Multi-omics data integration using ratio-based quantitative profiling with Quartet reference materials.
Yuanting ZhengYa-Qing LiuJingcheng YangLianhua DongRui ZhangSha TianYing YuLuyao RenWanwan HouFeng ZhuYuanbang MaiJinxiong HanLijun ZhangHui JiangLing LinJingwei LouRuiqiang LiJingchao LinHuafen LiuZiqing KongDepeng WangFangping DaiDing BaoZehui CaoQiaochu ChenQing-Wang ChenXingdong ChenYuechen GaoHe JiangBin LiBingying LiJing-Jing LiRuimei LiuTao QingErfei ShangJun ShangShanyue SunHaiyan WangXiaolin WangNaixin ZhangPeipei ZhangRuolan ZhangSibo ZhuAndreas SchererJiucun WangJing WangYinbo HuoGang LiuChengming CaoLi ShaoJoshua XuHuixiao HongWenming XiaoXiaozhen LiangDaru LuLi JinWeida TongChen DingJinming LiXiang FangLe-Ming ShiPublished in: Nature biotechnology (2023)
Characterization 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.