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AIDA Array Clusterer |
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AIDA Array Clusterer is a tool to sort and group array data
for
- comparison of more than two array experiments
- selection of relevant genes within a given array gene set
- grouping of genes for pathway- or functional projection
- selection of relevant experiment conditions for differential gene
expression
It runs on a server under Linux providing the following features:
- open for all data generation programs by import of spread sheet data
- multi-user environment
- computer platform independence
- standard browser as user interface – easy to use
- highest possible data security
- stability of Linux
Alternatively, it can be installed as a virtual machine on a Windows-PC |
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Different clustering methods with AIDA Array Clusterer
include:
- Self Organizing Maps (SOMs), most frequently used for gene clustering
to answer the question: Which genes behave similar within a series of
experiments?
- Hierarchical Clustering, most useful for experiment clustering, to
answer the question: Which experiments have a similar pattern within
a set of genes (spots)?
- Combination (2D)-Clustering, in which experiment and gene clustering
are combined to find a correlation of similar experiments and groups
of induced or repressed genes
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Self Organizing Maps (SOMs) |

Hierarchical Clustering |
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Mathematical Methods
- Unweighted Centroid Linkage Clustering (UPGMA)
- Weighted Centroid Linkage Clustering (WPGMA)
- Distance Function
- Euclidean Distance
- Linear Correlation
- Manhatten Distance
- Standardized mean and variance
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Histogram of cluster sizes |
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Combination of Hierarchical Clustering
and SOMs |
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