J 2025

Inference of Pairwise Interactions from Strain Frequency Data Across Settings and Context-Dependent Mutual Invasibilities

LE, Thi Minh Thao, Sten MADEC and Erida GJINI

Basic information

Original name

Inference of Pairwise Interactions from Strain Frequency Data Across Settings and Context-Dependent Mutual Invasibilities

Authors

LE, Thi Minh Thao, Sten MADEC and Erida GJINI

Edition

Bulletin of Mathematical Biology, Springer, 2025, 0092-8240

Other information

Language

English

Type of outcome

Article in a journal

Country of publisher

United States of America

Confidentiality degree

is not subject to a state or trade secret

References:

URL

Organization

Přírodovědecká fakulta – Repository – Repository

DOI

http://dx.doi.org/10.1007/s11538-025-01450-0

UT WoS

001492246600001

EID Scopus

2-s2.0-105005593428

Keywords in English

COMPETITION; EVOLUTION; DYNAMICS; VACCINE; COEXISTENCE; INFECTIONS; DIVERSITY; CARRIAGE; SHAPES
Changed: 30/5/2025 00:50, RNDr. Daniel Jakubík

Abstract

V originále

We propose a method to estimate pairwise strain interactions from population-level frequencies across different endemic settings. We apply the framework of replicator dynamics, derived from a multi-strain SIS model with co-colonization, to extract from 5 datasets the fundamental backbone of strain interactions. In our replicator, each pairwise invasion fitness explicitly arises from local environmental context and trait variations between strains. We adopt the simplest formulation for multi-strain coexistence, where context is encoded in basic reproduction number R0 and mean global susceptibility to co-colonization k, and trait variations αij capture pairwise deviations from k. We integrate Streptococcus pneumoniae serotype frequencies and serotype identities collected from 5 environments: epidemiological surveys in Denmark, Nepal, Iran, Brazil and Mozambique, and mechanistically link their distributions. Our results have twofold implications. First, we offer a new proof-of-concept in the inference of multi-species interactions based on cross-sectional data. We also discuss 2 key aspects of the method: the site ordering for sequential fitting, and stability constraints on the dynamics. Secondly, we effectively estimate at high-resolution more than 70% of the 92×92 pneumococcus serotype interaction matrix in co-colonization, allowing for further projections and hypotheses testing. We show that, in these bacteria, both within- and between- serotype interaction coefficients’ distribution emerge to be unimodal, their difference in mean broadly reflecting stability assumptions on serotype coexistence. This framework enables further model calibration to global data: cross-sectional across sites, or longitudinal in one site over time, - and should allow a more robust and integrated investigation of intervention effects in such biodiverse ecosystems.
Displayed: 15/6/2025 18:29