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Development and external validation of deep-learning-based tumor grading models in soft-tissue sarcoma patients using mr imaging

  • Fernando Navarro
  • , Hendrik Dapper
  • , Rebecca Asadpour
  • , Carolin Knebel
  • , Matthew B. Spraker
  • , Vincent Schwarze
  • , Stephanie K. Schaub
  • , Nina A. Mayr
  • , Katja Specht
  • , Henry C. Woodruff
  • , Philippe Lambin
  • , Alexandra S. Gersing
  • , Matthew J. Nyflot
  • , Bjoern H. Menze
  • , Stephanie E. Combs
  • , Jan C. Peeken
  • Technical University of Munich
  • Washington University School of Medicine in St. Louis
  • University of Munich
  • University of Washington School of Medicine
  • Maastricht University
  • University of Zurich
  • Institute of Radiation Medicine (IRM)
  • DKTK Partner Site

Research output: Contribution to journalArticlepeer-review

55 Scopus citations

Abstract

Background: In patients with soft-tissue sarcomas, tumor grading constitutes a decisive factor to determine the best treatment decision. Tumor grading is obtained by pathological work-up after focal biopsies. Deep learning (DL)-based imaging analysis may pose an alternative way to characterize STS tissue. In this work, we sought to non-invasively differentiate tumor grading into low-grade (G1) and high-grade (G2/G3) STS using DL techniques based on MR-imaging. Methods: Contrast-enhanced T1-weighted fat-saturated (T1FSGd) MRI sequences and fat-saturated T2-weighted (T2FS) sequences were collected from two independent retrospective cohorts (training: 148 patients, testing: 158 patients). Tumor grading was determined following the French Federation of Cancer Centers Sarcoma Group in pre-therapeutic biopsies. DL models were developed using transfer learning based on the DenseNet 161 architecture. Results: The T1FSGd and T2FS-based DL models achieved area under the receiver operator characteristic curve (AUC) values of 0.75 and 0.76 on the test cohort, respectively. T1FSGd achieved the best F1-score of all models (0.90). The T2FS-based DL model was able to significantly risk-stratify for overall survival. Attention maps revealed relevant features within the tumor volume and in border regions. Conclusions: MRI-based DL models are capable of predicting tumor grading with good reproducibility in external validation.

Original languageEnglish
Article number2866
JournalCancers
Volume13
Issue number12
DOIs
StatePublished - 2 Jun 2021

Keywords

  • Artificial intelligence
  • Convolutional neural networks
  • Deep learning
  • MRI
  • Machine learning
  • Soft-tissue sarcomas
  • Tumor grading

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