Using Qualitative Uncertainty in Protein Topology Prediction
نویسنده
چکیده
The prediction of protein structure is an important problem in molecular biology. It is also a diicult problem since the available data are incomplete and uncertain. This paper describes models for the prediction of a particular level of protein structure, known as the topology, which handle uncertainty in a qualitative fashion.
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