Xavier Joao B
Program for Computational and Systems Biology, Sloan Kettering Institute for Cancer Research.
bioRxiv. 2023 Oct 10:2023.08.11.552957. doi: 10.1101/2023.08.11.552957.
Metabolic rewiring allows cells to adapt their metabolism in response to evolving environmental conditions. Traditional metabolomics techniques, whether targeted or untargeted, often struggle to interpret these adaptive shifts. Here, we introduce , a machine learning framework that harnesses the detailed fragmentation patterns from electron ionization (EI) collected in scan mode during gas chromatography/mass spectrometry (GC/MS) to predict abundance changes in metabolically adapted cells. When tested on breast cancer cells with different preferences to metastasize to specific organs, predicted the impact of metabolic rewiring on metabolites withheld from the training dataset using only the EI spectra, without metabolite identification or pre-existing knowledge of metabolic networks. The model learned captures shared and unique metabolomic shifts between brain- and lung-homing metastatic lineages, suggesting potential organ-tailored cellular adaptations. Integrating machine learning and metabolomics paves the way for new insights into complex cellular adaptations.
代谢重布线使细胞能够根据不断变化的环境条件调整其代谢。传统的代谢组学技术,无论是靶向的还是非靶向的,往往难以解释这些适应性变化。在这里,我们引入了一种机器学习框架,该框架利用气相色谱/质谱(GC/MS)扫描模式下收集的电子电离(EI)的详细碎片模式来预测代谢适应细胞中代谢物的丰度变化。当在对转移到特定器官有不同偏好的乳腺癌细胞上进行测试时,该框架仅使用EI光谱就预测了代谢重布线对训练数据集中未包含的代谢物的影响,而无需代谢物鉴定或代谢网络的先验知识。该模型所学到的内容捕捉了脑转移和肺转移谱系之间共享和独特的代谢组学变化,表明存在潜在的器官特异性细胞适应性。将机器学习与代谢组学相结合为深入了解复杂的细胞适应性开辟了道路。