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Predicting Breast Cancer by Paper Spray Ion Mobility Spectrometry Mass Spectrometry and Machine Learning

机译:通过纸张喷射离子迁移光谱法质谱和机器学习预测乳腺癌

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Paper spray ionization has been used as a fast sampling/ionization method for the direct mass spectrometric analysis of biological samples at ambient conditions. Here, we demonstrated that by utilizing paper spray ionization-mass spectrometry (PSI-MS) coupled with field asymmetric wave-form ion mobility spectrometry (FAIMS), predictive metabolic and lipidomic profiles of routine breast core needle biopsies could be obtained effectively. By the combination of machine learning algorithms and pathological examination reports, we developed a classification model, which has an overall accuracy of 87.5% for an instantaneous differentiation between cancerous and noncancerous breast tissues utilizing metabolic and lipidomic profiles. Our results suggested that paper spray ionization-ion mobility spectrometry-mass spectrometry (PSI-IMS-MS) is a powerful approach for rapid breast cancer diagnosis based on altered metabolic and lipidomic profiles.
机译:纸喷纸电离已被用作快速采样/电离法,用于在环境条件下直接质谱分析生物样品。 这里,我们证明,利用纸张喷射电离质谱(PSI-MS)与场不对称波形离子迁移率光谱法(FIAIMS)耦合,可以有效地获得常规乳房针活检的预测性代谢和脂质谱谱。 通过机器学习算法和病理检查报告的组合,我们开发了一种分类模型,其整体准确性为87.5%,用于利用代谢和脂质素谱之间的癌性和非癌症组织之间的瞬时分化。 我们的研究结果表明,纸张喷雾电离离子迁移率光谱 - 质谱(PSI-IMS-MS)是一种基于改变的代谢和脂质谱的快速乳腺癌诊断方法。

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