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Recognizing lung cancer using a homemade e-nose: A comprehensive study

机译:使用自制电子鼻子识别肺癌:综合研究

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In recent years, breath analysis has been used as a tool for lung cancer detection and many gas sensors were developed for this purpose. Although they are fabricated with advanced materials, for now, gas sensors are still limited in their medical application due to their unfavorable performance. Here, we hypothesized that a combination of diverse types of sensors could aid in improving the detection performance. We fabricated an e-nose based on 10 gas sensors of 4 types and directly tested it using samples from 153 healthy participants and 115 lung cancer patients, without gas pre-concentration. Additionally, we studied and compared five feature extraction algorithms. The extracted features were then used in 2 optimized clustering algorithms and 3 supervised classification strategies, and their performance was investigated. As a result, "breath-prints" for all subjects were successfully obtained. The combined features extracted by LDA and Fast ICA formed the best feature space. Within this feature space, both clustering algorithms grouped all "breath-prints" into exactly 2 clusters with an Adjusted Rand Index greater than 0.95. Among the 3 supervised classification strategies, random forest with 3-fold cross validation showed the best performance with 86.42% of mean classification accuracy and 0.87 of AUC, which was somewhat better than many recently reported sensor arrays. It can be concluded that, the diversity of sensors may play a role in improving the performance of the e-nose though to what extent still requires evaluation.
机译:近年来,呼气分析已被用作肺癌检测的工具,并且为此目的开发了许多气体传感器。虽然它们是用先进材料制造的,但是,由于其不利的性能,气体传感器仍然受到其医疗应用的限制。在这里,我们假设不同类型的传感器的组合可以有助于提高检测性能。我们基于10种气体传感器的4种型气体传感器制作了E-鼻子,并使用153名健康参与者和115名肺癌患者的样品直接测试,没有气体预浓度。此外,我们研究并比较了五个特征提取算法。然后在2个优化的聚类算法中使用提取的特征,并进行了3个监督分类策略,并调查了其表现。结果,成功获得了所有受试者的“呼吸印刷”。 LDA提取和快速ICA提取的组合特征形成了最佳的特征空间。在此特征空间中,两个聚类算法都将所有“呼吸打印”分组为完全2个群集,调整后的RAND指数大于0.95。在3个监督分类策略中,随机森林具有3倍的交叉验证,表现出最佳性能,占均匀分类准确度的86.42%,而且AUC的0.87,这比最近报告的传感器阵列有点好。可以得出结论,传感器的多样性可能在提高电子鼻的性能方面发挥作用,但在仍然需要评估的程度上。

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