AI RESEARCH
Deep EM with Hierarchical Latent Label Modelling for Multi-Site Prostate Lesion Segmentation
arXiv CS.AI
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ArXi:2603.14418v1 Announce Type: cross Label variability is a major challenge for prostate lesion segmentation. In multi-site datasets, annotations often reflect centre-specific contouring protocols, causing segmentation networks to overfit to local styles and generalise poorly to unseen sites in inference. We treat each observed annotation as a noisy observation of an underlying latent 'clean' lesion mask, and propose a hierarchical expectation-maximisation (HierEM) framework that alternates between: (1) inferring a voxel-wise posterior distribution over the latent mask, and (2.