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Assertion Detection in Clinical Natural Language Processing: A Knowledge-Poor Machine Learning Approach

机译:临床自然语言处理中的断言检测:一种知识贫乏的机器学习方法

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Natural language processing (NLP) have been recently used to extract clinical information from free text in Electronic Health Record (EHR). In clinical NLP one challenge is that the meaning of clinical entities is heavily affected by assertion modifiers such as negation, uncertain, hypothetical, experiencer and so on. Incorrect assertion assignment could cause inaccurate diagnosis of patients' condition or negatively influence following study like disease modeling. Thus, clinical NLP systems which can detect assertion status of given target medical findings (e.g. disease, symptom) in clinical context are highly demanded. Here in this work, we propose a deep-learning system based on word embedding, RNN and attention mechanism (more specifically: Attention-based Bidirectional Long Short-Term Memory networks) for assertion detection in clinical notes. Unlike previous state-of-art methods which require knowledge input or feature engineering, our system is a knowledge poor machine learning system and can be easily extended or transferred to other domains. The evaluation of our system on public benchmarking corpora demonstrates that a knowledge poor deep-learning system can also achieve high performance for detecting negation and assertions comparing to state-of-the-art systems.
机译:最近,自然语言处理(NLP)已用于从电子健康记录(EHR)中的自由文本中提取临床信息。在临床自然语言处理中,一个挑战是临床实体的含义在很大程度上受到断言修饰语的影响,例如否定,不确定,假设,经验等。断言分配不正确可能导致患者病情诊断不正确或对疾病模型等研究产生负面影响。因此,迫切需要能够在临床背景下检测给定目标医学发现(例如疾病,症状)的断言状态的临床NLP系统。在这项工作中,我们提出了一种基于单词嵌入,RNN和注意力机制(更具体地说:基于注意力的双向长期短期记忆网络)的深度学习系统,用于临床笔记中的断言检测。与以前需要知识输入或特征工程的最新方法不同,我们的系统是一个知识匮乏的机器学习系统,可以轻松扩展或转移到其他领域。我们对系统的公共基准语料库的评估表明,与最先进的系统相比,知识匮乏的深度学习系统还可以在检测否定和断言方面实现高性能。

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