| Literature DB >> 32144740 |
Abstract
Over recent years, new light has been shed on aspects of information processing in cells. The quantification of information, as described by Shannon's information theory, is a basic and powerful tool that can be applied to various fields, such as communication, statistics, and computer science, as well as to information processing within cells. It has also been used to infer the network structure of molecular species. However, the difficulty of obtaining sufficient sample sizes and the computational burden associated with the high-dimensional data often encountered in biology can result in bottlenecks in the application of information theory to systems biology. This article provides an overview of the application of information theory to systems biology, discussing the associated bottlenecks and reviewing recent work.Entities:
Keywords: Information processing; Information theory; Systems biology
Year: 2020 PMID: 32144740 PMCID: PMC7242537 DOI: 10.1007/s12551-020-00665-w
Source DB: PubMed Journal: Biophys Rev ISSN: 1867-2450
Fig. 1The relationship of the distributions of x as the sender and y as the receiver. The solid line is the average of y given x. The vertical height of the yellow area for a given value of x is the variability of y given x
Fig. 2Graphical representation of entropy and mutual information. The circles represent the entropies of the random variables X and Y. The area of intersection of the two circles corresponds to the mutual information between the variables. The remainder of each circle outside the intersection corresponds to each conditional entropy
Summary of previous studies on information transmission in biological systems (this table is modified from Uda and Kuroda (2016))
| Authors | Measurement technique | Sender | Receiver | Biological System | Main result |
|---|---|---|---|---|---|
| Tkačik et al. | Snapshot | Bicoid | Hunchback | Transcription factor, gene expression | Comparing information transmission in vivo to channel capacity |
| Cheong et al. | Snapshot | TNF | NFĸB, ATF-2 | Nuclear translocation, protein phosphorylation | Information transmission by multiple molecular species |
| Uda et al. | Snapshot | Growth factors, ERK, CREB | ERK, CREB, c-FOS, EGR1 | Protein phosphorylation, gene production | Robustness and compensation of information transmission |
| Selimkhanov et al. | Live imaging | EGF | ERK | Protein phosphorylation, small molecule, nuclear translocation | Information transmission by temporal pattern |
| ATP | Ca2+ | ||||
| LPS | NFĸB | ||||
| Keshelava et al. | Live imaging | Acetylcholine | Ca2+ | G protein-coupled receptor signaling | Information transmission at a single cell level |
Fig. 3Schematic interpretation of information at the population level and information at the single cell level. a Information at the population level is evaluated from a distribution obtained from the responses of a population of cells where each cell is stimulated once. b Information at the single cell level is evaluated from a distribution obtained from the responses of a single cell stimulated repeatedly