Biological Research (Dec 2022)

Dynamic circadian fluctuations of glycemia in patients with type 2 diabetes mellitus

  • Manuel Vásquez-Muñoz,
  • Alexis Arce-Álvarez,
  • Cristian Álvarez,
  • Rodrigo Ramírez-Campillo,
  • Fernando A. Crespo,
  • Dayana Arias,
  • Camila Salazar-Ardiles,
  • Mikel Izquierdo,
  • David C. Andrade

DOI
https://doi.org/10.1186/s40659-022-00406-1
Journal volume & issue
Vol. 55, no. 1
pp. 1 – 9

Abstract

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Abstract Background Diabetes mellitus (DM) has glucose variability that is of such relevance that the appearance of vascular complications in patients with DM has been attributed to hyperglycemic and dysglycemic events. It is known that T1D patients mainly have glycemic variability with a specific oscillatory pattern with specific circadian characteristics for each patient. However, it has not yet been determined whether an oscillation pattern represents the variability of glycemic in T2D. This is why our objective is to determine the characteristics of glycemic oscillations in T2D and generate a robust predictive model. Results Showed that glycosylated hemoglobin, glycemia, and body mass index were all higher in patients with T2D than in controls (all p < 0.05). In addition, time in hyperglycemia and euglycemia was markedly higher and lower in the T2D group (p < 0.05), without significant differences for time in hypoglycemia. Standard deviation, coefficient of variation, and total power of glycemia were significantly higher in the T2D group than Control group (all p < 0.05). The oscillatory patterns were significantly different between groups (p = 0.032): the control group was mainly distributed at 2–3 and 6 days, whereas the T2D group showed a more homogeneous distribution across 2–3-to-6 days. Conclusions The predictive model of glycemia showed that it is possible to accurately predict hyper- and hypoglycemia events. Thus, T2D patients exhibit specific oscillatory patterns of glycemic control, which are possible to predict. These findings may help to improve the treatment of DM by considering the individual oscillatory patterns of patients.

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