Construction of a prognostic model for lung adenocarcinoma based on m6A/m5C/m1A genes

Author:

Ding Hao1,Teng Yuanyuan1,Gao Ping1,Zhang Qi1,Wang Mengdi1,Yu Yi2,Fan Yueping34ORCID,Zhu Li5ORCID

Affiliation:

1. Department of Respiratory Disease, Affiliated People’s Hospital of Jiangsu University , NO. 8 Dianli Road, Runzhou District, Zhenjiang City, Jiangsu Province 212002 , China

2. Department of General Practice, Jiankang Road Community Health Service Center , NO. 239 Zhongshan East Road, Jingkou District, Zhenjiang City, Jiangsu Province 212008 , China

3. Department of Respiratory , Jurong Branch Hospital, , NO. 8 Huayang South Road, Jurong City, Zhenjiang City, Jiangsu Province 212400 , China

4. Affiliated Hospital of Jiangsu University , Jurong Branch Hospital, , NO. 8 Huayang South Road, Jurong City, Zhenjiang City, Jiangsu Province 212400 , China

5. Department of Nephrology, Affiliated People’s Hospital of Jiangsu University , NO. 8 Dianli Road, Runzhou District, Zhenjiang City, Jiangsu Province 212002 , China

Abstract

Abstract Background Developing a prognostic model for lung adenocarcinoma (LUAD) that utilizes m6A/m5C/m1A genes holds immense importance in providing precise prognosis predictions for individuals. Methods This study mined m6A/m5C/m1A-related differential genes in LUAD based on public databases, identified LUAD tumor subtypes based on these genes, and further built a risk prognostic model grounded in differential genes between subtypes. The immune status between high- and low-risk groups was investigated, and the distribution of feature genes in tumor immune cells was analyzed using single-cell analysis. Based on the expression levels of feature genes, a projection of chemotherapeutic and targeted drugs was made for individuals identified as high-risk. Ultimately, cell experiments were further verified. Results The 6-gene risk prognosis model based on differential genes between tumor subtypes had good predictive performance. Individuals classified as low-risk exhibited a higher (P < 0.05) abundance of infiltrating immune cells. Feature genes were mainly distributed in tumor immune cells like CD4+T cells, CD8+T cells, and regulatory T cells. Four drugs with relatively low IC50 values were found in the high-risk group: Elesclomol, Pyrimethamine, Saracatinib, and Temsirolimus. In addition, four drugs with significant positive correlation (P < 0.001) between IC50 values and feature gene expression were found, including Alectinib, Estramustine, Brigatinib, and Elesclomol. The low expression of key gene NTSR1 reduced the IC50 value of irinotecan. Conclusion Based on the m6A/m5C/m1A-related genes in LUAD, LUAD patients were divided into 2 subtypes, and a m6A/m5C/m1A-related LUAD prognostic model was constructed to provide a reference for the prognosis prediction of LUAD.

Funder

2020 Jiangsu Province High Level Health Talents

2021 Zhenjiang City Science and Technology Innovation Fund

High Level Leading Talent Training Plan

Publisher

Oxford University Press (OUP)

Subject

Genetics (clinical),Genetics,Molecular Biology,General Medicine

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