KnowVID-19: A Knowledge-Based System to Extract Targeted COVID-19 Information from Online Medical Repositories.

IF 4.8 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Biomolecules Pub Date : 2024-11-06 DOI:10.3390/biom14111411
Muzzamil Aziz, Ioana Popa, Amjad Zia, Andreas Fischer, Sabih Ahmed Khan, Amirreza Fazely Hamedani, Abdul R Asif
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Abstract

We present KnowVID-19, a knowledge-based system that assists medical researchers and scientists in extracting targeted information quickly and efficiently from online medical literature repositories, such as PubMed, PubMed Central, and other biomedical sources. The system utilizes various open-source machine learning tools, such as GROBID, S2ORC, and BioC to streamline the processes of data extraction and data mining. Central to the functionality of KnowVID-19 is its keyword-based text classification process, which plays a pivotal role in organizing and categorizing the extracted information. By employing machine learning techniques for keyword extraction-specifically RAKE, YAKE, and KeyBERT-KnowVID-19 systematically categorizes publication data into distinct topics and subtopics. This topic structuring enhances the system's ability to match user queries with relevant research, improving both the accuracy and efficiency of the search results. In addition, KnowVID-19 leverages the NetworkX Python library to construct networks of the most relevant terms within publications. These networks are then visualized using Cytoscape software, providing a graphical representation of the relationships between key terms. This network visualization allows researchers to easily track emerging trends and developments related to COVID-19, long COVID, and associated topics, facilitating more informed and user-centered exploration of the scientific literature. KnowVID-19 also provides an interactive web application with an intuitive, user-centered interface. This platform supports seamless keyword searching and filtering, as well as a visual network of term associations to help users quickly identify emerging research trends. The responsive design and network visualization enables efficient navigation and access to targeted COVID-19 literature, enhancing both the user experience and the accuracy of data-driven insights.

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KnowVID-19:基于知识的系统,从在线医学资料库中提取有针对性的 COVID-19 信息。
我们介绍的 KnowVID-19 是一种基于知识的系统,可帮助医学研究人员和科学家从在线医学文献库(如 PubMed、PubMed Central 和其他生物医学资源)中快速高效地提取目标信息。该系统利用 GROBID、S2ORC 和 BioC 等各种开源机器学习工具来简化数据提取和数据挖掘过程。KnowVID-19 的核心功能是基于关键词的文本分类过程,它在组织和分类提取的信息方面发挥着关键作用。通过采用机器学习技术进行关键词提取--特别是 RAKE、YAKE 和 KeyBERT--KnowVID-19 系统地将出版物数据归类为不同的主题和子主题。这种主题结构化增强了系统将用户查询与相关研究相匹配的能力,从而提高了搜索结果的准确性和效率。此外,KnowVID-19 还利用 NetworkX Python 库来构建出版物中最相关术语的网络。然后使用 Cytoscape 软件对这些网络进行可视化,以图形表示关键术语之间的关系。通过这种网络可视化,研究人员可以轻松跟踪与 COVID-19、长 COVID 和相关主题有关的新趋势和新发展,从而促进对科学文献进行更加知情和以用户为中心的探索。KnowVID-19 还提供了一个交互式网络应用程序,具有以用户为中心的直观界面。该平台支持无缝关键词搜索和过滤,以及术语关联的可视化网络,以帮助用户快速识别新出现的研究趋势。响应式设计和网络可视化可实现高效导航和访问目标 COVID-19 文献,从而增强用户体验和数据驱动见解的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomolecules
Biomolecules Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
9.40
自引率
3.60%
发文量
1640
审稿时长
18.28 days
期刊介绍: Biomolecules (ISSN 2218-273X) is an international, peer-reviewed open access journal focusing on biogenic substances and their biological functions, structures, interactions with other molecules, and their microenvironment as well as biological systems. Biomolecules publishes reviews, regular research papers and short communications.  Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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