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Extracting Drug-Drug Interactions with Word and Character-Level Recurrent Neural Networks

机译:利用单词和字符级递归神经网络提取药物相互作用

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摘要

Drug-drug interactions (DDIs) are known to be responsible for nearly a third of all adverse drug reactions. Hence several current efforts focus on extracting signal from EMRs to prioritize DDIs that need further exploration. To this end, being able to extract explicit mentions of DDIs in free text narratives is an important task. In this paper, we explore recurrent neural network (RNN) architectures to detect and classify DDIs from unstructured text using the DDIExtraction dataset from the SemEval 2013 (task 9) shared task. Our methods are in line with those used in other recent deep learning efforts for relation extraction including DDI extraction. However, to our knowledge, we are the first to investigate the potential of character-level RNNs (Char-RNNs) for DDI extraction (and relation extraction in general). Furthermore, we explore a simple but effective model bootstrapping method to (a). build model averaging ensembles, (b). derive confidence intervals around mean micro-F scores (MMF), and (c). assess the average behavior of our methods. Without any rule based filtering of negative examples, a popular heuristic used by most earlier efforts, we achieve an MMF of 69.13. By adding simple replicable heuristics to filter negative instances we are able to achieve an MMF of 70.38. Furthermore, our best ensembles produce micro F-scores of 70.81 (without filtering) and 72.13 (with filtering), which are superior to metrics reported in published results. Although Char-RNNs turnout to be inferior to regular word based RNN models in overall comparisons, we find that ensembling models from both architectures results in nontrivial gains over simply using either alone, indicating that they complement each other.
机译:已知药物-药物相互作用(DDI)引起了所有不良药物反应的近三分之一。因此,当前的一些努力集中在从EMR中提取信号以对需要进一步探索的DDI进行优先级排序。为此,在自由文本叙述中提取DDI的明确提及是一项重要的任务。在本文中,我们探索了递归神经网络(RNN)架构,以使用SemEval 2013(任务9)共享任务中的DDIExtraction数据集对非结构化文本中的DDI进行检测和分类。我们的方法与最近其他深度学习工作中用于关系提取(包括DDI提取)的方法一致。但是,据我们所知,我们是第一个研究字符级RNN(Char-RNN)进行DDI提取(以及一般而言是关系提取)的潜力。此外,我们探索了一种简单但有效的模型自举方法(a)。建立模型平均合奏,(b)。推导平均微F得分(MMF)和(c)周围的置信区间。评估我们方法的平均行为。如果没有任何基于规则的否定示例过滤(大多数早期尝试使用的一种流行的启发式方法),则我们实现的MMF为69.13。通过添加简单的可复制试探法来过滤否定实例,我们能够实现70.38的MMF。此外,我们最好的合奏可以产生70.81(未过滤)和72.13(有过滤)的微F分数,优于已发表结果中报告的指标。尽管在总体比较中,Char-RNN的效果不如基于常规单词的RNN模型,但我们发现,将两种体系结构集成在一起的模型所产生的收益要远远超过仅单独使用其中一种,表明它们是相辅相成的。

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