Uncovering the hidden geometry behind metabolic networks
Metabolism is a fascinating cell machinery underlying life and disease and genome-scale reconstructions provide us with a captivating view of its complexity. However, deciphering the relationship between metabolic structure and function remains a major challenge. In particular, turning observed stru...
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Zusammenfassung: | Metabolism is a fascinating cell machinery underlying life and disease and
genome-scale reconstructions provide us with a captivating view of its
complexity. However, deciphering the relationship between metabolic structure
and function remains a major challenge. In particular, turning observed
structural regularities into organizing principles underlying systemic
functions is a crucial task that can be significantly addressed after endowing
complex network representations of metabolism with the notion of geometric
distance. Here, we design a cartographic map of metabolic networks by embedding
them into a simple geometry that provides a natural explanation for their
observed network topology and that codifies node proximity as a measure of
hidden structural similarities. We assume a simple and general connectivity law
that gives more probability of interaction to metabolite/reaction pairs which
are closer in the hidden space. Remarkably, we find an astonishing congruency
between the architecture of E. coli and human cell metabolisms and the
underlying geometry. In addition, the formalism unveils a backbone-like
structure of connected biochemical pathways on the basis of a quantitative
cross-talk. Pathways thus acquire a new perspective which challenges their
classical view as self-contained functional units. |
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DOI: | 10.48550/arxiv.1109.1934 |