Derivative-Based Mir Spectroscopy for Blood Glucose Estimation Using Pca-Driven Regression Models
Journal:
arXiv
Published Date:
Dec 10, 2024
Abstract
In this study, we presented two innovative methods, which are Threshold-Based
Derivative (TBD) and Adaptive Derivative Peak Detection(ADPD), that enhance the
accuracy of Learning models for blood glucose estimation using Mid-Infrared
(MIR) spectroscopy. In these presented methods, we have enhanced the model's
accuracy by integrating absorbance data and its differentiation with critical
points. Blood samples were characterized with Fourier Transform Infrared (FTIR)
spectroscopy and advanced preprocessing steps. The learning models were Ridge
Regression and Support Vector Regression(SVR) using Leave-One-out
Cross-Validation. Results exhibited that TBD and ADPD significantly outperform
basic used methods. For SVR, the TBD increased the r2 score by around 27%, and
ADPD increased it by around 10%. these Ridge Regression values were between 36%
and 24%. In addition, Results demonstrate that TBD and ADPD significantly
outperform conventional methods, achieving lower error rates and improved
clinical accuracy, validated through Clarke and Parkes Error Grid Analysis.