Brain tumour segmentation with incomplete imaging data
James K Ruffle, Samia Mohinta, Robert J Gray, Harpreet Hyare,, Parashkev Nachev

TL;DR
This study demonstrates that deep learning models can effectively segment brain tumours using incomplete MRI data, maintaining high accuracy and potentially reducing reliance on contrast agents in clinical settings.
Contribution
It shows that state-of-the-art deep learning models can accurately segment brain tumours with incomplete imaging data, reflecting real-world clinical scenarios.
Findings
Models trained on incomplete data perform comparably to full data models.
Deep learning can detect enhancing tumours without contrast imaging.
Segmentation accuracy remains high across diverse clinical datasets.
Abstract
The complex heterogeneity of brain tumours is increasingly recognized to demand data of magnitudes and richness only fully-inclusive, large-scale collections drawn from routine clinical care could plausibly offer. This is a task contemporary machine learning could facilitate, especially in neuroimaging, but its ability to deal with incomplete data common in real world clinical practice remains unknown. Here we apply state-of-the-art methods to large scale, multi-site MRI data to quantify the comparative fidelity of automated tumour segmentation models replicating the various levels of sequence availability observed in the clinical reality. We compare deep learning (nnU-Net-derived) segmentation models with all possible combinations of T1, contrast-enhanced T1, T2, and FLAIR sequences, trained and validated with five-fold cross-validation on the 2021 BraTS-RSNA glioma population of 1251…
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Taxonomy
TopicsGlioma Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification
