Xu Yifan, Zhang Chonghui, Wu Jinpeng, Guo Pin, Jiang Nan, Wang Chao, Feng Yugong
Department of Neurosurgery, The Affiliated Hospital of Qingdao University, Qingdao, China.
Front Immunol. 2025 Jun 26;16:1601533. doi: 10.3389/fimmu.2025.1601533. eCollection 2025.
An increasing number of studies have revealed a link between lactylation and tumor initiation and progression. However, the specific impact of lactylation on inter-patient heterogeneity and recurrence in glioblastoma (GBM) remains to be further elucidated.
We employed functional enrichment algorithms, including AUCell and UCell, to assess lactylation activity in GBM cancer cells. Additionally, we introduced the interquartile range (IQR) method based on a set of lactylation-related genes (LRGs) to reevaluate the extent of lactylation production within the cancer population at the single-cell resolution. By reconstructing the spatial transcriptomics of hematoxylin and eosin (HE)-stained sections, we further evaluated the lactylation activity in GBM tissues. Subsequently, We employed machine learning algorithms to identify hub genes significantly associated with elevated lactylation levels in GBM. Finally, we experimentally validated the emulsification efficiency and quantified the expression levels of hub genes in human GBM samples.
Our study innovatively demonstrated a markedly elevated global lactylation level in GBM and validated it as an independent prognostic factor for GBM. We established a prognostic gene model associated with emulsification in GBM. Furthermore, the machine learning-based model identified SSBP1, RPA3 and TUBB2A as potential biomarkers for GBM. Notably, the expression levels of these three hub genes and the lactylation level of TUBB2A in GBM tissues were significantly higher compared to those in normal tissues.
We propose and validate a IQR lactylation screening method that provides potential insights for GBM therapy and an effective framework for developing gene screening models applicable to other diseases and pathogenic mechanisms.
越来越多的研究揭示了乳酰化与肿瘤发生和进展之间的联系。然而,乳酰化对胶质母细胞瘤(GBM)患者间异质性和复发的具体影响仍有待进一步阐明。
我们采用了包括AUCell和UCell在内的功能富集算法来评估GBM癌细胞中的乳酰化活性。此外,我们引入了基于一组乳酰化相关基因(LRGs)的四分位距(IQR)方法,以单细胞分辨率重新评估癌症群体内乳酰化产生的程度。通过重建苏木精和伊红(HE)染色切片的空间转录组学,我们进一步评估了GBM组织中的乳酰化活性。随后,我们使用机器学习算法来识别与GBM中乳酰化水平升高显著相关的枢纽基因。最后,我们通过实验验证了乳化效率并量化了人类GBM样本中枢纽基因的表达水平。
我们的研究创新性地证明了GBM中整体乳酰化水平显著升高,并将其验证为GBM的独立预后因素。我们建立了一个与GBM乳化相关的预后基因模型。此外,基于机器学习的模型将SSBP1、RPA3和TUBB2A鉴定为GBM的潜在生物标志物。值得注意的是,与正常组织相比,这三个枢纽基因在GBM组织中的表达水平以及TUBB2A的乳酰化水平显著更高。
我们提出并验证了一种IQR乳酰化筛选方法,该方法为GBM治疗提供了潜在的见解,并为开发适用于其他疾病和致病机制的基因筛选模型提供了一个有效的框架。