首页> 外文会议>International conference on intelligent text processing and computational linguistics;CICLing 2012 >Fine-Grained Certainty Level Annotations Used for Coarser-Grained E-Health Scenarios Certainty Classification of Diagnostic Statements in Swedish Clinical Text
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Fine-Grained Certainty Level Annotations Used for Coarser-Grained E-Health Scenarios Certainty Classification of Diagnostic Statements in Swedish Clinical Text

机译:用于粗粒度电子卫生场景的细粒度确定性级别注释在瑞典临床文本中对诊断声明的确定性分类

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摘要

An important task in information access methods is distinguishing factual information from speculative or negated information. Fine-grained certainty levels of diagnostic statements in Swedish clinical text are annotated in a corpus from a medical university hospital. The annotation model has two polarities (positive and negative) and three certainty levels. However, there are many e-health scenarios where such fine-grained certainty levels are not practical for information extraction. Instead, more coarse-grained groups are needed. We present three scenarios: adverse event surveillance, decision support alerts and automatic summaries and collapse the fine-grained certainty level classifications into coarser-grained groups. We build automatic classifiers for each scenario and analyze the results quantitatively. Annotation discrepancies are analyzed qualitatively through manual corpus analysis. Our main findings are that it is feasible to use a corpus of fine-grained certainty level annotations to build classifiers for coarser-grained real-world scenarios: 0.89, 0.91 and 0.8 F-score (overall average).
机译:信息访问方法中的一项重要任务是将事实信息与推测性信息或否定性信息区分开。瑞典临床文本中的诊断陈述的细粒度确定性级别在医科大学医院的语料库中标注。注释模型具有两个极性(正和负)和三个确定性级别。但是,在许多电子医疗场景中,这种细粒度的确定性级别对于信息提取不切实际。相反,需要更多的粗粒度组。我们提出了三种方案:不良事件监视,决策支持警报和自动摘要,并将细粒度的确定性级别分类折叠为粗粒度的组。我们针对每种情况建立自动分类器,并对结果进行定量分析。注解差异通过手动语料库分析进行定性分析。我们的主要发现是,使用一整套细粒度的确定性级别注释来构建粗粒度的真实场景的分类器是可行的:0.89、0.91和0.8 F分数(总体平均值)。

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