| Literature DB >> 17875221 |
Ryoko Morioka1, Shigehiko Kanaya, Masami Y Hirai, Mitsuru Yano, Naotake Ogasawara, Kazuki Saito.
Abstract
BACKGROUND: Modelling of time series data should not be an approximation of input data profiles, but rather be able to detect and evaluate dynamical changes in the time series data. Objective criteria that can be used to evaluate dynamical changes in data are therefore important to filter experimental noise and to enable extraction of unexpected, biologically important information.Entities:
Mesh:
Year: 2007 PMID: 17875221 PMCID: PMC2080644 DOI: 10.1186/1471-2105-8-343
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1The results of log-likelihood values and experimental conditions. Relationship between optical density values and state transition time. Red plots show the probabilistic index for the evaluation of the state change. Blue plots show the Optical Density (OD) values that represent the cellular populations at each time.
Figure 2Examples of the results of . The horizontal axis shows the culture time in minutes. The vertical axis represents the cellular density values (blue plots) and the probabilistic index for transition (red plots). a) The results of analysis of the LB data (control culture condition). According to the probabilistic index, the first transition was predicted between time points 3 and 4, the period that corresponded to transition from exponential growth phase to the stationary phase as indicated by cellular density values. The probabilistic index identifies another state change between time points 6 and 7 during the "stationary" phase. b) The results of analysis of the MGM data (stress culture condition). According to the probabilistic index, a state change was predicted between time points 5 and 6, a period that corresponded to the transition from the exponential growth phase to the stationary phase. Compared to the results from cells grown in LB, the transition timing was different. This difference was caused by the lack of glucose in MGM.
The list of transition driving genes identified in cells grown in CSM and DSM
| Adaptation to typical conditions | |
| Cell wall | |
| Germination | |
| Membrane bioenergetics | |
| Sporulation | |
| Transport/binding proteins and lipoproteins | |
| Detoxification | |
| Regulation | |
| Antibiotic production | |
| Carbohydrates and related molecules | |
| Metabolism of amino acids and related molecules | |
| Metabolism of lipids | |
| Phage-related function | |
| Proteins with unknown function |
Figure 3The result of an LDS-based calculation showing a transition in gene expression and metabolite accumulation. The ordinate scale indicates a log-likelihood value calculated by LDS. The transition in gene expression and metabolite accumulation in both leaf and root occurred most often in Period 1, showed by the left bold rectangle. During Period 2, shown by the right bold rectangle, a second transition in metabolite accumulation occurred solely in the root.
Figure 4Lipid accumulation profiles. The accumulation profiles of metabolites whose m/z values corresponded to lipids expressing "total acyl carbon: total double bonds in two acyl groups", i.e., phosphatidylglycerol (a), phosphatidylethanolamine (b), phosphatidylcholine (c), phosphatidic acid (d), and sulfoquinovosyl diacylglycerol (e). the vertical axis shows normalized log-ratio values of the sulfur starvation condition to the control condition. (f) Sulfate profile analyzed by capillary electrophoresis. The vertical axis shows the log-ratio values of the sulfur starvation condition to the control condition.