Information Thermodynamics On Causal Networks And Its Application To Biochemical Signal Transduction

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Information Thermodynamics on Causal Networks and its Application to Biochemical Signal Transduction

Information Thermodynamics on Causal Networks and its Application to Biochemical Signal Transduction
Author :
Publisher : Springer
Total Pages : 140
Release :
ISBN-10 : 9789811016646
ISBN-13 : 981101664X
Rating : 4/5 (64X Downloads)

Book Synopsis Information Thermodynamics on Causal Networks and its Application to Biochemical Signal Transduction by : Sosuke Ito

Download or read book Information Thermodynamics on Causal Networks and its Application to Biochemical Signal Transduction written by Sosuke Ito and published by Springer. This book was released on 2016-07-16 with total page 140 pages. Available in PDF, EPUB and Kindle. Book excerpt: In this book the author presents a general formalism of nonequilibrium thermodynamics with complex information flows induced by interactions among multiple fluctuating systems. The author has generalized stochastic thermodynamics with information by using a graphical theory. Characterizing nonequilibrium dynamics by causal networks, he has obtained a novel generalization of the second law of thermodynamics with information that is applicable to quite a broad class of stochastic dynamics such as information transfer between multiple Brownian particles, an autonomous biochemical reaction, and complex dynamics with a time-delayed feedback control. This study can produce further progress in the study of Maxwell’s demon for special cases. As an application to these results, information transmission and thermodynamic dissipation in biochemical signal transduction are discussed. The findings presented here can open up a novel biophysical approach to understanding information processing in living systems.


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