AI RESEARCH
Risk-Aware Robust Learning: Reducing Clinical Risk under Label Noise in Medical Image Classification
arXiv CS.CV
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ArXi:2604.23875v1 Announce Type: new Noisy labels are a pervasive challenge in medical image classification, where annotation errors arise from inter-observer variability and diagnostic ambiguity. Although several noise-robust learning methods have been proposed, their evaluation predominantly relies on accuracy-oriented metrics, overlooking the clinical implications of asymmetric error costs. In medical diagnosis, a false negative (missed disease) carries substantially higher consequences than a false positive (false alarm), as delayed treatment can directly impact patient outcomes.