Mutual Information and Information Flow in Biochemical Reaction Networks
ORAL
Abstract
Molecular abundances in cells vary due to the stochastic nature of individual biochemical reactions in cells. The resulting probability distributions are experimentally accessible and can be used to determine the mutual information between cellular components. However, even in simple biochemical pathways in which components form a causally ordered cascade, this mutual information is not necessarily monotonic. The possible increase of mutual information along signaling cascades can be intuitively understood in terms of noise propagation and time-averaging intrinsic fluctuations that are short-lived compared to an extrinsic signal. Mutual information measurements of stationary state distributions of molecular abundances thus seem of limited utility for characterizing cellular signaling processes. In contrast, we show how decomposing information flow in feedback loops can be used to rigorously establish general noise trade-offs in biochemical control networks.
*This work was supported by the Natural Sciences and Engineering Research Council of Canada. B.K. gratefully acknowledges funding from the University of Toronto Faculty of Arts & Science Top Doctoral Fellowship. Computational facilities were generously provided by the Digital Research Alliance of Canada.
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Publication: This presentation has two parts. One part is about unpublished results that we are currently writing up. The second part is published in the following manuscript: Fan, Raymond, and Andreas Hilfinger. "Characterizing the nonmonotonic behavior of mutual information along biochemical reaction cascades." Physical Review E 110.3 (2024): 034309.
Presenters
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Andreas Hilfinger
- University of Toronto