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Abstract #3784

Machine learning based characterisation of glioma shows best performance with post-contrast T1 and diffusion imaging

Gabriel Oliveira-Stahl1, Marianna Inglese2,3, Steffi Thust4,5,6,7, and Matthew Grech-Sollars8,9
1Department of Medical Physics and Biomedical Engineering, University College London, London, United Kingdom, 2Department of Biomedicine and Prevention, University of Rome Tor Vergata, Rome, Italy, 3Department of Surgery and Cancer, Imperial College London, London, United Kingdom, 4Precision Imaging Beacon, Medical School, University of Nottingham, Nottingham, United Kingdom, 5Sir Peter Mansfield Imaging Centre, School of Physics and Astronomy, University of Nottingham, Nottingham, United Kingdom, 6Radiology Department, Queen’s Medical Centre, Nottingham University Hospitals NHS Trust, Nottingham, United Kingdom, 7Department of Brain Rehabilitation and Repair, Institute of Neurology, University College London, London, United Kingdom, 8Lysholm Department of Neuroradiology, National Hospital for Neurology and Neurosurgery, University College London Hospitals NHS Foundation Trust, London, United Kingdom, 9Department of Computer Science, University College London, London, United Kingdom

Synopsis

Keywords: Diagnosis/Prediction, Tumor, Neuro-oncology

Motivation: Accurate glioma classification currently relies on tissue diagnosis, which has associated surgical risks. Machine learning based classification of MR images may enable non-invasive glioma characterisation.

Goal(s): Our aim was to assess which imaging modalities provided optimal training data to increase accuracy of machine learning based glioma characterisation.

Approach: A pyRadiomics based pipeline predicted tumour grade and IDH-mutation status with XGBoost on a glioblastoma-rich dataset. 10 structural and advanced MR acquisitions were used as model input and a systematic search for the most informative MR modalities was performed.

Results: The classifier performed best when the model was trained on post-contrast T1 and diffusion imaging.

Impact: We found post-contrast T1 and diffusion imaging to be the most informative MR modalities for machine learning based glioma characterisation. This result will benefit scientists in making well-informed choices on how to train their machine learning models for glioma classification.

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Keywords