| Literature DB >> 27662842 |
David Murrugarra1, Alan Veliz-Cuba2, Boris Aguilar3, Reinhard Laubenbacher4,5.
Abstract
BACKGROUND: Many problems in biomedicine and other areas of the life sciences can be characterized as control problems, with the goal of finding strategies to change a disease or otherwise undesirable state of a biological system into another, more desirable, state through an intervention, such as a drug or other therapeutic treatment. The identification of such strategies is typically based on a mathematical model of the process to be altered through targeted control inputs. This paper focuses on processes at the molecular level that determine the state of an individual cell, involving signaling or gene regulation. The mathematical model type considered is that of Boolean networks. The potential control targets can be represented by a set of nodes and edges that can be manipulated to produce a desired effect on the system.Entities:
Keywords: Algebraic control; Blocking transitions; Boolean networks; Edge deletions; Network control
Year: 2016 PMID: 27662842 PMCID: PMC5035508 DOI: 10.1186/s12918-016-0332-x
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Fig. 1Description of the algebraic approach of identification of control targets. a. A BN model of a molecular network. The control variables are the entries of u. b. In the absence of control policies (u=0), the attractor landscape (L ) can have undesirable attractors. c. The goal is to choose control values that give a desired attractor landscape, L ∗. d. To use the algebraic approach we first find the polynomial representation of the BN (see Section Control Actions: edge and node manipulations). e. The next step is to set up the desired attractor landscape as a system of equations that the BN has to satisfy, (see Section Control targets in Boolean networksControl targets in Booleannetworks). f. Solving the equation for u will provide the control values to achieve the desired landscape (see Section Identifying control targets). This approach not only finds individual control policies (u=A, single node; u=B, single edge), but also combinatorial control policies (u=C, two nodes; u=D, two edges). In a combinatorial control policy, the desired attractor landscape is achieved by the combination of two or more entries of u
Fig. 2The p53-mdm2 network adapted from [5]. Arrows in green represent activation while hammerhead arrows (in red) represent inhibition. Self loops were omitted, see text in Example 2.4 for an explanation. For the cancer cell model, PTEN and p14ARf are always inactive (fixed to zero) and cyclinG is always active (fixed to 1)
Fig. 3States of limit cycle representing cell cycle arrest in the p53 model. The order of the vector entries follows the indexing in Eq. 8. The dashed edge represents the transition target to destroy the limit cycle
Difference of impact in the combinatorial action of edge deletions
| Controllers applied | Ref. | Basin size of |
|---|---|---|
|
| [ | 35581 (54.29 %) |
|
| ||
|
| A control set that | 39856 (60.82 %) |
|
| forces | |
|
| a fixed point, from | |
|
| Eq. | |
|
| A control set to make | 65536 (100 %) |
|
|
| |
|
| and for blocking | |
|
| the transition in red | |
|
| at Fig. | |
|
| ||
|
| ||
|
| ||
|
|
Control edges that increase the basin of attraction of cell death represented by y 0 in Eq. 9. There are 216=65536 possible states. The number in parentheses is the ratio between the basin size and the total number of states
Fig. 4Reduced T-LGL network adapted from [10]. Arrows in green represent activation while hammerhead arrows (in red) represent inhibition. All the negative edges from Apoptosis were omitted for simplicity
Control nodes for the reduced T-LGL network
| Solution | Control targets | Attractor | Basin size |
|---|---|---|---|
|
|
| 0000000100000001 | 100 % |
|
|
| 0000000010000001 | 100 % |
|
|
| 0000000001000001 | 100 % |
|
|
| 0000000000010001 | 100 % |
|
|
| 0000000000000001 | 100 % |
|
|
| 0000000000000001 | 100 % |
|
|
| 0000010000000001 | 100 % |
|
|
| ||
|
|
| 0000000000000001 | 100 % |
|
|
|
The last two rows represent combinatorial actions of two nodes. All attractors are steady states, and the basin sizes include the steady states themselves. Notice that node x 16=Apoptosis is a conceptual node in this model, thus it is not a relevant solution for network control