Decoding the Fundamental Drivers of Phylodynamic Inference

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Abstract

Despite its increasing role in the understanding of infectious disease transmission at the applied and theoretical levels, phylodynamics lacks a well-defined notion of ideal data and optimal sampling. We introduce a method to visualize and quantify the relative impact of pathogen genome sequence and sampling times - two fundamental sources of data for phylodynamics under birth-death-sampling models - to understand how each drives phylodynamic inference. Applying our method to simulated data and real-world SARS-CoV-2 and H1N1 Influenza data, we use this insight to elucidate fundamental trade-offs and guidelines for phylodynamic analyses to draw the most from sequence data. Phylodynamics promises to be a staple of future responses to infectious disease threats globally. Continuing research into the inherent requirements and trade-offs of phylodynamic data and inference will help ensure phylodynamic tools are wielded in ever more targeted and efficient ways.

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Featherstone, L. A., Duchene, S., & Vaughan, T. G. (2023). Decoding the Fundamental Drivers of Phylodynamic Inference. Molecular Biology and Evolution, 40(6). https://doi.org/10.1093/molbev/msad132

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