工作流程
计算机科学
数据挖掘
过程(计算)
聚类分析
集合(抽象数据类型)
空间分析
数据集
数据库
人工智能
操作系统
地理
遥感
程序设计语言
作者
Chun Gong,Shengkang Li,Leying Wang,Fuxiang Zhao,Shuangsang Fang,Dong Yuan,Zijian Zhao,Qiqi He,Mei Li,Weiqing Liu,Zhaoxun Li,Hongqing Xie,Sha Liao,Ao Chen,Yong Zhang,Yuxiang Li,Xun Xu
标识
DOI:10.1101/2023.08.20.554064
摘要
Abstract The basic analysis steps of spatial transcriptomics involve obtaining gene expression information from both space and cells. This process requires a set of tools to be completed, and existing tools face performance issues when dealing with large data sets. These issues include computationally intensive spatial localization, RNA genome alignment, and excessive memory usage in large chip scenarios. These problems affect the applicability and efficiency of the process. To address these issues, a high-performance and accurate spatial transcriptomics data analysis workflow called Stereo-Seq Analysis Workflow (SAW) has been developed for the Stereo-Seq technology developed by BGI. This workflow includes mRNA spatial position reconstruction, genome alignment, gene expression matrix generation and clustering, and generate results files in a universal format for subsequent personalized analysis. The excutation time for the entire analysis process is ∼148 minutes on 1G reads 1*1 cm chip test data, 1.8 times faster than unoptimized workflow.
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