Analyzing the Differential Expression of Vitiligo Genes by Bioinformatics Methods.

IF 1.9 Q3 DERMATOLOGY
Dermatology Research and Practice Pub Date : 2025-09-05 eCollection Date: 2025-01-01 DOI:10.1155/drp/6672081
Quansheng Lu, Xi He, Yao Sun, Yu Lu, Guan Jiang
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Abstract

Background: Vitiligo is a hypopigmentation skin disease that is easy to diagnose but difficult to treat. The etiology of vitiligo is unknown, which may be related to genetic and immune factors. Objective: To provide potential targets for the treatment of vitiligo through identifying signature genes based on an artificial neural network (ANN) model. Methods: We downloaded two publicly available datasets from GEO database and identified DEGs. We trained the random forest and ANN algorithm using training set GSE75819 to further identify new gene features and predicted the possibility of vitiligo. In addition, we further validated the performance of our model through the test set GSE53148 and verified the diagnostic value of our model with the validation set GSE53148. Finally, we used RT-qPCR to compare the expression of two genes randomly selected in this study in patients with vitiligo and healthy people. Results: Two genes were randomly selected from the 30 key genes identified by ANN and validated through RT-qPCR in 6 vitiligo patients. The results showed that compared with the control group, the mRNA expression of FLJ21901 in the disease group was significantly upregulated, and the mRNA expression of MAST1 was significantly downregulated, with statistical significance. Conclusions: Through the identification of characteristic genes and the construction of a neural network model, it was found that the differentially expressed genes can provide a new potential target for the treatment of vitiligo.

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应用生物信息学方法分析白癜风基因差异表达。
背景:白癜风是一种易诊断但治疗困难的低色素沉着性皮肤病。白癜风的病因尚不清楚,可能与遗传和免疫因素有关。目的:通过基于人工神经网络(ANN)模型的特征基因识别,为白癜风的治疗提供潜在靶点。方法:我们从GEO数据库中下载了两个公开可用的数据集,并确定了deg。我们使用GSE75819训练集训练随机森林和人工神经网络算法,进一步识别新的基因特征,预测白癜风的可能性。此外,我们通过测试集GSE53148进一步验证了我们模型的性能,并使用验证集GSE53148验证了我们模型的诊断价值。最后,我们使用RT-qPCR比较了本研究中随机选择的两个基因在白癜风患者和健康人群中的表达。结果:从ANN鉴定的30个关键基因中随机选择2个基因,通过RT-qPCR对6例白癜风患者进行验证。结果显示,与对照组相比,疾病组FLJ21901 mRNA表达量显著上调,MAST1 mRNA表达量显著下调,差异均有统计学意义。结论:通过特征基因的鉴定和神经网络模型的构建,发现差异表达基因可为白癜风的治疗提供新的潜在靶点。
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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
16
审稿时长
11 weeks
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