Multi-omics data integration using ratio-based quantitative profiling with Quartet reference materials

Author:

Zheng YuantingORCID,Liu YaqingORCID,Yang Jingcheng,Dong Lianhua,Zhang RuiORCID,Tian Sha,Yu YingORCID,Ren Luyao,Hou Wanwan,Zhu Feng,Mai Yuanbang,Han Jinxiong,Zhang Lijun,Jiang Hui,Lin Ling,Lou Jingwei,Li Ruiqiang,Lin Jingchao,Liu Huafen,Kong Ziqing,Wang Depeng,Dai Fangping,Bao Ding,Cao Zehui,Chen QiaochuORCID,Chen QingwangORCID,Chen Xingdong,Gao Yuechen,Jiang HeORCID,Li Bin,Li Bingying,Li JingjingORCID,Liu Ruimei,Qing Tao,Shang Erfei,Shang JunORCID,Sun Shanyue,Wang Haiyan,Wang Xiaolin,Zhang Naixin,Zhang Peipei,Zhang Ruolan,Zhu Sibo,Scherer AndreasORCID,Wang JiucunORCID,Wang Jing,Huo Yinbo,Liu Gang,Cao Chengming,Shao Li,Xu JoshuaORCID,Hong HuixiaoORCID,Xiao WenmingORCID,Liang Xiaozhen,Lu Daru,Jin LiORCID,Tong WeidaORCID,Ding ChenORCID,Li Jinming,Fang Xiang,Shi LemingORCID

Abstract

AbstractCharacterization and integration of the genome, epigenome, transcriptome, proteome and metabolome of different datasets is difficult owing to a lack of ground truth. Here we develop and characterize suites of publicly available multi-omics reference materials of matched DNA, RNA, protein and metabolites derived from immortalized cell lines from a family quartet of parents and monozygotic twin daughters. These references provide built-in truth defined by relationships among the family members and the information flow from DNA to RNA to protein. We demonstrate how using a ratio-based profiling approach that scales the absolute feature values of a study sample relative to those of a concurrently measured common reference sample produces reproducible and comparable data suitable for integration across batches, labs, platforms and omics types. Our study identifies reference-free ‘absolute’ feature quantification as the root cause of irreproducibility in multi-omics measurement and data integration and establishes the advantages of ratio-based multi-omics profiling with common reference materials.

Publisher

Springer Science and Business Media LLC

Subject

Biomedical Engineering,Molecular Medicine,Applied Microbiology and Biotechnology,Bioengineering,Biotechnology

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