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Clinical multi-label free text classification by exploiting disease label relation

机译:利用疾病标签关系进行临床多标签自由文本分类

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Clinical data describing a patient's health status can be multi-labelled. For example, a clinical record describing patient suffering from cough and fever should be tagged with both two disease labels. These co-occurred labels often have interrelation which can be exploited to improve disease classifications. In this work, we treat the categorization of free clinical text as a multi-label learning problem. However, we discover that some commonly used multi-label learning methods might suffer from some severe side effects in exploiting complicated disease label relation, such as over-exploitation of label relation and error-propagation in label prediction. Based on these findings, we propose a novel multi-label learning algorithm called Ensemble of Sampled Classifier Chains (ESCC) to improve clinical text data classification. ESCC automatically learns to select relevant disease information that is helpful to improve classification performance when exploiting possible disease relation. In our conducted experiments, ESCC shows strong advantages over other state-of-the-art multi-label algorithms on medical text data with significant improvement in performance. The proposed algorithm is promising in mining knowledge from a wide range of multi-label medical text data.
机译:描述患者健康状况的临床数据可以多标签化。例如,描述患有咳嗽和发烧的患者的临床记录应同时贴有两个疾病标签。这些共同出现的标签通常具有相互关系,可以用来改善疾病分类。在这项工作中,我们将免费临床文本的分类视为一个多标签学习问题。但是,我们发现一些常用的多标签学习方法在利用复杂疾病标签关系时可能会遭受一些严重的副作用,例如过度利用标签关系和标签预测中的错误传播。基于这些发现,我们提出了一种新颖的多标签学习算法,称为采样分类器链集成(ESCC),以改善临床文本数据分类。 ESCC自动学习选择相关的疾病信息,这在开发可能的疾病关系时有助于改善分类性能。在我们进行的实验中,ESCC在医学文本数据方面显示出优于其他最新的多标签算法的强大优势,并且性能显着提高。所提出的算法在从多种多标签医学文本数据中挖掘知识方面很有前途。

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