{"title":"Integration of clinical phenoms and metabolomics facilitates precision medicine for lung cancer","authors":"Furong Yan, Chanjuan Liu, Dongli Song, Yiming Zeng, Yanxia Zhan, Xibing Zhuang, Tiankui Qiao, Duojiao Wu, Yunfeng Cheng, Hao Chen","doi":"10.1007/s10565-024-09861-w","DOIUrl":null,"url":null,"abstract":"<p>Lung cancer is a common malignancy that is frequently associated with systemic metabolic disorders. Early detection is pivotal to survival improvement. Although blood biomarkers have been used in its early diagnosis, missed diagnosis and misdiagnosis still exist due to the heterogeneity of lung cancer. Integration of multiple biomarkers or trans-omics results can improve the accuracy and reliability for lung cancer diagnosis. As metabolic reprogramming is a hallmark of lung cancer, metabolites, specifically lipids might be useful for lung cancer detection, yet systematic characterizations of metabolites in lung cancer are still incipient. The present study profiled the polar metabolome and lipidome in the plasma of lung cancer patients to construct an inclusive metabolomic atlas of lung cancer. A comprehensive analysis of lung cancer was also conducted combining metabolomics with clinical phenotypes. Furthermore, the differences in plasma lipid metabolites were compared and analyzed among different lung cancer subtypes. Alcohols, amides, and peptide metabolites were significantly increased in lung cancer, while carboxylic acids, hydrocarbons, and fatty acids were remarkably decreased. Lipid profiling revealed a significant increase in plasma levels of CER, PE, SM, and TAG in individuals with lung cancer as compared to those in healthy controls. Correlation analysis confirmed the association between a panel of metabolites and TAGs. Clinical trans-omics studies elucidated the complex correlations between lipidomic data and clinical phenotypes. The present study emphasized the clinical importance of lipidomics in lung cancer, which involves the correlation between metabolites and the expressions of other omics, ultimately influencing clinical phenotypes. This novel trans-omics network approach would facilitate the development of precision therapy for lung cancer.</p><h3 data-test=\"abstract-sub-heading\">Graphical Abstract</h3><p>1. Integrating multiple biomarkers or trans-omics results improves diagnostic accuracy and reliability in heterogeneous lung cancer.</p><p>2. Metabolomics and lipidomics, along with clinical phenotypes, construct a comprehensive metabolic profile of lung cancer patients.</p><p>3. TAG expression shows strong positive correlation with polar metabolites, potentially impacting clinical phenotypic changes in lung cancer patients.</p>\n","PeriodicalId":9672,"journal":{"name":"Cell Biology and Toxicology","volume":"4 1","pages":""},"PeriodicalIF":5.3000,"publicationDate":"2024-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Cell Biology and Toxicology","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1007/s10565-024-09861-w","RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"CELL BIOLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
Lung cancer is a common malignancy that is frequently associated with systemic metabolic disorders. Early detection is pivotal to survival improvement. Although blood biomarkers have been used in its early diagnosis, missed diagnosis and misdiagnosis still exist due to the heterogeneity of lung cancer. Integration of multiple biomarkers or trans-omics results can improve the accuracy and reliability for lung cancer diagnosis. As metabolic reprogramming is a hallmark of lung cancer, metabolites, specifically lipids might be useful for lung cancer detection, yet systematic characterizations of metabolites in lung cancer are still incipient. The present study profiled the polar metabolome and lipidome in the plasma of lung cancer patients to construct an inclusive metabolomic atlas of lung cancer. A comprehensive analysis of lung cancer was also conducted combining metabolomics with clinical phenotypes. Furthermore, the differences in plasma lipid metabolites were compared and analyzed among different lung cancer subtypes. Alcohols, amides, and peptide metabolites were significantly increased in lung cancer, while carboxylic acids, hydrocarbons, and fatty acids were remarkably decreased. Lipid profiling revealed a significant increase in plasma levels of CER, PE, SM, and TAG in individuals with lung cancer as compared to those in healthy controls. Correlation analysis confirmed the association between a panel of metabolites and TAGs. Clinical trans-omics studies elucidated the complex correlations between lipidomic data and clinical phenotypes. The present study emphasized the clinical importance of lipidomics in lung cancer, which involves the correlation between metabolites and the expressions of other omics, ultimately influencing clinical phenotypes. This novel trans-omics network approach would facilitate the development of precision therapy for lung cancer.
Graphical Abstract
1. Integrating multiple biomarkers or trans-omics results improves diagnostic accuracy and reliability in heterogeneous lung cancer.
2. Metabolomics and lipidomics, along with clinical phenotypes, construct a comprehensive metabolic profile of lung cancer patients.
3. TAG expression shows strong positive correlation with polar metabolites, potentially impacting clinical phenotypic changes in lung cancer patients.
肺癌是一种常见的恶性肿瘤,常伴有全身性代谢紊乱。早期发现是提高生存率的关键。虽然血液生物标志物已被用于肺癌的早期诊断,但由于肺癌的异质性,漏诊和误诊仍然存在。整合多种生物标志物或跨组学结果可以提高肺癌诊断的准确性和可靠性。由于代谢重编程是肺癌的特征之一,代谢物,特别是脂质可能有助于肺癌的检测,但对肺癌代谢物的系统表征仍处于起步阶段。本研究对肺癌患者血浆中的极性代谢组和脂质组进行了分析,以构建一个全面的肺癌代谢组图谱。研究还结合代谢组学和临床表型对肺癌进行了全面分析。此外,还比较和分析了不同肺癌亚型之间血浆脂质代谢物的差异。肺癌患者的醇类、酰胺类和肽类代谢物明显增加,而羧酸、碳氢化合物和脂肪酸则明显减少。脂质分析表明,与健康对照组相比,肺癌患者血浆中的CER、PE、SM和TAG水平明显升高。相关分析证实了一组代谢物与 TAG 之间的关联。临床跨组学研究阐明了脂质体数据与临床表型之间复杂的相关性。本研究强调了脂质组学在肺癌中的临床重要性,它涉及代谢物与其他组学表达之间的相关性,并最终影响临床表型。这种新颖的跨组学网络方法将促进肺癌精准治疗的发展。2.代谢组学和脂质组学与临床表型共同构建了肺癌患者的综合代谢谱。 3.TAG表达与极性代谢物呈强正相关,可能影响肺癌患者的临床表型变化。
期刊介绍:
Cell Biology and Toxicology (CBT) is an international journal focused on clinical and translational research with an emphasis on molecular and cell biology, genetic and epigenetic heterogeneity, drug discovery and development, and molecular pharmacology and toxicology. CBT has a disease-specific scope prioritizing publications on gene and protein-based regulation, intracellular signaling pathway dysfunction, cell type-specific function, and systems in biomedicine in drug discovery and development. CBT publishes original articles with outstanding, innovative and significant findings, important reviews on recent research advances and issues of high current interest, opinion articles of leading edge science, and rapid communication or reports, on molecular mechanisms and therapies in diseases.