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试点研究:在中国患者中使用电子鼻分析呼出气体检测胃癌

Pilot Study: Detection of Gastric Cancer From Exhaled Air Analyzed With an Electronic Nose in Chinese Patients.

作者信息

Schuermans Valérie N E, Li Ziyu, Jongen Audrey C H M, Wu Zhouqiao, Shi Jinyao, Ji Jiafu, Bouvy Nicole D

机构信息

1 Maastricht University Medical Centre, Maastricht, Netherlands.

2 Beijing University Cancer Hospital & Institute, Beijing, China.

出版信息

Surg Innov. 2018 Oct;25(5):429-434. doi: 10.1177/1553350618781267. Epub 2018 Jun 18.

Abstract

The aim of this pilot study is to investigate the ability of an electronic nose (e-nose) to distinguish malignant gastric histology from healthy controls in exhaled breath. In a period of 3 weeks, all preoperative gastric carcinoma (GC) patients (n = 16) in the Beijing Oncology Hospital were asked to participate in the study. The control group (n = 28) consisted of family members screened by endoscopy and healthy volunteers. The e-nose consists of 3 sensors with which volatile organic compounds in the exhaled air react. Real-time analysis takes place within the e-nose, and binary data are exported and interpreted by an artificial neuronal network. This is a self-learning computational system. The inclusion rate of the study was 100%. Baseline characteristics differed significantly only for age: the average age of the patient group was 57 years and that of the healthy control group 37 years ( P value = .000). Weight loss was the only significant different symptom ( P value = .040). A total of 16 patients and 28 controls were included; 13 proved to be true positive and 20 proved to be true negative. The receiver operating characteristic curve showed a sensitivity of 81% and a specificity of 71%, with an accuracy of 75%. These results give a positive predictive value of 62% and a negative predictive value of 87%. This pilot study shows that the e-nose has the capability of diagnosing GC based on exhaled air, with promising predictive values for a screening purpose.

摘要

这项初步研究的目的是调查电子鼻在呼出气体中区分恶性胃组织学与健康对照的能力。在3周的时间里,北京肿瘤医院所有术前胃癌(GC)患者(n = 16)被要求参与该研究。对照组(n = 28)由经内镜检查筛选的家庭成员和健康志愿者组成。电子鼻由3个传感器组成,呼出空气中的挥发性有机化合物会与这些传感器发生反应。电子鼻内部进行实时分析,二进制数据由人工神经网络导出并解释。这是一个自学习计算系统。该研究的纳入率为100%。仅年龄方面基线特征存在显著差异:患者组的平均年龄为57岁,健康对照组为37岁(P值 = .000)。体重减轻是唯一显著不同的症状(P值 = .040)。总共纳入了16例患者和28例对照;13例被证明为真阳性,20例被证明为真阴性。受试者工作特征曲线显示敏感性为81%,特异性为

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77fd/6166235/e2d37bd5f840/10.1177_1553350618781267-fig1.jpg

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