Welcome Guest user | Log in | Athens Login | Shibboleth Login | Register
Resources
Register
For Authors
For Librarians
For Advertisers
Services
Subscriptions/Pricing
Reprints
Advertising
Press Releases/News
Help
Downloads/Links
2008/9 Catalogue
Library Recommendation
 

Summary
Apr 2006, Vol. 7, No. 3, Pages 495-501 , DOI 10.2217/14622416.7.3.495
(doi:10.2217/14622416.7.3.495)

Collaborative Study: chronic fatigue syndrome – Research Report
Improved prediction of treatment response using microarrays and existing biological knowledge
Simon M Lin1, Jyothi Devakumar2 & Warren A Kibbe3
1Northwestern University, Robert H Lurie Cancer Center, Chicago, IL 60611, USA.
2Jubilant Biosys Ltd, Devasandra, 80 ft road, RMV Extn II stage, Bangalore, 560094, India.
3Northwestern University, Robert H Lurie Cancer Center, Chicago, IL 60611, USA.
Author for correspondence



A desired application for microarrays in the clinic is to predict treatment response from an often diverse patient population. We present a method for analyzing microarray data that is predicated on biological pathway and function knowledge as opposed to a purely data-driven initial analysis. From an analysis perspective, this methodology takes advantage of information that is available across genes on a single array, as well as differences in those patterns across measurements. By using biological knowledge in the initial analysis, the accuracy and robustness of microarray profile classification is enhanced, especially when low numbers of samples are available. For clinical studies, particularly Phase I or I/II studies, this technique is exceptionally advantageous.

Full Text PDF (203 KB) PDF Plus (237 KB)
 

Prev. Article | Next Article
View/Print PDF (203 KB)
View PDF Plus (237 KB)
Add to favorites
Email to a friend
TOC Alert | Citation Alert What is RSS?

 
 
Quick Search
for 
Authors:
Simon M Lin
Jyothi Devakumar
Warren A Kibbe
Keywords:
classification
knowledge base
microarray
treatment response