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General Review Article

Multi-omics Combined with Machine Learning Facilitating the Diagnosis of Gastric Cancer

[ Vol. 31 , Issue. 40 ]

Author(s):

Jie Li, Siyi Xu, Feng Zhu, Fei Shen, Tianyi Zhang, Xin Wan, Saisai Gong, Geyu Liang* and Yonglin Zhou*   Pages 6692 - 6712 ( 21 )

Abstract:


Gastric cancer (GC) is a highly intricate gastrointestinal malignancy. Early detection of gastric cancer forms the cornerstone of precision medicine. Several studies have been conducted to investigate early biomarkers of gastric cancer using genomics, transcriptomics, proteomics, and metabolomics, respectively. However, endogenous substances associated with various omics are concurrently altered during gastric cancer development. Furthermore, environmental exposures and family history can also induce modifications in endogenous substances. Therefore, in this study, we primarily investigated alterations in DNA mutation, DNA methylation, mRNA, lncRNA, miRNA, circRNA, and protein, as well as glucose, amino acid, nucleotide, and lipid metabolism levels in the context of GC development, employing genomics, transcriptomics, proteomics, and metabolomics. Additionally, we elucidate the impact of exposure factors, including HP, EBV, nitrosamines, smoking, alcohol consumption, and family history, on diagnostic biomarkers of gastric cancer. Lastly, we provide a summary of the application of machine learning in integrating multi-omics data. Thus, this review aims to elucidate: i) the biomarkers of gastric cancer related to genomics, transcriptomics, proteomics, and metabolomics; ii) the influence of environmental exposure and family history on multiomics data; iii) the integrated analysis of multi-omics data using machine learning techniques.

Keywords:

Gastric cancer, biomarkers, multi-omics, exposure, machine learning, gastroscopy.

Affiliation:



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