Biomedical Engineering Reference
In-Depth Information
8.5
Conclusion
Many methods and tools were developed in the fi rst decade of analyzing
data from DNA microarrays. Today, software such as R and MEV has been
developed to encompass multi-functionality and offer fl exibility in analysis
that can accommodate almost any design. It is up to the user to select the
correct sequence of analysis and design his experiment properly. Microarray
experiments can be very costly; careful consideration should be given to the
power of the experiment and the number of replicates in order not to waste
time and resources.
8.6
References
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