Molecular classification reveals the sensitivity of lung adenocarcinoma to radiotherapy and immunotherapy: multi-omics clustering based on similarity network fusion

Author:

Zhang Jianguo,Li Yangyi,Dai Weijing,Tang Fang,Wang Lanqing,Wang Zhiying,Li Siqi,Ji Qian,Zhang Junhong,Liao Zhengkai,Yu Jing,Xu Yu,Gong Jun,Hu Jing,Li Jie,Guo Xiuli,He Fajian,Han Linzhi,Gong Yan,Ouyang Wen,Wang Zhihao,Xie Conghua

Abstract

Abstract Background Due to individual differences in tumors and immune systems, the response rate to immunotherapy is low in lung adenocarcinoma (LUAD) patients. Combinations with other therapeutic strategies improve the efficacy of immunotherapy in LUAD patients. Although radioimmunotherapy has been demonstrated to effectively suppress tumors, the underlying mechanisms still need to be investigated. Methods Total RNA from LUAD cells was sequenced before and after radiotherapy to identify differentially expressed radiation-associated genes. The similarity network fusion (SNF) algorithm was applied for molecular classification based on radiation-related genes, immune-related genes, methylation data, and somatic mutation data. The changes in gene expression, prognosis, immune cell infiltration, radiosensitivity, chemosensitivity, and sensitivity to immunotherapy were assessed for each subtype. Results We used the SNF algorithm and multi-omics data to divide TCGA-LUAD patients into three subtypes. Patients with the CS3 subtype had the best prognosis, while those with the CS1 and CS2 subtypes had poorer prognoses. Among the strains tested, CS2 exhibited the most elevated immune cell infiltration and expression of immune checkpoint genes, while CS1 exhibited the least. Patients in the CS2 subgroup were more likely to respond to PD-1 immunotherapy. The CS2 patients were most sensitive to docetaxel and cisplatin, while the CS1 patients were most sensitive to paclitaxel. Experimental validation of signature genes in the CS2 subtype showed that inhibiting the expression of RHCG and TRPA1 could enhance the sensitivity of lung cancer cells to radiation. Conclusions In summary, this study identified a risk classifier based on multi-omics data that can guide treatment selection for LUAD patients.

Funder

Fundamental Research Funds for the Central Universities

Zhongnan Hospital of Wuhan University Medical Science and Technology Innovation Platform Program

Nature Science Foundation of Hubei Province

Natural Science Foundation of Hubei Province

National Natural Science Foundation of China

Key Research & Development Project of Hubei Province

Publisher

Springer Science and Business Media LLC

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