Zhu Rui, Gao Jie, Tian Qi, Li Mu, Xie Fei, Li Changyin, Xu Shufeng, Zhang Yungang
School of Electrical Engineering, Yanshan University, Qinhuangdao 066004, China.
Department of Pulmonary and Critical Care Medicine, The First Hospital of Qinhuangdao, Qinhuangdao, Hebei 066000, China.
Anal Chem. 2025 Feb 11;97(5):3190-3197. doi: 10.1021/acs.analchem.4c06797. Epub 2025 Jan 29.
As breath nitric oxide (NO) is a biomarker of respiratory inflammation, reliable techniques for the online detection of ppb-level NO in exhaled breath are essential for the noninvasive diagnosis of respiratory inflammation. Here, we report a breath NO sensor based on the multiperiodic spectral reconstruction neural network. First, a spectral reconstruction method that transforms a spectrum from the wavelength domain to the intensity domain is proposed to remove noise and interference signals from the spectrum. Different from the traditional spectral processing method based on the wavelength domain, the method enhances the absorption characteristics of a target gas in the intensity domain, while discretizing noise and interference signals. This facilitates the extraction of the target gas spectrum. Then, a neural network is built to detect the concentration of breath NO. Laboratory-based results show that the sensor enables online detection of NO (1.63-846.68 ppb) with mean absolute error (MAE), mean absolute percentage error (MAPE), and detection accuracy of 0.31 ppb, 0.96% and 0.63%, respectively. Furthermore, an actual exhalation experiment proved that the sensor is capable of distinguishing breath NO of healthy people from that of simulated patients, which provides a reliable way to realize exhaled breath detection based on optical methods in the medical field.
由于呼出一氧化氮(NO)是呼吸炎症的生物标志物,因此用于在线检测呼出气体中ppb级NO的可靠技术对于呼吸炎症的无创诊断至关重要。在此,我们报告一种基于多周期光谱重建神经网络的呼出NO传感器。首先,提出一种将光谱从波长域转换到强度域的光谱重建方法,以去除光谱中的噪声和干扰信号。与基于波长域的传统光谱处理方法不同,该方法在强度域增强了目标气体的吸收特性,同时将噪声和干扰信号离散化。这便于提取目标气体光谱。然后,构建神经网络来检测呼出NO的浓度。基于实验室的结果表明,该传感器能够在线检测NO(1.63 - 846.68 ppb),平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和检测准确率分别为0.31 ppb、0.96%和0.63%。此外,实际呼气实验证明该传感器能够区分健康人的呼出NO和模拟患者的呼出NO,这为在医学领域基于光学方法实现呼出气体检测提供了一种可靠途径。