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Stacked Generalization for Medical Concept Extraction from Clinical Notes

机译:从临床笔记中提取医学概念的堆叠概括

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The goal of our research is to extract medical concepts from clinical notes containing patient information. Our research explores stacked generalization as a meta-learning technique to exploit a diverse set of concept extraction models. First, we create multiple models for concept extraction using a variety of information extraction techniques, including knowledge-based, rule-based, and machine learning models. Next, we train a meta-classifier using stacked generalization with a feature set generated from the outputs of the individual classifiers. The meta-classifier learns to predict concepts based on information about the predictions of the component classifiers. Our results show that the stacked generalization learner performs better than the individual models and achieves state-of-the-art performance on the 2010 i2b2 data set.
机译:我们研究的目的是从包含患者信息的临床笔记中提取医学概念。我们的研究将堆叠泛化作为一种​​元学习技术,以利用各种概念提取模型。首先,我们使用多种信息提取技术创建用于概念提取的多个模型,包括基于知识的,基于规则的和机器学习模型。接下来,我们使用堆叠归纳法训练元分类器,并使用从各个分类器的输出生成的特征集。元分类器基于有关组件分类器预测的信息来学习预测概念。我们的结果表明,堆叠泛化学习器的性能优于单个模型,并且在2010 i2b2数据集上达到了最先进的性能。

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