Learning to Look Closer: A New Instance-Wise Loss for Small Cerebral Lesion Segmentation
About
Traditional loss functions in medical image segmentation, such as Dice, often under-segment small lesions because their small relative volume contributes negligibly to the overall loss. To address this, instance-wise loss functions and metrics have been proposed to evaluate segmentation quality on a per-lesion basis. We introduce CC-DiceCE, a loss function based on the CC-Metrics framework, and compare it with the existing blob loss. Both are benchmarked against a DiceCE baseline within the nnU-Net framework, which provides a robust and standardized setup. We find that CC-DiceCE loss increases detection (recall) with minimal to no degradation in segmentation performance, though with dataset-dependent trade-offs in precision. Furthermore, our multi-dataset study shows that CC-DiceCE generally outperforms blob loss.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Cerebral Lesion Segmentation | CMB | Dice42.45 | 3 | |
| Cerebral Lesion Segmentation | SBM | Dice67.53 | 3 | |
| Cerebral Lesion Segmentation | BraTS | Dice91.74 | 3 | |
| Cerebral Lesion Segmentation | LAC | Dice26.57 | 3 | |
| Cerebral Lesion Segmentation | WMH | Dice77.05 | 3 |