Metabolic detection and systems analyses of pancreatic ductal adenocarcinoma through machine learning, lipidomics, and multi-omics

通过机器学习、脂质组学和多组学对胰腺导管腺癌进行代谢检测和系统分析

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作者:Guangxi Wang, Hantao Yao, Yan Gong, Zipeng Lu, Ruifang Pang, Yang Li, Yuyao Yuan, Huajie Song, Jia Liu, Yan Jin, Yongsu Ma, Yinmo Yang, Honggang Nie, Guangze Zhang, Zhu Meng, Zhe Zhou, Xuyang Zhao, Mantang Qiu, Zhicheng Zhao, Kuirong Jiang, Qiang Zeng, Limei Guo, Yuxin Yin

Abstract

Pancreatic ductal adenocarcinoma (PDAC) is one of the most lethal cancers, characterized by rapid progression, metastasis, and difficulty in diagnosis. However, there are no effective liquid-based testing methods available for PDAC detection. Here we introduce a minimally invasive approach that uses machine learning (ML) and lipidomics to detect PDAC. Through greedy algorithm and mass spectrum feature selection, we optimized 17 characteristic metabolites as detection features and developed a liquid chromatography-mass spectrometry-based targeted assay. In this study, 1033 patients with PDAC at various stages were examined. This approach has achieved 86.74% accuracy with an area under curve (AUC) of 0.9351 in the large external validation cohort and 85.00% accuracy with 0.9389 AUC in the prospective clinical cohort. Accordingly, single-cell sequencing, proteomics, and mass spectrometry imaging were applied and revealed notable alterations of selected lipids in PDAC tissues. We propose that the ML-aided lipidomics approach be used for early detection of PDAC.

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