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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Jan 7, 2025
Date Accepted: Jul 15, 2025

The final, peer-reviewed published version of this preprint can be found here:

Best Practices for Data Modernization Across the United States Public Health System: Scoping Review

Zeba Z, Lartey ST, Durneva P, Roy S, Jha N, Ofori MA, Mittal N, Dockery S, Scarboro NS, Taylor M, Joshi A

Best Practices for Data Modernization Across the United States Public Health System: Scoping Review

J Med Internet Res 2025;27:e70946

DOI: 10.2196/70946

PMID: 41135053

PMCID: 12551973

Best Practices for Data Modernization across the United States Public Health: A Scoping Review

  • Zebunnesa Zeba; 
  • Stella T. Lartey; 
  • Polina Durneva; 
  • Shongkour Roy; 
  • Niharika Jha; 
  • Michael Arthur Ofori; 
  • Nidhi Mittal; 
  • Stella Dockery; 
  • Nichole Saulsberry Scarboro; 
  • Michelle Taylor; 
  • Ashish Joshi

ABSTRACT

Background:

The adoption of new technologies and data modernization approaches in public health aims to enhance the use of health data to inform decision-making and improve population health. However, public health departments struggle with legacy systems, siloed data, and privacy concerns, hampering new technology adoption and data sharing with stakeholders. This paper maps how to address these shortcomings by identifying data modernization challenges, initiatives, and progress.

Objective:

To characterize the evidence for data modernization associated gaps and best practices in public health.

Methods:

This study conducts a scoping review to characterize recent initiatives on data modernization to optimize health data best practices across the United States (U.S.) public health agencies. We searched for papers across PubMed, Scopus, Google Scholars, and grey literature that were published between 1st January 2019 and 30th April 2024. We focused on data modernization within local, state, and the U.S. federal public health departments. Data were extracted on modernization challenges and best practices as well as data sources, and impacts on modern initiatives of data modernization.

Results:

Our final sample included 22 papers. In this review, we discuss common data modernization components including migrating data to the cloud, integrating disparate data sources into unified systems, existing governance policies, and adopting analytics platforms. Major data sources were electronic health records, insurance claims, and disease registries. The common challenges were poor data quality, limited system interoperability, and resource constraints. We also reflect the benefits include timely integrated data, and new insights enhancing programs when aligned with data policies and standards.

Conclusions:

This study identifies initiatives aiming to facilitate data-driven policy and decision-making. Findings indicate that there are still opportunities to implement best practices, assess impact, address technological gaps, and prioritize strategic, sustainable investments to further enhance data infrastructure and modernization.


 Citation

Please cite as:

Zeba Z, Lartey ST, Durneva P, Roy S, Jha N, Ofori MA, Mittal N, Dockery S, Scarboro NS, Taylor M, Joshi A

Best Practices for Data Modernization Across the United States Public Health System: Scoping Review

J Med Internet Res 2025;27:e70946

DOI: 10.2196/70946

PMID: 41135053

PMCID: 12551973

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