Diagnostic and prognostic perspectives of Fabry disease via fiber evanescent wave spectroscopy advanced by machine learning.

Journal: Biosensors & bioelectronics
PMID:

Abstract

Fabry disease (FD) is a rare disorder resulting from a genetic mutation characterized by the accumulation of sphingolipids in various cells throughout the human body, leading to progressive and irreversible organ damage, particularly in males. Genetically-determined deficiency or reduced activity of the enzyme (alpha - Galactosidase; α-Gal) leads to the accumulation of sphingolipids in the lysosomes of various cell types, including the heart, kidneys, skin, eyes, central nervous system, and digestive system, triggering damage, leading to the failure of vital organs, and resulting in progressive disability and premature death. FD diagnostics currently depend on costly and time-intensive genetic tests and enzymatic analysis, often leading to delayed or inaccurate diagnoses, which contribute to rapid disease progression. In this research, mid-infrared Fiber Evanescent Wave Spectroscopy (FEWS) supported by statistical analysis and Machine Learning (ML) algorithms is shown to be an innovative and reliable method to detect globotriaosylsphingosine (Lyso-Gb3) FD biomarker in urine and serum samples by monitoring infrared spectra alone. ML showed a high selectivity for FD in the spectral range of Amide A and Amide I in blood serum, and α-D-galactosyl residues of glycosphingolipids in urine. The developed approach offers a promising, cost-effective express diagnostic tool sensitive enough for early FD detection and monitoring.

Authors

  • Bohdan Mahlovanyi
    Institute of Physics, College of Natural Sciences, University of Rzeszow, Rzeszow, Poland.
  • Nikola Król
    Institute of Medical Sciences, College of Medical Sciences, University of Rzeszow, Rzeszow, Poland.
  • Andriy Lopushansky
    Institute of Computer Science, College of Natural Sciences, University of Rzeszow, Rzeszow, Poland.
  • Yaroslav Shpotyuk
    Institute of Physics, College of Natural Sciences, University of Rzeszow, Rzeszow, Poland; Department of Sensor and Semiconductor Electronics, Ivan Franko National University of Lviv, Lviv, Ukraine. Electronic address: yshpotyuk@ur.edu.pl.
  • Catherine Boussard-Pledel
    University of Rennes, CNRS, ISCR [(Institut des Sciences Chimiques de Rennes)] - UMR 6226, 35000 Rennes, France.
  • Bruno Bureau
    University of Rennes, CNRS, ISCR [(Institut des Sciences Chimiques de Rennes)] - UMR 6226, 35000 Rennes, France.
  • Kamil Szmuc
    Institute of Materials Engineering, College of Natural Sciences, University of Rzeszow, Rzeszow, Poland.
  • Grzegorz Gruzeł
    Institute of Physics, College of Natural Sciences, University of Rzeszow, Rzeszow, Poland.
  • Kornelia Łach
    Clinic of Paediatric Oncology and Haematology, Faculty of Medicine, University of Rzeszow, ul. Kopisto 2a, 35-310 Rzeszow, Poland. kornelia_lach@wp.pl.
  • Aneta Kowal
    Doctoral School, Institute of Medical Sciences, University of Rzeszow, Poland.
  • Michael Truax
    Department of Biology, Austin Peay State University, Clarksville, TN, USA.
  • Roman Golovchak
    Department of Physics, Engineering and Astronomy, Austin Peay State University, Clarksville, TN, USA.
  • Agnieszka Gala-Błądzińska
    Institute of Medical Sciences, Medical College of Rzeszow University, Rzeszow, Poland.
  • Józef Cebulski
    Center for Innovation and Transfer of Natural Sciences and Engineering Knowledge, University of Rzeszow, 35-959 Rzeszow, Poland. cebulski@ur.edu.pl.