Department of Thoracic Surgery, Hachioji Medical Center of Tokyo Medical College Hospital, Hachioji, Tokyo, Japan.
Department of Surgery, Tokyo Medical University, Tokyo, Japan.
Cancer Sci. 2024 May;115(5):1695-1705. doi: 10.1111/cas.16112. Epub 2024 Feb 28.
Identifying novel biomarkers for early detection of lung cancer is crucial. Non-invasively available saliva is an ideal biofluid for biomarker exploration; however, the rationale underlying biomarker detection from organs distal to the oral cavity in saliva requires clarification. Therefore, we analyzed metabolomic profiles of cancer tissues compared with those of adjacent non-cancerous tissues, as well as plasma and saliva samples collected from patients with lung cancer (n = 109 pairs). Additionally, we analyzed plasma and saliva samples collected from control participants (n = 83 and 71, respectively). Capillary electrophoresis-mass spectrometry and liquid chromatography-mass spectrometry were performed to comprehensively quantify hydrophilic metabolites. Paired tissues were compared, revealing 53 significantly different metabolites. Plasma and saliva showed 44 and 40 significantly different metabolites, respectively, between patients and controls. Of these, 12 metabolites exhibited significant differences in all three comparisons and primarily belonged to the polyamine and amino acid pathways; N-acetylspermidine exhibited the highest discrimination ability. A combination of 12 salivary metabolites was evaluated using a machine learning method to differentiate patients with lung cancer from controls. Salivary data were randomly split into training and validation datasets. Areas under the receiver operating characteristic curve were 0.744 for cross-validation using training data and 0.792 for validation data. This model exhibited a higher discrimination ability for N-acetylspermidine than that for other metabolites. The probability of lung cancer calculated using this model was independent of most patient characteristics. These results suggest that consistently different salivary biomarkers in both plasma and lung tissues might facilitate non-invasive lung cancer screening.
鉴定用于肺癌早期检测的新型生物标志物至关重要。可无创获得的唾液是探索生物标志物的理想生物体液;然而,需要阐明从口腔远处的器官在唾液中检测生物标志物的基本原理。因此,我们分析了与癌组织相比,来自肺癌患者的癌组织(n=109 对)以及血浆和唾液样本中的代谢组学图谱。此外,我们还分析了来自对照参与者的血浆和唾液样本(分别为 n=83 和 71)。毛细管电泳-质谱联用和液相色谱-质谱联用技术用于全面定量亲水代谢物。比较配对组织,发现 53 种代谢物存在显著差异。血浆和唾液中分别有 44 种和 40 种代谢物在患者和对照组之间存在显著差异。其中,12 种代谢物在所有三种比较中均存在显著差异,主要属于多胺和氨基酸途径;N-乙酰亚精胺表现出最高的区分能力。使用机器学习方法评估 12 种唾液代谢物的组合,以区分肺癌患者和对照组。唾液数据随机分为训练和验证数据集。使用训练数据进行交叉验证的受试者工作特征曲线下面积为 0.744,验证数据为 0.792。该模型对 N-乙酰亚精胺的区分能力高于其他代谢物。使用该模型计算的肺癌概率独立于大多数患者特征。这些结果表明,血浆和肺部组织中一致存在不同的唾液生物标志物可能有助于非侵入性肺癌筛查。