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Combining Bulk and Single-Cell RNA Sequencing Data to Identify RNA Methylation and Autophagy-Related Signatures in Patients with Chronic Obstructive Pulmonary Disease

bioRxiv(2023)

Department of Respiratory Medicine

Cited 0|Views12
Abstract
Background Chronic Obstructive Pulmonary Disease (COPD) is a heterogeneous lung condition associated with RNA methylation and autophagy. However, the specific autophagy-related genes and RNA methylation regulators involved in COPD development remain unknown. Methods We analyzed COPD and non-COPD patients datasets obtained from the Gene Expression Omnibus database, including Tissue Sequencing Transcriptome (bulk-seq) and single-cell sequencing (scRNA-seq) data. Differentially expressed genes (DEGs) were identified through differential genetic analysis using non-COPD bulk-seq data as the control group and COPD samples were used as the experimental group. Animal experiments were conducted to validate the expression of key genes. COPD model mice were exposed to smoke for four months, and lung function and histopathological changes were assessed. The mRNA and protein expression levels of FTO, IGF2BP2, DDIT3, DNAJB1 , and YTHDF3 were measured using RT-qPCR and Western blotting, respectively. Results We identified FTO, IGF2BP2 , and YTHDF3 as key methylation genes, along with autophagy hub genes DDIT3 and DNAJB1 . Animal experiments showed significantly increased mRNA and protein levels of FTO, YTHDF3 and DNAJB1 and significantly decreased levels of IGF2BP2 in lung tissue of COPD mice compared to the control group. Conclusion Our findings suggest that DDIT3 and DNAJB1 as autophagy hub genes, along with FTO, IGF2BP2 and YTHDF3 as RNA methylation genes, may play crucial roles in the development of COPD. These findings, supported by bulk-seq and scRNA-seq data, contribute novel genetic evidence for understanding the epigenetics of COPD.
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Key words
RNA methylation,DNA Methylation,RNA Regulation,Gene Expression Regulation,Competing Endogenous RNA
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