.064[0.568,1.994]0.965[0.611,1.523] 0.390 ** [0.202,0.755]1.293[0.843,1.983]0.810[0.383,1.714]1.645[0.790,3.422]
Literate1.200[0.812,1.775]0.923[0.701,1.217]1.326[0.920,1.911] 1.535 ** [1.159,2.033]0.947[0.638,1.406]1.126[0.682,1.858]
Age in yearsAge 15–191.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Age 20–34 1.686 * [1.064,2.673]0.859[0.586,1.260]1.311[0.735,2.339]1.297[0.936,1.797]1.528[0.889,2.625]0.792[0.405,1.548]
Age 35–49 2.126 * [1.125,4.018]0.936[0.595,1.472]0.810[0.445,1.473]1.410[0.873,2.276]1.985[0.985,3.997]0.961[0.407,2.271]
Parity1 child1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
2–3 children1.172[0.810,1.697]1.042[0.801,1.356]0.791[0.515,1.216]1.017[0.752,1.376]1.005[0.684,1.478] 1.803 * [1.074,3.027]
4–5 children1.051[0.653,1.690]1.056[0.747,1.492]0.698[0.413,1.182]1.046[0.693,1.579]1.115[0.657,1.890] 1.806 * [1.069,3.050]
6 + children1.211[0.593,2.474]0.969[0.619,1.517]1.002[0.541,1.857]1.057[0.607,1.842]0.781[0.392,1.555]1.288[0.650,2.552]
Marital statusSingle1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Married1.088[0.655,1.807]1.100[0.768,1.576]1.300[0.761,2.223]1.457[0.645,3.292]0.962[0.568,1.632]1.432[0.515,3.982]
Union0.804[0.495,1.304]1.085[0.778,1.513]0.952[0.639,1.419]1.461[0.654,3.263]1.219[0.800,1.857]0.810[0.411,1.595]
Divorced, separated, widowed, other1.234[0.714,2.132]1.002[0.595,1.687]1.041[0.480,2.258]1.403[0.582,3.380]0.940[0.430,2.057]0.737[0.335,1.623]
Employment statusEmployed and working1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Homemaker1.264[0.818,1.954]1.398[0.920,2.126]1.322[0.885,1.975] 1.609 * [1.083,2.389] 1.548 * [1.021,2.346]1.169[0.532,2.567]
Employed but not working, student, retired, disabled0.755[0.355,1.603]0.842[0.499,1.422]1.645[0.604,4.479]1.661[0.622,4.440]1.252[0.374,4.195]3.072[0.659,14.32]
Household characteristics Expenditure quintileQuintile 11.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Quintile 21.092[0.684,1.746] 1.513 * [1.103,2.076]1.082[0.730,1.602]0.926[0.642,1.335] 1.483 * [1.027,2.142]0.835[0.476,1.463]
Quintile 30.763[0.481,1.211]1.178[0.852,1.629]1.067[0.706,1.611]0.897[0.635,1.268]1.176[0.825,1.677]1.222[0.744,2.007]
Quintile 40.788[0.479,1.296]1.254[0.857,1.834]0.870[0.560,1.352]0.837[0.584,1.200]1.179[0.757,1.836] 1.750 * [1.001,3.059]
Quintile 5 0.539 * [0.332,0.876]1.243[0.895,1.725]0.772[0.456,1.307]0.735[0.475,1.138]0.757[0.454,1.262]1.014[0.548,1.874]
Average asset index 3.225 * [1.187,8.760]0.445[0.161,1.229]0.971[0.197,4.774]3.006[0.792,11.41] 6.220 * [1.540,25.11]2.849[0.254,31.92]
Average household size1.016[0.925,1.116]1.032[0.991,1.075]0.975[0.908,1.047]1.007[0.953,1.065]1.001[0.938,1.068]0.998[0.951,1.048]
Urban household1.180[0.688,2.022]1.012[0.623,1.644]1.023[0.477,2.191]1.383[0.600,3.189]0.968[0.449,2.086]0.791[0.361,1.732]
Female head of household 0.663 * [0.485,0.907]0.925[0.663,1.290]0.943[0.644,1.382]1.013[0.651,1.574]0.834[0.620,1.121]1.313[0.888,1.940]

OR: odds ratio. CI: confidence interval.

Exponentiated coefficients; 95% confidence intervals in brackets

* p<0.05

** p<0.01

*** p<0.001

†Models adjusted for all variables in the table

† N varies by variable due to missing values. * p<0.05 ** p<0.01 *** p<0.001 OR: odds ratio. CI: confidence interval. Exponentiated coefficients; 95% confidence intervals in brackets * p<0.05 ** p<0.01 *** p<0.001 †Models adjusted for all variables in the table Table 3 shows a comparison of characteristics between children that were and were not covered for MMR according to their vaccine card. Child age, maternal education and employment, and household wealth have significantly different distributions between groups. However, when adjusting for all characteristics with regression, different patterns emerge among countries (Table 4). In El Salvador, children aged 2 to 3 years were less likely to be covered than those aged 1 year, but children aged 4 years were much more likely (OR 2.095, 95% CI: 1.498–2.929) due to a required MMR booster at 48 months. In Guatemala, children of partnered women were more likely to be covered than those who were single. In Mexico, children from larger families were less likely to be covered, controlling for other factors. Children in Nicaragua were less likely to be covered for MMR if their head of household was female (OR 0.668, 95% CI: 0.500–0.893).
Table 3

Descriptive characteristics comparing children with and without coverage for MMR at the time of the survey (% unless otherwise noted).

