NEWS | Prodigio >
Reconstructing large interaction networks from empirical time series data
Reconstructing interactions from observational data is a critical need for investigating natural biological networks, wherein network dimensionality is usually high.
IDConsortium
However, these pose a challenge to existing methods that can quantify only small interaction networks. Here, we proposed a novel approach to reconstruct high-dimensional interaction Jacobian networks using empirical time series without specific model assumptions. This method, named “multiview distance regularised S-map,” generalised the state space reconstruction to accommodate high dimensionality and overcome difficulties in quantifying massive interactions with limited data. When evaluating this method using time series generated from theoretical models involving hundreds of interacting species, estimated strengths of interaction Jacobians were in good agreement with theoretical expectations. Applying this method to a natural bacterial community helped identify important species from the interaction network and revealed mechanisms governing the dynamical stability of a bacterial community. The proposed method overcame the challenge of high dimensionality in large natural dynamical systems.
If you want more information about this news:

More news about this project:
NMBU Presents the PRODIGIO Project at the Nordic Proteomics Society
Metaproteomics – status, challenges, opportunities, and future directions of the field. NMBU made a break through at the Nordic Proteomics Society meeting held in Lund, Sweden, from 15 to 17th November 2023.
IMDEA Energy in the 15th Mediterranean Congress of Chemical Engineering
IMDEA Energy presents the main findings from the organic loading rate shock experiment conducted within the PRODIGIO project.
ARMINES unveils methodological protocol from PRODIGIO framework for Life Cycle Assessment models
ARMINES unveils methodological protocol from PRODIGIO framework for Life Cycle Assessment models. ARMINES (OIE) participated in the Life Cycle Management 2023 (LCM 2023) Conference in Lille, France.