Predicting Experimental Properties of Proteins from Sequence by Machine Learning Techniques

Volume: 8, Issue: 2, Pages: 121 - 133
Published: Apr 1, 2007
Abstract
Efficient target selection methods are an important prerequisite for increasing the success rate and reducing the cost of high-throughput structural genomics efforts. There is a high demand for sequence-based methods capable of predicting experimentally tractable proteins and filtering out potentially difficult targets at different stages of the structural genomic pipeline. Simple empirical rules based on anecdotal evidence are being...
Paper Details
Title
Predicting Experimental Properties of Proteins from Sequence by Machine Learning Techniques
Published Date
Apr 1, 2007
Volume
8
Issue
2
Pages
121 - 133
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