English

Epidemiological data challenges: planning for a more robust future through data standards

Computers and Society 2018-11-27 v6 Information Retrieval

Abstract

Accessible epidemiological data are of great value for emergency preparedness and response, understanding disease progression through a population, and building statistical and mechanistic disease models that enable forecasting. The status quo, however, renders acquiring and using such data difficult in practice. In many cases, a primary way of obtaining epidemiological data is through the internet, but the methods by which the data are presented to the public often differ drastically among institutions. As a result, there is a strong need for better data sharing practices. This paper identifies, in detail and with examples, the three key challenges one encounters when attempting to acquire and use epidemiological data: 1) interfaces, 2) data formatting, and 3) reporting. These challenges are used to provide suggestions and guidance for improvement as these systems evolve in the future. If these suggested data and interface recommendations were adhered to, epidemiological and public health analysis, modeling, and informatics work would be significantly streamlined, which can in turn yield better public health decision-making capabilities.

Keywords

Cite

@article{arxiv.1805.00445,
  title  = {Epidemiological data challenges: planning for a more robust future through data standards},
  author = {Geoffrey Fairchild and Byron Tasseff and Hari Khalsa and Nicholas Generous and Ashlynn R. Daughton and Nileena Velappan and Reid Priedhorsky and Alina Deshpande},
  journal= {arXiv preprint arXiv:1805.00445},
  year   = {2018}
}

Comments

v2 includes several typo fixes; v3 adds a paragraph on backfill; v4 adds 2 new paragraphs to the conclusion that address Frontiers reviewer comments; v5 adds some minor modifications that address additional reviewer comments

R2 v1 2026-06-23T01:41:53.632Z