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A preliminary study on in-vitro lung cancer detection using E-nose technology

机译:E-鼻技术体外检测肺癌的初步研究

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The existing clinical diagnostics for lung cancer are mostly based on physics, biochemical and imaging techniques. The use of electronic nose (E-nose) system to detect volatile organic compounds (VOCs) in lung cancer cells or exhaled air breath of a patient is expected to be able to classify different volatile components leading to the diagnosis of lung cancer at an early stage. In this preliminary study, a commercialized E-nose consists of an array of 32 conducting polymer sensors (Cyranose 320) was used to detect and discriminate the VOCs emitted from cancer cells which is A549 (lung cancer cell line) between MCF7 (breast cancer cell line). Blank medium was used to obtain controlled value. The VOC profiles of each sample were characterized using a classification algorithm called k-Nearest Neighbors (KNN) to test and benchmark the performance of Enose in identifying VOCs of lung cancer from different cancer cell lines. The E-nose with KNN classifier was able to classify the VOCs of lung cancer cell with over 90% successful accuracy in 30 seconds. This study can conclude that e-nose is capable to rapidly discriminate volatile organic compounds of cancerous cells which generated during cell growth.
机译:现有的肺癌临床诊断方法主要基于物理,生化和成像技术。使用电子鼻(E-nose)系统检测肺癌细胞或患者呼出气中的挥发性有机化合物(VOC)有望对不同的挥发性成分进行分类,从而在早期诊断出肺癌阶段。在这项初步研究中,商品化的E型鼻子由32个导电聚合物传感器(Cyranose 320)阵列组成,用于检测和区分从MCF7(乳腺癌细胞)中的A549(肺癌细胞系)癌细胞释放的VOC。线)。空白培养基用于获得控制值。使用称为k-最近邻居(KNN)的分类算法对每个样品的VOC特性进行表征,以测试和基准化Enose从不同癌细胞系中鉴定肺癌VOC的性能。带有KNN分类器的E-nose能够在30秒内以90%以上的成功准确度对肺癌细胞的VOC进行分类。这项研究可以得出结论,电子鼻能够快速区分癌细胞生长过程中产生的挥发性有机化合物。

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