Dimitrieva Slavica, Janssens Rens, Li Gang, Szalata Artur, Gopalakrishnan Rajaraman, Parmar Chintan, Kauffmann Audrey, Durand Eric Y
Disease Area Oncology, Novartis Institutes for Biomedical Research, CH-4002 Basel, Switzerland.
Disease Area Oncology, Novartis Institutes for Biomedical Research, Cambridge, MA, USA.
Sci Adv. 2025 Jan 17;11(3):eadn5596. doi: 10.1126/sciadv.adn5596.
Cell lines and patient-derived xenografts are essential to cancer research; however, the results derived from such models often lack clinical translatability, as they do not fully recapitulate the complex cancer biology. Identifying preclinical models that sufficiently resemble the biological characteristics of clinical tumors across different cancers is critically important. Here, we developed MOBER, Multi-Origin Batch Effect Remover method, to simultaneously extract biologically meaningful embeddings while removing confounder information. Applying MOBER on 932 cancer cell lines, 434 patient-derived tumor xenografts, and 11,159 clinical tumors, we identified preclinical models with greatest transcriptional fidelity to clinical tumors and models that are transcriptionally unrepresentative of their respective clinical tumors. MOBER allows for transformation of transcriptional profiles of preclinical models to resemble the ones of clinical tumors and, therefore, can be used to improve the clinical translation of insights gained from preclinical models. MOBER is a versatile batch effect removal method applicable to diverse transcriptomic datasets, enabling integration of multiple datasets simultaneously.
细胞系和患者来源的异种移植对癌症研究至关重要;然而,从这些模型得出的结果往往缺乏临床可转化性,因为它们不能完全重现复杂的癌症生物学特性。识别出能充分模拟不同癌症临床肿瘤生物学特征的临床前模型至关重要。在此,我们开发了MOBER,即多源批次效应去除方法,以在去除混杂信息的同时,同步提取具有生物学意义的嵌入信息。将MOBER应用于932个癌细胞系、434个患者来源的肿瘤异种移植以及11,159个临床肿瘤,我们识别出了与临床肿瘤具有最高转录保真度的临床前模型,以及在转录上不能代表其各自临床肿瘤的模型。MOBER能够将临床前模型的转录谱转化为类似于临床肿瘤的转录谱,因此可用于提高从临床前模型获得的见解的临床可转化性。MOBER是一种通用的批次效应去除方法,适用于各种转录组数据集,能够同时整合多个数据集。