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美国卫生研究院文献>BMC Systems Biology
>Leveraging syntactic and semantic graph kernels to extract pharmacokinetic drug drug interactions from biomedical literature
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Leveraging syntactic and semantic graph kernels to extract pharmacokinetic drug drug interactions from biomedical literature
BackgroundInformation about drug–drug interactions (DDIs) supported by scientific evidence is crucial for establishing computational knowledge bases for applications like pharmacovigilance. Since new reports of DDIs are rapidly accumulating in the scientific literature, text-mining techniques for automatic DDI extraction are critical. We propose a novel approach for automated pharmacokinetic (PK) DDI detection that incorporates syntactic and semantic information into graph kernels, to address the problem of sparseness associated with syntactic-structural approaches. First, we used a novel all-path graph kernel using shallow semantic representation of sentences. Next, we statistically integrated fine-granular semantic classes into the dependency and shallow semantic graphs.
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