1. Instituto Nacional de Astrofísica óptica y Electrónica, Tonantzintla, Puebla, México;2. Centro de Estudios y Prevención del Cáncer, Juchitan, Oaxaca, México;3. Universidad Tecnológica de Campeche, San Antonio Cárdenas, Carmen, Campeche, México
Abstract:
In this study we identify and classify high and low levels of glycated hemoglobin (HbA1c) in healthy volunteers (HV) and diabetic patients (DP). Overall, 86 subjects were evaluated. The Raman spectrum was measured in three anatomical regions of the body: index fingertip, right ear lobe, and forehead. The measurements were performed to compare the difference between the HV and DP (22 well controlled diabetic patients (WCDP) (HbA1c <6.5%), and 49 not controlled diabetic patients (NCDP) (HbA1c ≥6.5%)). Multivariable methods such as principal components analysis (PCA) combined with support vector machine (SVM) were used to develop effective diagnostic algorithms for classification among these groups. The forehead of HV versus WCDP showed the highest sensitivity (100%) and specificity (100%). Sensitivity (100%) and specificity (60%), were highest in the forehead of WCDP, versus NCDP. In HV versus NCDP, the fingertip had the highest sensitivity (100%) and specificity (80%). The efficacy of the diagnostic algorithm by receiver operating characteristic (ROC) curve was confirmed. Overall, our study demonstrated that the
combination of Raman spectroscopy and PCA‐SVM are feasible non‐invasive diagnostic tool in diabetes to classify qualitatively high and low levels of HbA1c in vivo.