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A Machine Learning Approach for Identifying Disease-Treatment Relations in Short Texts

机译:一种识别短文本中疾病与治疗关系的机器学习方法

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The Machine Learning (ML) field has gained its momentum in almost any domain of research and just recently has become a reliable tool in the medical domain. The empirical domain of automatic learning is used in tasks such as medical decision support, medical imaging, protein-protein interaction, extraction of medical knowledge, and for overall patient management care. ML is envisioned as a tool by which computer-based systems can be integrated in the healthcare field in order to get a better, more efficient medical care. This paper describes a ML-based methodology for building an application that is capable of identifying and disseminating healthcare information. It extracts sentences from published medical papers that mention diseases and treatments, and identifies semantic relations that exist between diseases and treatments. Our evaluation results for these tasks show that the proposed methodology obtains reliable outcomes that could be integrated in an application to be used in the medical care domain. The potential value of this paper stands in the ML settings that we propose and in the fact that we outperform previous results on the same data set.
机译:机器学习(ML)领域几乎在所有研究领域中都得到了发展,最近才成为医学领域的可靠工具。自动学习的经验领域用于诸如医疗决策支持,医学成像,蛋白质-蛋白质相互作用,医学知识的提取以及整体患者管理护理之类的任务。 ML被设想为一种工具,通过该工具可以将基于计算机的系统集成到医疗保健领域中,以获得更好,更有效的医疗服务。本文介绍了一种基于ML的方法,用于构建能够识别和传播医疗保健信息的应用程序。它从发表的提及疾病和治疗方法的医学论文中提取句子,并识别疾病和治疗方法之间存在的语义关系。我们对这些任务的评估结果表明,所提出的方法获得了可靠的结果,可以将其集成到医疗领域中使用的应用程序中。本文的潜在价值体现在我们建议的ML设置中,并且事实上,我们在同一数据集上的表现优于先前的结果。

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