LoMix: Learnable Weighted Multi-Scale Logits Mixing for Medical Image Segmentation
–Neural Information Processing Systems
Yet, training still treats these logits in isolation--either supervising only the final, highest-resolution logits or applying deep supervision with identical loss weights at every scale--without exploring mixed-scale combinations. Consequently, the decoder output misses the complementary cues that arise only when coarse and fine predictions are fused. To address this issue, we introduce LoMix (Logits Mixing), a Neural Architecture Search (NAS)-inspired, differentiable plug-and-play module that generates new mixed-scale outputs and learns how exactly each of them should guide the training process. More precisely, LoMix mixes the multi-scale decoder logits with four lightweight fusion operators: addition, multiplication, concatenation, and attentionbased weighted fusion, yielding a rich set of synthetic "mutant" maps. Every original or mutant map is given a softplus loss weight that is co-optimized with network parameters, mimicking a one-step architecture search that automatically discovers the most useful scales, mixtures, and operators. Plugging LoMix into recent U-shaped architectures (i.e., PVT-V2-B2 backbone with EMCAD decoder) on Synapse 8-organ dataset improves DICE by +4.2% over single-output supervision, +2.2% over deep supervision, and +1.5% over equally weighted additive fusion, all with zero inference overhead. When training data are scarce (e.g., one or two labeled scans, 5% of the trainset), the advantage grows to +9.23%, underscoring LoMix's data efficiency. Across four benchmarks and diverse U-shaped networks, LoMiX improves DICE by up to +13.5% over single-output supervision, confirming that learnable weighted mixed-scale fusion generalizes broadly while remaining data efficient, fully interpretable, and overhead-free at inference. Our implementation is available at https://github.com/SLDGroup/LoMix.
Neural Information Processing Systems
Jun-17-2026, 16:10:55 GMT
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- New Finding (1.00)
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- Research Report
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- Diagnostic Medicine > Imaging (1.00)
- Therapeutic Area > Oncology (0.93)
- Health & Medicine
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