Zhao Songyun, Ye Bicheng, Chi Hao, Cheng Chao, Liu Jinhui
Department of Neurosurgery, Wuxi People's Hospital Affiliated to Nanjing Medical University, Wuxi, 214000, China.
School of Clinical Medicine, Yangzhou Polytechnic College, Yangzhou, 225000, China.
Heliyon. 2023 Jun 27;9(7):e17454. doi: 10.1016/j.heliyon.2023.e17454. eCollection 2023 Jul.
Ovarian cancer (OC) is a common tumor of the female reproductive system, while Alzheimer's disease (AD) is a prevalent neurodegenerative disease that primarily affects cognitive function in the elderly. Monocytes are immune cells in the blood that can enter tissues and transform into macrophages, thus participating in immune and inflammatory responses. Overall, monocytes may play an important role in Alzheimer's disease and ovarian cancer.
The CIBERSORT algorithm results indicate a potential crucial role of monocytes/macrophages in OC and AD. To identify monocyte marker genes, single-cell RNA-seq data of peripheral blood mononuclear cells (PBMCs) from OC and AD patients were analyzed. Enrichment analysis of various cell subpopulations was performed using the "irGSEA" R package. The estimation of cell cycle was conducted with the "tricycle" R package, and intercellular communication networks were analyzed using "CellChat". For 134 monocyte-associated genes (MRGs), bulk RNA-seq data from two diseased tissues were obtained. Cox regression analysis was employed to develop risk models, categorizing patients into high-risk (HR) and low-risk (LR) groups. The model's accuracy was validated using an external GEO cohort. The different risk groups were evaluated in terms of immune cell infiltration, mutational status, signaling pathways, immune checkpoint expression, and immunotherapy. To identify characteristic MRGs in AD, two machine learning algorithms, namely random forest and support vector machine (SVM), were utilized.
Based on Cox regression analysis, a risk model consisting of seven genes was developed in OC, indicating a better prognosis for patients in the LR group. The LR group had a higher tumor mutation burden, immune cell infiltration abundance, and immune checkpoint expression. The results of the TIDE algorithm and the IMvigor210 cohort showed that the LR group was more likely to benefit from immunotherapy. Finally, ZFP36L1 and AP1S2 were identified as characteristic MRGs affecting OC and AD progression.
The risk profile containing seven genes identified in this study may help further guide clinical management and targeted therapy for OC. ZFP36L1 and AP1S2 may serve as biomarkers and new therapeutic targets for patients with OC and AD.
卵巢癌(OC)是女性生殖系统常见肿瘤,而阿尔茨海默病(AD)是一种主要影响老年人认知功能的常见神经退行性疾病。单核细胞是血液中的免疫细胞,可进入组织并转变为巨噬细胞,从而参与免疫和炎症反应。总体而言,单核细胞可能在阿尔茨海默病和卵巢癌中发挥重要作用。
CIBERSORT算法结果表明单核细胞/巨噬细胞在OC和AD中可能起关键作用。为鉴定单核细胞标记基因,分析了OC和AD患者外周血单个核细胞(PBMC)的单细胞RNA测序数据。使用“irGSEA”R包对各种细胞亚群进行富集分析。用“tricycle”R包进行细胞周期估计,并使用“CellChat”分析细胞间通讯网络。获取了来自两种患病组织的134个单核细胞相关基因(MRG)的批量RNA测序数据。采用Cox回归分析建立风险模型,将患者分为高风险(HR)和低风险(LR)组。使用外部GEO队列验证模型的准确性。从免疫细胞浸润、突变状态、信号通路、免疫检查点表达和免疫治疗方面对不同风险组进行评估。为鉴定AD中的特征性MRG,利用了随机森林和支持向量机(SVM)这两种机器学习算法。
基于Cox回归分析,在OC中建立了一个由七个基因组成的风险模型,表明LR组患者预后较好。LR组具有更高的肿瘤突变负担、免疫细胞浸润丰度和免疫检查点表达。TIDE算法和IMvigor210队列的结果表明,LR组更可能从免疫治疗中获益。最后,鉴定出ZFP36L1和AP1S2为影响OC和AD进展的特征性MRG。
本研究鉴定出的包含七个基因的风险谱可能有助于进一步指导OC的临床管理和靶向治疗。ZFP36L1和AP1S2可能作为OC和AD患者的生物标志物及新的治疗靶点。