计算机科学
人工智能
分割
模式识别(心理学)
图像分割
推论
图像(数学)
掷骰子
迭代学习控制
集合(抽象数据类型)
新颖性
过程(计算)
迭代求精
监督学习
尺度空间分割
机器学习
半监督学习
相似性(几何)
迭代和增量开发
数据集
训练集
标记数据
计算机视觉
基于分割的对象分类
新知识检测
医学影像学
迭代法
合成数据
标识
DOI:10.1609/aaai.v40i34.40079
摘要
We demonstrate for the first time that a medical image segmentation model can achieve near fully supervised performance using only a single annotated image and abundant unlabeled data. We present MedSMILE, a novel framework that synergistically integrates transductive and inductive learning for this extreme one-label semi-supervised setting. Its core novelty lies in an iterative loop where a foundation model both bootstraps and refines pseudo-labels for an inductive segmentation model. This process begins with the foundation model performing transductive inference to generate an initial set of pseudo-labels for the unlabeled data pool. This bootstraps an iterative self-training process where the segmentation model is trained and used to generate progressively better labels, with an inter-round refinement step that re-leverages the foundation model to correct errors in uncertain predictions. Experiments on seven datasets across four modalities show MedSMILE recovers 90%–95% of the fully supervised Dice score while decisively outperforming existing semi-supervised techniques that require substantially more annotation. MedSMILE sets a new standard for label-efficient learning in medical image segmentation.
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