HCCDB v2.0: Decompose expression variations by single-cell RNA-seq and spatial transcriptomics in HCC

转录组 计算生物学 破译 计算机科学 生物 基因 基因表达 生物信息学 遗传学
作者
Ziming Jiang,Yanhong Wu,Yuxin Miao,Kaige Deng,Fan Yang,Shijie Xu,Yupeng Wang,Renke You,Lei Zhang,Yuhan Fan,Wenbo Guo,Qiuyu Lian,Lei Chen,Xuegong Zhang,Yongchang Zheng,Jin Gu
出处
期刊:Genomics, Proteomics & Bioinformatics [Elsevier]
标识
DOI:10.1093/gpbjnl/qzae011
摘要

Abstract Large-scale transcriptomic data are crucial for understanding the molecular features of hepatocellular carcinoma (HCC). Integrated 15 transcriptomic datasets of HCC clinical samples, the first version of HCCDB (HCC database) was released in 2018. Through the meta-analysis of differentially expressed genes and prognosis-related genes across multiple datasets, it provides a systematic view of the altered biological processes and the inter-patient heterogeneities of HCC with high reproducibility and robustness. With four years having passed, the database now needs integration of recently published datasets. Furthermore, the latest single-cell and spatial transcriptomics have provided a great opportunity to decipher complex gene expression variations at the cellular level with spatial architecture. Here, we present HCCDB v2.0, an updated version that combines bulk, single-cell, and spatial transcriptomic data of HCC clinical samples. It dramatically expands the bulk sample size by adding 1656 new samples from 11 datasets to the existing 3917 samples, thereby enhancing the reliability of transcriptomic meta-analysis. A total of 182,832 cells and 69,352 spatial spots were added to the single-cell and spatial transcriptomics sections, respectively. A novel single-cell level and 2-dimension (sc-2D) metric was proposed as well to summarize cell type-specific and dysregulated gene expression patterns. Results are all graphically visualized in our online portal, allowing users to easily retrieve data through a user-friendly interface and navigate between different views. With extensive clinical phenotypes and transcriptomic data in the database, we show two applications for identifying prognosis-associated cells and tumor microenvironment. HCCDB v2.0 is available at http://lifeome.net/database/hccdb2.
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