Zhong Aifang, Wang Feichi, Zhou Yang, Ding Ning, Yang Guifang, Chai Xiangping
Department of Emergency Medicine, The Second Xiangya Hospital, Central South University, Changsha, Hunan, China; Trauma Center, The Second Xiangya Hospital, Central South University, Changsha, Hunan, China.
Department of Emergency Medicine, The Second Xiangya Hospital, Central South University, Changsha, Hunan, China; Trauma Center, The Second Xiangya Hospital, Central South University, Changsha, Hunan, China.
World Neurosurg. 2023 Nov;179:e166-e186. doi: 10.1016/j.wneu.2023.08.043. Epub 2023 Aug 18.
The determination of biological mechanisms and biomarkers related to intracranial aneurysm (IA) rupture is of utmost significance for the development of effective preventive and therapeutic strategies in the clinical field.
GSE122897 and GSE13353 datasets were downloaded from Gene Expression Omnibus. Data extracted from GSE122897 were used for analyzing differential gene expression, and consensus clustering was performed to identify stable molecular subtypes. Clinical characteristics were compared between subgroups, and fast gene set enrichment analysis and weighted gene coexpression network analysis were performed. Hub genes were identified via least absolute shrinkage and selection operator analysis. Predictive models were constructed based on hub genes using the Light Gradient Boosting Machine, eXtreme Gradient Boosting, and logistic regression algorithm. Immune cell infiltration in IA samples was analyzed using Microenvironment Cell Population counter, CIBERSORT, and xCell algorithm. The correlation between hub genes and immune cells was analyzed. The predictive model and immune cell infiltration were validated using data from the GSE13353 dataset.
A total of 43 IA samples were classified into 2 subgroups based on gene expression profiles. Subgroup I had a higher risk of rupture, while 70% of subgroup II remained unruptured. In subgroup I, specific genes were associated with inflammation and immunity, and weighted gene coexpression network analysis revealed that the black module genes were linked to IA rupture. We identified 4 hub genes (spermine synthase, macrophage receptor with collagenous structure, zymogen granule protein 16B, and LIM and calponin-homology domains 1), which constructed predictive models with good diagnostic performance in differentiating between ruptured and unruptured IA samples. Monocytic lineage was found to be a significant factor in IA rupture, and the 4 hub genes were linked to monocytic lineage (P < 0.05).
We reveal a new molecular subtype that can reflect the actual pathological state of IA rupture, and our predictive models constructed by machine learning algorithms can efficiently predict IA rupture.
确定与颅内动脉瘤(IA)破裂相关的生物学机制和生物标志物对于临床领域有效预防和治疗策略的发展至关重要。
从基因表达综合数据库下载GSE122897和GSE13353数据集。从GSE122897中提取的数据用于分析差异基因表达,并进行一致性聚类以识别稳定的分子亚型。比较各亚组之间的临床特征,并进行快速基因集富集分析和加权基因共表达网络分析。通过最小绝对收缩和选择算子分析确定枢纽基因。使用轻梯度提升机、极端梯度提升和逻辑回归算法基于枢纽基因构建预测模型。使用微环境细胞群体计数器、CIBERSORT和xCell算法分析IA样本中的免疫细胞浸润情况。分析枢纽基因与免疫细胞之间的相关性。使用GSE13353数据集的数据验证预测模型和免疫细胞浸润情况。
根据基因表达谱,共将43个IA样本分为2个亚组。亚组I破裂风险较高,而亚组II中70%的样本未破裂。在亚组I中,特定基因与炎症和免疫相关,加权基因共表达网络分析显示黑色模块基因与IA破裂有关。我们确定了4个枢纽基因(精胺合酶、具有胶原结构的巨噬细胞受体、酶原颗粒蛋白16B和LIM与钙调蛋白同源结构域1),它们构建的预测模型在区分破裂和未破裂的IA样本方面具有良好的诊断性能。发现单核细胞谱系是IA破裂的一个重要因素,且这4个枢纽基因与单核细胞谱系相关(P < 0.05)。
我们揭示了一种能够反映IA破裂实际病理状态的新分子亚型,并且我们通过机器学习算法构建的预测模型能够有效预测IA破裂。