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Negation Detection for Clinical Text Mining in Russian

机译:俄语临床文本挖掘的否定检测

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Developing predictive modeling in medicine requires additional features from unstructured clinical texts. In Russia, there are no instruments for natural language processing to cope with problems of medical records. This paper is devoted to a module of negation detection. The corpus-free machine learning method is based on gradient boosting classifier is used to detect whether a disease is denied, not mentioned or presented in the text. The detector classifies negations for five diseases and shows average F-score from 0.81 to 0.93. The benefits of negation detection have been demonstrated by predicting the presence of surgery for patients with the acute coronary syndrome.
机译:在医学中开发预测性建模需要来自非结构化临床文本的额外特征。 在俄罗斯,没有用于应对医疗记录问题的自然语言处理。 本文致力于否定检测模块。 无颗粒机学习方法基于梯度升压分类器用于检测疾病是否被拒绝,文本中未提及或呈现。 探测器对五种疾病进行否定,并显示平均F分,从0.81到0.93。 通过预测急性冠状动脉综合征患者的手术存在,已经证明了否定检测的好处。

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