| Literature DB >> 19302701 |
Alexander Kaever1, Thomas Lingner, Kirstin Feussner, Cornelia Göbel, Ivo Feussner, Peter Meinicke.
Abstract
BACKGROUND: A central goal of experimental studies in systems biology is to identify meaningful markers that are hidden within a diffuse background of data originating from large-scale analytical intensity measurements as obtained from metabolomic experiments. Intensity-based clustering is an unsupervised approach to the identification of metabolic markers based on the grouping of similar intensity profiles. A major problem of this basic approach is that in general there is no prior information about an adequate number of biologically relevant clusters.Entities:
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Year: 2009 PMID: 19302701 PMCID: PMC2666665 DOI: 10.1186/1471-2105-10-92
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1Clustering progress window (final state). The clustering progress window after completion of the clustering process. The scrollbar in the middle of the window may be used to browse through intermediate clustering results with a higher smoothing over the prototype profiles. In the upper plot, MarVis displays the prototypes of the selected clustering state according to the current colormap. By default, MarVis uses the Jet colormap, i.e. red colors represent high intensities and blue colors represent low intensities. The vertical axis represents the different data set conditions, the horizontal axis corresponds to the prototype numbers. In the lower plot, the number of marker candidates that are associated with each prototype are represented as vertical bars with different height.
Figure 2MarVis main window. The main window of MarVis after selecting a cluster/prototype for further analysis. The window is divided into several regions, which display different information: The prototype plot (compare with figure 1) shows the array of prototypes according to the current colormap (region 1a) and the number of marker candidates in the associated clusters (region 1b). The cluster plot (2) displays the intensity profiles of marker candidates in the currently activated cluster where a white rectangle marks the currently activated candidate and the associated prototype. The marker information box (3) shows detailed information of all candidates in the currently activated cluster. The marker scatter plot (4) displays the retention time vs. the mass-to-charge-ratio of each marker candidate in the currently activated cluster using big red dots. The currently activated candidate is represented by a big blue dot. In the background all marker candidates of the current data set are plotted as small gray dots. The active-prototype/marker plot (5) displays the magnified prototype profile of the activated cluster according to the current colormap.
Figure 3Prototype plot. Two alternative display modes of the prototype plot (region 1a and 1b in figure 2): The first mode (top) corresponds to equally spaced prototype profiles with a cluster size bar plot in the lower part. The second mode (bottom) shows the prototypes spaced according to cluster size (upper box) and the normalized intensity profiles of the respective marker candidates (lower box).
Figure 4Cluster plot. The cluster plot (region 2 in figure 2) with standard (left side) and logarithmical colormapping (right side) of the original intensity values (72 values for each marker candidate according to 8 different conditions and 9 replicas for each condition).