Molecular Infectious Disease Epidemiology: Survival Analysis and Algorithms Linking Phylogenies to Transmission Trees
Eben Kenah, Tom Britton, M. Elizabeth Halloran, Ira M. Longini Jr

TL;DR
This paper introduces algorithms that connect pathogen phylogenies with transmission trees within a survival analysis framework, enabling more precise estimates of disease transmission parameters and insights from outbreak data.
Contribution
It establishes a one-to-one correspondence between interior node host assignments and transmission trees, and develops algorithms to incorporate phylogenetic data into epidemiologic analysis.
Findings
More efficient hazard ratio estimates for infectiousness.
Enhanced analysis of outbreak data using phylogenetic information.
Demonstrated importance of data on uninfected individuals.
Abstract
Recent work has attempted to use whole-genome sequence data from pathogens to reconstruct the transmission trees linking infectors and infectees in outbreaks. However, transmission trees from one outbreak do not generalize to future outbreaks. Reconstruction of transmission trees is most useful to public health if it leads to generalizable scientific insights about disease transmission. In a survival analysis framework, estimation of transmission parameters is based on sums or averages over the possible transmission trees. A phylogeny can increase the precision of these estimates by providing partial information about who infected whom. The leaves of the phylogeny represent sampled pathogens, which have known hosts. The interior nodes represent common ancestors of sampled pathogens, which have unknown hosts. Starting from assumptions about disease biology and epidemiologic study design,…
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