Publications des scientifiques de l'IRD

Affeldt S., Sokolovska N., Prifti E., Zucker Jean-Daniel. (2016). Spectral consensus strategy for accurate reconstruction of large biological networks. BMC Bioinformatics, 17 (16), p. art. 493 [13 p.]. ISSN 1471-2105.

Titre du document
Spectral consensus strategy for accurate reconstruction of large biological networks
Année de publication
2016
Type de document
Article référencé dans le Web of Science WOS:000392601400007
Auteurs
Affeldt S., Sokolovska N., Prifti E., Zucker Jean-Daniel
Source
BMC Bioinformatics, 2016, 17 (16), p. art. 493 [13 p.] ISSN 1471-2105
Background: The last decades witnessed an explosion of large-scale biological datasets whose analyses require the continuous development of innovative algorithms. Many of these high-dimensional datasets are related to large biological networks with few or no experimentally proven interactions. A striking example lies in the recent gut bacterial studies that provided researchers with a plethora of information sources. Despite a deeper knowledge of microbiome composition, inferring bacterial interactions remains a critical step that encounters significant issues, due in particular to high-dimensional settings, unknown gut bacterial taxa and unavoidable noise in sparse datasets. Such data type make any a priori choice of a learning method particularly difficult and urge the need for the development of new scalable approaches. Results: We propose a consensus method based on spectral decomposition, named Spectral Consensus Strategy, to reconstruct large networks from high-dimensional datasets. This novel unsupervised approach can be applied to a broad range of biological networks and the associated spectral framework provides scalability to diverse reconstruction methods. The results obtained on benchmark datasets demonstrate the interest of our approach for high-dimensional cases. As a suitable example, we considered the human gut microbiome co-presence network. For this application, our method successfully retrieves biologically relevant relationships and gives new insights into the topology of this complex ecosystem. Conclusions: The Spectral Consensus Strategy improves prediction precision and allows scalability of various reconstruction methods to large networks. The integration of multiple reconstruction algorithms turns our approach into a robust learning method. All together, this strategy increases the confidence of predicted interactions from high-dimensional datasets without demanding computations.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Informatique [122]
Localisation
Fonds IRD [F B010068895]
Identifiant IRD
fdi:010068895
Contact