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Extracting medical events from clinical records using conditional random fields and parameter tuning for hidden Markov models

机译:使用条件随机字段和隐藏马尔可夫模型的参数调整从临床记录中提取医疗事件

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摘要

Recently, the extraction of clinical events from unstructured medical texts has attracted much attention of the research community. Machine learning approaches are popular for this task, due to their ability to solve the problem of sequence tagging effectively. It has been suggested previously that simple features, such as word unigrams, part-of-speech tags, chunk tags, among others, are sufficient for this task. We show that more careful preprocessing and feature selection can significantly improve the results. We used conditional random field classifier with more linguistically oriented features and outperformed the current state-of-the-art approaches. We also show that the popular and much simpler Viterbi algorithm (hidden Markov model-based classification algorithm) can produce competitive results, when its parameters are tuned using specific optimization techniques. We evaluate these algorithms for the task of extraction of medical events from the corpus developed for SemEval shared Task 12: Clinical TempEval (Temporal Evaluation) 2016, namely, for its two subtasks: (i) event detection and (ii) event classification based on contextual modality.
机译:最近,来自非结构化医学文本的临床事件的提取引起了研究界的许多关注。由于能够有效地解决序列标记问题,因此机器学习方法是为此任务的流行。已经建议以前认为简单的功能,例如单词Unigrams,言语份数,块标签等,等于这项任务就足够了。我们表明更加仔细的预处理和特征选择可以显着提高结果。我们使用了有条件的随机字段分类器,具有更多的语言面向的特征,并且优于当前的最先进的方法。我们还表明,当使用特定优化技术调整其参数时,流行和更简单的维特比算法(隐藏的Markov模型的分类算法)可以产生竞争结果。我们评估这些算法,了解来自为Semeval共享任务的语料库提取医疗事件的任务:2016年临床节目(时间评估),即其两个子任务:(i)事件检测和(ii)事件分类基于语境模式。

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