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首页> 外文期刊>Drug safety: An international journal of medical toxicology and drug experience >Adverse Drug Events Detection in Clinical Notes by Jointly Modeling Entities and Relations Using Neural Networks
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Adverse Drug Events Detection in Clinical Notes by Jointly Modeling Entities and Relations Using Neural Networks

机译:使用神经网络共同建模实体和关系的临床记录中的不良药物事件检测

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Background and SignificanceAdverse drug events (ADEs) occur in approximately 2-5% of hospitalized patients, often resulting in poor outcomes or even death. Extraction of ADEs from clinical narratives can accelerate and automate pharmacovigilance. Using state-of-the-art deep-learning neural networks to jointly model concept and relation extraction, we achieved the highest integrated task score in the 2018 Medication and Adverse Drug Event (MADE) 1.0 challenge.MethodsWe used a combined bidirectional long short-term memory (BiLSTM) and conditional random fields (CRF) neural network to detect medical entities relevant to ADEs and a combined BiLSTM and attention network to determine relations, including the adverse drug reaction relation between medication and sign or symptom entities. Using these models, we conducted three experiments: (1) separate and sequential modeling of entities and relations; (2) joint modeling where relations between medications and sign or symptoms determined ADE and indication entities; (3) use of information from external resources such as the US FDA's adverse event database as additional input to the second method.ResultsJoint modeling improved the overall task accuracy from 0.62 to 0.65 F measure, and the additional use of external resources improved the accuracy to 0.66 F measure. Given the gold-standard medical entity labels, the joint model plus external resources method achieved F measures of 0.83 for ADE-relevant medical entity detection and 0.87 for relation detection.ConclusionIt is important to use joint modeling techniques and external resources for effectively detecting ADEs from clinical narratives in electronic health record (EHR) systems. While the extraction of entities and relations individually achieved high accuracy, the integrated task still has room for further improvement.
机译:背景和重要的药物事件(ades)发生在约2-5%的住院患者中,通常导致成果差或甚至死亡。从临床叙述中提取ades可以加速和自动化药物。利用最先进的深度学习神经网络共同模拟概念和关系提取,我们在2018年药物和不良药物事件(制造)1.0挑战中实现了最高的综合任务分数。近期使用的双向短期 - 术语存储器(BILSTM)和条件随机字段(CRF)神经网络检测与ADES和组合的BILSTM和注意网络相关的医学实体以确定关系,包括药物和征兆或症状实体之间的不良药物反应关系。使用这些模型,我们进行了三个实验:(1)实体和关系的单独和顺序建模; (2)联合建模,其中药物和症状或症状的关系确定的ade和指示实体; (3)从外部资源(如美国FDA的不良事件数据库)中的信息使用信息作为第二种方法的额外输入。仪表建模从0.62到0.65的整体任务准确性提高到0.65 f测量,并且额外使用外部资源提高了准确性0.66 F度量。鉴于黄金标准医疗实体标签,联合模型加外部资源方法为ADE相关医疗实体检测实现了0.83的措施,0.87用于关系检测.Conclusionit使用联合建模技术和外部资源有效地检测来自的外部资源电子健康记录(EHR)系统中的临床叙事。虽然实体和关系的提取单独实现了高精度,但综合任务仍然有进一步改进的空间。

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