Integrating somatic mutation profiles with structural deep clustering network for metabolic stratification in pancreatic cancer: a comprehensive analysis of prognostic and genomic landscapes

Author:

Zou Min1,Li Honghao1,Su Dongqing1,Xiong Yuqiang1,Wei Haodong1,Wang Shiyuan1,Sun Hongmei1,Wang Tao1,Xi Qilemuge23,Zuo Yongchun23456ORCID,Yang Lei1ORCID

Affiliation:

1. College of Bioinformatics Science and Technology, Harbin Medical University , Harbin 150081 , China

2. The State Key Laboratory of Reproductive Regulation and Breeding of Grassland Livestock , College of Life Sciences, , Hohhot 010070 , China

3. Inner Mongolia University , College of Life Sciences, , Hohhot 010070 , China

4. Digital College , Inner Mongolia Intelligent Union Big Data Academy, . Hohhot 010010, China

5. Inner Mongolia Wesure Date Technology Co., Ltd , Inner Mongolia Intelligent Union Big Data Academy, . Hohhot 010010, China

6. Inner Mongolia International Mongolian Hospital , Hohhot 010065 , China

Abstract

Abstract Pancreatic cancer is a globally recognized highly aggressive malignancy, posing a significant threat to human health and characterized by pronounced heterogeneity. In recent years, researchers have uncovered that the development and progression of cancer are often attributed to the accumulation of somatic mutations within cells. However, cancer somatic mutation data exhibit characteristics such as high dimensionality and sparsity, which pose new challenges in utilizing these data effectively. In this study, we propagated the discrete somatic mutation data of pancreatic cancer through a network propagation model based on protein–protein interaction networks. This resulted in smoothed somatic mutation profile data that incorporate protein network information. Based on this smoothed mutation profile data, we obtained the activity levels of different metabolic pathways in pancreatic cancer patients. Subsequently, using the activity levels of various metabolic pathways in cancer patients, we employed a deep clustering algorithm to establish biologically and clinically relevant metabolic subtypes of pancreatic cancer. Our study holds scientific significance in classifying pancreatic cancer based on somatic mutation data and may provide a crucial theoretical basis for the diagnosis and immunotherapy of pancreatic cancer patients.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Heilongjiang Province

Cooperative Scientific Research Project of ‘Chunhui plan’ for Ministry of Education

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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