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
YesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-value
Sample size (N) 1266974 24831381 1564790 20432850 904789 1118544 
Child characteristics Female48.7520.13149.551.80.16150.351.30.64349.750.70.47848.949.40.82651.951.20.794
Age in years0 years
1 year21.115.3 <0.001 *** 25.122.20.16423.721.4 0.021 * 23.3230.46826.321.3 0.022 * 2523.90.670
2 years22.939.227.629.227.826.123.325.226.125.223.926.7
3 years21.633.82625.626.324.627.926.524.725.127.225.9
4 years34.411.721.32322.22825.425.322.928.42423.5
Maternal characteristics Attained educationNo education10.912.60.33437.234.20.1439.27 0.001 ** 17.418.60.08512.110.7 0.009 ** 13.821.3 0.001 **
Primary education57.454.749.951.473.168.252.3545447.856.654.9
Secondary education or higher31.832.712.914.417.724.830.427.433.941.529.623.8
LiteracyIlliterate23.225.50.1976562.60.15437.337.70.84943.347.8 0.002 ** 28.826.60.32236.546.2 0.001 **
Literate76.874.53537.462.762.356.752.271.273.463.553.8
Age in yearsAge 15–197.17.70.7457.57.30.9626.97.10.0506.76.40.1769.39.40.9858.49.20.907
Age 20–3470.168.770.470.572.567.673.671.77171.266.165.6
Age 35–4922.823.62222.220.625.319.721.919.719.425.425.2
Parity1 child27.926.90.75618.618.30.45424.223.40.18515.114.50.14129.829.80.73210.9130.439
2–3 children42.241.338.741.241.24544.942.245.143.642.538.6
4–5 children15.316.922.921.11919.32123.315.217.32626
6 + children14.614.919.819.515.612.318.9209.99.420.622.4
Marital statusSingle13.911.86.18.513.817.51.41.71617.17.78.3
Married35.639.138.737.433.932.635.934.433.133.98.66
Union39.638.90.27150.749.40.06448.846.50.19457.2580.57946.443.90.75775.777.50.401
Divorced, separated, widowed, other10.810.14.54.73.53.45.55.94.65.188.3
Employment statusEmployed and working9.710.30.2673.24 0.023 * 7.713.5 <0.001 *** 5.16.20.19213.118.8 0.006 ** 6.44.30.203
Homemaker88.486.894.692.589.683.993.792.484.978.691.193.9
Employed but not working, student, retired, disabled1.92.92.23.62.72.61.21.422.62.41.8
Household characteristics Expenditure quintileQuintile 119.620.80.93119.123 0.043 * 22.318.6 <0.001 *** 23.621.70.4032220.6 0.006 ** 19.619.9 0.008 **
Quintile 222.221.419.817.620.219.121.622.422.917.718.323.7
Quintile 31919.420.120.620.717.220.32019.321.11917.3
Quintile 419.419.519.618.619.72118.918.820.219.221.615.4
Quintile 519.718.921.420.217.12415.617.115.621.421.523.7
Average asset index0.370.370.4380.230.240.2560.240.25 0.015 * 0.230.230.0500.230.240.6790.180.17 0.002 **
Average household size (N)3.043.10.1736.616.550.7945.745.75 0.012 * 5.976.010.7955.645.930.1159.169.390.050
UrbanicityRural household73.872.40.46087.884.3 0.002 ** 85.180.2 0.002 ** 6566.40.31471.264.6 0.004 ** 100100n/a
Urban household26.227.612.215.714.919.83533.628.835.400
Female head of household0.270.260.6410.130.140.3390.180.22 0.022 * 0.080.080.4440.240.31 <0.001 *** 0.280.22 0.015 **

† N varies by variable due to missing values.

* p<0.05

** p<0.01

*** p<0.001

Table 4

Child, maternal, and household characteristics associated with a child being covered for MMR .

