4.4 Article

Quantification of glycated hemoglobin and glucose in vivo using Raman spectroscopy and artificial neural networks

Journal

LASERS IN MEDICAL SCIENCE
Volume 37, Issue 9, Pages 3537-3549

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s10103-022-03633-w

Keywords

Raman spectroscopy; Artificial neural networks; Glucose; Diabetes; HbA1c; In vivo measurements

Funding

  1. National Council of Science and Technology (CONACyT), Mexico
  2. National Council of Science and Technology (CONACyT)

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This study proposed a non-invasive method using Raman spectroscopy, feature selection, and artificial neural networks to determine glycated hemoglobin and glucose levels in patients with undiagnosed T2D, achieving high specificity and sensitivity.
Undiagnosed type 2 diabetes (T2D) remains a major public health concern. The global estimation of undiagnosed diabetes is about 46%, being this situation more critical in developing countries. Therefore, we proposed a non-invasive method to quantify glycated hemoglobin (HbA1c) and glucose in vivo. We developed a technique based on Raman spectroscopy, RReliefF as a feature selection method, and regression based on feed-forward artificial neural networks (FFNN). The spectra were obtained from the forearm, wrist, and index finger of 46 individuals. The use of FFNN allowed us to achieve an error in the predictive model of 0.69% for HbA1c and 30.12 mg/dL for glucose. Patients were classified according to HbA1c values into three categories: healthy, prediabetes, and T2D. The proposed method obtained a specificity and sensitivity of 87.50% and 80.77%, respectively. This work demonstrates the benefit of using artificial neural networks and feature selection techniques to enhance Raman spectra processing to determine glycated hemoglobin and glucose in patients with undiagnosed T2D.

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