Identification of Immune-Related Biomarkers of Schizophrenia in the Central Nervous System Using Bioinformatic Methods and Machine Learning Algorithms.

IF 4.6 2区 医学 Q1 NEUROSCIENCES Molecular Neurobiology Pub Date : 2025-03-01 Epub Date: 2024-09-07 DOI:10.1007/s12035-024-04461-5
Jianjun Weng, Xiaoli Zhu, Yu Ouyang, Yanqing Liu, Hongmei Lu, Jiakui Yao, Bo Pan
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Abstract

Schizophrenia is a disastrous mental disorder. Identification of diagnostic biomarkers and therapeutic targets is of significant importance. In this study, five datasets of schizophrenia post-mortem prefrontal cortex samples were downloaded from the GEO database and then merged and de-batched for the analyses of differentially expressed genes (DEGs) and weighted gene co-expression network analysis (WGCNA). The WGCNA analysis showed the six schizophrenia-related modules containing 12,888 genes. The functional enrichment analyses indicated that the DEGs were highly involved in immune-related processes and functions. The immune cell infiltration analysis with the CIBERSORT algorithm revealed 12 types of immune cells that were significantly different between schizophrenia subjects and controls. Additionally, by intersecting DEGs, WGCNA module genes, and an immune gene set obtained from online databases, 151 schizophrenia-associated immune-related genes were obtained. Moreover, machine learning algorithms including LASSO and Random Forest were employed to further screen out 17 signature genes, including GRIN1, P2RX7, CYBB, PTPN4, UBR4, LTF, THBS1, PLXNB3, PLXNB1, PI15, RNF213, CXCL11, IL7, ARHGAP10, TTR, TYROBP, and EIF4A2. Then, SVM-RFE was added, and together with LASSO and Random Forest, a hub gene (EIF4A2) out of the 17 signature genes was revealed. Lastly, in a schizophrenia rat model, the EIF4A2 expression levels were reduced in the model rat brains in a brain-regional dependent manner, but can be reversed by risperidone. In conclusion, by using various bioinformatic and biological methods, this study found 17 immune-related signature genes and a hub gene of schizophrenia that might be potential diagnostic biomarkers and therapeutic targets of schizophrenia.

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利用生物信息学方法和机器学习算法识别中枢神经系统中与免疫相关的精神分裂症生物标记物
精神分裂症是一种灾难性精神障碍。鉴定诊断生物标志物和治疗靶点具有重要意义。本研究从 GEO 数据库中下载了五个精神分裂症死后前额叶皮层样本数据集,然后进行合并和去分选,以分析差异表达基因(DEGs)和加权基因共表达网络分析(WGCNA)。WGCNA 分析显示,六个精神分裂症相关模块包含 12,888 个基因。功能富集分析表明,这些 DEGs 高度参与免疫相关过程和功能。利用 CIBERSORT 算法进行的免疫细胞浸润分析显示,精神分裂症患者和对照组之间有 12 种免疫细胞存在显著差异。此外,通过将 DEGs、WGCNA 模块基因和从在线数据库中获得的免疫基因集进行交叉分析,得到了 151 个精神分裂症相关免疫基因。此外,利用机器学习算法(包括 LASSO 和随机森林)进一步筛选出了 17 个特征基因,包括 GRIN1、P2RX7、CYBB、PTPN4、UBR4、LTF、THBS1、PLXNB3、PLXNB1、PI15、RNF213、CXCL11、IL7、ARHGAP10、TTR、TYROBP 和 EIF4A2。然后,加入 SVM-RFE,并与 LASSO 和随机森林一起,揭示了 17 个特征基因中的中心基因(EIF4A2)。最后,在精神分裂症大鼠模型中,EIF4A2在模型大鼠大脑中的表达水平降低与大脑区域有关,但利培酮可以逆转。总之,本研究利用多种生物信息学和生物学方法,发现了17个与免疫相关的精神分裂症特征基因和一个精神分裂症中枢基因,这些基因可能是精神分裂症的潜在诊断生物标志物和治疗靶点。
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来源期刊
Molecular Neurobiology
Molecular Neurobiology 医学-神经科学
CiteScore
9.00
自引率
2.00%
发文量
480
审稿时长
1 months
期刊介绍: Molecular Neurobiology is an exciting journal for neuroscientists needing to stay in close touch with progress at the forefront of molecular brain research today. It is an especially important periodical for graduate students and "postdocs," specifically designed to synthesize and critically assess research trends for all neuroscientists hoping to stay active at the cutting edge of this dramatically developing area. This journal has proven to be crucial in departmental libraries, serving as essential reading for every committed neuroscientist who is striving to keep abreast of all rapid developments in a forefront field. Most recent significant advances in experimental and clinical neuroscience have been occurring at the molecular level. Until now, there has been no journal devoted to looking closely at this fragmented literature in a critical, coherent fashion. Each submission is thoroughly analyzed by scientists and clinicians internationally renowned for their special competence in the areas treated.
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