PT - JOURNAL ARTICLE AU - Behnam Yousefi AU - Federico Melograna AU - Gianluca Galazzo AU - Niels van Best AU - Monique Mommers AU - John Penders AU - Benno Schwikowski AU - Kristel van Steen TI - Capturing the dynamics of microbiomes using individual-specific networks AID - 10.1101/2023.01.22.525058 DP - 2023 Jan 01 TA - bioRxiv PG - 2023.01.22.525058 4099 - http://biorxiv.org/content/early/2023/01/22/2023.01.22.525058.short 4100 - http://biorxiv.org/content/early/2023/01/22/2023.01.22.525058.full AB - Background Longitudinal analysis of multivariate individual-specific microbiome profiles over time or across conditions remains a daunting task. The vast majority of statistical tools and methods available to study the microbiota are based upon cross-sectional data. Over the past few years, several attempts have been made to model the dynamics of bacterial species over time or across conditions. However, the field needs novel views on how to incorporate individual-specific microbial associations in temporal analyses when the focus lies on microbial interactions.Results Here, we propose a novel data analysis framework, called MNDA, to uncover taxon neighbourhood dynamics that combines representation learning and individual-specific microbiome co-occurrence networks. We show that tracking local neighbourhood dynamics in microbiome interaction or co-occurrence networks can yield complementary information to standard approaches that only use microbial abundances or pairwise microbial interactions. We use cohort data on infants for whom microbiome data was available at 6 and 9 months after birth, as well as information on mode of delivery and diet changes over time. In particular, MNDA-based prediction models outperform traditional prediction models based on individual-specific abundances, and enable the detection of microbes whose neighbourhood dynamics are informative of clinical variables. We further show that similarity analyses of individuals based on microbial neighbourhood dynamics can be used to find subpopulations of individuals with potential relevance to clinical practice. The annotated source code for the MNDA framework can be downloaded from: https://github.com/H2020TranSYS/microbiome_dynamicsConclusions MNDA extracts information from matched microbiome profiles and opens new avenues to personalized prediction or stratified medicine with temporal microbiome data.Competing Interest StatementThe authors have declared no competing interest.