Abstract

BackgroundPoor data quality is limiting the use of data sourced from routine health information systems (RHIS), especially in low- and middle-income countries. An important component of this data quality issue comes from missing values, where health facilities, for a variety of reasons, fail to report to the central system.MethodsUsing data from the health management information system in the Democratic Republic of the Congo and the advent of COVID-19 pandemic as an illustrative case study, we implemented seven commonly used imputation methods and evaluated their performance in terms of minimizing bias in imputed values and parameter estimates generated through subsequent analytical techniques, namely segmented regression, which is widely used in interrupted time series studies, and pre–post-comparisons through paired Wilcoxon rank-sum tests. We also examined the performance of these imputation methods under different missing mechanisms and tested their stability to changes in the data.ResultsFor regression analyses, there were no substantial differences found in the coefficient estimates generated from all methods except mean imputation and exclusion and interpolation when the data contained less than 20% missing values. However, as the missing proportion grew, k-NN started to produce biased estimates. Machine learning algorithms, i.e. missForest and k-NN, were also found to lack robustness to small changes in the data or consecutive missingness. On the other hand, multiple imputation methods generated the overall most unbiased estimates and were the most robust to all changes in data. They also produced smaller standard errors than single imputations. For pre–post-comparisons, all methods produced p values less than 0.01, regardless of the amount of missingness introduced, suggesting low sensitivity of Wilcoxon rank-sum tests to the imputation method used.ConclusionsWe recommend the use of multiple imputation in addressing missing values in RHIS datasets and appropriate handling of data structure to minimize imputation standard errors. In cases where necessary computing resources are unavailable for multiple imputation, one may consider seasonal decomposition as the next best method. Mean imputation and exclusion and interpolation, however, always produced biased and misleading results in the subsequent analyses, and thus, their use in the handling of missing values should be discouraged.

Highlights

  • There is a growing interest in using data sourced from routine health information systems (RHIS) to monitor and evaluate the performance of health programmes and interventions, especially in low- and middle-income countries (LMICs)

  • We examined other algorithms that have been used extensively in imputing missing values, namely random forest, k-nearest neighbour (k-NN), seasonal decomposition, and multiple imputation, including both the default predictive mean matching (PMM) method and a 2-level Poisson that accounts for the fact that the Health management information system (HMIS) dataset is both longitudinal in nature and made up of count data

  • In addition to the total number of outpatient visits, we examined the levels of missing data for several other essential health services, including visits for common infectious diseases, visits for maternal health services, new diagnoses of non-communicable diseases, and vaccinations (DTP, BCG, OPV, and PVC-13)

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Summary

Introduction

There is a growing interest in using data sourced from routine health information systems (RHIS) to monitor and evaluate the performance of health programmes and interventions, especially in low- and middle-income countries (LMICs). Such systems typically comprise data collected on a pre-defined set of health indicators from health facilities at regular time intervals. Missing values are one of the most common and challenging components of poor data quality in RHIS [2] as their presence introduces uncertainty and ambiguity into the data. Poor data quality is limiting the use of data sourced from routine health information systems (RHIS), especially in low- and middle-income countries. An important component of this data quality issue comes from missing values, where health facilities, for a variety of reasons, fail to report to the central system

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