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Efficient Reuse of Natural Language Processing Models for Phenotype-Mention Identification in Free-text Electronic Medical Records: A Phenotype Embedding Approach

机译:在自由文本电子医疗记录中有效地重用自然语言处理模型的表型提及识别:嵌入方法的表型

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Background Much effort has been put into the use of automated approaches, such as natural language processing (NLP), to mine or extract data from free-text medical records in order to construct comprehensive patient profiles for delivering better health care. Reusing NLP models in new settings, however, remains cumbersome, as it requires validation and retraining on new data iteratively to achieve convergent results. Objective The aim of this work is to minimize the effort involved in reusing NLP models on free-text medical records. Methods We formally define and analyze the model adaptation problem in phenotype-mention identification tasks. We identify “duplicate waste” and “imbalance waste,” which collectively impede efficient model reuse. We propose a phenotype embedding–based approach to minimize these sources of waste without the need for labelled data from new settings. Results We conduct experiments on data from a large mental health registry to reuse NLP models in four phenotype-mention identification tasks. The proposed approach can choose the best model for a new task, identifying up to 76% waste (duplicate waste), that is, phenotype mentions without the need for validation and model retraining and with very good performance (93%-97% accuracy). It can also provide guidance for validating and retraining the selected model for novel language patterns in new tasks, saving around 80% waste (imbalance waste), that is, the effort required in “blind” model-adaptation approaches. Conclusions Adapting pretrained NLP models for new tasks can be more efficient and effective if the language pattern landscapes of old settings and new settings can be made explicit and comparable. Our experiments show that the phenotype-mention embedding approach is an effective way to model language patterns for phenotype-mention identification tasks and that its use can guide efficient NLP model reuse.
机译:背景技术已经努力使用自动化方法,例如自然语言处理(NLP),从自由文本医疗记录中提取或从自由文本医疗记录中提取数据,以构建综合患者配置文件,以便提供更好的保健。但是,在新设置中重用NLP模型仍然很麻烦,因为它需要验证和再验证新数据以迭代地实现融合结果。客观本工作的目的是最大限度地减少在自由文本医疗记录中重用NLP模型的努力。方法我们正式定义和分析表型提及识别任务中的模型适应问题。我们识别“重复浪费”和“不平衡浪费”,其共同阻碍了有效的模型重用。我们提出了一种基于表型的嵌入方法,可以最大限度地减少这些废物来源,而无需从新设置标记数据。结果我们对来自大型心理健康登记处的数据进行了实验,以重用四种表型提及识别任务的NLP模型。建议的方法可以选择新任务的最佳型号,识别高达76%的废物(重复浪费),即表型提到,无需验证和模型再培训并且具有非常好的性能(93%-97%的精度) 。它还可以提供用于验证和再培训新任务中的新型语言模式所选模型的指导,节省了大约80%的废物(不平衡废物),即“盲目”模型适应方法所需的努力。结论如果旧设置和新设置的语言模式景观可以明确和可比,则可以更有效和有效地调整预折叠的NLP模型。我们的实验表明,表型提及嵌入方法是一种有效的方式来模拟表型提及识别任务的语言模式,其使用可以引导高效的NLP模型重用。

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