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Exploring the Application of Deep Learning Techniques on Medical Text Corpora

机译:深入学习技术在医学文本语料库中的应用

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With the rapidly growing amount of biomedical literature it becomes increasingly difficult to find relevant information quickly and reliably. In this study we applied the word2vec deep learning toolkit to medical corpora to test its potential for improving the accessibility of medical knowledge. We evaluated the efficiency of word2vec in identifying properties of pharmaceuticals based on midsized, unstructured medical text corpora without any additional background knowledge. Properties included relationships to diseases ('may treat') or physiological processes ('has physiological effect'). We evaluated the relationships identified by word2vec through comparison with the National Drug File - Reference Terminology (NDF-RT) ontology. The results of our first evaluation were mixed, but helped us identify further avenues for employing deep learning technologies in medical information retrieval, as well as using them to complement curated knowledge captured in ontologies and taxonomies.
机译:随着生物医学文献的迅速增长,越来越难以快速可靠地找到相关信息。在这项研究中,我们将Word2Vec深度学习工具包应用于医疗Corpora,以测试其改善医学知识可访问性的可能性。我们评估了Word2VEC在没有任何其他背景知识的情况下识别基于中型的药物的性质的效率。性质包括与疾病的关系('可能对待')或生理过程('具有生理效应')。通过与国家药物文件参考术语(NDF-RT)本体进行比较,我们评估了Word2Vec识别的关系。我们第一次评估的结果被混合,但帮助我们确定了在医疗信息检索中使用深层学习技术的进一步途径,并使用它们以补充在本体和分类中捕获的策划知识。

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