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Jeffrey Divergence Applied to Docking Virtual

机译:Jeffrey Divergence应用于虚拟对接

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Data analysis with high dimensionality and few samples implies a set of problems related with the Curse of dimensionality phenomenon. Molecular Docking faces these kind problems to compare molecules by similarity. LBVS-Ligand-Based Virtual Screening conducts studies of docking among molecules using their common attributes registered in specialized databases. These attributes are represented by high dimensionality boolean vectors where an bit set indicates the presence of an specific attribute in the molecule, whereas a zero bit, its absence. The discovering of new drugs through the comparison of these vectors involves exhaustive processes of matching among the vectors. In this work, it is proposed the use of Jeffrey divergence as a similarity measurement in order to find the best approximate virtual docking between distinct molecules, to reduce the computation time, and offset some of Curse of dimensionality effects. The results suggest the application of Jeffrey divergence on discovering of candidates to drugs allow to identify the best approximate matching among them.
机译:高维数据和少量样本的数据分析意味着与维数诅咒现象相关的一系列问题。分子对接面临着这类问题,无法通过相似性比较分子。基于LBVS-配体的虚拟筛选使用在特殊数据库中注册的共同属性对分子之间的对接进行研究。这些属性由高维布尔向量表示,其中位集指示分子中存在特定属性,而零位指示其不存在。通过比较这些载体来发现新药涉及载体间匹配的详尽过程。在这项工作中,建议使用Jeffrey发散作为相似性度量,以便找到不同分子之间的最佳近似虚拟对接,以减少计算时间,并抵消维数诅咒的某些影响。结果表明,Jeffrey散度在发现候选药物方面的应用可以确定药物之间的最佳近似匹配。

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