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基于呼出气中标志物分析的恶性肿瘤无创诊断

Non-Invasive Diagnosis of Malignancies Based on the Analysis of Markers in Exhaled Air.

作者信息

Chernov Vladimir I, Choynzonov Evgeniy L, Kulbakin Denis E, Menkova Ekaterina N, Obkhodskaya Elena V, Obkhodskiy Artem V, Popov Aleksandr S, Rodionov Evgeniy O, Sachkov Victor I, Sachkova Anna S

机构信息

Tomsk National Research Medical Center of the Russian Academy of Sciences, Cancer Research Institute, 5 Kooperativny Street, 634009 Tomsk, Russia.

Laboratory of Chemical Technologies, National Research Tomsk State University, 36 Lenin Avenue, 634050 Tomsk, Russia.

出版信息

Diagnostics (Basel). 2020 Nov 11;10(11):934. doi: 10.3390/diagnostics10110934.

Abstract

Novel non-invasive methods for the diagnosis of malignancies should be effective for early diagnosis, reproducible, inexpensive, and independent from the human factor. Our aim was to establish the applicability of the non-invasive method, based on the analysis of air exhaled by patients who are at different stages of oropharyngeal, larynx and lung cancer. The diagnostic device includes semiconductor sensors capable of measuring the concentrations of gas components in exhaled air, with the high sensitivity of 1 ppm. The neural network uses signals from these sensors to perform classification and identify cancer patients. Prior to the diagnostic procedure of the non-invasive method, we clarified the extent and stage of the tumor according to current international standards and recommendations for the diagnosis of malignancies. The statistical dataset for neural network training and method validation included samples from 121 patients with the most common tumor localizations (lungs, oropharyngeal region and larynx). The largest number of cases (21 patients) were lung cancer, while the number of patients with oropharyngeal or laryngeal cancer varied from 1 to 9, depending on tumor localization (oropharyngeal, tongue, oral cavity, larynx and mucosa of the lower jaw). In the case of lung cancer, the parameters of the diagnostic device are determined as follows: sensitivity-95.24%, specificity-76.19%. For oropharyngeal cancer and laryngeal cancer, these parameters were 67.74% and 87.1%, respectively. This non-invasive method could lead to relevant medicinal findings and provide an opportunity for clinical utility and patient benefit upon early diagnosis of malignancies.

摘要

用于诊断恶性肿瘤的新型非侵入性方法应具备早期诊断有效、可重复、成本低且不受人为因素影响的特点。我们的目标是基于对处于口咽癌、喉癌和肺癌不同阶段患者呼出气体的分析,确定这种非侵入性方法的适用性。该诊断设备包括能够测量呼出气体中气体成分浓度的半导体传感器,灵敏度高达1 ppm。神经网络利用这些传感器的信号进行分类并识别癌症患者。在进行这种非侵入性方法的诊断程序之前,我们根据当前国际上关于恶性肿瘤诊断的标准和建议,明确了肿瘤的范围和阶段。用于神经网络训练和方法验证的统计数据集包括来自121例最常见肿瘤部位(肺部、口咽区域和喉部)患者的样本。病例数最多的是肺癌(21例),而口咽癌或喉癌患者的数量根据肿瘤部位(口咽、舌、口腔、喉和下颌黏膜)从1例到9例不等。对于肺癌,诊断设备的参数确定如下:灵敏度为95.24%,特异性为76.19%。对于口咽癌和喉癌,这些参数分别为67.74%和87.1%。这种非侵入性方法可能会带来相关医学发现,并为早期诊断恶性肿瘤时的临床应用和患者受益提供机会。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/646f/7696783/aaaac7d38d94/diagnostics-10-00934-g001.jpg

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