神农阿尔法:人工智能驱动的天然药材知识智能管理、获取和翻译共享和协作平台。

IF 13 1区 生物学 Q1 CELL BIOLOGY
Zijie Yang, Yongjing Yin, Chaojun Kong, Tiange Chi, Wufan Tao, Yue Zhang, Tian Xu
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引用次数: 0

摘要

天然药物(nmm)具有悠久的全球临床应用历史和丰富的记录和知识。虽然NMM是药物发现和临床应用的主要来源,但NMM知识的利用和共享面临着重大挑战,包括关键信息的标准化描述、有效的管理和获取以及语言障碍。为了解决这些问题,我们开发了神农alpha,这是一个人工智能驱动的共享和协作平台,用于智能知识管理、获取和翻译。为了标准化的知识管理,该平台引入了一个系统命名法,以便准确区分和识别nmm。超过一万四千名中国nmm连同他们的知识一起被收录到这个平台上。此外,该平台开创了基于聊天的知识获取、标准化机器翻译和协作知识更新。总之,我们的研究代表了利用人工智能增强NMM知识共享方面的第一个重大进展,这不仅标志着人工智能在科学领域的新应用,而且将显著造福全球生物医学、制药、医生和患者群体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ShennongAlpha: an AI-driven sharing and collaboration platform for intelligent curation, acquisition, and translation of natural medicinal material knowledge.

Natural Medicinal Materials (NMMs) have a long history of global clinical applications and a wealth of records and knowledge. Although NMMs are a major source for drug discovery and clinical application, the utilization and sharing of NMM knowledge face crucial challenges, including the standardized description of critical information, efficient curation and acquisition, and language barriers. To address these, we developed ShennongAlpha, an artificial intelligence (AI)-driven sharing and collaboration platform for intelligent knowledge curation, acquisition, and translation. For standardized knowledge curation, the platform introduced a Systematic Nomenclature to enable accurate differentiation and identification of NMMs. More than fourteen thousand Chinese NMMs have been curated into the platform along with their knowledge. Furthermore, the platform pioneered chat-based knowledge acquisition, standardized machine translation, and collaborative knowledge updating. Together, our study represents the first major advance in leveraging AI to empower NMM knowledge sharing, which not only marks a novel application of AI for science, but also will significantly benefit the global biomedical, pharmaceutical, physician, and patient communities.

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来源期刊
Cell Discovery
Cell Discovery Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
24.20
自引率
0.60%
发文量
120
审稿时长
20 weeks
期刊介绍: Cell Discovery is a cutting-edge, open access journal published by Springer Nature in collaboration with the Center for Excellence in Molecular Cell Science, Chinese Academy of Sciences (CAS). Our aim is to provide a dynamic and accessible platform for scientists to showcase their exceptional original research. Cell Discovery covers a wide range of topics within the fields of molecular and cell biology. We eagerly publish results of great significance and that are of broad interest to the scientific community. With an international authorship and a focus on basic life sciences, our journal is a valued member of Springer Nature's prestigious Molecular Cell Biology journals. In summary, Cell Discovery offers a fresh approach to scholarly publishing, enabling scientists from around the world to share their exceptional findings in molecular and cell biology.
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