药品说明书知识提取的智能信息系统

Cristiano da Silveira Colombo, E. Oliveira
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引用次数: 3

摘要

药品包装说明书是药品信息的丰富来源。为了指导病人,卫生专业人员需要有关疾病的适当药物的信息。这些信息可以在药品包装说明书上找到。手动从包插入中提取信息是一项具有挑战性的任务,特别是当需要快速有效地获取信息时。对不良反应或与其他药物相互作用的怀疑是常见的。从包装说明书中自动提取信息可以帮助医疗专业人员决定治疗方法和药物处方。本文描述了使用一种称为CRF+LG的混合方法创建一个人工智能模型,该模型可以识别包装说明书上的药物、疾病和人物的命名实体。该模型在两套包装说明书上进行了测试:用于胃痛和糖尿病治疗。这项工作是在软系统理论的支持下进行的。本研究具有规范性,并通过实验对其进行了评价。用定量方法对结果进行了分析。实验表明,在F测度下,该模型对疾病相关实体的识别率为82.08%,对药品相关实体的识别率为59.14%,对人相关实体的识别率为94.26%。本文的主要贡献是创建了一个模型,该模型可以自动识别药品包装说明书中指定的实体。该模型可以集成智能信息系统,以帮助卫生专业人员制定治疗和药物处方决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Information System for Extracting Knowledge from Pharmaceutical Package Inserts
Pharmaceutical package inserts are a rich source of information about medicines. To guide the patient, health professionals need information about the appropriate medication for an illness. This information can be found in the pharmaceutical package inserts. Extracting information from package inserts manually is a challenging task, especially when information is needed quickly and efficiently. Doubts about adverse reactions or interactions with others drugs are common. Automatically extracting information from package inserts can help health professionals to make decisions about therapies and drug prescriptions. This article describes the creation of an Artificial Intelligence model, using a hybrid approach called CRF+LG, which recognizes named entities of medicines, diseases and people in package inserts. The model was tested on two sets of package inserts: for stomach pain and diabetes treatment. This work was developed under the aegis of Soft Systems Theory. This research has a prescriptive character and its evaluation was carried out through the execution of experiments. The analysis of the results was carried out with a quantitative approach. The experiments showed that the model obtained, of measure F, 82.08% in the recognition of entities related to diseases, 59.14% of medicines and 94.26% of people. The main contribution of the article is the creation of a model that automatically recognizes entities named in pharmaceutical package inserts. This model can integrate an Intelligent Information System to assist health professionals in making decisions about therapies and drug prescription.
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