
An Overview of Spotfire for Gene‐Expression Studies
Abstract
Spotfire DecisionSite for Functional Genomics (referred to here as Spotfire) is a powerful data mining and visualization application with use in many disciplines. This unit provides an overview of Spotfire's utility in analyzing gene expression data obtained from DNA microarray experiments. Analysis of microarray data requires software-based solutions able to handle and manipulate the enormous amount of data generated. Spotfire provides a solution for accessing, analyzing and visualizing data generated from microarray experiments. Spotfire is designed to allow biologists with little or no programming or statistical skills to transform, process, and analyze microarray data.
Keywords: microarray; Spotfire; gene expression; overview; DNA
Table of Contents
- Unit Introduction
- Necessary Requirements for Using the Functional Genomics Module of Spotfire
- Overview of Spotfire Visualization Window
- DecisionSite Navigator
- Visualizations
- Query Devices
- Details-on-Demand
- Strengths and Weaknesses of Spotfire as a Desktop Microarray Analysis Software
- Literature Cited
- Figures
Figures
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Figure 11.9.1 Various components of Spotfire DecisionSite. -

Figure 11.9.2 Different components of the DecisionSite Navigator. -

Figure 11.9.3 The Properties Dialog Box. -

Figure 11.9.4 Various features of the Scatter plot visualization in Spotfire. -

Figure 11.9.5 The Customize Colors window for scatter plot (and other visualizations). -

Figure 11.9.6 The Customize Shapes window for scatter plot. -

Figure 11.9.7 The 3D Scatter Plot visualization in Spotfire. -

Figure 11.9.8 The Profile Chart visualization in Spotfire. -

Figure 11.9.9 The Heat Map visualization in Spotfire. -

Figure 11.9.10 Heat Map Properties dialog box. -

Figure 11.9.11 The Edit Color Range dialog box allows users to choose the colors for their heat map visualization. -

Figure 11.9.13 Annotations can be appended to most visualizations (example shown here with the scatter plot) through the Properties dialog box. -

Figure 11.9.14 The number and type of columns in a scatter plot can be controlled via the Columns tab in the Properties dialog. -

Figure 11.9.15 The auto-tile feature allows all the visualizations present in a particular Spotfire session to be viewed at once. -

Figure 11.9.16 Various types of query devices are assigned to different data columns. -

Figure 11.9.18 Details-on-Demand window shows a snapshot of the marked data. Data shown in this window can be exported to Excel or as text/HTML data. -

Figure 11.9.19 Details-on-Demand window can also be used to exhibit data for a single highlighted record. -

Figure 11.9.20 (A) Details-on-Demand (HTML) format. (B) Selecting the external Web browser option from the View tab allows export of the HTML data to an external browser window (C).
Videos
Literature Cited
| Literature Cited | |
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| Cheok, M.H., Yang, W., Pui, C.H., Downing, J.R., Cheng, C., Naeve, C.W., Relling, M.V., and Evans, W.E. 2003. Treatment-specific changes in gene expression discriminate in vivo drug response in human leukemia cells. Nat. Genet. 34:85-90. | |
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