ConfLUNet: Multiple sclerosis lesion instance segmentation in presence of confluent lesions
Maxence Wynen, Pedro M. Gordaliza, Maxime Istasse, Anna St\"olting, Pietro Maggi, Beno\^it Macq, Meritxell Bach Cuadra

TL;DR
This paper introduces ConfLUNet, an end-to-end framework for MS lesion instance segmentation that effectively handles confluent lesions, outperforming existing methods in accuracy and detection metrics.
Contribution
It provides formal definitions of confluent lesion units, new CLU-aware metrics, and the first end-to-end model for MS lesion instance segmentation.
Findings
ConfLUNet outperforms CC and ACLS in segmentation quality.
ConfLUNet achieves higher lesion detection F1 scores.
ConfLUNet improves CLU detection recall and precision.
Abstract
Accurate lesion-level segmentation on MRI is critical for multiple sclerosis (MS) diagnosis, prognosis, and disease monitoring. However, current evaluation practices largely rely on semantic segmentation post-processed with connected components (CC), which cannot separate confluent lesions (aggregates of confluent lesion units, CLUs) due to reliance on spatial connectivity. To address this misalignment with clinical needs, we introduce formal definitions of CLUs and associated CLU-aware detection metrics, and include them in an exhaustive instance segmentation evaluation framework. Within this framework, we systematically evaluate CC and post-processing-based Automated Confluent Splitting (ACLS), the only existing methods for lesion instance segmentation in MS. Our analysis reveals that CC consistently underestimates CLU counts, while ACLS tends to oversplit lesions, leading to…
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Taxonomy
TopicsMultiple Sclerosis Research Studies · Brain Tumor Detection and Classification · Advanced Neural Network Applications
MethodsSparse Evolutionary Training
