Development and Evaluation of MR-Based Radiogenomic Models to Differentiate Atypical Lipomatous Tumors from Lipomas

  • Sarah C. Foreman
  • , Oscar Llorián-Salvador
  • , Diana E. David
  • , Verena K.N. Rösner
  • , Jon F. Rischewski
  • , Georg C. Feuerriegel
  • , Daniel W. Kramp
  • , Ina Luiken
  • , Ann Kathrin Lohse
  • , Jurij Kiefer
  • , Carolin Mogler
  • , Carolin Knebel
  • , Matthias Jung
  • , Miguel A. Andrade-Navarro
  • , Burkhard Rost
  • , Stephanie E. Combs
  • , Marcus R. Makowski
  • , Klaus Woertler
  • , Jan C. Peeken
  • , Alexandra S. Gersing

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Background: The aim of this study was to develop and validate radiogenomic models to predict the MDM2 gene amplification status and differentiate between ALTs and lipomas on preoperative MR images. Methods: MR images were obtained in 257 patients diagnosed with ALTs (n = 65) or lipomas (n = 192) using histology and the MDM2 gene analysis as a reference standard. The protocols included T2-, T1-, and fat-suppressed contrast-enhanced T1-weighted sequences. Additionally, 50 patients were obtained from a different hospital for external testing. Radiomic features were selected using mRMR. Using repeated nested cross-validation, the machine-learning models were trained on radiomic features and demographic information. For comparison, the external test set was evaluated by three radiology residents and one attending radiologist. Results: A LASSO classifier trained on radiomic features from all sequences performed best, with an AUC of 0.88, 70% sensitivity, 81% specificity, and 76% accuracy. In comparison, the radiology residents achieved 60–70% accuracy, 55–80% sensitivity, and 63–77% specificity, while the attending radiologist achieved 90% accuracy, 96% sensitivity, and 87% specificity. Conclusion: A radiogenomic model combining features from multiple MR sequences showed the best performance in predicting the MDM2 gene amplification status. The model showed a higher accuracy compared to the radiology residents, though lower compared to the attending radiologist.

Original languageEnglish
Article number2150
JournalCancers
Volume15
Issue number7
DOIs
StatePublished - Apr 2023

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Keywords

  • MRI
  • machine learning
  • radiology
  • radiomics
  • soft-tissue sarcomas

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