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
N = 1950 N = 3445 N = 2003 N = 4510 N = 1510 N = 1346
ORCIORCIORCIORCIORCIORCI
Child characteristics Female0.949[0.767,1.174]0.937[0.802,1.095]0.938[0.754,1.167]0.977[0.864,1.106]0.863[0.713,1.046]1.045[0.830,1.314]
Age in years0 yearsN/AN/AN/AN/AN/AN/A
1 year1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
2 years 0.446 *** [0.340,0.585]0.835[0.695,1.004]1.078[0.826,1.408]0.928[0.754,1.143]0.866[0.621,1.206]0.944[0.633,1.408]
3 years 0.471 *** [0.348,0.637]0.898[0.736,1.095]1.181[0.849,1.642]1.065[0.872,1.302]0.787[0.589,1.052]1.112[0.804,1.539]
4 years 2.095 *** [1.498,2.929]0.858[0.665,1.106]0.876[0.630,1.219]1.033[0.844,1.264] 0.594 ** [0.424,0.831]1.075[0.745,1.549]
Maternal characteristics Attained educationNo education1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Primary education1.037[0.699,1.539]0.834[0.666,1.044]0.753[0.467,1.213]0.898[0.709,1.137]0.943[0.594,1.497]1.424[0.808,2.511]
Secondary education or higher0.857[0.513,1.431]0.836[0.568,1.230]0.590[0.326,1.068]0.853[0.631,1.152]0.702[0.381,1.296]1.605[0.795,3.240]
Literate1.208[0.850,1.719]1.021[0.822,1.269]1.257[0.955,1.654]1.182[0.938,1.488]1.096[0.787,1.526]1.194[0.779,1.828]
Age in yearsAge 15–191.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Age 20–341.158[0.746,1.797]0.871[0.613,1.239]1.109[0.713,1.725]0.961[0.685,1.348]1.352[0.847,2.159]0.854[0.530,1.376]
Age 35–491.060[0.640,1.754]0.809[0.535,1.223]0.789[0.471,1.320]0.977[0.654,1.458]1.465[0.839,2.559]1.041[0.578,1.873]
Parity1 child1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
2–3 children0.917[0.686,1.226]0.853[0.672,1.083]0.798[0.597,1.067]0.937[0.769,1.142]1.099[0.813,1.484]1.265[0.804,1.989]
4–5 children0.808[0.563,1.161]0.9[0.677,1.195]0.85[0.607,1.191] 0.734 * [0.556,0.968]0.818[0.561,1.193]1.138[0.712,1.819]
6 + children0.863[0.516,1.444]0.856[0.602,1.217]1.158[0.741,1.810] 0.679 * [0.464,0.994]0.965[0.555,1.677]1.067[0.644,1.769]
Marital statusSingle1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Married0.728[0.492,1.077] 1.433 * [1.057,1.945]1.340[0.965,1.861]1.698[0.808,3.569]0.695[0.457,1.057]1.877[0.890,3.961]
Union0.866[0.588,1.275] 1.402 * [1.023,1.923]1.212[0.905,1.623]1.632[0.758,3.515]0.769[0.546,1.082]1.079[0.595,1.957]
Divorced, separated, widowed, other0.862[0.571,1.303]1.408[0.943,2.103]1.458[0.722,2.943]1.151[0.546,2.429]0.825[0.479,1.421]0.935[0.455,1.921]
Employment statusEmployed and working1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Homemaker0.988[0.675,1.447]1.031[0.654,1.625] 1.452 * [1.032,2.043]1.171[0.814,1.686]1.402[0.908,2.164]0.922[0.446,1.908]
Employed but not working, student, retired, disabled0.787[0.419,1.478]0.633[0.365,1.100]1.944[0.905,4.173]0.845[0.359,1.992]1.484[0.619,3.559]1.399[0.441,4.435]
Household characteristics Expenditure quintileQuintile 11.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Quintile 21.115[0.837,1.486] 1.356 * [1.027,1.790]1.016[0.726,1.423]0.797[0.608,1.044]1.364[0.912,2.040]0.839[0.515,1.366]
Quintile 31.093[0.797,1.501]1.110[0.844,1.459]1.081[0.727,1.608]0.839[0.646,1.089]0.958[0.676,1.358]1.168[0.783,1.742]
Quintile 41.236[0.923,1.655]1.281[0.945,1.736]0.856[0.568,1.293]0.811[0.603,1.091]1.312[0.866,1.989]1.305[0.816,2.086]
Quintile 51.259[0.885,1.791]1.201[0.891,1.618]0.702[0.458,1.076]0.842[0.612,1.160]0.907[0.569,1.444]0.868[0.535,1.407]
Average asset index0.894[0.466,1.713]0.613[0.299,1.255]0.710[0.243,2.076]0.818[0.246,2.719]1.557[0.493,4.922]3.759[0.732,19.30]
Average household size0.989[0.910,1.074]1.007[0.975,1.041]1.010[0.958,1.065]1.047[0.994,1.103]0.961[0.904,1.023]0.988[0.954,1.024]
Urban household0.808[0.618,1.056]0.747[0.516,1.080]0.828[0.589,1.164]1.028[0.716,1.476]0.914[0.626,1.335]N/A
Female head of household1.069[0.802,1.424]1.005[0.763,1.325]0.869[0.660,1.145]1.134[0.800,1.607] 0.668 ** [0.500,0.893]1.341[0.995,1.808]

OR: odds ratio. CI: confidence interval.

Exponentiated coefficients; 95% confidence intervals in brackets

†Models adjusted for all variables in the table

* p<0.05

** p<0.01

*** p<0.001

† N varies by variable due to missing values. * p<0.05 ** p<0.01 *** p<0.001 OR: odds ratio. CI: confidence interval. Exponentiated coefficients; 95% confidence intervals in brackets †Models adjusted for all variables in the table * p<0.05 ** p<0.01 *** p<0.001 The coverage cascade of MMR immunization by country is shown in Table 5. El Salvador had the highest proportion of children with a vaccine card (91.2%) while Nicaragua had the lowest (76.5%). Countries with low card coverage had more dramatic differences between coverage according to card and recall versus card-only coverage. When considering the timing of MMR vaccines, children in Mexico had an average of 483 days at risk after age 13.5 months; this was higher than the average in Panama (158 days) and Guatemala (187 days). If children were “caught up” with the vaccination scheme, the potential coverage of MMR in Panama could be 97.1% as compared to the 77.3% observed.
Table 5

Coverage cascade of MMR by country.

CountryNumber of children aged 0–59 monthsProportion owning health card (%)MMR coverage according to card and recall (%) * MMR coverage according to card only (%) * MMR coverage according to card only considering timeliness (%) * Mean days at riskTotal person-days at riskPotential card-only MMR coverage (%) * Mean potential days at riskTotal potential person-days at risk
El Salvador3,45791.290.977.356.8347779,25196.4239410,256
Guatemala5,19183.084.977.564.0187601,46880.7148433,871
Honduras3,02286.793.879.666.9217451,91683.2152290,203
Mexico6,30185.073.544.638.74832,031,11485.6185315,540
Nicaragua2,20176.590.766.152.9241322,21670.8170209,967
Panama2,06281.088.172.066.2158219,27078.99292,895

* Coverage for children 13.5–59 months.

† Excluding children without vaccination cards. If the child has completed the number of required doses for age, they are considered compliant.

