混合学习法更好地对呼出气体的红外光谱进行分类:针对社会重大疾病的无创光学诊断。

Igor Semenovich Golyak, Dmitriy Romanovich Anfimov, Pavel Pavlovich Demkin, Pavel Vyacheslavovich Berezhanskiy, Olga Aleksandrovna Nebritova, Andrey Nikolaevich Morozov, Igor Leonidovich Fufurin
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引用次数: 0

摘要

早期诊断对于有效治疗 1 型糖尿病(T1DM)、肺炎和哮喘等具有重大社会影响的疾病至关重要。本研究采用了一种基于人体呼出气体红外激光光谱的诊断方法。实验装置由一个量子级联激光器和一个特定光路长度为 76 米的赫里奥特多通道气体池组成,量子级联激光器以脉冲模式发射,在 5.3-12.8 μm(780-1890 cm-1)光谱范围内的峰值功率可达 150 mW。利用这一装置,获得了 165 名志愿者呼出气体在中红外范围内的光谱,其中包括健康人、T1DM 患者、哮喘患者和肺炎患者。研究提出了一种对这些光谱进行分类的混合方法,利用变异自动编码器进行降维,并利用支持向量机方法进行分类。结果表明,所提出的混合方法优于其他机器学习方法组合。
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A hybrid learning approach to better classify exhaled breath's infrared spectra: A noninvasive optical diagnosis for socially significant diseases.

Early diagnosis is crucial for effective treatment of socially significant diseases, such as type 1 diabetes mellitus (T1DM), pneumonia, and asthma. This study employs a diagnostic method based on infrared laser spectroscopy of human exhaled breath. The experimental setup comprises a quantum cascade laser, which emits in a pulsed mode with a peak power of up to 150 mW in the spectral range of 5.3-12.8 μm (780-1890 cm-1), and a Herriott multipass gas cell with a specific optical path length of 76 m. Using this setup, spectra of exhaled breath in the mid-infrared range were obtained from 165 volunteers, including healthy individuals, patients with T1DM, asthma, and pneumonia. The study proposes a hybrid approach for classifying these spectra, utilizing a variational autoencoder for dimensionality reduction and a support vector machine method for classification. The results demonstrate that the proposed hybrid approach outperforms other machine learning method combinations.

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