scholarly journals The impact of supplementary immunization activities on routine vaccination coverage: An instrumental variable analysis in five low-income countries

PLoS ONE ◽  
2019 ◽  
Vol 14 (2) ◽  
pp. e0212049 ◽  
Author(s):  
Averi Chakrabarti ◽  
Karen A. Grépin ◽  
Stéphane Helleringer
2019 ◽  
Vol 29 (8) ◽  
pp. 2119-2139
Author(s):  
Yun Li ◽  
Yoonseok Lee ◽  
Friedrich K Port ◽  
Bruce M Robinson

Unmeasured confounding almost always exists in observational studies and can bias estimates of exposure effects. Instrumental variable methods are popular choices in combating unmeasured confounding to obtain less biased effect estimates. However, we demonstrate that alternative methods may give less biased estimates depending on the nature of unmeasured confounding. Treatment preferences of clusters (e.g. physician practices) are the most frequently used instruments in instrumental variable analyses. These preference-based instrumental variable analyses are usually conducted on data clustered by region, hospital/facility, or physician, where unmeasured confounding often occurs within or between clusters. We aim to quantify the impact of unmeasured confounding on the bias of effect estimators in instrumental variable analysis, as well as several common alternative methods including ordinary least squares regression, linear mixed models, and fixed-effect models to study the effect of a continuous exposure (e.g. treatment dose) on a continuous outcome. We derive closed-form expressions of asymptotic bias of estimators from these four methods in the presence of unmeasured within- and/or between-cluster confounders. Simulations demonstrate that the asymptotic bias formulae well approximate bias in finite samples for all methods. The bias formulae show that instrumental variable analyses can provide consistent estimates when unmeasured within-cluster confounding exists, but not when between-cluster confounding exists. On the other hand, fixed-effect models and linear mixed models can provide consistent estimates when unmeasured between-cluster confounding exits, but not for within-cluster confounding. Whether instrumental variable analyses are advantageous in reducing bias over fixed-effect models and linear mixed models depends on the extent of unmeasured within-cluster confounding relative to between-cluster confounding. Furthermore, the impact of unmeasured between-cluster confounding on instrumental variable analysis estimates is larger than the impact of unmeasured within-cluster confounding on fixed-effect model and linear mixed model estimates. We illustrate the use of these methods in estimating the effect of erythropoiesis stimulating agents on hemoglobin levels. Our findings provide guidance for choosing appropriate methods to combat the dominant types of unmeasured confounders and help interpret statistical results in the context of unmeasured confounding.


2020 ◽  
Author(s):  
Francisco Castillo-Zunino ◽  
Pinar Keskinocak ◽  
Dima Nazzal ◽  
Matthew C Freeman

SummaryBackgroundRoutine childhood immunization is a cost-effective way to save lives and protect people from disease. Some low-income countries (LIC) have achieved remarkable success in childhood immunization, despite lower levels of gross national income or health spending compared to other countries. We investigated the impact of financing and health spending on vaccination coverage across LIC and lower-middle income countries (LMIC).MethodsAmong LIC, we identified countries with high-performing vaccination coverage (LIC+) and compared their economic and health spending trends with other LIC (LIC-) and LMIC. We used cross-country multi-year linear regressions with mixed-effects to test financial indicators over time. We conducted three different statistical tests to verify if financial trends of LIC+ were significantly different from LIC- and LMIC; p-values were calculated with an asymptotic χ2 test, a Kenward-Roger approximation for F tests, and a parametric bootstrap method.FindingsDuring 2014–18, LIC+ had a mean vaccination coverage between 91–96% in routine vaccines, outperforming LIC- (67–80%) and LMIC (83–89%). During 2000–18, gross national income and development assistance for health (DAH) per capita were not significantly different between LIC+ and LIC- (p > 0·13, p > 0·65) while LIC+ had a significant lower total health spending per capita than LIC- (p < 0·0001). Government health spending per capita per year increased by US$0·42 for LIC+ and decreased by US$0·24 for LIC- (p < 0·0001). LIC+ had a significantly lower private health spending per capita than LIC- (p < 0·012).InterpretationLIC+ had a difference in vaccination coverage compared to LIC- and LMIC that could not be explained by economic development, total health spending, nor aggregated DAH. The vaccination coverage success of LIC+ was associated with higher government health spending and lower private health spending, with the support of DAH on vaccines.


Author(s):  
Giuseppe Lucio Gaeta ◽  
Giuseppe Lubrano Lavadera ◽  
Francesco Pastore

Abstract Existing studies suggest that recent PhD graduates with a job vertically mismatched with their education tend to earn lower wages than their matched counterparts. However, by being based on cross-sectional ordinary least squares (OLS) estimates, these studies raise endogeneity concerns and can only be considered evidence of a correlation between vertical mismatch and wages. This paper improves this literature by applying a heteroskedasticity-based instrumental variable estimation approach to analyzing Italian PhD holders’ cross-sectional micro-data. Our analysis suggests that previous empirical studies have provided slightly upward estimates of the impact of vertical mismatch on wages. Nevertheless, our results show that the effect of overeducation on wages is sizeable. However, no wage effect is found for overskilling. The heterogeneity of these findings by field of study and gender are also inspected.


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