‡ Excluding children without vaccination cards. If the child has completed the number of required doses for age and not before the eligibility window, they are considered compliant.

* Coverage for children 13.5–59 months. † Excluding children without vaccination cards. If the child has completed the number of required doses for age, they are considered compliant. ‡ Excluding children without vaccination cards. If the child has completed the number of required doses for age and not before the eligibility window, they are considered compliant. Table 6 shows the distribution of child, maternal, and household characteristics between children with and without a missed opportunity for MMR vaccination, by country. Younger age groups were less likely to have a missed opportunity. After adjustment for potential confounders, younger children remained less likely to have a missed opportunity. In Panama, children from households in higher expenditure quintiles were more likely to have a missed opportunity than those from the poorest (OR 1.623, 95% CI: 1.064–2.475), accounting for other factors (Table 7). In Nicaragua, compared to children of mothers with no education, children of mothers with primary education and secondary education were less likely to have a missed opportunity (OR 0.458, 95% CI: 0.239–0.878 and OR 0.251, 95% CI: 0.0965–0.652, respectively) (Table 7). In El Salvador, children of partnered women were more likely to have a missed opportunity than those with single mothers.
Table 6

Descriptive characteristics comparing children with and without missed opportunities for MMR vaccine (% unless otherwise noted).

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
YesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-valueYesNop-value
Sample size (N) 644159639428893001738272716212161077450901
Child characteristics Female51.949.40.29852.8500.29553.749.90.23351.350.10.44354.647.70.06451.850.40.630
Age in years0 yearsn/an/an/an/an/an/a
1 year19.118.4 <0.001 *** 9.426.6 <0.001 *** 6.727.3 <0.001 *** 20.228.5 <0.001 *** 13.428.3 <0.001 *** 23.826.7 0.002 **
2 years26.131.626.428.72627.523.924.81928.220.726.6
3 years20.829.430.525.330.324.628.824.929.223.527.126.9
4 years3420.733.819.43720.62721.838.42028.419.8
Maternal characteristics Attained educationNo education12.111.40.49943.735.6 0.011 * 11.28.20.18918.215.9 0.008 ** 20.710.4 <0.001 *** 15.414.10.826
Primary education54.35746.251.672.372.554.152.250.85257.157.5
Secondary education or higher33.631.610.112.816.519.327.631.928.537.627.528.4
LiteracyIlliterate25.623.70.33469.964.60.05538.137.60.86747.641 <0.001 *** 39.426.7 <0.001 *** 40370.326
Literate74.476.330.135.461.962.452.45960.673.36063
Age in yearsAge 15–196.87.60.0836.77.10.9685.670.6995.76.8 0.037 * 8.89.40.2988.98.90.493
Age 20–3466.970.570.670.173.471.972.174.266.871.268.465.3
Age 35–4926.221.922.722.82121.122.119.124.419.422.725.9
Parity1 child28.8270.31115.118.20.10818.624.90.13213.515.90.10029.330.30.53310.910.60.296
2–3 children4042.538.739.246.841.943.443.940.844.345.540.8
4–5 children14.816.427.522.120.518.423.421.419.915.726.126.6
6 + children16.414.118.820.514.114.819.718.79.99.717.621.9
Marital statusSingle1113.80.0505.66.50.27213.914.60.4841.51.40.45618.715.10.4738.67.90.809
Married41.335.539.238.431.534.734.536.833.234.18.97.9
Union37.74048.750.852.147.258.156.545.145.973.976.5
Divorced, separated, widowed, other1010.86.44.32.63.55.95.33.14.98.67.7
Employment statusEmployed and working10.89.60.2352.53.20.7587.19.10.3875.24.90.9031314.30.8716.15.70.773
Homemaker87.787.794.994.689.588.693.593.984.583.491.192.1
Employed but not working, student, retired, disabled1.62.62.52.23.42.41.31.32.62.32.92.2
Household characteristics Expenditure quintileQuintile 12119.80.7172119.50.78619.721.90.12123.222.30.60823.620.70.5161621.20.060
Quintile 221.122.11919.92120.622.921.520.422.418.419.5
Quintile 320.718.619.720.72518.82020.817.120.821.317.2
Quintile 418.819.717.719.31720.418.718.919.419.623.319.9
Quintile 518.519.722.620.717.318.315.216.619.416.520.922.2
Average asset index0.370.370.9730.220.230.7810.240.240.1270.230.240.0500.230.240.1540.170.18 0.022 *
Average household size (N)3.123.040.0867.16.54 0.002 ** 5.715.70.3746.015.960.3295.975.70.0759.269.140.451
UrbanicityRural household74.172.80.54286.788.10.41385.784.30.54769.364.1 <0.001 *** 68.570.20.616100100N/A
Urban household25.927.213.311.914.315.730.735.931.529.800
Female head of household0.250.260.6350.140.130.3580.170.180.6550.070.080.6230.30.240.0950.240.280.168

† N varies by variable due to missing values.

* p<0.05

** p<0.01

*** p<0.001

Table 7

Child, maternal, and household characteristics associated with a child having a missed opportunity for MMR vaccine .

