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利用生物信息学、机器学习和实验验证鉴定与乳腺癌相关的关键铁死亡基因和机制。

Identification of key ferroptosis genes and mechanisms associated with breast cancer using bioinformatics, machine learning, and experimental validation.

作者信息

Liang Shuang, Bai Yan-Ming, Zhou Bo

机构信息

Department of Yinchuan Traditional Chinese Medicine Hospital, Ningxia Medical University, Yinchuan 750001, China.

School of Traditional Chinese Medicine, Ningxia Medical University, Yinchuan 750004, China.

出版信息

Aging (Albany NY). 2024 Jan 19;16(2):1781-1795. doi: 10.18632/aging.205459.

Abstract

OBJECTIVE

The aim of this paper is to mine ferroptosis genes associated with breast cancer based on bioinformatics and machine learning, and to perform functional validation.

METHODS

Transcriptional and clinical data of breast cancer patients were downloaded from TCGA database and ferroptosis-related genes were obtained from FerrDB database. Significant differentially expressed ferroptosis-related genes between breast cancer tissues and adjacent normal tissues were selected. Functional enrichment analysis was performed on these differentially expressed genes. Four machine learning algorithms were used to identify key ferroptosis-related genes associated with breast cancer. A multi-factor Cox regression analysis was used to construct a risk score model for the key ferroptosis-related genes. The accuracy of the risk score model was validated using Kaplan-Meier survival curve analysis and receiver operating characteristic (ROC) curve analysis. Finally, cell experiments were conducted to validate the biological functions of the key ferroptosis-related genes in breast cancer cells MCF-7, further confirming the accuracy of the analysis results.

RESULTS

A total of 52 significantly differentially expressed ferroptosis-related genes were identified, which were mainly enriched in cancer pathways, central carbon metabolism in cancer, HIF-1 signaling pathway, and NOD-like receptor signaling pathway. Three key ferroptosis-related genes (TXNIP, SLC2A1, ATF3) closely related to the occurrence, development, and prognosis of breast cancer were identified using machine learning algorithms. The risk model constructed using these three key ferroptosis-related genes showed that the prognosis of the low-risk group was better than that of the high-risk group ( < 0.001). The ROC curve analysis showed that the prognosis model had good predictive ability. experiments validated the reliability of the bioinformatics and machine learning screening results. Downregulation of SLC2A1 expression promoted ferroptosis and suppressed tumor cell growth in breast cancer cells ( < 0.01), while overexpression of TXNIP or ATF3 had the same effect ( < 0.01).

CONCLUSION

This study identified three key ferroptosis-related genes (TXNIP, SLC2A1, ATF3) associated with breast cancer, which are closely related to the occurrence, development, and prognosis of breast cancer.

摘要

目的

本文旨在基于生物信息学和机器学习挖掘与乳腺癌相关的铁死亡基因,并进行功能验证。

方法

从TCGA数据库下载乳腺癌患者的转录组和临床数据,从FerrDB数据库获取铁死亡相关基因。筛选出乳腺癌组织与癌旁正常组织间显著差异表达的铁死亡相关基因。对这些差异表达基因进行功能富集分析。使用四种机器学习算法识别与乳腺癌相关的关键铁死亡基因。采用多因素Cox回归分析构建关键铁死亡基因的风险评分模型。通过Kaplan-Meier生存曲线分析和受试者工作特征(ROC)曲线分析验证风险评分模型的准确性。最后,进行细胞实验验证关键铁死亡基因在乳腺癌细胞MCF-7中的生物学功能,进一步证实分析结果的准确性。

结果

共鉴定出52个显著差异表达的铁死亡相关基因,主要富集于癌症通路、癌症中的中心碳代谢、HIF-1信号通路和NOD样受体信号通路。使用机器学习算法鉴定出与乳腺癌发生、发展及预后密切相关的三个关键铁死亡基因(TXNIP、SLC2A1、ATF3)。利用这三个关键铁死亡基因构建的风险模型显示,低风险组的预后优于高风险组(<0.001)。ROC曲线分析表明预后模型具有良好的预测能力。细胞实验验证了生物信息学和机器学习筛选结果的可靠性。下调SLC2A1表达可促进乳腺癌细胞铁死亡并抑制肿瘤细胞生长(<0.01),而过表达TXNIP或ATF3也有相同作用(<0.01)。

结论

本研究鉴定出三个与乳腺癌相关的关键铁死亡基因(TXNIP、SLC2A1、ATF3),它们与乳腺癌的发生、发展及预后密切相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c7d0/10866432/81ddadd9a5cc/aging-16-205459-g001.jpg

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