[用于药物发现的组学和细胞控制技术]。

Masakazu Fukuda, Hiroki Danno
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引用次数: 0

摘要

Knowledge Palette, Inc.是一家旨在攻克不治之症的初创公司,它应用世界上最精确的单细胞级和大体级转录组技术,获取经过各类药物和培养基处理的细胞状态的大规模数据,并利用这些信息对细胞进行高度控制,从而改善人类健康。我们正致力于利用大数据发现新的表型药物和更高质量的再生医学细胞。公司的核心技术之一是利用理化学研究所最初开发的单细胞级全基因表达分析技术 Quartz-Seq2。在国际人类细胞图谱项目的基准测试中,该技术在基因检测和标记识别的准确性方面获得了第一名,总分排名第一。通过将该技术应用于超多样本的批量分析,它以高通量的方式实现了药物筛选、人体临床样本分析以及众多培养环境的评估。本文介绍了一种结合大规模数据和人工智能技术的omics驱动药物发现和细胞调控方法。
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[Omics and cell controlling technology for drug discovery].

Knowledge Palette, Inc. is a start-up company that aims to overcome incurable diseases by applying the world's most accurate single-cell level and bulk level transcriptome technology to obtain large-scale data on the state of cells treated with various types of drugs and media, and using this information to highly control cells for improving human health. We are working on new phenotypic drug discovery and higher quality cells for regenerative medicine using big data. As one of its core technologies, the company is utilizing a single-cell-level whole gene expression analysis technology, Quartz-Seq2, which was originally developed in RIKEN. This technology received first place in accuracy of genes detection as well as marker identification, and was ranked No. 1 in overall score in the benchmarking in the international Human Cell Atlas project. By applying this technology to the bulk level analysis of ultra-multiple samples, it has enabled drug screening, analysis of human clinical specimens, and evaluation of numerous culture environments in a high-throughput way. This paper presents an omics-driven drug discovery and cell regulation approach that is combined with large-scale data and artificial intelligence technology.

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来源期刊
Folia Pharmacologica Japonica
Folia Pharmacologica Japonica Pharmacology, Toxicology and Pharmaceutics-Pharmacology
CiteScore
0.40
自引率
0.00%
发文量
132
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