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Toward an Open Analysis Ecosystem for Plasmodium Genomic Epidemiology.

Created on 24 Jun 2026

Authors

Shazia Ruybal-Pesántez, Jorge Amaya-Romero, Sophie Bérubé, Nicholas F Brazeau, Mouhamadou F Diop, Nicholas Hathaway, Jason A Hendry, Kirsty McCann, Kathryn Murie, Maxwell Murphy, Karamoko Niaré, Jody Phelan, Stephen F Schaffner, Alfred Simkin, Aimee R Taylor, Bryan Greenhouse, Amy Wesolowski, Robert Verity

Published in

The American journal of tropical medicine and hygiene. Jun 23, 2026. Epub Jun 23, 2026.

Abstract

Major advances in Plasmodium sequencing approaches, bioinformatic pipelines, and data analysis tools have provided valuable insights into malaria epidemiology from parasite genomic data. However, translating genetic data into actionable information for decision-makers remains a challenge. Significant barriers limit the integration of these advances into a functional data analysis ecosystem that produces standardized, interpretable results for use by national malaria control programs. The Plasmodium Genomic Epidemiology network convened 18 subject matter experts across 15 institutions at the Reproducibility, Accessibility, Documentation, and Interoperability Standards Hackathon in 2023 to identify available analysis tools, evaluate software standards, improve documentation, and outline workflows. Eight use cases for genomic data were identified, and a subset was developed into analysis workflows comprising a series of connected functionalities. Software tools were then mapped against functionalities to outline a modular approach to data analysis for these use cases. In addition to outlining workflows, a set of objective criteria was developed for evaluating software standards. A total of 40 Plasmodium genomic analysis tools were identified, 22 of which were prioritized for software standards evaluation. Additional tutorials were developed for 10 tools in the form of reproducible code applied to shared datasets. These resources are available on PGEforge (mrc-ide.github.io/PGEforge), a new community resource that serves as a central, open repository for current and future resources for malaria genomic data analysis.

PMID:
42335881
Bibliographic data and abstract were imported from PubMed on 24 Jun 2026.

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