El SalvadorGuatemalaHondurasMexicoNicaraguaPanama
N = 1950 N = 2970 N = 1786 N = 4021 N = 1179 N = 1100
ORCIORCIORCIORCIORCIORCI
Child characteristics Female1.140[0.911,1.425]1.164[0.878,1.542]1.027[0.778,1.356]1.030[0.884,1.201]1.383[0.965,1.980]1.032[0.757,1.406]
Age in years0 yearsN/AN/AN/AN/AN/AN/A
1 year1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
2 years0.782[0.590,1.036] 2.929 *** [1.978,4.336] 4.681 *** [2.417,9.066] 1.366 ** [1.127,1.655]1.382[0.753,2.538]0.886[0.577,1.360]
3 years 0.679 * [0.469,0.982] 3.829 *** [2.510,5.842] 5.967 *** [3.427,10.39] 1.694 *** [1.387,2.070] 3.456 *** [2.045,5.839] 1.193 [0.740,1.923]
1.617 ** [1.152,2.269] 5.462 *** [3.524,8.467] 8.816 *** [4.939,15.74] 1.830 *** [1.467,2.283] 5.006 *** [3.108,8.062] 1.705 ** [1.176,2.470]
Maternal characteristics Attained educationNo education1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Primary education1.059[0.722,1.554] 0.728 * [0.538,0.987]0.710[0.436,1.155]1.088[0.861,1.375] 0.458 * [0.239,0.878]0.956[0.672,1.361]
Secondary education or higher1.306[0.800,2.130]0.693[0.421,1.141]0.641[0.333,1.236]1.055[0.777,1.432] 0.251 ** [0.0965,0.652]0.896[0.497,1.614]
Literate0.796[0.565,1.122]0.937[0.661,1.329]1.183[0.833,1.680]0.857[0.681,1.077]0.794[0.504,1.253]0.907[0.623,1.321]
Age in yearsAge 15–191.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Age 20–341.001[0.646,1.553]0.726[0.427,1.233]0.908[0.473,1.743]1.130[0.815,1.566]0.892[0.508,1.567]0.920[0.577,1.469]
Age 35–491.376[0.763,2.480]0.575[0.293,1.125]0.831[0.386,1.791]1.303[0.862,1.969]1.081[0.493,2.370]0.808[0.456,1.434]
Parity1 child1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
2–3 children 0.695 * [0.526,0.917]0.959[0.670,1.374]1.295[0.857,1.958]1.1[0.852,1.420]0.794[0.484,1.304]1.016[0.620,1.665]
4–5 children 0.597 ** [0.406,0.880]1.047[0.688,1.593]1.117[0.687,1.815]1.108[0.792,1.552]0.627[0.333,1.182]0.894[0.481,1.659]
6+ children 0.572 * [0.346,0.946]0.636[0.394,1.026]0.944[0.472,1.887]1.184[0.719,1.951] 0.389 * [0.162,0.935]0.824[0.418,1.626]
Marital statusSingle1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Married 1.916 ** [1.248,2.941]1.065[0.591,1.920]0.855[0.534,1.369]0.673[0.354,1.281]0.723[0.338,1.548]1.088[0.531,2.228]
Union 1.493 * [1.023,2.179]0.949[0.511,1.762]1.087[0.708,1.667]0.707[0.375,1.332]0.895[0.502,1.598]0.861[0.544,1.364]
Divorced, separated, widowed, other1.372[0.882,2.134]1.319[0.619,2.812]0.791[0.270,2.321]0.846[0.413,1.733]0.698[0.228,2.133]1.040[0.487,2.221]
Employment statusEmployed and working1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Homemaker0.916[0.654,1.283]1.352[0.652,2.807]1.240[0.754,2.041]0.847[0.539,1.329]1.296[0.747,2.249]1.121[0.618,2.033]
Employed but not working, student, retired, disabled 0.420 * [0.205,0.863]1.451[0.502,4.200]1.847[0.681,5.006]1.014[0.353,2.918]1.136[0.345,3.744]1.498[0.542,4.140]
Household characteristics Expenditure quintileQuintile 11.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)1.000(ref)
Quintile 20.861[0.608,1.219]0.938[0.641,1.373]1.231[0.820,1.847]1.077[0.820,1.416]0.724[0.376,1.394]1.441[0.969,2.143]
Quintile 31.011[0.692,1.479]0.959[0.648,1.420] 1.546 * [1.010,2.367]1.009[0.779,1.306]0.815[0.442,1.501] 2.054 ** [1.328,3.177]
Quintile 40.879[0.610,1.265]0.871[0.561,1.350]0.814[0.507,1.305]1.066[0.812,1.398]0.894[0.492,1.625] 1.836 ** [1.231,2.740]
Quintile 50.842[0.564,1.259]1.258[0.832,1.902]1.168[0.737,1.852]0.969[0.679,1.385]1.444[0.714,2.923] 1.623 * [1.064,2.475]
Average asset index0.857[0.433,1.693]0.609[0.164,2.264]0.796[0.113,5.587]0.718[0.223,2.309]0.640[0.145,2.823]0.340[0.0839,1.381]
Average household size1.026[0.945,1.114] 1.058 * [1.014,1.105]1.003[0.916,1.097]0.951[0.890,1.017]1.064[0.991,1.143]1.007[0.970,1.045]
Urban household1.076[0.763,1.519]1.336[0.813,2.197]0.842[0.525,1.349]0.934[0.655,1.331]1.523[0.765,3.033]N/A
Female head of household1.011[0.745,1.370]0.992[0.696,1.415]0.996[0.635,1.562]0.958[0.668,1.374]1.162[0.627,2.155]0.842[0.606,1.169]

OR: odds ratio. CI: confidence interval.

