IVCVOct 24, 2024

Transferring Knowledge from High-Quality to Low-Quality MRI for Adult Glioma Diagnosis

arXiv:2410.18698v24 citationsh-index: 29
Originality Incremental advance
AI Analysis

It addresses the challenge of accurate brain tumor diagnosis in resource-limited settings, though the approach is incremental as it builds on existing methods.

This paper tackles the problem of glioma diagnosis using low-quality MRI in Sub-Saharan Africa by applying transfer learning from high-quality datasets, achieving Dice scores up to 0.926 and securing second place in the BraTS Challenge.

Glioma, a common and deadly brain tumor, requires early diagnosis for improved prognosis. However, low-quality Magnetic Resonance Imaging (MRI) technology in Sub-Saharan Africa (SSA) hinders accurate diagnosis. This paper presents our work in the BraTS Challenge on SSA Adult Glioma. We adopt the model from the BraTS-GLI 2021 winning solution and utilize it with three training strategies: (1) initially training on the BraTS-GLI 2021 dataset with fine-tuning on the BraTS-Africa dataset, (2) training solely on the BraTS-Africa dataset, and (3) training solely on the BraTS-Africa dataset with 2x super-resolution enhancement. Results show that initial training on the BraTS-GLI 2021 dataset followed by fine-tuning on the BraTS-Africa dataset has yielded the best results. This suggests the importance of high-quality datasets in providing prior knowledge during training. Our top-performing model achieves Dice scores of 0.882, 0.840, and 0.926, and Hausdorff Distance (95%) scores of 15.324, 37.518, and 13.971 for enhancing tumor, tumor core, and whole tumor, respectively, in the validation phase. In the final phase of the competition, our approach successfully secured second place overall, reflecting the strength and effectiveness of our model and training strategies. Our approach provides insights into improving glioma diagnosis in SSA, showing the potential of deep learning in resource-limited settings and the importance of transfer learning from high-quality datasets.

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