Currently submitted to: JMIR Medical Informatics
Date Submitted: Mar 23, 2026
Open Peer Review Period: Apr 13, 2026 - Jun 8, 2026
(currently open for review)
Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.
Using Synthetic Data for Machine Learning-based Childhood Vaccination Prediction in Narok, Kenya
ABSTRACT
Background:
Limited data utilization in low-resource settings poses a major barrier to the vaccine delivery ecosystem, undermining efforts to achieve equitable immunization coverage. In nomadic populations, where reliable data are hard to obtain, individuals face an increased risk of missing crucial vaccination doses as children. One such population is the Maasai in Narok County, Kenya, where the absence of high-volume, high-quality data hampers accurate coverage estimates, impedes efficient resource allocation, and weakens the ability to design and deliver timely interventions. Additionally, data privacy concerns are heightened in groups with limited sensitive data.
Objective:
First, we aim to identify children at risk of missing key vaccines across a large population to provide timely, evidence-based interventions that support increased vaccination coverage. Second, we aim to better protect the privacy of sensitive health data within a vulnerable population.
Methods:
We digitized 8 years of child vaccination records from the MOH 510 registry (n=6,913) and applied machine learning models (i.e., Logistic Regression and XGBoost) to identify children at risk. Additionally, we utilize a novel approach to tabular diffusion-based synthetic data generation ("TabSyn") to protect patient privacy within the models.
Results:
Our findings show that classification techniques can reliably and successfully predict children at risk of missing a vaccine, with recall, precision, and F1-scores exceeding 90% for some vaccines modeled. Additionally, training these models with synthetic data rather than real data—preserving the privacy of individuals within the original dataset—does not lead to a loss in predictive performance.
Conclusions:
These results support the use of synthetic data implementation in health informatics strategies for clinics with limited digital infrastructure, enabling privacy-preserving, scalable forecasting for childhood immunization coverage.
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Copyright
© The authors. All rights reserved. This is a privileged document currently under peer-review/community review (or an accepted/rejected manuscript). Authors have provided JMIR Publications with an exclusive license to publish this preprint on it's website for review and ahead-of-print citation purposes only. While the final peer-reviewed paper may be licensed under a cc-by license on publication, at this stage authors and publisher expressively prohibit redistribution of this draft paper other than for review purposes.