Department of Epidemiology and Health Statistics, School of Public Health, Fujian Medical University, Fuzhou, China.
Department of Occupational and Environmental Health Sciences, School of Public Health, Peking University, Beijing, China.
Int J Cancer. 2024 Jul 1;155(1):27-39. doi: 10.1002/ijc.34884. Epub 2024 Mar 2.
Information about the NMR metabolomics landscape of overall, and common cancers is still limited. Based on a cohort of 83,290 participants from the UK Biobank, we used multivariate Cox regression to assess the associations between each of the 168 metabolites with the risks of overall cancer and 20 specific types of cancer. Then, we applied LASSO to identify important metabolites for overall cancer risk and obtained their associations using multivariate cox regression. We further conducted mediation analysis to evaluate the mediated role of metabolites in the effects of traditional factors on overall cancer risk. Finally, we included the 13 identified metabolites as predictors in prediction models, and compared the accuracies of our traditional models. We found that there were commonalities among the metabolic profiles of overall and specific types of cancer: the top 20 frequently identified metabolites for 20 specific types of cancer were all associated with overall cancer; most of the specific types of cancer had common identified metabolites. Meanwhile, the associations between the same metabolite with different types of cancer can vary based on the site of origin. We identified 13 metabolic biomarkers associated with overall cancer, and found that they mediated the effects of traditional factors. The accuracies of prediction models improved when we added 13 identified metabolites in models. This study is helpful to understand the metabolic mechanisms of overall and a wide range of cancers, and our results also indicate that NMR metabolites are potential biomarkers in cancer diagnosis and prevention.
关于整体和常见癌症的 NMR 代谢组学图谱的信息仍然有限。基于英国生物库 83290 名参与者的队列,我们使用多变量 Cox 回归来评估 168 种代谢物中的每一种与整体癌症风险和 20 种特定类型癌症风险之间的关联。然后,我们应用 LASSO 来识别整体癌症风险的重要代谢物,并使用多变量 Cox 回归来获得它们的关联。我们进一步进行中介分析,以评估代谢物在传统因素对整体癌症风险的影响中的中介作用。最后,我们将 13 种鉴定出的代谢物作为预测因子纳入预测模型,并比较了我们传统模型的准确性。我们发现整体和特定类型癌症的代谢谱之间存在共性:20 种特定类型癌症的前 20 种常见鉴定代谢物均与整体癌症相关;大多数特定类型癌症都有共同鉴定的代谢物。同时,相同代谢物与不同类型癌症之间的关联可能因起源部位而异。我们确定了 13 个与整体癌症相关的代谢生物标志物,并发现它们介导了传统因素的作用。当我们在模型中添加 13 种鉴定出的代谢物时,预测模型的准确性提高了。这项研究有助于了解整体和广泛癌症的代谢机制,我们的结果还表明 NMR 代谢物是癌症诊断和预防的潜在生物标志物。