Abstract

The expression of pepsinogen C (PGC) is considered an ideal negative biomarker of gastric cancer, but its pathological mechanisms remain unclear. This study aims to analyze competing endogenous RNA (ceRNA) networks related to PGC expression at a post-transcriptional level and build an experimental basis for studying the role of PGC in the progression of gastric cancer. RNA sequencing technology was used to detect the differential expression (DE) profiles of PGC-related long non-coding (lnc)RNAs, circular (circ)RNAs, and mRNAs. Ggcorrplot R package and online database were used to construct DElncRNAs/DEcircRNAs co-mediated PGC expression-related ceRNA networks. In vivo and in vitro validations were performed using quantitative reverse transcription-PCR (qRT-PCR). RNA sequencing found 637 DEmRNAs, 698 DElncRNAs, and 38 DEcircRNAs. The PPI network of PGC expression-related mRNAs consisted of 503 nodes and 1179 edges. CFH, PPARG, and MUC6 directly interacted with PGC. Enrichment analysis suggested that DEmRNAs were mainly enriched in cancer-related pathways. Eleven DElncRNAs, 13 circRNAs, and 35 miRNA-mRNA pairs were used to construct ceRNA networks co-mediated by DElncRNAs and DEcircRNAs that were PGC expression-related. The network directly related to PGC was as follows: SNHG16/hsa_circ_0008197-hsa-mir-98-5p/hsa-let-7f-5p/hsa-let-7c-5p-PGC. qRT-PCR validation results showed that PGC, PPARG, SNHG16, and hsa_circ_0008197 were differentially expressed in gastric cancer cells and tissues: PGC positively correlated with PPARG (r = 0.276, P = 0.009), SNHG16 (r = 0.35, P = 0.002), and hsa_circ_0008197 (r = 0.346, P = 0.005). PGC-related DElncRNAs and DEcircRNAs co-mediated complicated ceRNA networks to regulate PGC expression, thus affecting the occurrence and development of gastric cancer at a post-transcriptional level. Of these, the network directly associated with PGC expression was a SNHG16/hsa_circ_0008197-mir-98-5p/hsa-let-7f-5p/hsa-let-7c-5p - PGC axis. This study may form a foundation for the subsequent exploration of the possible regulatory mechanisms of PGC in gastric cancer.

Highlights

  • The latest global statistics show that gastric cancer is the fifth most common malignancy and the third most fatal tumor [1]

  • Eleven DElncRNAs, 13 circRNAs, and 35 miRNA–mRNA pairs were used to construct competing endogenous RNA (ceRNA) networks co-mediated by DElncRNAs and DEcircRNAs that were pepsinogen C (PGC) expression–related

  • Quantitative reverse transcriptase PCR validation results showed that PGC, PPARG, Small nucleolar RNA host gene 16 (SNHG16), and hsa_circ_0008197 were differentially expressed in gastric cancer cells and tissues: PGC positively correlated with PPARG (r = 0.276, P = 0.009), SNHG16 (r = 0.35, P = 0.002), and hsa_circ_0008197 (r = 0.346, P = 0.005)

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Summary

Introduction

The latest global statistics show that gastric cancer is the fifth most common malignancy and the third most fatal tumor [1]. Pepsinogen C (PGC), a precursor of pepsin C, belongs to the aspartic enzyme family, and is mainly secreted by gastric mucosal principal cells into the gastric cavity [2]. PGC expression was found to gradually decrease or even become deficient in the progression of superficial gastritis–atrophic gastritis–gastric cancer, suggesting it might be an ideal negative biomarker of gastric cancer [3]. Several scholars have described positive PGC expression gradually decreased in well differentiated, medium differentiated, and poorly differentiated gastric cancer cells [4]. PGC might have an important role in multiple gastric diseases, including gastric cancer. The expression of pepsinogen C (PGC) is considered an ideal negative biomarker of gastric cancer, but its pathological mechanisms remain unclear. This study aims to analyze competing endogenous RNA (ceRNA) networks related to PGC expression at a posttranscriptional level and build an experimental basis for studying the role of PGC in the progression of gastric cancer

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