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在线使用金属氧化物半导体传感器(电子鼻)进行呼吸分析,用于肺癌诊断。

Online breath analysis using metal oxide semiconductor sensors (electronic nose) for diagnosis of lung cancer.

机构信息

St Petersburg State University, Universitetskaya nab.7/9, 199034, St Petersburg, Russia.

出版信息

J Breath Res. 2019 Oct 23;14(1):016004. doi: 10.1088/1752-7163/ab433d.

Abstract

The analysis of exhaled breath is drawing a high degree of interest in the diagnostics of various diseases, including lung cancer. Electronic nose (E-nose) technology is one of the perspective approaches in the field due to its relative simplicity and cost efficiency. The use of an E-nose together with pattern recognition algorithms allow 'breath-prints' to be discriminated. The aim of this study was to develop an efficient online E-nose-based lung cancer diagnostic method via exhaled breath analysis with the use of some statistical classification methods. A developed multisensory system consisting of six metal oxide chemoresistance gas sensors was employed in three temperature regimes. This study involved 118 individuals: 65 in the lung cancer group (cytologically verified) and 53 in the healthy control group. The exhaled breath samples of the volunteers were analysed using the developed E-nose system. The dataset obtained, consisting of the sensor responses, was pre-processed and split into training (70%) and test (30%) subsets. The training data was used to fit the classification models; the test data was used for the estimation of prediction possibility. Logistic regression was found to be an adequate data-processing approach. The performance of the developed method was promising for the screening purposes (sensitivity-95.0%, specificity-100.0%, accuracy-97.2%). This shows the applicability of the gas-sensitive sensor array for the exhaled breath diagnostics. Metal oxide sensors are highly sensitive, low-cost and stable, and their poor sensitivity can be enhanced by integrating them with machine learning algorithms, as can be seen in this study. All experiments were carried out with the permission of the N.N. Petrov Research Institute of Oncology ethics committee no. 15/83 dated March 15, 2017.

摘要

呼气分析在各种疾病的诊断中引起了高度关注,包括肺癌。电子鼻(E-nose)技术由于其相对简单和成本效益高,是该领域有前途的方法之一。使用 E-nose 与模式识别算法相结合,可以区分“呼吸特征”。本研究旨在通过使用一些统计分类方法,开发一种基于呼出气体分析的高效在线 E-nose 肺癌诊断方法。一个由六个金属氧化物化学电阻气体传感器组成的多传感器系统在三个温度范围内工作。本研究涉及 118 人:肺癌组 65 人(细胞学证实),健康对照组 53 人。志愿者的呼出气体样本使用开发的 E-nose 系统进行分析。获得的数据集由传感器响应组成,经过预处理并分为训练集(70%)和测试集(30%)。训练数据用于拟合分类模型;测试数据用于估计预测可能性。研究发现,逻辑回归是一种合适的数据处理方法。该方法的性能在筛查目的上很有前景(灵敏度为 95.0%,特异性为 100.0%,准确性为 97.2%)。这表明气体敏感传感器阵列适用于呼气诊断。金属氧化物传感器具有高灵敏度、低成本和稳定性,通过将其与机器学习算法集成,可以提高其灵敏度,正如本研究所示。所有实验均获得了 N.N.彼得罗夫肿瘤学研究所伦理委员会的许可,编号为 15/83,日期为 2017 年 3 月 15 日。

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