4.7 Article

Skin Complications of Diabetes Mellitus Revealed by Polarized Hyperspectral Imaging and Machine Learning

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 40, Issue 4, Pages 1207-1216

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2021.3049591

Keywords

Skin; Diabetes; Hyperspectral imaging; Blood; Aging; Biological tissues; Medical diagnostic imaging; Hyperspectral imaging; polarization; diabetes mellitus; skin complications

Funding

  1. Academy of Finland [314369, 290596, 318281]
  2. European Union's Horizon 2020 research and innovation program through the Marie SklodowskaCurie [839888]
  3. INFOTECH strategic fund
  4. Academy of Finland (AKA) [290596, 314369, 318281, 318281, 290596, 314369] Funding Source: Academy of Finland (AKA)

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Protein glycation and dysfunction of collagen-containing tissues play a significant role in the development of various pathological conditions. Through photonics-based technology and machine learning, a diagnostic approach capable of evaluating skin complications of diabetes mellitus at an early stage has been introduced, showing the ability to differentiate diabetic and control groups. The development of polarization-based hyperspectral imaging technique with artificial neural network implementation provides new perspectives in the study and diagnosis of age-related diseases.
Aging and diabetes lead to protein glycation and cause dysfunction of collagen-containing tissues. The accompanying structural and functional changes of collagen significantly contribute to the development of various pathological malformations affecting the skin, blood vessels, and nerves, causing a number of complications, increasing disability risks and threat to life. In fact, no methods of non-invasive assessment of glycation and associated metabolic processes in biotissues or prediction of possible skin complications, e.g., ulcers, currently exist for endocrinologists and clinical diagnosis. In this publication, utilizing emerging photonics-based technology, innovative solutions in machine learning, and definitive physiological characteristics, we introduce a diagnostic approach capable of evaluating the skin complications of diabetes mellitus at the very earlier stage. The results of the feasibility studies, as well as the actual tests on patients with diabetes and healthy volunteers, clearly show the ability of the approach to differentiate diabetic and control groups. Furthermore, the developed in-house polarization-based hyperspectral imaging technique accomplished with the implementation of the artificial neural network provides new horizons in the study and diagnosis of age-related diseases.

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