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2000
Volume 26, Issue 1
  • ISSN: 1871-5303
  • E-ISSN: 2212-3873

Abstract

Introduction

Acute Kidney Injury (AKI) is a clinical syndrome with rapid onset and poor prognosis, and existing diagnostic methods suffer from low sensitivity and delay. To achieve early identification and precise intervention, there is an urgent need to discover new precise biomarkers.

Methods

AKI samples were acquired from Gene Expression Omnibus (GEO) database. AKI-related module genes were identified using the “WGCNA” package. The “Limma” package was used to filter Differentially Expressed Genes (DEGs). Protein interaction networks were constructed by intersecting key modular genes with DEGs, and six algorithms (MCC, MNC, Degree, EPC, Closeness, and Radiality) in the cytoHubba plug-in were combined to screen candidate genes. Diagnostic biomarkers were cross-screened using LASSO regression with Support Vector Machine–Recursive Feature Elimination (SVM-RFE) machine learning algorithm, and their predictive performance was verified by Receiver Operating Characteristic (ROC) analysis. Transcription Factors (TFs) regulatory network was constructed applying Cytoscape 3.8.0. Finally, the prediction and molecular docking analysis of potential target drugs were performed using the DSigDB database and AutoDockTools.

Results

A total of 498 key modular genes significantly associated with AKI were screened, and 88 AKI-related DEGs and 18 candidate genes were further identified. Importantly, four biomarkers with high diagnostic value and ) were screened and validated using dual machine learning algorithms, including LASSO regression and SVM-RFE. The area under the ROC curve (AUC) values for these biomarkers were greater than 0.8, indicating good predictive performance. Moreover, 19 TFs and 17 miRNA of , 10 TFs and 58 miRNA of , 15 TFs and 60 miRNA of , together with 13 TFs and 109 miRNA of were screened. Drug prediction and molecular docking analysis revealed that Demecolcine and Testosterone Enanthate stably bind to certain markers.

Discussion

Four potential biomarkers closely related to AKI were identified, which may be involved in the occurrence and progression of AKI by regulating key processes such as transcription. The predicted Demecolcine and Testosterone Enanthate may also be involved in the repair of renal injury by regulating key target genes. Although further experimental validation is still needed, these may still provide new intervention strategies for the treatment of AKI.

Conclusion

To conclude, four AKI biomarkers with high diagnostic value were screened by integrating multiple computational methods, revealing a new perspective on the molecular mechanism of AKI. The results provided a new theoretical basis for achieving early precision diagnosis and individualized treatment of AKI.

This is an open access article published under CC BY 4.0 https://creativecommons.org/licenses/by/4.0/legalcode
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