药物效应综合表达研究基金的建立。

IF 1.7 4区 医学 Q3 PHARMACOLOGY & PHARMACY
Tadahaya Mizuno
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引用次数: 0

摘要

正如意外的不良事件和成功的药物重新定位所显示的那样,药物效应是复杂的,包括开发人员未认识到的方面。我们如何理解这些未被认识到的药物作用?药物效应可以通过包含对药物的生物反应来量化。例如,培养细胞的转录组数据和用化合物处理的小鼠的毒性病理图像分别代表了该化合物在体外和体内的作用。下一步,我们将重点放在模式识别上,这是一个数据科学框架,用于从高维观测数据(如潜在变量模型)中提取本质上重要的低维潜在变量。潜在变量是低维的,使我们能够以一种易于识别的形式(如雷达图)可视化药物效应。这种药物作用的鸟瞰图使我们能够将它们与现有知识进行比较,潜在地阐明已知已知和已知未知的药物作用。我们相信,数字化、可视化和清晰化的三步策略将使我们全面了解药物效应,我们目前正在验证这种方法。在这篇综述中,我们将介绍这些候选研究,并希望分享我们对“生物反应的模式识别”的兴趣,这是我们小组的支柱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Research Foundation for Comprehensive Articulation of Drug Effects.

As unexpected adverse events and successful drug repositioning have shown, drug effects are complex and include aspects not recognized by developers. How can we understand these unrecognized drug effects? Drug effects can be numerized by encompassing biological responses to drugs. For instance, the transcriptome data of cultured cells and toxicopathological images of mice treated with a compound represent the effects of the compound in vitro and in vivo, respectively. As a next step, we focused on pattern recognition, a data science framework to extract essentially important low-dimensional latent variables from high-dimensional observed data such as latent variable models. Latent variables are low-dimensional, allowing us to visualize drug effects in an easily recognizable form, such as a radar chart. This bird's-eye view of drug effects enables us to compare them with existing knowledge, potentially articulating the effects of drugs as the known knowns and known unknowns. We believe that the three-step strategy of numerization, visualization, and articulation will allow us to understand drug effects comprehensively, and we are currently verifying this approach. In this review, we will introduce these candidate studies and hope to share our interest in "pattern recognition of biological responses," the pillar of our group.

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来源期刊
CiteScore
3.50
自引率
5.00%
发文量
247
审稿时长
2 months
期刊介绍: Biological and Pharmaceutical Bulletin (Biol. Pharm. Bull.) began publication in 1978 as the Journal of Pharmacobio-Dynamics. It covers various biological topics in the pharmaceutical and health sciences. A fourth Society journal, the Journal of Health Science, was merged with Biol. Pharm. Bull. in 2012. The main aim of the Society’s journals is to advance the pharmaceutical sciences with research reports, information exchange, and high-quality discussion. The average review time for articles submitted to the journals is around one month for first decision. The complete texts of all of the Society’s journals can be freely accessed through J-STAGE. The Society’s editorial committee hopes that the content of its journals will be useful to your research, and also invites you to submit your own work to the journals.
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