A network approach to analyzing highly recombinant malaria parasite genes
Daniel B. Larremore, Aaron Clauset, Caroline O. Buckee

TL;DR
This paper introduces a network-based method to analyze the complex recombination patterns of highly diverse var genes in malaria parasites, revealing modular structures and evolutionary constraints.
Contribution
It presents a novel network approach to identify recombination constraints in highly recombinant genes, validated on synthetic data and applied to malaria var genes.
Findings
Identified nine highly variable regions with distinctive network community structures.
Recombination constraints vary among different regions, some being correlated and others independent.
The method uncovers modular evolutionary trajectories facilitating diversity while maintaining function.
Abstract
The var genes of the human malaria parasite Plasmodium falciparum present a challenge to population geneticists due to their extreme diversity, which is generated by high rates of recombination. These genes encode a primary antigen protein called PfEMP1, which is expressed on the surface of infected red blood cells and elicits protective immune responses. Var gene sequences are characterized by pronounced mosaicism, precluding the use of traditional phylogenetic tools that require bifurcating tree-like evolutionary relationships. We present a new method that identifies highly variable regions (HVRs), and then maps each HVR to a complex network in which each sequence is a node and two nodes are linked if they share an exact match of significant length. Here, networks of var genes that recombine freely are expected to have a uniformly random structure, but constraints on recombination…
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