利用高效血清脂质体指纹图谱诊断和预测胃癌预后

IF 9 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Ze-Rong Cai, Wen Wang, Di Chen, Hao-Jie Chen, Yan Hu, Xiao-Jing Luo, Yi-Ting Wang, Yi-Qian Pan, Hai-Yu Mo, Shu-Yu Luo, Kun Liao, Zhao-Lei Zeng, Shan-Shan Li, Xin-Yuan Guan, Xin-Juan Fan, Hai-Long Piao, Rui-Hua Xu, Huai-Qiang Ju
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引用次数: 0

摘要

要改善胃癌(GC)的预后,必须进行早期检测,但这仍是一项挑战。液体活检与机器学习相结合,将为胃癌诊断策略提供新的见解。脂质代谢重编程在肿瘤的发生和发展过程中起着至关重要的作用。在这里,我们整合了三个队列(n = 944)的脂质组学数据,建立了 GC 的脂质代谢图谱。我们通过机器学习进一步构建了血清脂质代谢特征(SLMS),该特征在区分 GC 患者和健康供体方面表现出色。值得注意的是,SLMS 在早期 GC 的诊断中也具有很高的效力。此外,通过对 GC 患者的脂质代谢矩阵进行无监督共识聚类分析,我们得出了总体生存期显著不同的胃癌预后亚型(GCPSs)。此外,多组学分析表明,胃癌组织中的脂质代谢紊乱与胃癌血清中的脂质代谢紊乱部分一致。总之,这项研究揭示了一种基于血清脂质代谢指纹的液体活检诊断 GC 的创新策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis and prognosis prediction of gastric cancer by high-performance serum lipidome fingerprints.

Early detection is warranted to improve prognosis of gastric cancer (GC) but remains challenging. Liquid biopsy combined with machine learning will provide new insights into diagnostic strategies of GC. Lipid metabolism reprogramming plays a crucial role in the initiation and development of tumors. Here, we integrated the lipidomics data of three cohorts (n = 944) to develop the lipid metabolic landscape of GC. We further constructed the serum lipid metabolic signature (SLMS) by machine learning, which showed great performance in distinguishing GC patients from healthy donors. Notably, the SLMS also held high efficacy in the diagnosis of early-stage GC. Besides, by performing unsupervised consensus clustering analysis on the lipid metabolic matrix of patients with GC, we generated the gastric cancer prognostic subtypes (GCPSs) with significantly different overall survival. Furthermore, the lipid metabolic disturbance in GC tissues was demonstrated by multi-omics analysis, which showed partially consistent with that in GC serums. Collectively, this study revealed an innovative strategy of liquid biopsy for the diagnosis of GC on the basis of the serum lipid metabolic fingerprints.

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来源期刊
EMBO Molecular Medicine
EMBO Molecular Medicine 医学-医学:研究与实验
CiteScore
17.70
自引率
0.90%
发文量
105
审稿时长
4-8 weeks
期刊介绍: EMBO Molecular Medicine is an open access journal in the field of experimental medicine, dedicated to science at the interface between clinical research and basic life sciences. In addition to human data, we welcome original studies performed in cells and/or animals provided they demonstrate human disease relevance. To enhance and better specify our commitment to precision medicine, we have expanded the scope of EMM and call for contributions in the following fields: Environmental health and medicine, in particular studies in the field of environmental medicine in its functional and mechanistic aspects (exposome studies, toxicology, biomarkers, modeling, and intervention). Clinical studies and case reports - Human clinical studies providing decisive clues how to control a given disease (epidemiological, pathophysiological, therapeutic, and vaccine studies). Case reports supporting hypothesis-driven research on the disease. Biomedical technologies - Studies that present innovative materials, tools, devices, and technologies with direct translational potential and applicability (imaging technologies, drug delivery systems, tissue engineering, and AI)
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