Exponentiated coefficients; 95% confidence intervals in brackets

†Models adjusted for all variables in the table

* p<0.05

** p<0.01

*** p<0.001

† N varies by variable due to missing values. * p<0.05 ** p<0.01 *** p<0.001 OR: odds ratio. CI: confidence interval. Exponentiated coefficients; 95% confidence intervals in brackets †Models adjusted for all variables in the table * p<0.05 ** p<0.01 *** p<0.001 Fig 1 shows the observed days to MMR vaccination compared to potential days to vaccination if children were caught up, between countries and among all countries. The greatest increase in vaccination over time occurred during the recommended vaccine interval; vaccination rates level off after children reach 2 years. Differentiation between observed and potential days to MMR vaccination was largely gained before the child is 2 years. The days at risk could be most reduced in Mexico if missed opportunities were avoided.
Fig 1

Days to MMR vaccination: observed time to vaccination and potential time to vaccination given missed opportunities by country and pooled*.

*Adjusted Kaplan-Meier estimation of the time to MMR vaccination among children with a vaccination card. Covariates are adjusted to the median value across the entire sample; results represent female children age 2 years whose mothers have primary education and are literate, are age 20–34 years with 2–3 children, are homemakers, and are living in a household in the third household expenditure quintile with 23.8% of assets, a male head of household, a household size of five, in a rural area. Vertical red lines indicate the time window in which MMR was considered on time (11.5–13.5 months of age). Labeled days of observation represent the following time points: 0 days = first day that a child is eligible for MMR vaccination (11.5 months of age); 60 days = end of MMR eligibility window (13.5 months); 380 days = age 2 years; 745 days = age 3 years; 1110 days = age 4 years; 1475 days = age 5 years, the oldest age at which a child was included in the sample.

Days to MMR vaccination: observed time to vaccination and potential time to vaccination given missed opportunities by country and pooled*.

*Adjusted Kaplan-Meier estimation of the time to MMR vaccination among children with a vaccination card. Covariates are adjusted to the median value across the entire sample; results represent female children age 2 years whose mothers have primary education and are literate, are age 20–34 years with 2–3 children, are homemakers, and are living in a household in the third household expenditure quintile with 23.8% of assets, a male head of household, a household size of five, in a rural area. Vertical red lines indicate the time window in which MMR was considered on time (11.5–13.5 months of age). Labeled days of observation represent the following time points: 0 days = first day that a child is eligible for MMR vaccination (11.5 months of age); 60 days = end of MMR eligibility window (13.5 months); 380 days = age 2 years; 745 days = age 3 years; 1110 days = age 4 years; 1475 days = age 5 years, the oldest age at which a child was included in the sample. Cox proportional hazards models for MMR vaccination are shown in Table 8. Country fixed effects remain significant in all models. Education was not significantly associated with days to MMR vaccination. MMR coverage of children attending health facilities by stocks of MMR and ORS are presented in Table 9. When categorized in this way, MMR coverage did not vary in most countries. The exception was Mexico, where MMR coverage among children attending facilities with ORS (46.2%) was significantly higher than those without ORS in stock (22.5%).
Table 8

Cox proportional hazard model for MMR coverage .

Model 1Model 2
N = 13311 N = 13006
Hazard ratioCIHazard ratioCI
Model 1 covariates Missed Opportunity 2.468 *** [2.232,2.729] 2.470 *** [2.232,2.733]
CountryGuatemala1.000(ref)1.000(ref)
Honduras1.042[0.947,1.147]1.035[0.938,1.142]
Mexico0.669*** [0.620,0.723] 0.673 *** [0.619,0.731]
Nicaragua0.829*** [0.746,0.921] 0.822 *** [0.739,0.915]
Panama1.222*** [1.114,1.339] 1.254 *** [1.125,1.398]
El Salvador0.678*** [0.619,0.744] 0.640 *** [0.568,0.721]
Female0.985[0.940,1.031]0.986[0.942,1.032]
Attained educationNo education1.000(ref)1.000(ref)
Primary education1.032[0.969,1.099]0.995[0.928,1.067]
Secondary education or higher1.023[0.945,1.107]0.970[0.884,1.063]
Age in yearsAge 15–191.000(ref)1.000(ref)
Age 20–340.963[0.856,1.084]1.016[0.899,1.148]
Age 35–490.908[0.799,1.033]0.997[0.861,1.154]
Child characteristics Age in years0 years  N/A
1 year  1.000(ref)
2 years   0.836 *** [0.778,0.898]
3 years   0.820 *** [0.762,0.883]
4 years   0.809 *** [0.748,0.875]
Maternal characteristics Literate  1.077* [1.011,1.146]
Parity1 child  1.000(ref)
2–3 children  0.992[0.919,1.070]
4–5 children  0.944[0.855,1.042]
6 + children  1.005[0.882,1.145]
Marital statusSingle  1.000(ref)
Married  0.945[0.813,1.099]
Union  0.957[0.831,1.102]
Divorced, separated, widowed, other  0.988[0.849,1.148]
Employment statusEmployed and working  1.000(ref)
Homemaker  1.122[0.983,1.281]
Employed but not working, student, retired, disabled  1.122[0.876,1.438]
Household characteristics Expenditure quintileQuintile 1  1.000(ref)
Quintile 2  0.975[0.899,1.057]
Quintile 3  0.942[0.854,1.039]
Quintile 4  0.998[0.916,1.088]
Quintile 5  0.930[0.838,1.032]
Average asset index  1.110[0.827,1.491]
Average household size  0.987[0.971,1.003]
Urban household  0.943[0.860,1.033]
Female head of household  0.983[0.891,1.086]

CI: confidence interval.

95% confidence intervals in brackets

†Models adjusted for all variables indicated in the column

* p<0.05

*** p<0.001

Table 9

Estimates of MMR coverage among children attending health facilities based on MMR stock and ORS stock*.

