Yun Debo, Wang Xuya, Wang Wenbo, Ren Xiao, Li Jiabo, Wang Xisen, Liang Jianshen, Liu Jie, Fan Jikang, Ren Xiude, Zhang Hao, Shang Guanjie, Sun Jingzhang, Chen Lei, Li Tao, Zhang Chen, Yu Shengping, Yang Xuejun
Department of Neurosurgery, Tianjin Medical University General Hospital, Tianjin, China.
Laboratory of Neuro-oncology, Tianjin Neurological Institute, Tianjin, China.
Front Oncol. 2022 Jun 10;12:897702. doi: 10.3389/fonc.2022.897702. eCollection 2022.
Ferroptosis is a form of programmed cell death (PCD) that has been implicated in cancer progression, although the specific mechanism is not known. Here, we used the latest DepMap release CRISPR data to identify the essential ferroptosis-related genes (FRGs) in glioma and their role in patient outcomes.
RNA-seq and clinical information on glioma cases were obtained from the Chinese Glioma Genome Atlas (CGGA) and The Cancer Genome Atlas (TCGA). FRGs were obtained from the FerrDb database. CRISPR-screened essential genes (CSEGs) in glioma cell lines were downloaded from the DepMap portal. A series of bioinformatic and machine learning approaches were combined to establish FRG signatures to predict overall survival (OS) in glioma patients. In addition, pathways analysis was used to identify the functional roles of FRGs. Somatic mutation, immune cell infiltration, and immune checkpoint gene expression were analyzed within the risk subgroups. Finally, compounds for reversing high-risk gene signatures were predicted using the GDSC and L1000 datasets.
Seven FRGs (ISCU, NFS1, MTOR, EIF2S1, HSPA5, AURKA, RPL8) were included in the model and the model was found to have good prognostic value (p < 0.001) in both training and validation groups. The risk score was found to be an independent prognostic factor and the model had good efficacy. Subgroup analysis using clinical parameters demonstrated the general applicability of the model. The nomogram indicated that the model could effectively predict 12-, 36-, and 60-months OS and progression-free interval (PFI). The results showed the presence of more aggressive phenotypes (lower numbers of IDH mutations, higher numbers of EGFR and PTEN mutations, greater infiltration of immune suppressive cells, and higher expression of immune checkpoint inhibitors) in the high-risk group. The signaling pathways enriched closely related to the cell cycle and DNA damage repair. Drug predictions showed that patients with higher risk scores may benefit from treatment with RTK pathway inhibitors, including compounds that inhibit RTKs directly or indirectly by targeting downstream PI3K or MAPK pathways.
In summary, the proposed cancer essential FRG signature predicts survival and treatment response in glioma.
铁死亡是一种程序性细胞死亡(PCD)形式,虽其具体机制尚不清楚,但已被认为与癌症进展有关。在此,我们使用DepMap最新发布的CRISPR数据来确定神经胶质瘤中与铁死亡相关的关键基因(FRG)及其在患者预后中的作用。
从中国神经胶质瘤基因组图谱(CGGA)和癌症基因组图谱(TCGA)获取神经胶质瘤病例的RNA测序和临床信息。FRG从FerrDb数据库中获取。从DepMap门户下载神经胶质瘤细胞系中经CRISPR筛选的关键基因(CSEG)。结合一系列生物信息学和机器学习方法来建立FRG特征,以预测神经胶质瘤患者的总生存期(OS)。此外,采用通路分析来确定FRG的功能作用。在风险亚组内分析体细胞突变、免疫细胞浸润和免疫检查点基因表达。最后,使用GDSC和L1000数据集预测逆转高风险基因特征的化合物。
模型纳入了7个FRG(ISCU、NFS1、MTOR、EIF2S1、HSPA5、AURKA、RPL8),且发现该模型在训练组和验证组中均具有良好的预后价值(p < 0.001)。风险评分被发现是一个独立的预后因素,且该模型具有良好的效能。使用临床参数进行的亚组分析证明了该模型的普遍适用性。列线图表明该模型可以有效地预测12个月、36个月和60个月的总生存期以及无进展生存期(PFI)。结果显示,高风险组中存在更具侵袭性的表型(IDH突变数量较少、EGFR和PTEN突变数量较多、免疫抑制细胞浸润更多以及免疫检查点抑制剂表达更高)。富集的信号通路与细胞周期和DNA损伤修复密切相关。药物预测表明,风险评分较高的患者可能受益于RTK通路抑制剂治疗,包括通过靶向下游PI3K或MAPK通路直接或间接抑制RTK的化合物。
总之,所提出的癌症关键FRG特征可预测神经胶质瘤的生存期和治疗反应。