KoNA: Korean Nucleotide Archive as A New Data Repository for Nucleotide Sequence Data.

Gunhwan Ko, Jae Ho Lee, Young Mi Sim, Wangho Song, Byung-Ha Yoon, Iksu Byeon, Bang Hyuck Lee, Sang-Ok Kim, Jinhyuk Choi, Insoo Jang, Hyerin Kim, Jin Ok Yang, Kiwon Jang, Sora Kim, Jong-Hwan Kim, Jongbum Jeon, Jaeeun Jung, Seungwoo Hwang, Ji-Hwan Park, Pan-Gyu Kim, Seon-Young Kim, Byungwook Lee
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Abstract

During the last decade, the generation and accumulation of petabase-scale high-throughput sequencing data have resulted in great challenges, including access to human data, as well as transfer, storage, and sharing of enormous amounts of data. To promote data-driven biological research, the Korean government announced that all biological data generated from government-funded research projects should be deposited at the Korea BioData Station (K-BDS), which consists of multiple databases for individual data types. Here, we introduce the Korean Nucleotide Archive (KoNA), a repository of nucleotide sequence data. As of July 2022, the Korean Read Archive in KoNA has collected over 477 TB of raw next-generation sequencing data from national genome projects. To ensure data quality and prepare for international alignment, a standard operating procedure was adopted, which is similar to that of the International Nucleotide Sequence Database Collaboration. The standard operating procedure includes quality control processes for submitted data and metadata using an automated pipeline, followed by manual examination. To ensure fast and stable data transfer, a high-speed transmission system called GBox is used in KoNA. Furthermore, the data uploaded to or downloaded from KoNA through GBox can be readily processed using a cloud computing service called Bio-Express. This seamless coupling of KoNA, GBox, and Bio-Express enhances the data experience, including submission, access, and analysis of raw nucleotide sequences. KoNA not only satisfies the unmet needs for a national sequence repository in Korea but also provides datasets to researchers globally and contributes to advances in genomics. The KoNA is available at https://www.kobic.re.kr/kona/.

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KoNA:作为核苷酸序列数据新数据储存库的韩国核苷酸档案。
过去十年间,千万亿次规模的高通量测序数据的产生和积累带来了巨大挑战,包括人类数据的获取,以及海量数据的传输、存储和共享。为了促进数据驱动的生物研究,韩国政府宣布,所有由政府资助的研究项目产生的生物数据都应存入韩国生物数据站(Korea BioData Station,K-BDS)。在此,我们将介绍韩国核苷酸档案(KoNA),这是一个核苷酸序列数据储存库。截至 2022 年 7 月,KoNA 中的韩国读取档案已从国家基因组项目中收集了超过 477 TB 的下一代测序原始数据。为确保数据质量并为国际比对做准备,采用了与国际核苷酸序列数据库合作组织类似的标准操作程序。标准操作程序包括使用自动流水线对提交的数据和元数据进行质量控制,然后进行人工检查。为确保快速稳定的数据传输,KoNA 采用了名为 GBox 的高速传输系统。此外,通过 GBox 上传到 KoNA 或从 KoNA 下载的数据可通过名为 Bio-Express 的云计算服务随时进行处理。KoNA、GBox和Bio-Express的这种无缝耦合增强了数据体验,包括原始核苷酸序列的提交、访问和分析。KoNA 不仅满足了韩国对国家序列库的需求,还为全球研究人员提供了数据集,为基因组学的发展做出了贡献。KoNA 可在 https://www.kobic.re.kr/kona/ 上查阅。
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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