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[Exploring the mechanisms of ferroptosis in non-obstructive azoospermia based on bioinformatics and machine learning].
Shen, Hong-Ping; Song, Jia-Yi; Zhou, Xuan; Liu, Ya-Hua; Chen, Yun-Jie; Cai, Yi-Li; Zhang, Yuan-Bin; Yu, Yi; Chen, Xue-Qin.
Afiliação
  • Shen HP; Centers of Traditional Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Song JY; Center of Reproductive Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Zhou X; Clinical Trial Institution, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Liu YH; Center of Reproductive Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Chen YJ; Department of Pharmacy, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Cai YL; Centers of Traditional Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Zhang YB; Department of Pharmacy, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Yu Y; Center of Reproductive Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
  • Chen XQ; Centers of Traditional Medicine, The First Affiliated Hospital of Ningbo University, Ningbo, Zhejiang 315100, China.
Zhonghua Nan Ke Xue ; 29(10): 874-880, 2023 Oct.
Article em Zh | MEDLINE | ID: mdl-38639655
ABSTRACT

OBJECTIVE:

To explor the potential mechanisms of ferroptosis involvement in non-obstructive azoospermia based on bioinformatics and machine learning methods.

METHODS:

To obtain disease-related datasets and ferroptosis-related genes, we utilized the GEO database and FerrDb database, respectively. Using the R software, the disease dataset was subjected to normalization, differential analysis, and GO and KEGG enrichment analysis. The differentially expressed genes from the disease dataset were then intersected with the ferroptosis-related genes to identify common genes. Core genes were selected using three machine learning algorithms, namely LASSO, SVM-RFE, and random forest. Further analysis included exploring immune infiltration correlation, predicting target drugs, and conducting molecular docking simulations.

RESULTS:

The differential analysis of the GSE45885 dataset yielded 1751 differentially expressed genes, while the GSE145467 dataset yielded 4358 differentially expressed genes. The intersection of these two gene sets resulted in a disease-related gene set consisting of 508 genes. Taking the intersection of the disease-related gene set and the ferroptosis-related gene set, we obtained 17 disease-related ferroptosis genes. After machine learning-based screening, three core genes were identified GPX4, HSF1, and KLHDC3.

CONCLUSION:

The mechanism underlying the involvement of ferroptosis in non-obstructive azoospermia may be linked to the downregulation of GPX4, HSF1, and KLHDC3 expression. This finding provides a basis for subsequent in-depth mechanistic and therapeutic studies.
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Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Azoospermia / Ferroptose Limite: Humans / Male Idioma: Zh Revista: Zhonghua Nan Ke Xue Assunto da revista: MEDICINA REPRODUTIVA Ano de publicação: 2023 Tipo de documento: Article País de publicação: China
Buscar no Google
Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Azoospermia / Ferroptose Limite: Humans / Male Idioma: Zh Revista: Zhonghua Nan Ke Xue Assunto da revista: MEDICINA REPRODUTIVA Ano de publicação: 2023 Tipo de documento: Article País de publicação: China