de Sousa Vieira Elzo Everton, Silveira Landulfo, Carvalho Henrique Cunha, Bispo Jeyse Aliana Martins, Fernandes Fernanda Barrinha, Fernandes Adriana Barrinha
Biomedical Engineering Institute, Universidade Anhembi Morumbi (UAM), Rua Casa do Ator, 275, São Paulo 04546-001, Brazil.
Centro de Inovação, Tecnologia e Educação (CITÉ), Parque Tecnológico de São José dos Campos, Estrada Dr. Altino Bondensan, 500, São José dos Campos 12247-016, Brazil.
Bioengineering (Basel). 2022 Sep 24;9(10):500. doi: 10.3390/bioengineering9100500.
The purpose of this study was to perform a comparative biochemical analysis between conventional spectrophotometry and Raman spectroscopy, techniques used for diagnoses, on the urine of healthy (CT) and diabetic and hypertensive patients (DM&HBP). Urine from 40 subjects (20 in the CT group and 20 in the DM&HBP group) was examined in a dispersive Raman spectrometer (an 830 nm excitation and a 350 mW power). The mean Raman spectra between both groups showed a significant difference in peaks of glucose; exploratory analysis by principal component analysis (PCA) identified spectral differences between the groups, with higher peaks of glucose and proteins in the DM&HBP group. A partial least squares (PLS) regression model estimated by the Raman data indicated the concentrations of urea, creatinine, glucose, phosphate, and total protein; creatinine and glucose were the biomarkers that presented the best correlation coefficient () between the two techniques analyzed ( = 0.68 and = 0.98, respectively), both with eight latent variables (LVs) and a root mean square error of cross-validation (RMSecv) of 3.6 and 5.1 mmol/L (41 and 92 mg/dL), respectively. Discriminant analysis (PLS-DA) using the entire Raman spectra was able to differentiate the samples of the groups in the study, with a higher accuracy (81.5%) compared to the linear discriminant analysis (LDA) models using the concentration values of the spectrometric analysis (60.0%) and the concentrations predicted by the PLS regression (69.8%). Results indicated that spectral models based on PLS applied to Raman spectra may be used to distinguish subjects with diabetes and blood hypertension from healthy ones in urinalysis aimed at population screening.
本研究的目的是对传统分光光度法和拉曼光谱法这两种用于诊断的技术,在健康人群(CT)以及糖尿病和高血压患者(DM&HBP)尿液中的应用进行比较生化分析。在色散拉曼光谱仪(激发波长830 nm,功率350 mW)中检测了40名受试者(CT组20名,DM&HBP组20名)的尿液。两组之间的平均拉曼光谱显示葡萄糖峰存在显著差异;通过主成分分析(PCA)进行的探索性分析确定了两组之间的光谱差异,DM&HBP组中葡萄糖和蛋白质的峰更高。由拉曼数据估计的偏最小二乘(PLS)回归模型表明了尿素、肌酐、葡萄糖、磷酸盐和总蛋白的浓度;肌酐和葡萄糖是在所分析的两种技术之间呈现最佳相关系数(分别为 = 0.68和 = 0.98)的生物标志物,均采用八个潜在变量(LVs),交叉验证均方根误差(RMSecv)分别为3.6和5.1 mmol/L(41和92 mg/dL)。使用整个拉曼光谱的判别分析(PLS - DA)能够区分研究中两组的样本,与使用光谱分析浓度值的线性判别分析(LDA)模型(60.0%)和PLS回归预测浓度(69.8%)相比,具有更高的准确性(81.5%)。结果表明,应用于拉曼光谱的基于PLS的光谱模型可用于在旨在进行人群筛查的尿液分析中区分糖尿病和高血压患者与健康人群。