人工智能在动物实验中应用的研究进展
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1.吉林大学第二临床医学院,长春 130012;2.吉林大学基础医学院病理生理学系,长春 130021;3.吉林大学基础医学院基础医学实验教学中心,长春 130021

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R-33

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Research progress in application of artificial intelligence in animal experimental data
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1.the Second Clinical Medical College of Jilin University, Changchun 130012, China. 2. Department of Pathophysiology, School of Basic Medicine, Jilin University, Changchun 130021. 3. Experimental Teaching Center of Basic Medicine, School of Basic Medicine, Jilin University, Changchun 130021

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    摘要:

    实验动物伦理与 3R 原则是动物实验过程中必须遵守的基本准则。 但由于动物机体的复杂性,动物体内实验所得到的各种数据面临着庞大而没有合适方法充分挖掘,复杂而有很多隐藏信息无法有效分析的问题,导致实验动物使用数量居高不下。在大数据的背景下,计算机科学与技术飞速进步,人工智能( artificial intelligence,AI)取得了极大飞跃,其在实验动物领域相关数据库的建立与数学模型的构建、动物微观分子及宏观图像、行为、基本生理指标等特征的识别、分类及预测中的应用广泛,有望成为研究人员的得力助手,在医学科研和临床领域发挥至关重要的作用。而相对微观分析,动物特征识别的宏观应用具有更高的可行性与实用性,本文就人工智能技术在实验动物特征识别中的应用、挑战和展望进行综述。

    Abstract:

    The ethics and 3R principle of experimental animals are basic tenets that should be strictly obeyed. However, because of the inner complexity of organisms, the data obtained in vivo tend to be gathered in voluminous amounts. There is a lack of appropriate method to thoroughly explore these datasets, which are too complicated and contain too much hidden information to be analyzed effectively. Therefore, the number of experimental animals performed is increasing. However, in the context of big data, and with the rapid development of computer technology, artificial intelligence (AI) has made splendid progress. Nowadays, AI is widely applied in the establishment of relevant databases and mathematical models and the identification and prediction of features of, e. g. , microscopic molecules, macroscale images, behavior, and basic physiological indicators, and it serves as a powerful and convenient auxiliary tool for scientific researchers. Compared with micro-analysis, the macroscopic application of character recognition seems more feasible and practicable. This paper summarizes the applications, challenges, and prospects of AI use in the recognition of phenomena hidden in experimental animal data.

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王 星,赵静怡,张 钰,沈璐妍.人工智能在动物实验中应用的研究进展[J].中国比较医学杂志,2022,32(11):135~141.

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  • 收稿日期:2022-05-29
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  • 在线发布日期: 2023-01-18
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