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Improved classification of crystallization images using data fusion and multiple classifiers

โœ Scribed by Buchala, Samarasena ;Wilson, Julie C.


Publisher
International Union of Crystallography
Year
2008
Tongue
English
Weight
558 KB
Volume
64
Category
Article
ISSN
0907-4449

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โœฆ Synopsis


Identifying the conditions that will produce diffraction-quality crystals can require very many crystallization experiments. The use of robots has increased the number of experiments performed in most laboratories, while in structural genomics centres tens of thousands of experiments can be produced every day. Reliable automated evaluation of these experiments is becoming increasingly important. A more robust classification is achieved by combining different methods of feature extraction with the use of multiple classifiers.


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