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Detecting Sequence and Structure Homology via an Integrative Kernel: A Case-Study in Recognizing Enzymes

机译:通过整合核检测序列和结构同源性:识别酶的案例研究

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Sequence and structure are complementary pieces of information that can be used to infer protein function. We study and compare sequence, structure and sequence-structure integrative kernels to recognize proteins with enzymatic function. Using a support-vector machine, we show that kernels that combine sequence and structure information typically perform better (AUC 0.73) at this task than kernels that exploit either type of information exclusively. We find that the feature space of structure kernels complements that of sequence kernels, making both sources of similarity more accessible to kernel methods
机译:序列和结构是可用于推断蛋白质功能的互补信息。我们研究和比较序列,结构和序列结构整合核,以识别酶活性的蛋白质。使用支持向量机,我们示出了组合序列和结构信息的内核通常在此任务中执行更好的(AUC 0.73),而不是专门利用任何类型信息的内核。我们发现结构内核的特征空间补充了序列内核的功能,使得内核方法更可访问的相似性源

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