Deep Learning Can Differentiate IDH-Mutant from IDH-Wild GBM.
Pasquini LucaAntonio NapolitanoEmanuela TaglienteFrancesco DellepianeMartina LucignaniAntonello VidiriGiulio RanazziAntonella StoppacciaroGiulia MoltoniMatteo NicolaiAndrea RomanoAlberto Di NapoliAlessandro BozzaoPublished in: Journal of personalized medicine (2021)
Isocitrate dehydrogenase (IDH) mutant and wildtype glioblastoma multiforme (GBM) often show overlapping features on magnetic resonance imaging (MRI), representing a diagnostic challenge. Deep learning showed promising results for IDH identification in mixed low/high grade glioma populations; however, a GBM-specific model is still lacking in the literature. Our aim was to develop a GBM-tailored deep-learning model for IDH prediction by applying convoluted neural networks (CNN) on multiparametric MRI. We selected 100 adult patients with pathologically demonstrated WHO grade IV gliomas and IDH testing. MRI sequences included: MPRAGE, T1, T2, FLAIR, rCBV and ADC. The model consisted of a 4-block 2D CNN, applied to each MRI sequence. Probability of IDH mutation was obtained from the last dense layer of a softmax activation function. Model performance was evaluated in the test cohort considering categorical cross-entropy loss (CCEL) and accuracy. Calculated performance was: rCBV (accuracy 83%, CCEL 0.64), T1 (accuracy 77%, CCEL 1.4), FLAIR (accuracy 77%, CCEL 1.98), T2 (accuracy 67%, CCEL 2.41), MPRAGE (accuracy 66%, CCEL 2.55). Lower performance was achieved on ADC maps. We present a GBM-specific deep-learning model for IDH mutation prediction, with a maximal accuracy of 83% on rCBV maps. Highest predictivity achieved on perfusion images possibly reflects the known link between IDH and neoangiogenesis through the hypoxia inducible factor.
Keyphrases
- deep learning
- low grade
- wild type
- high grade
- magnetic resonance imaging
- contrast enhanced
- convolutional neural network
- diffusion weighted imaging
- diffusion weighted
- systematic review
- machine learning
- artificial intelligence
- computed tomography
- blood pressure
- magnetic resonance
- smoking cessation
- heart rate
- body composition
- genetic diversity
- resistance training