Literature DB >> 20693184

Decision trees as a simple-to-use and reliable tool to identify individuals with impaired glucose metabolism or type 2 diabetes mellitus.

Manuela Hische1, Olga Luis-Dominguez, Andreas F H Pfeiffer, Peter E Schwarz, Joachim Selbig, Joachim Spranger.   

Abstract

OBJECTIVE: The prevalence of unknown impaired fasting glucose (IFG), impaired glucose tolerance (IGT), or type 2 diabetes mellitus (T2DM) is high. Numerous studies demonstrated that IFG, IGT, or T2DM are associated with increased cardiovascular risk, therefore an improved identification strategy would be desirable. The objective of this study was to create a simple and reliable tool to identify individuals with impaired glucose metabolism (IGM). DESIGN AND METHODS: A cohort of 1737 individuals (1055 controls, 682 with previously unknown IGM) was screened by 75 g oral glucose tolerance test (OGTT). Supervised machine learning was used to automatically generate decision trees to identify individuals with IGM. To evaluate the accuracy of identification, a tenfold cross-validation was performed. Resulting trees were subsequently re-evaluated in a second, independent cohort of 1998 individuals (1253 controls, 745 unknown IGM).
RESULTS: A clinical decision tree included age and systolic blood pressure (sensitivity 89.3%, specificity 37.4%, and positive predictive value (PPV) 48.0%), while a tree based on clinical and laboratory data included fasting glucose and systolic blood pressure (sensitivity 89.7%, specificity 54.6%, and PPV 56.2%). The inclusion of additional parameters did not improve test quality. The external validation approach confirmed the presented decision trees.
CONCLUSION: We proposed a simple tool to identify individuals with existing IGM. From a practical perspective, fasting blood glucose and blood pressure measurements should be regularly measured in all individuals presenting in outpatient clinics. An OGTT appears to be useful only if the subjects are older than 48 years or show abnormalities in fasting glucose or blood pressure.

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Year:  2010        PMID: 20693184     DOI: 10.1530/EJE-10-0649

Source DB:  PubMed          Journal:  Eur J Endocrinol        ISSN: 0804-4643            Impact factor:   6.664


  8 in total

1.  Artificial Intelligence Methodologies and Their Application to Diabetes.

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Journal:  J Diabetes Sci Technol       Date:  2017-05-25

2.  Machine Learning to Identify Predictors of Glycemic Control in Type 2 Diabetes: An Analysis of Target HbA1c Reduction Using Empagliflozin/Linagliptin Data.

Authors:  Angelo Del Parigi; Wenbo Tang; Dacheng Liu; Christopher Lee; Richard Pratley
Journal:  Pharmaceut Med       Date:  2019-06

Review 3.  Sense and Learn: Recent Advances in Wearable Sensing and Machine Learning for Blood Glucose Monitoring and Trend-Detection.

Authors:  Ahmad Yaser Alhaddad; Hussein Aly; Hoda Gad; Abdulaziz Al-Ali; Kishor Kumar Sadasivuni; John-John Cabibihan; Rayaz A Malik
Journal:  Front Bioeng Biotechnol       Date:  2022-05-12

4.  A distinct metabolic signature predicts development of fasting plasma glucose.

Authors:  Manuela Hische; Abdelhalim Larhlimi; Franziska Schwarz; Antje Fischer-Rosinský; Thomas Bobbert; Anke Assmann; Gareth S Catchpole; Andreas Fh Pfeiffer; Lothar Willmitzer; Joachim Selbig; Joachim Spranger
Journal:  J Clin Bioinforma       Date:  2012-02-02

Review 5.  Towards Non-Invasive Extraction and Determination of Blood Glucose Levels.

Authors:  Catherine Todd; Paola Salvetti; Katy Naylor; Mohammad Albatat
Journal:  Bioengineering (Basel)       Date:  2017-09-27

6.  Systematic literature review of machine learning methods used in the analysis of real-world data for patient-provider decision making.

Authors:  Alan Brnabic; Lisa M Hess
Journal:  BMC Med Inform Decis Mak       Date:  2021-02-15       Impact factor: 2.796

7.  Use of Machine Learning and Routine Laboratory Tests for Diabetes Mellitus Screening.

Authors:  Glauco Cardozo; Guilherme Brasil Pintarelli; Guilherme Rettore Andreis; Annelise Correa Wengerkievicz Lopes; Jefferson Luiz Brum Marques
Journal:  Biomed Res Int       Date:  2022-03-29       Impact factor: 3.411

8.  Skin autofluorescence based decision tree in detection of impaired glucose tolerance and diabetes.

Authors:  Andries J Smit; Jitske M Smit; Gijs J Botterblom; Douwe J Mulder
Journal:  PLoS One       Date:  2013-06-04       Impact factor: 3.240

  8 in total

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