| Literature DB >> 24428922 |
Austin W T Chiang, Wei-Chung Liu, Pep Charusanti, Ming-Jing Hwang1.
Abstract
BACKGROUND: A major challenge in mathematical modeling of biological systems is to determine how model parameters contribute to systems dynamics. As biological processes are often complex in nature, it is desirable to address this issue using a systematic approach. Here, we propose a simple methodology that first performs an enrichment test to find patterns in the values of globally profiled kinetic parameters with which a model can produce the required system dynamics; this is then followed by a statistical test to elucidate the association between individual parameters and different parts of the system's dynamics.Entities:
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Year: 2014 PMID: 24428922 PMCID: PMC3896785 DOI: 10.1186/1752-0509-8-4
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Figure 1Dynamics and models of an adaptive enzyme network. (A) A schematic illustration of adaptation dynamics: sensitivity refers to the magnitude of the change in the output after the introduction of an external signal, and precision refers to the ability of the system returning to its pre-stimulus state after being perturbed by the external signal. Two quantities, a sensitivity score and a precision score, can be defined to measure these two dynamic properties (see Methods for details). (B) Network topology of the chemotaxis machinery in E. coli. (C) An enzyme network with a negative feed-back loop, known as the NFBLB model, that exhibits similar topology to the E. coli chemotaxis circuit where v (v) (n = A, B or C) represents the activation (deactivation) process of the rate equation for node n.
Figure 2Distributions of kinetic parameters. Distributions of parameter values obtained from a total of 74 kinetic solutions exhibiting perfect adaptation for the NFBLB model. Each tick on the x axis is a specific catalytic rate constant k or Michaelis-Menten constant K, and the values of the parameters are in power of 10, which are divided into five value classes as indicated at the right of the figure. On each data box, the contracted center is the median, while the edges of the box are the 25th and 75th percentiles of the distribution.
Results of parameter enrichment test for the NFBLB model
| | |||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| | | | | | | 32 | 49,999 | 8.5E-01 | 42 | 50,001 | 1.0E-01 | | | | |
| | | | | | | 32 | 50,000 | 8.5E-01 | 42 | 50,000 | 1.0E-01 | | | | |
| | | | | | | 24 | 50,000 | 1.0E + 00 | 50 | 50,000 | | | | ||
| | | | | | | 73 | 50,000 | 1 | 50,000 | 1.0E + 00 | | | | ||
| | | | | | | 35 | 50,000 | 6.4E-01 | 39 | 50,000 | 2.8E-01 | | | | |
| 44 | 19,998 | 25 | 19,999 | 1.7E-03 | 4 | 20,000 | 1.0E + 00 | 1 | 20,000 | 1.0E + 00 | 0 | 20,000 | 1.0E + 00 | ||
| 26 | 20,000 | 17 | 19,999 | 2.1E-01 | 17 | 20,000 | 2.1E-01 | 6 | 20,000 | 1.0E + 00 | 8 | 20,000 | 9.7E-01 | ||
| 33 | 19,994 | 28 | 20,000 | 11 | 20,000 | 8.3E-01 | 2 | 20,000 | 1.0E + 00 | 0 | 20,000 | 1.0E + 00 | |||
| 57 | 19,997 | 17 | 19,999 | 2.1E-01 | 0 | 19,999 | 1.0E + 00 | 0 | 20,000 | 1.0E + 00 | 0 | 20,000 | 1.0E + 00 | ||
| 9 | 19,999 | 9.4E-01 | 23 | 19,999 | 8.0E-03 | 32 | 20,000 | 9 | 20,000 | 9.4E-01 | 1 | 20,000 | 1.0E + 00 | ||
aIn square brackets are the intervals of parameter values for the indicated class.
bOut of M (=74) kinetic solutions, x is the number of solutions with the value of the indicated parameter belonging to the indicated value class.
cOut of a total of N (=105) parameter sets sampled, y is the number of sets with the value of the indicated parameter belonging to the indicated value class.
dAn enrichment test is considered statistically significant if its p-value < 10-3 and is highlighted in boldface. Based on p-values (using 10-3 as threshold), an enrichment state, i.e. motif, was assigned.
Functional association test results for the NFBLB model
| [100,101] | [10-1,100] | 1.81 | 1.35 | −1.18 | −0.76 | −8.75 | PR | ||
| [10-1,100] | [100,101] | 1.68 | 1.45 | −1.16 | −0.80 | −6.67 | PR | ||
| [10-3, 10-2] | [10-2,102] | 1.59 | 1.42 | −1.40 | −0.90 | −6.65 | PR | ||
| [10-3, 10-2] | [10-2,102] | 1.57 | 1.52 | 1.23 | −1.38 | PR,SN | |||
| [10-3, 10-1] | [10-1,102] | 1.76 | 1.29 | −1.41 | −0.68 | −12.72 | PR | ||
| [10-3, 10-2] | [10-2,102] | 1.47 | 2.05 | −34.32 | −0.61 | −1.06 | SN | ||
| [10-1, 100] | [10-3, 10-1] and [100, 102] | 1.63 | 1.34 | 3.30 | −2.31 | PR,SN | |||
aIn square brackets are the intervals of the parameter values, ’m’ is the motif group and ‘~m’ the non-motif group. Note that for the kinetic parameters (k , k , and k ) showing no apparent bias towards any value classes, the statistical tests were not conducted because their parameter values could not be partitioned into motif group and non-motif group (see Methods).
b“Prm” (“Snm”) is the mean logarithm value of precision (sensitivity) scores for the motif group, and “Pr~m” (“Sn~m”) is the same but for the non-motif group.
c“PR” (“SN”) indicates that the corresponding kinetic motif is statistically significant (z-score ≧3.29) in improving precision (sensitivity).
dz-score greater than 3.29 (99.9% confidence interval) is highlighted in boldface.
Figure 3A kinetic functionality network. A bipartite network connecting kinetic parameters to functionalities (sensitivity and precision) of the adaptation dynamics. On the left are kinetic motifs emerged from the enrichment tests (see Methods), where filled boxes represent enriched values bounded by the indicated power of 10 for the indicated parameter. On the right are different functionalities (sensitivity and precision) of adaptation dynamics. A connection between a kinetic parameter and functionality was established if the association between the two was determined to be significant in the statistical test (see Methods).
Figure 4Correlation between kinetic parameters. The Pearson correlation coefficients between pairs of the seven parameters that exhibited value class enrichment are shown in the top-right triangle, where a box is colored black if the corresponding correlation is significant (p-value < 0.05). In the bottom left triangle, the scatter plots of the paired parameters are shown. On the diagonal are occurrence distributions of individual kinetic parameters.
Experimental data for the kinetic parameters of chemotaxis
| Receptor Complex Demethylation | 1.2 | 0.08 | |||
| CheB | 3.2 | 0.281 | |||
| Phosphotransfer | |||||
| CheB | 0.35 | - | |||
| Dephosphotransfer | |||||
| CheY | 650 | 0.36 | |||
| Phosphotransfer | |||||
| CheY | 30 | 0.006 | |||
| Dephosphotransfer |
aSuperscript m denotes methylated form and superscript p denotes phosphorylated form.
bEach biochemical reaction is equivalent to the process of activation (v ) or deactivation (v ) (n = A, B, and C) as indicated in the NFBLB model (see equation (7) in Methods).
cTotal concentrations for the CheA-bound receptor complex ([At]), CheB ([Bt]) and CheY ([Ct]) are 5.0 μM [34], 2.27 μM [37] and 17.9 μM [34], respectively. Superscript exp denotes experimental measurement.