idw – Informationsdienst Wissenschaft

Nachrichten, Termine, Experten

Grafik: idw-Logo
Grafik: idw-Logo

idw - Informationsdienst
Wissenschaft

Science Video Project
idw-Abo

idw-News App:

AppStore

Google Play Store



Instance:
Share on: 
10/12/2021 09:58

Diabetes Detection with Whole-Body Magnetic Resonance Imaging

Birgit Niesing Presse- und Öffentlichkeitsarbeit
Deutsches Zentrum für Diabetesforschung

    Type 2 diabetes can be diagnosed with a whole-body magnetic resonance imaging (MRI) scan. This is shown by a current study by researchers from the German Center for Diabetes Research, the Institute of Diabetes Research and Metabolic Diseases of Helmholtz Zentrum München at the University of Tübingen, the Max Planck Institute for Intelligent Systems and Tübingen University Hospital. They used deep learning methods* and data from more than 2000 MRIs to identify patients with (pre-) diabetes. The results have now been published in the journal JCI Insight.

    Being overweight and having a lot of body fat increase the risk of diabetes. However, not every overweight person also develops the disease. The decisive factor is where the fat is stored in the body. If fat is stored under the skin, it is less harmful than fat in deeper areas of the abdomen (known as visceral fat). How fat is distributed throughout the body can be easily visualized with whole-body magnetic resonance imaging. "We have now investigated whether type 2 diabetes could also be diagnosed on the basis of certain patterns of body fat distribution using MRI," said last author Prof. Robert Wagner, explaining the researchers' approach.

    Deep learning trained with over 2000 MRI scans

    To detect such patterns, the researchers used artificial intelligence (AI). They trained deep learning (machine learning) networks with whole-body MRI scans of 2,000 people who had also undergone screening with the oral glucose tolerance test (abbreviated OGTT). The OGTT can screen for impaired glucose metabolism and diagnose diabetes. This is how the AI learned to detect diabetes.

    Lower abdominal fat accumulation an important indicator of diabetes pathogenesis

    "An analysis of the model results showed that fat accumulation in the lower abdomen plays a crucial role in diabetes detection," Wagner said. Further additional analysis also showed that a proportion of people with prediabetes, as well as people with a diabetes subtype that can lead to kidney disease, can also be identified via MRI scans.

    The researchers are now working to decipher the biological regulation of body fat distribution. One goal is to identify the causes of diabetes through new methods such as the use of AI in order to find better preventive and therapeutic options.

    Original Publication


    Contact for scientific information:

    Prof. Dr. Robert Wagner

    Institute of Diabetes Research and Metabolic Diseases

    of Helmholtz Zentrum München at the University of Tübingen

    Otfried-Müller-Str. 10

    72076 Tübingen

    Phone: +49 (0)7071/29-82910

    robert.wagner@uni-tuebingen.de


    Original publication:

    Dietz et al.: Diabetes detection from whole-body magnetic resonance imaging using deep learning. JCI Insight, DOI: https://doi.org/10.1172/jci.insight.146999


    Images

    Criteria of this press release:
    Journalists
    Biology, Medicine, Nutrition / healthcare / nursing
    transregional, national
    Research results, Transfer of Science or Research
    English


     

    Help

    Search / advanced search of the idw archives
    Combination of search terms

    You can combine search terms with and, or and/or not, e.g. Philo not logy.

    Brackets

    You can use brackets to separate combinations from each other, e.g. (Philo not logy) or (Psycho and logy).

    Phrases

    Coherent groups of words will be located as complete phrases if you put them into quotation marks, e.g. “Federal Republic of Germany”.

    Selection criteria

    You can also use the advanced search without entering search terms. It will then follow the criteria you have selected (e.g. country or subject area).

    If you have not selected any criteria in a given category, the entire category will be searched (e.g. all subject areas or all countries).