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Using Nanoinformatics Methods for Automatically Identifying Relevant Nanotoxicology Entities from the Literature

机译:使用纳米型信息学方法从文献中自动识别相关的纳米毒理学实体

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Nanoinformatics is an emerging research field that uses informatics techniques to collect, process, store, and retrieve data, information, and knowledge on nanopartides, nanomaterials, and nanodevices and their potential applications in health care. In this paper, we have focused on the solutions that nanoinformatics can provide to facilitate nanotoxicology research. For this, we have taken a computational approach to automatically recognize and extract nanotoxicology-related entities from the scientific literature. The desired entities belong to four different categories: nanopartides, routes of exposure, toxic effects, and targets. The entity recognizer was trained using a corpus that we specifically created for this purpose and was validated by two nanomedicine/nanotoxicology experts. We evaluated the performance of our entity recognizer using 10-fold cross-validation. The precisions range from 87.6% (targets) to 93.0% (routes of exposure), while recall values range from 82.6% (routes of exposure) to 87.4% (toxic effects). These results prove the feasibility of using computational approaches to reliably perform different named entity recognition (NER)-dependent tasks, such as for instance augmented reading or semantic searches. This research is a "proof of concept" that can be expanded to stimulate further developments that could assist researchers in managing data, information, and knowledge at the nanolevel, thus accelerating research in nanomedicine.
机译:NanoInformatics是一种新兴的研究领域,使用信息学技术来收集,处理,存储和检索纳米粒子,纳米材料和纳米模具以及它们在医疗保健中的潜在应用的数据,信息和检索数据,信息和知识。在本文中,我们专注于纳米表信息学可以提供促进纳米毒理学研究的解决方案。为此,我们已经采取了计算方法来自动识别和提取来自科学文献的纳米毒学相关实体。所需实体属于四种不同类别:纳米粒子,曝光途径,毒性效应和目标。实体识别器使用我们专门为此目的创建的语料库进行培训,并由两个纳米医生/纳米毒理学专家验证。我们使用10倍交叉验证评估了我们实体识别器的性能。该精度范围为87.6%(目标)至93.0%(曝光路线),而召回值范围为82.6%(暴露途径)至87.4%(毒性效应)。这些结果证明了使用计算方法可靠地执行不同的命名实体识别(NER) - 依赖性任务,例如增强读取或语义搜索的可行性。这项研究是“概念证明”,可以扩展,以刺激进一步的发展,可以帮助研究人员管理纳米叶轮的数据,信息和知识,从而加速纳米医生的研究。

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