基于机器学习和杯突症相关群组的识别,构建 Wilms 肿瘤风险模型。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jingru Huang, Yong Li, Xiaotan Pan, Jixiu Wei, Qiongqian Xu, Yin Zheng, Peng Chen, Jiabo Chen
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引用次数: 0

摘要

背景:铜中毒(Cuproptosis)是最近发现的一种由铜引发的程序性细胞死亡,它在Wilms肿瘤(WT)中的作用机制尚不完全清楚。这项研究的重点是探讨WT与铜中毒相关基因(CRGs)之间的联系,目的是建立WT的预测模型:方法:从 GEO 数据库中获取与 WT 相关的四个基因表达数据集。随后,提取 CRGs 的表达谱进行差异分析和免疫浸润研究。利用 105 个 WT 样本,确定了与杯突症相关的群集。这包括分析相关的免疫细胞浸润和进行功能富集分析。利用加权基因共表达网络分析确定了疾病特征基因。最后,通过四种机器学习方法构建了 WT 风险预测模型:随机森林、支持向量机(SVM)、广义线性和极梯度强度模型。选择了表现最好的机器学习模型,并创建了一个提名图。通过校准曲线、决策曲线分析等方法,并将其应用于 TARGET-GTEx 数据集,验证了该预测模型的有效性:结果:发现了 13 个差异表达的杯突症相关基因。WT儿童的CD8 + T细胞浸润水平低于正常组织(NT)儿童,巨噬细胞和T滤泡辅助细胞的M0浸润水平高于NT儿童。此外,还发现了两个杯状突变相关的 WT 群。富集分析结果表明,簇2中的基因主要参与细胞分裂、核分裂调控、DNA生物合成过程、泛素介导的蛋白水解。SVM 模型被判定为使用 5 个基因的最佳模型。通过校准曲线和决策曲线分析,证实了该模型的准确性,在 TARGET-GTEx 验证数据集上的表现令人满意。其他分析表明,这五个基因在 TARGET-GTEx 验证数据集和测序数据中均表现出高表达:结论:这项研究在 WT 和杯突症之间建立了联系。结论:这项研究建立了 WT 与杯突症之间的联系,并开发了一个用于评估 WT 风险的预测模型,同时确定了与该疾病相关的五个关键基因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction of a Wilms tumor risk model based on machine learning and identification of cuproptosis-related clusters.

Background: Cuproptosis, a recently identified type of programmed cell death triggered by copper, has mechanisms in Wilms tumor (WT) that are not yet fully understood. This research focuses on examining the link between WT and Cuproptosis-related genes (CRGs), with the goal of developing a predictive model for WT.

Methods: Four gene expression datasets related to WT were sourced from the GEO database. Subsequently, expression profiles of CRGs were extracted for differential analysis and immune infiltration studies. Utilizing 105 WT samples, clusters related to Cuproptosis were identified. This involved analyzing associated immune cell infiltration and conducting functional enrichment analysis. Disease-characteristic genes were pinpointed using weighted gene co-expression network analysis. Finally, the WT risk prediction model was constructed by four machine learning methods: random forest, support vector machine (SVM), generalized linear and extreme gradient strength model. The best-performing machine learning model was chosen, and a nomogram was created. The effectiveness of this predictive model was validated using methods such as the calibration curve, decision curve analysis, and by appiying it to the TARGET-GTEx dataset.

Results: Thirteen differentially expressed Cuproptosis-related genes were identified. The infiltration level of CD8 + T cells in WT children was lower than that in Normal tissue (NT) children, and the level of M0 infiltration of macrophages and T follicular helper cells was higher than that in NT children. In addition, two clusters of cuproptosis-related WT were identified. Enrichment analysis results indicated that genes in cluster 2 were primarily involved in cell division, nuclear division regulation, DNA biosynthesis process, ubiquitin-mediated proteolysis. The SVM model was judged to be the optimal model using 5 genes. Its accuracy was confirmed through a calibration curve and decision curve analysis, demonstrating satisfactory performance on the TARGET-GTEx validation dataset. Additional analysis revealed that these five genes exhibited high expression in both the TARGET-GTEx validation dataset and sequencing data.

Conclusion: This research established a link between WT and Cuproptosis. It developed a predictive model for assessing the risk of WT and pinpointed five key genes associated with the disease.

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CiteScore
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