Konnikova Maria R, Cherkasova Olga P, Nazarov Maxim M, Vrazhnov Denis A, Kistenev Yuri V, Titov Sergei E, Kopeikina Elena V, Shevchenko Sergei P, Shkurinov Alexander P
Institute for Problems of Laser and Information Technologies of the Russian Academy of Sciences, Branch of Federal Scientific Research Center, "Crystallography and Photonics" of the RAS, Shatura 140700, Russia.
Faculty of Physics, Lomonosov Moscow State University, 119991, Moscow, Russia.
Biomed Opt Express. 2021 Jan 26;12(2):1020-1035. doi: 10.1364/BOE.412715. eCollection 2021 Feb 1.
The liquid and lyophilized blood plasma of patients with benign or malignant thyroid nodules and healthy individuals were studied by terahertz (THz) time-domain spectroscopy and machine learning. The blood plasma samples from malignant nodule patients were shown to have higher absorption. The glucose concentration and miRNA-146b level were correlated with the sample's absorption at 1 THz. A two-stage ensemble algorithm was proposed for the THz spectra analysis. The first stage was based on the Support Vector Machine with a linear kernel to separate healthy and thyroid nodule participants. The second stage included additional data preprocessing by Ornstein-Uhlenbeck kernel Principal Component Analysis to separate benign and malignant thyroid nodule participants. Thus, the distinction of malignant and benign thyroid nodule patients through their lyophilized blood plasma analysis by terahertz time-domain spectroscopy and machine learning was demonstrated.
采用太赫兹(THz)时域光谱和机器学习技术,对患有良性或恶性甲状腺结节的患者以及健康个体的液态和冻干血浆进行了研究。结果显示,恶性结节患者的血浆样本具有更高的吸收率。葡萄糖浓度和miRNA - 146b水平与样本在1 THz处的吸收率相关。针对太赫兹光谱分析提出了一种两阶段集成算法。第一阶段基于具有线性核的支持向量机,以区分健康参与者和甲状腺结节参与者。第二阶段包括通过奥恩斯坦 - 乌伦贝克核主成分分析进行额外的数据预处理,以区分良性和恶性甲状腺结节参与者。因此,通过太赫兹时域光谱和机器学习对冻干血浆进行分析,证明了区分恶性和良性甲状腺结节患者的可行性。