The Digitalization of Bioassays in the Open Research Knowledge Graph

J. D’Souza, A. Monteverdi, Muhammad Haris, M. Anteghini, K. Farfar, M. Stocker, V. A. M. D. Santos, S. Auer
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Abstract

Background: Recent years are seeing a growing impetus in the semantification of scholarly knowledge at the fine-grained level of scientific entities in knowledge graphs. The Open Research Knowledge Graph (ORKG) https://www.orkg.org/ represents an important step in this direction, with thousands of scholarly contributions as structured, fine-grained, machine-readable data. There is a need, however, to engender change in traditional community practices of recording contributions as unstructured, non-machine-readable text. For this in turn, there is a strong need for AI tools designed for scientists that permit easy and accurate semantification of their scholarly contributions. We present one such tool, ORKG-assays. Implementation: ORKG-assays is a freely available AI micro-service in ORKG written in Python designed to assist scientists obtain semantified bioassays as a set of triples. It uses an AI-based clustering algorithm which on gold-standard evaluations over 900 bioassays with 5,514 unique property-value pairs for 103 predicates shows competitive performance. Results and Discussion: As a result, semantified assay collections can be surveyed on the ORKG platform via tabulation or chart-based visualizations of key property values of the chemicals and compounds offering smart knowledge access to biochemists and pharmaceutical researchers in the advancement of drug development.
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开放研究知识图谱中生物检测的数字化
背景:近年来,在知识图中科学实体的细粒度水平上,学术知识的语义化越来越有动力。开放研究知识图谱(ORKG) https://www.orkg.org/在这个方向上迈出了重要的一步,它将数以千计的学术贡献作为结构化的、细粒度的、机器可读的数据。但是,有必要改变将贡献记录为非结构化、非机器可读文本的传统社区做法。为此,我们迫切需要为科学家设计的人工智能工具,使他们能够轻松准确地理解他们的学术贡献。我们提出了一种这样的工具,orkg -assay。实现:ORKG-assays是一个免费的AI微服务,用Python编写,旨在帮助科学家获得一组三元组的语义化生物测定。它使用基于人工智能的聚类算法,在超过900种生物测定的黄金标准评估中,有5,514个独特的属性值对,103个谓词显示出具有竞争力的性能。结果和讨论:因此,语义化的分析集合可以在ORKG平台上通过化学物质和化合物的关键属性值的制表或基于图表的可视化进行调查,为生物化学家和药物研究人员提供智能知识访问,以推进药物开发。
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