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Modality redundancy for MRI-based glioblastoma segmentation

S. De Sutter, Joris Wuts, Wietse Geens, Anne‐Marie Vanbinst, Johnny Duerinck, Jef Vandemeulebroucke

2024International Journal of Computer Assisted Radiology and Surgery11 citationsDOIOpen Access PDF

Abstract

PURPOSE: Automated glioblastoma segmentation from magnetic resonance imaging is generally performed on a four-modality input, including T1, contrast T1, T2 and FLAIR. We hypothesize that information redundancy is present within these image combinations, which can possibly reduce a model's performance. Moreover, for clinical applications, the risk of encountering missing data rises as the number of required input modalities increases. Therefore, this study aimed to explore the relevance and influence of the different modalities used for MRI-based glioblastoma segmentation. METHODS: After the training of multiple segmentation models based on nnU-Net and SwinUNETR architectures, differing only in their amount and combinations of input modalities, each model was evaluated with regard to segmentation accuracy and epistemic uncertainty. RESULTS: Results show that T1CE-based segmentation (for enhanced tumor and tumor core) and T1CE-FLAIR-based segmentation (for whole tumor and overall segmentation) can reach segmentation accuracies comparable to the full-input version. Notably, the highest segmentation accuracy for nnU-Net was found for a three-input configuration of T1CE-FLAIR-T1, suggesting the confounding effect of redundant input modalities. The SwinUNETR architecture appears to suffer less from this, where said three-input and the full-input model yielded statistically equal results. CONCLUSION: The T1CE-FLAIR-based model can therefore be considered as a minimal-input alternative to the full-input configuration. Addition of modalities beyond this does not statistically improve and can even deteriorate accuracy, but does lower the segmentation uncertainty.

Topics & Concepts

Fluid-attenuated inversion recoverySegmentationComputer scienceModalitiesModality (human–computer interaction)Magnetic resonance imagingArtificial intelligenceRedundancy (engineering)Image segmentationPattern recognition (psychology)MedicineRadiologySocial scienceOperating systemSociologyGlioma Diagnosis and TreatmentMedical Image Segmentation TechniquesBrain Tumor Detection and Classification
Modality redundancy for MRI-based glioblastoma segmentation | Litcius