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首页> 外文期刊>Journal of the American Medical Informatics Association : >Automated acquisition of disease drug knowledge from biomedical and clinical documents: an initial study.
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Automated acquisition of disease drug knowledge from biomedical and clinical documents: an initial study.

机译:从生物医学和临床文件中自动获取疾病药物知识:初步研究。

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摘要

OBJECTIVE: Explore the automated acquisition of knowledge in biomedical and clinical documents using text mining and statistical techniques to identify disease-drug associations. DESIGN: Biomedical literature and clinical narratives from the patient record were mined to gather knowledge about disease-drug associations. Two NLP systems, BioMedLEE and MedLEE, were applied to Medline articles and discharge summaries, respectively. Disease and drug entities were identified using the NLP systems in addition to MeSH annotations for the Medline articles. Focusing on eight diseases, co-occurrence statistics were applied to compute and evaluate the strength of association between each disease and relevant drugs. RESULTS: Ranked lists of disease-drug pairs were generated and cutoffs calculated for identifying stronger associations among these pairs for further analysis. Differences and similarities between the text sources (i.e., biomedical literature and patient record) and annotations (i.e., MeSH and NLP-extracted UMLS concepts) with regards to disease-drug knowledge were observed. CONCLUSION: This paper presents a method for acquiring disease-specific knowledge and a feasibility study of the method. The method is based on applying a combination of NLP and statistical techniques to both biomedical and clinical documents. The approach enabled extraction of knowledge about the drugs clinicians are using for patients with specific diseases based on the patient record, while it is also acquired knowledge of drugs frequently involved in controlled trials for those same diseases. In comparing the disease-drug associations, we found the results to be appropriate: the two text sources contained consistent as well as complementary knowledge, and manual review of the top five disease-drug associations by a medical expert supported their correctness across the diseases.
机译:目的:探索利用文本挖掘和统计技术来识别疾病与药物之间的关联,以自动获取生物医学和临床文献知识的方法。设计:从患者记录中提取生物医学文献和临床叙述,以收集有关疾病-药物关联的知识。两种NLP系统BioMedLEE和MedLEE分别应用于Medline文章和排放摘要。除了用于Medline文章的MeSH注释外,还使用NLP系统识别疾病和药物实体。针对八种疾病,共现统计被用于计算和评估每种疾病与相关药物之间的关联强度。结果:生成了疾病-药物对的排名列表,并计算了临界值以识别这些对之间的更强关联,以进行进一步分析。观察到关于疾病药物知识的文本来源(即生物医学文献和患者记录)和注释(即MeSH和NLP提取的UMLS概念)之间的差异和相似性。结论:本文提出了一种获取疾病特定知识的方法,并对该方法进行了可行性研究。该方法基于将NLP和统计技术相结合应用于生物医学和临床文档。该方法可以根据患者记录提取有关临床医生用于特定疾病患者的药物的知识,同时还可以获取经常参与针对相同疾病的对照试验的药物知识。在比较疾病-药物之间的关联时,我们发现结果是适当的:两个文本来源包含一致且互补的知识,医学专家对前五个疾病-药物之间的关联进行人工审查支持了它们在疾病中的正确性。

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