Endocrinology Research and Practice
Original Article

Metabolite Biomarkers and Predictive Model Analysis for Patients with Type 2 Diabetes Mellitus With and Without Complications

1.

Integrative Pharmacogenomics Institute (iPROMISE), Universiti Teknologi MARA Selangor Branch, Selangor, Malaysia

2.

Universiti Teknologi MARA Selangor Branch, Faculty of Pharmacy, Selangor, Malaysia

3.

Universiti Teknologi MARA Selangor Branch, Faculty of Health Sciences, Selangor, Malaysia

4.

Universiti Teknologi MARA Selangor Branch, Faculty of Medicine, Selangor, Malaysia

Endocrinol Res Pract 2023; 27: 135-147
DOI: 10.5152/erp.2023.23224
Read: 1049 Downloads: 384 Published: 01 July 2023

Objective: Understanding the pathogenesis of type 2 diabetes mellitus including the interaction between the inherent susceptibility, lifestyles, and environment is believed to cast hope to predict, prevent, and personalize cure for type 2 diabetes mellitus and its complications. To identify the differ- entially expressed metabolites as potential diabetes-associated metabolite biomarkers that identify individuals with and without diabetes.

Methods: Sixty-four subjects were recruited to identify the systemic metabolic changes and biomark- ers related to type 2 diabetes mellitus, and the related complications (ischemic heart disease and chronic kidney disease) using quadrupole time-of-flight liquid chromatography coupled to mass spectrometry. The top 5 biomarkers were identified, and the prediction accuracies for models devel- oped by 4 algorithms were compared.

Result: Tyrosine, tryptophan, glycerophospholipid, porphyrin and chlorophyll, sphingolipid metabo- lism, and glycosylphosphatidylinositol-anchor biosynthesis were the lipids and amino acid-related pathways differentially regulated in the type 2 diabetes mellitus patients compared to normal sub- jects and patients with complications. Hydroxyprolyl-leucine and N-palmitoyl threonine were higher in patients; 4,4ʹ-Thiobis-2-butanone, geranyl-hydroxybenzoate, and Sesamex were higher in patients with chronic kidney disease complications; Asp Glu Trp, Trp Met Met were higher in patients with type 2 diabetes mellitus and ischemic heart disease compared to those normal subjects without risk. Random forest produced a consistently higher accuracy of more than 70% in the prediction for all the comparison groups. Pathways perturbated and biomarkers differentially regulated in individuals with risks or with the existing conditions of type 2 diabetes mellitus and its complications of ischemic heart disease and chronic kidney disease were identified using time-of-flight liquid chromatography coupled to mass spectrometry.

Conclusion: Metabolomics is a new emerging field that provides comprehensive phenotypic infor- mation on the disease and drug response of a patient. It serves as a potential comprehensive thera- peutic drug monitoring approach to be adopted in the near future for pharmaceutical care.

Cite this article as: Lay Kek T, Salleh Rofiee M, Abdul Ghani R, Aqmar Mohd Nor Hazalin N, Zaki Salleh M. Metabolite biomarkers and predictive model analysis for patients with type 2 diabetes mellitus with and without complications. Endocrinol Res Pract. 2023;27(3):135-147.

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