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Diagnosis by Volatile Organic Compounds in Exhaled Breath from Lung Cancer Patients Using Support Vector Machine Algorithm

机译:支持向量机算法诊断肺癌患者呼出气中的挥发性有机物

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Monitoring exhaled breath is a very attractive, noninvasive screening technique for early diagnosis of diseases, especially lung cancer. However, the technique provides insufficient accuracy because the exhaled air has many crucial volatile organic compounds (VOCs) at very low concentrations (ppb level). We analyzed the breath exhaled by lung cancer patients and healthy subjects (controls) using gas chromatography/mass spectrometry (GC/MS), and performed a subsequent statistical analysis to diagnose lung cancer based on the combination of multiple lung cancer-related VOCs. We detected 68 VOCs as marker species using GC/MS analysis. We reduced the number of VOCs and used support vector machine (SVM) algorithm to classify the samples. We observed that a combination of five VOCs (CHN, methanol, CH 3 CN, isoprene, 1-propanol) is sufficient for 89.0% screening accuracy, and hence, it can be used for the design and development of a desktop GC-sensor analysis system for lung cancer.
机译:监测呼气是一种非常有吸引力的,无创的筛查技术,可用于早期诊断疾病,尤其是肺癌。但是,该技术的准确性不足,因为呼出的空气中有许多非常低的浓度(ppb级)的关键挥发性有机化合物(VOC)。我们使用气相色谱/质谱(GC / MS)分析了肺癌患者和健康受试者(对照组)呼出的呼吸,并基于多种与肺癌相关的VOC的组合进行了随后的统计分析,以诊断肺癌。我们使用GC / MS分析检测到68种VOC作为标记物。我们减少了VOC的数量,并使用支持向量机(SVM)算法对样本进行分类。我们观察到,五种VOC(CHN,甲醇,CH 3 CN,异戊二烯,1-丙醇)的组合足以达到89.0%的筛查精度,因此可用于桌面GC传感器分析的设计和开发。肺癌系统。

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