 Stock of MMRProvision of oral rehydration salt (ORS)
Number of facilitiesMMR coverage among children attending facilities with MMR in stock on day of survey [95% CI]MMR coverage among children attending facilities with MMR out of stock on day of survey [95% CI]MMR coverage among children attending facilities with MMR stock-out in three months prior to the survey [95% CI]Number of facilitiesMMR coverage among children attending facilities with ORS in stock on day of survey [95% CI]MMR coverage among children attending facilities with ORS out of stock on day of survey [95% CI]
GuatemalaN421237474611433132
%64.4% [60.6–68.2%]73.4% [0–100%]71.1% [64.0–78.3%]64.7% [61.1–68.3%]66.5% [54.9–78.2%]
HondurasN5582612705890076
%69.0% [64.1–73.9%]72.2% [66.3–782%]-69.3% [64.7–74.0%]73.6% [61.3–85.9%]
MexicoN235551397528605196
%34.5 [25.1–44.0%]58.6% [32.0–85.1%]50.1% [25.9–74.3%]46.2% [34.3–58.1%]22.5% [11.5–33.4%]
NicaraguaN194253402538487
%45.5% [38.5–52.5%]60.8% [43.9–77.7%]-48.2% [40.1–56.3%]44.2% [32.2–56.1%]
PanamaN17711373230706239
%72% [67.4–76.6%]72.3% [59.3–85.3%]71.7% [31.5–100%]71.6% [65.7–77.5%]74.7% [68.2–81.3%]

MMR: measles, mumps, rubella vaccine. ORS: oral rehydration salts.

*Excluding children without health cards. If the child has completed the number of required doses for age with proper time interval and not before the eligibility window, they are considered compliant. Children are matched to health facilities based on caregiver-reported usual location for vaccination as matched to the baseline measurement of the SM2015 Health Facility Survey. El Salvador is not included because usual facility for vaccination was not ascertained.

†Among health facilities that had MMR in stock on the day of the survey.

CI: confidence interval. 95% confidence intervals in brackets †Models adjusted for all variables indicated in the column * p<0.05 *** p<0.001 MMR: measles, mumps, rubella vaccine. ORS: oral rehydration salts. *Excluding children without health cards. If the child has completed the number of required doses for age with proper time interval and not before the eligibility window, they are considered compliant. Children are matched to health facilities based on caregiver-reported usual location for vaccination as matched to the baseline measurement of the SM2015 Health Facility Survey. El Salvador is not included because usual facility for vaccination was not ascertained. †Among health facilities that had MMR in stock on the day of the survey. When we examined what vaccines were given during a visit with a MMR missed opportunity, the patterns varied by country. Oral polio vaccine had the highest percentage of vaccines given when MMR was not in El Salvador (46.7%), Guatemala (56.1%), and Nicaragua (44.4%). While hepatitis A accounted for 48.9% in Panama, pneumococcal for 32.9% in Mexico, and diphtheria, pertussis, and tetanus (DPT) for 41.0% in Honduras (S3 Table). Moreover, MMR coverage would have increased by 38.5%, 30%, 24.2%, and 25.4% if no missed opportunity occurred in year 1, 2, 3, and 4, respectively.

