Go to The Journal of Clinical Investigation
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Transfers
  • Advertising
  • Job board
  • Contact
  • Current issue
  • Past issues
  • By specialty
    • COVID-19
    • Cardiology
    • Immunology
    • Metabolism
    • Nephrology
    • Oncology
    • Pulmonology
    • All ...
  • Videos
  • Collections
    • Resource and Technical Advances
    • Clinical Medicine
    • Reviews
    • Editorials
    • Perspectives
    • Top read articles
  • JCI This Month
    • Current issue
    • Past issues

  • Current issue
  • Past issues
  • Specialties
  • In-Press Preview
  • Editorials
  • Viewpoint
  • Top read articles
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Transfers
  • Advertising
  • Job board
  • Contact
Detection of diabetes from whole-body MRI using deep learning
Benedikt Dietz, … , Stefan Bauer, Robert Wagner
Benedikt Dietz, … , Stefan Bauer, Robert Wagner
Published September 30, 2021
Citation Information: JCI Insight. 2021;6(21):e146999. https://doi.org/10.1172/jci.insight.146999.
View: Text | PDF
Research Article Endocrinology Metabolism

Detection of diabetes from whole-body MRI using deep learning

  • Text
  • PDF
Abstract

Obesity is one of the main drivers of type 2 diabetes, but it is not uniformly associated with the disease. The location of fat accumulation is critical for metabolic health. Specific patterns of body fat distribution, such as visceral fat, are closely related to insulin resistance. There might be further, hitherto unknown, features of body fat distribution that could additionally contribute to the disease. We used machine learning with dense convolutional neural networks to detect diabetes-related variables from 2371 T1-weighted whole-body MRI data sets. MRI was performed in participants undergoing metabolic screening with oral glucose tolerance tests. Models were trained for sex, age, BMI, insulin sensitivity, HbA1c, and prediabetes or incident diabetes. The results were compared with those of conventional models. The area under the receiver operating characteristic curve was 87% for the type 2 diabetes discrimination and 68% for prediabetes, both superior to conventional models. Mean absolute regression errors were comparable to those of conventional models. Heatmaps showed that lower visceral abdominal regions were critical in diabetes classification. Subphenotyping revealed a group with high future diabetes and microalbuminuria risk.Our results show that diabetes is detectable from whole-body MRI without additional data. Our technique of heatmap visualization identifies plausible anatomical regions and highlights the leading role of fat accumulation in the lower abdomen in diabetes pathogenesis.

Authors

Benedikt Dietz, Jürgen Machann, Vaibhav Agrawal, Martin Heni, Patrick Schwab, Julia Dienes, Steffen Reichert, Andreas L. Birkenfeld, Hans-Ulrich Häring, Fritz Schick, Norbert Stefan, Andreas Fritsche, Hubert Preissl, Bernhard Schölkopf, Stefan Bauer, Robert Wagner

×

Figure 3

Partitioning of MRI images.

Options: View larger image (or click on image) Download as PowerPoint
Partitioning of MRI images.
Data-driven clustering was performed from em...
Data-driven clustering was performed from embedding layers, which are numeric representations of MRI scans generated during inference (n = 2048). The MRI-based clusters have different distributions of waist and hip circumference (A) and BMI (B). For the participants with follow-up data, these MRI-data based clusters also define different risk profiles not only for new-onset diabetes (n = 586) (C), but also for the diabetes complication microalbuminuria (n = 550) (D). Diagrams showing incidence-free survival were compared with log-rank tests.

Copyright © 2023 American Society for Clinical Investigation
ISSN 2379-3708

Sign up for email alerts