Lin Da-Wei, Zhang Ling, Zhang Jin, Chandrasekaran Sriram
Center for Bioinformatics and Computational Medicine, Ann Arbor, MI 48109, USA; Department of Statistics, University of Michigan, Ann Arbor, MI, USA.
Liangzhu Laboratory, Zhejiang University, Hangzhou 311121, China; Center for Reproductive Medicine, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China.
Cell Syst. 2025 Jan 15;16(1):101164. doi: 10.1016/j.cels.2024.12.005. Epub 2025 Jan 7.
While proliferating cells optimize their metabolism to produce biomass, the metabolic objectives of cells that perform non-proliferative tasks are unclear. The opposing requirements for optimizing each objective result in a trade-off that forces single cells to prioritize their metabolic needs and optimally allocate limited resources. Here, we present single-cell optimization objective and trade-off inference (SCOOTI), which infers metabolic objectives and trade-offs in biological systems by integrating bulk and single-cell omics data, using metabolic modeling and machine learning. We validated SCOOTI by identifying essential genes from CRISPR-Cas9 screens in embryonic stem cells, and by inferring the metabolic objectives of quiescent cells, during different cell-cycle phases. Applying this to embryonic cell states, we observed a decrease in metabolic entropy upon development. We further uncovered a trade-off between glutathione and biosynthetic precursors in one-cell zygote, two-cell embryo, and blastocyst cells, potentially representing a trade-off between pluripotency and proliferation. A record of this paper's transparent peer review process is included in the supplemental information.
虽然增殖细胞会优化其新陈代谢以产生生物量,但执行非增殖任务的细胞的代谢目标尚不清楚。优化每个目标的相反要求导致了一种权衡,迫使单细胞优先考虑其代谢需求并最佳地分配有限的资源。在这里,我们提出了单细胞优化目标和权衡推断(SCOOTI),它通过整合批量和单细胞组学数据,利用代谢建模和机器学习来推断生物系统中的代谢目标和权衡。我们通过在胚胎干细胞的CRISPR-Cas9筛选中鉴定必需基因,以及推断不同细胞周期阶段静止细胞的代谢目标,来验证SCOOTI。将其应用于胚胎细胞状态,我们观察到发育过程中代谢熵的降低。我们进一步发现,在单细胞受精卵、二细胞胚胎和囊胚细胞中,谷胱甘肽和生物合成前体之间存在权衡,这可能代表了多能性和增殖之间的权衡。本文透明同行评审过程的记录包含在补充信息中。