Discussion

Our study, based on large surveys in poor areas of Mesoamerica, exposed high levels of missed opportunities to immunize children. Our finding is concerning, as it indicates that families are bringing their children to health facilities, but serious problems in current immunization practices and protocols exist in poor areas in Mesoamerica. Our study emphasizes the need for programs to ensure that vaccines are available and that health professionals use every opportunity to vaccinate a child. Missed opportunities to vaccinate children during health care visits or the failure to administer needed vaccines during a visit lead to lower national vaccination coverage levels. Using all clinical encounters to screen for needed vaccines and, when indicated, to immunize has been recommended by medical and public health experts since 1992 [9]. However, one limitation of our study is that we calculated missed opportunities using only vaccination visits, as data on other health care visits were not available. Moreover, we do not have data on whether a mother or other relative brought a child to a clinic during health visits for the parent or a sibling. Using all visits as possibilities for vaccination would result in increased coverage in children and subsequently less morbidity and mortality. The findings we report could be explained in a number of ways. First, missed opportunities could be a result of a shortage of vaccines; the MMR vaccine may simply not have been available on the day of the visit. Our findings call for more attention to the shortage of vaccines at health facilities. However, country-level shortages and problems with supplies and logistics are tractable, manageable challenges. Measures to request vaccines periodically and safety mechanisms to request supplies when stocks are low, can ensure availability. The business model of supply and demand may also be a means to improve logistics. Through SM2015, countries may learn from each other by discussing these challenges and success stories across Mesoamerica. Second, reluctance to administer immunizations when a child is ill, failure to immunize at all well-child care visits, and inadequate knowledge of current immunization schedules may also be major reasons for missed opportunities to immunize [10-14]. Efforts to decrease missed opportunities that focus on changing physician knowledge have had variable success. Siegel et al. showed that, despite reporting a good knowledge of contraindications to immunization, physicians were still reluctant to administer vaccines at acute care visits when vaccination was not contraindicated [12]. Reminders have been shown to be effective at changing physician behavior. Szilagyi et al. showed that screening by nurses at the time of the visit and attaching reminder cards to the chart increased the rate of vaccine administration by providers [14]. Computer-generated reminder systems can improve the performance of practicing physicians. The most common and effective type of reminder system is a patient-specific report, which is made available to the physician at the time of an encounter. Automatic computerized reminders have increased compliance with standards, significantly reduced physician error, and improved health care outcomes [15,16]. Our findings suggest that the number of immunization visits could be reduced by properly using all visits to administer a necessary vaccine. Third, physicians and other health professionals may not be paying due attention to recording immunizations. Although it is possible that they do not document vaccinations, this would not explain the large differences between potential and actual immunization. It is also possible that health professionals record immunization, even when no immunizations are given. Regardless, it is important to inform health professionals of adhering to best practices in record-keeping. Monitoring missed opportunities may also be warranted. Finally, our finding that immunization coverage was lower when facilities did not have a shortage on the day of our facility interview deserves further attention. One would expect more coverage for facilities with no shortage. However, the high coverage among facilities with shortage may indicate that facilities provide the vaccine when available but tend to run out of it. This highlights supply issues rather than errors by the medical team and needs further investigation. Our finding of low coverage for MMR is Mesoamerica is puzzling. Indeed, with such a coverage one would expect outbreaks in the region. Therefore, it is possible that such outbreaks are not captured or herd immunity in the region may be achieved at a lower rate of coverage. It is more likely that the first is more likely. Hence, our study calls for improving the surveillance systems in place to better detect outbreaks. The low MMR coverage in Mexico led us to further investigation. In Mexico, the measles and rubella (MR) vaccine is recommended as a booster for children. When we combined MMR and MR, the coverage went up from 44.6% to 75.2%. Days at risk declined from 483 to 274 while potential days at risk declined from 185 to 153. This suggests that physicians provided MR in lieu of MMR when it was unavailable. In fact, 1,430 children received MR and had no record of MMR, although no clear patterns by facility were observed. Children at risk for measles, mumps, and rubella pose a significant public health problem. Measles is an extremely contagious disease transmitted through respiratory droplets or aerosolized droplet nuclei, and the virus remains infectious within closed spaces for hours [17]. Before the introduction of an effective vaccine in 1963, all children were expected to contract the disease after the first exposure. In 1999, with 90% coverage of one dose of measles-containing vaccine by 35 months of age and the introduction of a routine two-dose schedule before school entry, only 100 cases of measles disease were recorded among children in the United States [18]. Coverage of this nature will increase, and days at risk will decrease, if we avoid missed opportunities and administer vaccines at the required intervals [19]. Our analysis included only vaccination visits; if we used all clinic visits, the potential coverage increases would be higher and the days at risk lower [19]. Also, only children with vaccine cards were included in our measure of potential coverage; those without vaccine cards likely are unvaccinated. Our findings are the first representative data available on missed opportunities for vaccination in poor areas in Mesoamerica. SM2015 data and this analysis provide unique population-based estimates of vaccination coverage against which prevention efforts may be evaluated. As we confront the challenge of improving vaccination coverage, it is important to use all health visits to vaccinate or promote vaccination. Vaccination coverage for all antigens will increase by avoiding missed opportunities. For coverage to increase and for elimination to be achieved, a wide range of participants have to be involved, including parents, nurses, pediatricians, and other health providers. Development and implementation of effective public health strategies to limit missed opportunities for vaccination are urgently needed.

Vaccination schedule by country.

(DOCX) Click here for additional data file.

Total number of vaccines received at missed opportunity visit.

(XLSX) Click here for additional data file.

Proportion of children who received an antigen, among children with a missed opportunity

(XLSX) Click here for additional data file.
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1.  The beginning of the end of measles and rubella.

Authors:  Mark Grabowsky
Journal:  JAMA Pediatr       Date:  2014-02       Impact factor: 16.193

2.  Immunization opportunities missed among urban poor children.

Authors:  K M McConnochie; K J Roghmann
Journal:  Pediatrics       Date:  1992-06       Impact factor: 7.124

3.  Knowledge of the childhood immunization schedule and of contraindications to vaccinate by private and public providers in Los Angeles.

Authors:  D Wood; N Halfon; M Pereyra; J S Hamlin; M Grabowsky
Journal:  Pediatr Infect Dis J       Date:  1996-02       Impact factor: 2.129

4.  A world without measles.

Authors:  Peter M Strebel; Stephen L Cochi; Edward Hoekstra; Paul A Rota; David Featherstone; William J Bellini; Samuel L Katz
Journal:  J Infect Dis       Date:  2011-07       Impact factor: 5.226

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Authors:  Michael McCarthy
Journal:  BMJ       Date:  2015-01-23

6.  Avoiding missed opportunities for immunization in the Central African Republic: potential impact on vaccination coverage.

Authors:  J G Kahn; A H Mokdad; M S Deming; J B Roungou; A M Boby; J L Excler; R J Waldman
Journal:  Bull World Health Organ       Date:  1995       Impact factor: 9.408

7.  Reducing missed opportunities to vaccinate during child health visits. How effective are parent education and case management?

Authors:  D Wood; M Schuster; C Donald-Sherbourne; N Duan; R Mazel; N Halfon
Journal:  Arch Pediatr Adolesc Med       Date:  1998-03

8.  Global measles mortality, 2000-2008.

Authors: 
Journal:  MMWR Morb Mortal Wkly Rep       Date:  2009-12-04       Impact factor: 17.586

9.  Protocol-based computer reminders, the quality of care and the non-perfectability of man.

Authors:  C J McDonald
Journal:  N Engl J Med       Date:  1976-12-09       Impact factor: 91.245

10.  Measles outbreak in a pediatric practice: airborne transmission in an office setting.

Authors:  A B Bloch; W A Orenstein; W M Ewing; W H Spain; G F Mallison; K L Herrmann; A R Hinman
Journal:  Pediatrics       Date:  1985-04       Impact factor: 7.124

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Review 5.  A rapid systematic review and evidence synthesis of effective coverage measures and cascades for childbirth, newborn and child health in low- and middle-income countries.

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