Topologically Faithful Multi-class Segmentation in Medical Images (2403.11001v2)
Abstract: Topological accuracy in medical image segmentation is a highly important property for downstream applications such as network analysis and flow modeling in vessels or cell counting. Recently, significant methodological advancements have brought well-founded concepts from algebraic topology to binary segmentation. However, these approaches have been underexplored in multi-class segmentation scenarios, where topological errors are common. We propose a general loss function for topologically faithful multi-class segmentation extending the recent Betti matching concept, which is based on induced matchings of persistence barcodes. We project the N-class segmentation problem to N single-class segmentation tasks, which allows us to use 1-parameter persistent homology, making training of neural networks computationally feasible. We validate our method on a comprehensive set of four medical datasets with highly variant topological characteristics. Our loss formulation significantly enhances topological correctness in cardiac, cell, artery-vein, and Circle of Willis segmentation.
- Alexander H. Berger (7 papers)
- Nico Stucki (4 papers)
- Laurin Lux (10 papers)
- Vincent Buergin (1 paper)
- Suprosanna Shit (55 papers)
- Anna Banaszak (1 paper)
- Daniel Rueckert (335 papers)
- Ulrich Bauer (45 papers)
- Johannes C. Paetzold (46 papers)