Jannis Born, Matteo Manica, et al.
iScience
The advent of high-throughput technologies has provided researchers with measurements of thousands of molecular entities and enable the investigation of the internal regulatory apparatus of the cell. However, network inference from high-throughput data is far from being a solved problem. While a plethora of different inference methods have been proposed, they often lead to non-overlapping predictions, and many of them lack user-friendly implementations to enable their broad utilization. Here, we present Consensus Interaction Network Inference Service (COSIFER), a package and a companion web-based platform to infer molecular networks from expression data using state-of-the-art consensus approaches. COSIFER includes a selection of state-of-the-art methodologies for network inference and different consensus strategies to integrate the predictions of individual methods and generate robust networks.
Jannis Born, Matteo Manica, et al.
iScience
Jannis Born, David Beymer, et al.
Patterns
Konstantina Charmpi, Tiannan Guo, et al.
Genome Biology
Matteo Manica, Roland Mathis, et al.
Nature Machine Intelligence