Department of Biostatistics, School of Public Health, University of Pittsburgh, Pittsburgh, PA 15261.
Department of Biostatistics, University of Texas MD Anderson Cancer Center, Houston, TX 77030.
Proc Natl Acad Sci U S A. 2023 Feb 7;120(6):e2202584120. doi: 10.1073/pnas.2202584120. Epub 2023 Feb 2.
Model organisms are instrumental substitutes for human studies to expedite basic, translational, and clinical research. Despite their indispensable role in mechanistic investigation and drug development, molecular congruence of animal models to humans has long been questioned and debated. Little effort has been made for an objective quantification and mechanistic exploration of a model organism's resemblance to humans in terms of molecular response under disease or drug treatment. We hereby propose a framework, namely Congruence Analysis for Model Organisms (CAMO), for transcriptomic response analysis by developing threshold-free differential expression analysis, quantitative concordance/discordance scores incorporating data variabilities, pathway-centric downstream investigation, knowledge retrieval by text mining, and topological gene module detection for hypothesis generation. Instead of a genome-wide vague and dichotomous answer of "poorly" or "greatly" mimicking humans, CAMO assists researchers to numerically quantify congruence, to dissect true cross-species differences from unwanted biological or cohort variabilities, and to visually identify molecular mechanisms and pathway subnetworks that are best or least mimicked by model organisms, which altogether provides foundations for hypothesis generation and subsequent translational decisions.
模式生物是人类研究的重要替代物,可以加速基础研究、转化研究和临床研究。尽管它们在机制研究和药物开发中具有不可或缺的作用,但动物模型与人类的分子一致性长期以来一直受到质疑和争论。人们几乎没有努力对模型生物在疾病或药物治疗下的分子反应方面与人类的相似性进行客观的量化和机制探索。我们在此提出了一个框架,即模型生物一致性分析(CAMO),通过开发无阈值差异表达分析、包含数据变异性的定量一致性/不一致性评分、基于通路的下游研究、文本挖掘进行知识检索以及拓扑基因模块检测来进行转录组反应分析,以生成假设。CAMO 不是通过基因组范围的模糊和二分法回答“很差”或“非常好”地模拟人类,而是帮助研究人员对一致性进行数值量化,从不需要的生物学或队列变异性中区分真正的跨物种差异,并直观地识别模型生物最佳或最差模拟的分子机制和途径子网,为假设生成和后续转化决策提供基础。