Variable selection towards classification of digital images: identification of altered glucose levels in serum

Medeiros-De-morais, Camilo De lelis orcid iconORCID: 0000-0003-2573-787X, Lima, Kassio M.G. and Martin, Francis L orcid iconORCID: 0000-0001-8562-4944 (2019) Variable selection towards classification of digital images: identification of altered glucose levels in serum. Analytical Letters, 52 (14). pp. 2239-2250. ISSN 0003-2719

[thumbnail of Author Accepted Manuscript]
Preview
PDF (Author Accepted Manuscript) - Accepted Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

813kB

Official URL: https://doi.org/10.1080/00032719.2019.1607365

Abstract

classed as <100 mg/dL, and altered levels are classified as pre-diabetic (100–125 mg/dL) or diabetic (>125 mg/dL). Herein, we propose a method to identify control, pre-diabetic, or diabetic simulated and real-world samples based on their glucose levels using classification-based variable selection algorithms [successive projections algorithm (SPA) or genetic algorithm (GA)] coupled to linear discriminant analysis (SPA-LDA and GA-LDA) towards analyzing red–green–blue digital images. Images were recorded after glucose enzymatic reaction, whereby 250 μL of reactant content of samples were captured by using a common cell phone camera. Processing was applied to the images at a pixel level, where 72.2% of the pixels were correctly classified as control, 79.2% as pre-diabetic, and 90.9% as diabetic using SPA-LDA algorithm; and 76.8% as control, 81.4% as pre-diabetic, and 91.7% as diabetic using GA-LDA algorithm in the validation set containing nine simulated samples. Eight real-world samples were measured as an external test set, where the accuracy using GA-LDA was found to be 92%, with sensitivities ranging from 70% to 100 and specificities ranging from 90% to 99%. This method shows the potential of variable selection techniques coupled with digital image analysis towards blood glucose monitoring


Repository Staff Only: item control page