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Secondary electrospray ionization-mass spectrometry and a novel statistical bioinformatic approach identifies a cancer-related profile in exhaled breath of breast cancer patients: a pilot study

机译:二次电喷雾电离质谱法和新型统计生物信息学方法可确定乳腺癌患者呼气中与癌症相关的特征:一项先导研究

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摘要

Breath analysis represents a new frontier in medical diagnosis and a powerful tool for cancer biomarker discovery due to the recent development of analytical platforms for the detection and identification of human exhaled volatile compounds. Statistical and bioinformatic tools may represent an effective complement to the technical and instrumental enhancements needed to fully exploit clinical applications of breath analysis. Our exploratory study in a cohort of 14 breast cancer patients and 11 healthy volunteers used secondary electrospray ionization-mass spectrometry (SESI-MS) to detect a cancer-related volatile profile. SESI-MS full-scan spectra were acquired in a range of 40-350 mass-to-charge ratio (m/z), converted to matrix data and analyzed using a procedure integrating data pre-processing for quality control, and a two-step class prediction based on machine-learning techniques, including a robust feature selection, and a classifier development with internal validation. MS spectra from exhaled breath showed an individual-specific breath profile and high reciprocal homogeneity among samples, with strong agreement among technical replicates, suggesting a robust responsiveness of SESI-MS. Supervised analysis of breath data identified a support vector machine (SVM) model including 8 features corresponding to m/z 106, 126, 147, 78, 148, 52, 128, 315 and able to discriminate exhaled breath from breast cancer patients from that of healthy individuals, with sensitivity and specificity above 0.9.
机译:呼吸分析代表了医学诊断的一个新领域,也是癌症生物标志物发现的有力工具,这是由于最近开发了用于检测和鉴定人呼出的挥发性化合物的分析平台。统计和生物信息学工具可能是对充分利用呼吸分析的临床应用所需的技术和仪器增强的有效补充。我们在一项针对14名乳腺癌患者和11名健康志愿者的队列研究中,使用二次电喷雾电离质谱(SESI-MS)来检测与癌症相关的挥发物。在40-350的质荷比(m / z)范围内获取SESI-MS全扫描光谱,将其转换为基质数据,并使用集成了数据预处理以进行质量控制的程序进行了分析,基于机器学习技术的步骤类预测,包括强大的功能选择和带有内部验证的分类器开发。呼出气的质谱图显示出个体特异性的呼吸曲线和样品之间的高度均一性,技术重复之间的一致性强,表明SESI-MS的响应性强。呼吸数据的监督分析确定了一个支持向量机(SVM)模型,该模型包括对应于m / z 106、126、147、78、148、52、128、315的8个特征,并且能够将乳腺癌患者的呼出气与健康个体,敏感性和特异性均高于0.9。

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