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Pregled bibliografske jedinice broj: 1067254

The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data


Ljiljana Trtica, Majnarić; František, Babič; Zvonimir, Bosnić; Marijana, Zekić-Sušac; Thomas, Wittlinger
The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data // International Journal of Diabetes and Clinical Research, 7 (2020), 2; 1-12 doi:10.23937/2377-3634/1410121 (međunarodna recenzija, članak, znanstveni)


CROSBI ID: 1067254 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data

Autori
Ljiljana Trtica, Majnarić ; František, Babič ; Zvonimir, Bosnić ; Marijana, Zekić-Sušac ; Thomas, Wittlinger

Izvornik
International Journal of Diabetes and Clinical Research (2377-3634) 7 (2020), 2; 1-12

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
Diabetes mellitus type 2, Glucose variability, Primary care, Routine data, Machine learning, Pilot study

Sažetak
Background: The continuous glucose monitoring technique is recommended for follow-up of individuals with diabetes type 1. For those with diabetes type 2, glucose variability measures, either performed automatically or by visit-to-visit method, can be used to complement glycosylated haemoglobin (HbA1c) in predicting long-term outcomes. Methods: A-proof-of-concept study, conducted in primary care. A total of 63 variables were used from electronic health records to describe clinical characteristics of 110 individuals with diabetes type 2 of both gender, 40-86 years old (average 62.69), and on treatment with oral hypoglycaemic drugs. The artificial neural networks (ANN) of machine learning techniques was used to model inter-day glucose variability based on the estimation of variances (the square of the standard deviation) of sporadically recorded fasting and postprandial (2h after breakfast) glucose measurements as the outcome measures. Model of increased HbA1c (≥7%) was used as the benchmark. The number of variables for modelling was reduced by using the pre- processing method. Multiple linear regression (MLR) models were performed on the prepared subsets to compare to the predictive accuracy of ANN models. Results: A higher glucose variability, for both fasting and postprandial glucose variances, was associated with higher HbA1c values (Q1-Q4 differences, p = 0.002 and 0.006, respectively). The two top- ranked variables in ANN models of glucose variability were the same, indicating HbA1c and glomerular filtration rate, a measure of chronic renal impairment. MLR models of glucose variability did not give the significant predictors. Conclusions: For created models of glucose variability, to become practically useful, their outcome measures should be dichotomised and standardised according to the thresholds of HbA1c or some standardised measures of glucose variability, such as the coefficient of variation.

Izvorni jezik
Engleski



POVEZANOST RADA


Ustanove:
Medicinski fakultet, Osijek,
Fakultet za dentalnu medicinu i zdravstvo, Osijek

Poveznice na cjeloviti tekst rada:

doi

Citiraj ovu publikaciju:

Ljiljana Trtica, Majnarić; František, Babič; Zvonimir, Bosnić; Marijana, Zekić-Sušac; Thomas, Wittlinger
The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data // International Journal of Diabetes and Clinical Research, 7 (2020), 2; 1-12 doi:10.23937/2377-3634/1410121 (međunarodna recenzija, članak, znanstveni)
Ljiljana Trtica, M., František, B., Zvonimir, B., Marijana, Z. & Thomas, W. (2020) The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data. International Journal of Diabetes and Clinical Research, 7 (2), 1-12 doi:10.23937/2377-3634/1410121.
@article{article, author = {Ljiljana Trtica, Majnari\'{c} and Franti\v{s}ek, Babi\v{c} and Zvonimir, Bosni\'{c} and Marijana, Zeki\'{c}-Su\v{s}ac and Thomas, Wittlinger}, year = {2020}, pages = {1-12}, DOI = {10.23937/2377-3634/1410121}, keywords = {Diabetes mellitus type 2, Glucose variability, Primary care, Routine data, Machine learning, Pilot study}, journal = {International Journal of Diabetes and Clinical Research}, doi = {10.23937/2377-3634/1410121}, volume = {7}, number = {2}, issn = {2377-3634}, title = {The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data}, keyword = {Diabetes mellitus type 2, Glucose variability, Primary care, Routine data, Machine learning, Pilot study} }
@article{article, author = {Ljiljana Trtica, Majnari\'{c} and Franti\v{s}ek, Babi\v{c} and Zvonimir, Bosni\'{c} and Marijana, Zeki\'{c}-Su\v{s}ac and Thomas, Wittlinger}, year = {2020}, pages = {1-12}, DOI = {10.23937/2377-3634/1410121}, keywords = {Diabetes mellitus type 2, Glucose variability, Primary care, Routine data, Machine learning, Pilot study}, journal = {International Journal of Diabetes and Clinical Research}, doi = {10.23937/2377-3634/1410121}, volume = {7}, number = {2}, issn = {2377-3634}, title = {The Use of Artifical Intelligence in Assessing Glucose Variability in Individuals with Diabetes Type 2 from Routine Primary Care Data}, keyword = {Diabetes mellitus type 2, Glucose variability, Primary care, Routine data, Machine learning, Pilot study} }

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