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The data retrieval optimization from the perspective of evidence-based medicine

机译:从循证医学角度的数据检索优化

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The paper is devoted to classification of MEDLINE abstracts into categories that correspond to types of medical interventions - types of patient treatments. This set of categories was extracted from Clinicaltrials.gov web site. Few classification algorithms were tested includingMultinomial Naive Bayes, Multinomial Logistic Regression, and Linear SVM implementations from sklearn machine learning library. Document marking was based on the consideration of abstracts containing links to the Clinicaltrials.gov Web site. As the result of an automatical marking 3534 abstracts were marked for training and testing the set of algorithms metioned above. Best result of multinomial classification was achieved by Linear SVM with macro evaluation precision 70.06%, recall 55.62% and F-measure 62.01%, and micro evaluation precision 64.91%, recall 79.13% and F-measure 71.32%.
机译:本文致力于将Medline摘要分类为与医疗干预类型的类别分类 - 患者治疗类型。从ClinicalTrials.gov网站提取了这组类别。从Sklearn机器学习库中测试了几个分类算法,包括来自Sklearn机器学习库的多项式幼稚贝叶斯,多项式物流回归和线性SVM实现。文档标记基于对包含链接到ClinicalTrials.gov网站的摘要。由于自动标记3534摘要标记为培训和测试上面步骤的一组算法。多项分类的最佳结果是通过线性SVM实现,具有宏观评价精度70.06%,召回55.62%和F测量62.01%,微观评价精度64.91%,召回79.13%和F-Peace 71.32%。

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