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胶质瘤相关癫痫的分子机制与诊断模型

Molecular mechanisms and diagnostic model of glioma-related epilepsy.

作者信息

Li Jinwei, Long Shengrong, Zhang Yang, Wei Wei, Yu Shuangqi, Liu Quan, Hui Xuhui, Li Xiang, Wang Yinyan

机构信息

Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.

Beijing Neurosurgical Institute, Capital Medical University, Beijing, 100070, China.

出版信息

NPJ Precis Oncol. 2024 Oct 3;8(1):223. doi: 10.1038/s41698-024-00721-8.

Abstract

Epilepsy is one of the most common symptoms in patients with gliomas; however, the mechanisms underlying its interaction are not yet clear. Moreover, epidemiological studies have not accurately identified patients with glioma-related epilepsy (GRE), and there is an urgent need to identify the molecular mechanisms and markers of its occurrence. We analyzed the demographics, transcriptome, whole-genome, and methylation sequences of 997 patients with glioma, to determine the genetic differences between glioma and GRE patients and to determine the upregulated molecular function, cellular composition, biological processes involved, signaling pathways, and immune cell infiltration. Twelve machine learning algorithms were refined into 113 combinatorial algorithms for building diagnostic recognition models. A total of 342 patients with GRE were identified with WHO grade 2 (174), grade 3 (107), and grade 4 (61). The mean age of the patients with GREs, with IDH mutations (n = 217 [63%]) and 1p19q non-codeletion (n = 169 [49%]), was 38 years old. GRE molecular functions were mainly passive transmembrane transporter protein activity, ion channel activity, and gated channel activity. Cellular components were enriched in the cation-channel and transmembrane transporter complexes. Cerebral cortical development regulates the membrane potential and synaptic organization as major biological processes. The signaling pathways mainly focused on cholinergic, GABAergic, and glutamatergic synapses. LASSO, combined with Random Forest, was the best diagnostic model and identified nine diagnostic genes. This study provides new insights and future perspectives for resolving the molecular mechanisms of GRE.

摘要

癫痫是胶质瘤患者最常见的症状之一;然而,其相互作用的潜在机制尚不清楚。此外,流行病学研究尚未准确识别出与胶质瘤相关癫痫(GRE)的患者,因此迫切需要确定其发生的分子机制和标志物。我们分析了997例胶质瘤患者的人口统计学、转录组、全基因组和甲基化序列,以确定胶质瘤患者与GRE患者之间的基因差异,并确定上调的分子功能、细胞组成、涉及的生物学过程、信号通路和免疫细胞浸润。将12种机器学习算法优化为113种组合算法,用于构建诊断识别模型。共识别出342例GRE患者,其中WHO 2级(174例)、3级(107例)和4级(61例)。GRE患者的平均年龄为38岁,其中IDH突变(n = 217 [63%])和1p19q非缺失(n = 169 [49%])。GRE的分子功能主要是被动跨膜转运蛋白活性、离子通道活性和门控通道活性。细胞成分在阳离子通道和跨膜转运蛋白复合物中富集。大脑皮层发育作为主要生物学过程调节膜电位和突触组织。信号通路主要集中在胆碱能、GABA能和谷氨酸能突触。LASSO与随机森林相结合是最佳诊断模型,并识别出9个诊断基因。本研究为解决GRE的分子机制提供了新的见解和未来展望。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d93f/11450052/0522a0c051a1/41698_2024_721_Fig1_HTML.jpg

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