Department of Chemistry, Faculty of Philosophy, Sciences and Letters of Ribeirão Preto, University of São Paulo, Ribeirão Preto, CEP 14040-901, Brazil.
J Breath Res. 2020 Feb 25;14(2):026009. doi: 10.1088/1752-7163/ab5b3c.
Volatile organic compounds (VOCs) have been studied in biological samples in order to be related to the presence of diseases. Sweat can represent substances existing in blood, has less complex composition (compared with other biological matrices) and can be obtained in a non-invasive way. In this work, sweat patches were collected from healthy controls and volunteers with cancer. Static Headspace was used for VOCs extraction, analysis was performed by gas chromatography coupled with mass spectrometry. Principal Components Analysis was used to investigate data distribution. Random Forest was employed to develop classificatory models. Controls and positive cases could be distinguished with maximum sensitivity and specificity (100% of accuracy) in a model based on the incidence of 2-ethyl-1-hexanol, hexanal and octanal. Discrimination between controls, primary tumors and metastasis was achieved using a panel with 11 VOCs. Balanced accuracy of more than 70% was obtained for the classification of a neoplasm site. Total n-aldehydes presented to be strongly correlated with staging of adenocarcinomas, while phenol and 2,6-dimethyl-7-octen-2-ol were correlated with Gleason score. These findings corroborate with the development of accessible screening tools based on VOC analysis and highlight sweat as a promising matrix to be studied in a clinical context for cancer diagnosis.
挥发性有机化合物 (VOCs) 已在生物样本中进行研究,以便与疾病的存在相关联。汗液可以代表存在于血液中的物质,其组成较为简单(与其他生物基质相比),并且可以通过非侵入性的方式获得。在这项工作中,从健康对照者和癌症志愿者身上采集了汗液贴片。采用静态顶空法提取 VOCs,通过气相色谱-质谱联用进行分析。主成分分析用于研究数据分布。随机森林用于开发分类模型。在基于 2-乙基-1-己醇、己醛和辛醛的发生率的模型中,对照者和阳性病例可以达到最大的灵敏度和特异性(100%的准确率)。使用包含 11 种 VOCs 的面板可以区分对照者、原发性肿瘤和转移灶。对于肿瘤部位的分类,平衡准确率超过 70%。总醛类物质与腺癌的分期呈强相关,而苯酚和 2,6-二甲基-7-辛烯-2-醇与 Gleason 评分呈相关。这些发现证实了基于 VOC 分析开发易于使用的筛查工具的发展,并强调了汗液作为一种有前途的基质,可在临床环境中用于癌症诊断进行研究。