Xu Xinping, Zeng Chunyan, Qing Bei, He Yun, Song Guodong, Wang Jiaojiao, Yu Shuqi, Zhang Tao, Wei Qingyan, Liu Li, Wen He, Hu Junyuan, Zhang Wei, Li Yan, Chen Youxiang, Xia Zhenkun
Jiangxi Institute of Respiratory Disease, The First Affiliated Hospital of Nanchang University, Nanchang, China.
The First Affiliated Hospital of Nanchang University, Nanchang, China.
Front Immunol. 2024 Dec 13;15:1449103. doi: 10.3389/fimmu.2024.1449103. eCollection 2024.
Cancer remains a leading cause of mortality worldwide. A non-invasive screening solution was required for early diagnosis of cancer. Multi-cancer early detection (MCED) tests have been considered to address the challenge by simultaneously identifying multiple types of cancer within a single test using minimally invasive blood samples. However, a multi-cancer screening strategy utilizing urine-based metabolomics has not yet been developed.
We enrolled 911 cancer patients with 548 lung cancer (LC), 177 with gastric cancer (GC), and 186 with colorectal cancer (CRC), alongside 563 individuals with non-cancerous benign diseases and 229 healthy controls (HC) and investigated the metabolic profiles of urine samples. Participants were randomly allocated to discovery and validation cohorts. The discovery cohort was used for identifying multi-cancer and tissue-specific signatures to build the cancer screening and tumor origin prediction models, while the validation cohort was employed for assessing the performance of these models.
We identified and annotated a total of 360 metabolites from the urine samples. Using the LASSO regression algorithm, 18 metabolites were characterized as urinary metabolic biomarkers and exhibited excellent discriminative performance between cancer patients and HC with AUC of 0.96 in the validation cohort. In comparison with the performance of traditional tumor markers CEA, the screening model performed higher sensitivity across the cancer stages, with a particularly increase in sensitivity among early-stage cancer patients. Moreover, the screening model also exhibited in high classification of cancers from non-cancerous group, comprising with HC and benign disease participants. Furthermore, two non-overlapping metabolic panels were selected to differentiate LC from Non-LC and GC from CRC with the AUC values of 0.87 and 0.83 in validation cohorts, respectively. Additionally, the model accurately predicted the origin of three lethal cancers: lung, gastric, and colorectal, with an overall accuracy of 0.75. The AUC values for LC, GC, and CRC were 0.88, 0.88, and 0.80, respectively.
Our study demonstrates the potential of urine-based metabolomics for multi-cancer early detection. The approach offers non-invasive cancer screening, promising widespread implementation in population-based programs for early detection and improved outcomes. Further validation and expansion are needed for broader clinical applicability.
癌症仍然是全球主要的死亡原因。需要一种非侵入性的筛查解决方案用于癌症的早期诊断。多癌早期检测(MCED)测试被认为可以通过使用微创血液样本在一次检测中同时识别多种类型的癌症来应对这一挑战。然而,尚未开发出利用基于尿液的代谢组学的多癌筛查策略。
我们招募了911名癌症患者,其中548例为肺癌(LC)、177例为胃癌(GC)、186例为结直肠癌(CRC),以及563例患有非癌性良性疾病的个体和229名健康对照(HC),并研究了尿液样本的代谢谱。参与者被随机分配到发现队列和验证队列。发现队列用于识别多癌和组织特异性特征,以建立癌症筛查和肿瘤起源预测模型,而验证队列则用于评估这些模型的性能。
我们从尿液样本中总共鉴定并注释了360种代谢物。使用LASSO回归算法,18种代谢物被表征为尿液代谢生物标志物,在验证队列中,癌症患者和HC之间表现出优异的判别性能,AUC为0.96。与传统肿瘤标志物CEA的性能相比,筛查模型在各个癌症阶段均表现出更高的敏感性,尤其是在早期癌症患者中敏感性有所提高。此外,筛查模型在区分癌症组与非癌症组(包括HC和良性疾病参与者)方面也表现出较高的分类能力。此外,选择了两个不重叠的代谢组分别区分LC与非LC以及GC与CRC,在验证队列中的AUC值分别为0.87和0.83。此外,该模型准确预测了三种致命癌症(肺癌、胃癌和结直肠癌)的起源,总体准确率为0.75。LC、GC和CRC的AUC值分别为0.88、0.88和0.80。
我们的研究证明了基于尿液的代谢组学在多癌早期检测中的潜力。该方法提供了非侵入性癌症筛查,有望在基于人群的早期检测和改善预后的项目中广泛应用。需要进一步验证和扩展以实现更广泛的临床适用性。