Yan Wen, Hu Yipeng, Yang Qianye, Fu Yunguan, Syer Tom, Min Zhe, Punwani Shonit, Emberton Mark, Barratt Dean C, Cho Carmen C M, Chiu Bernard
Department of Electrical Engineering, City University of Hong Kong, 83 Tat Chee Avenue, Hong Kong Special Administrative Region of China, People's Republic of China.
UCL Hawkes Institute; Department of Medical Physics and Biomedical Engineering, University College London, Gower St., London WC1E 6BT, London, United Kingdom.
Phys Med Biol. 2025 Apr 22;70(8). doi: 10.1088/1361-6560/adc182.
Prostate lesion segmentation from multiparametric magnetic resonance images is particularly challenging due to the limited availability of labeled data. This scarcity of annotated images makes it difficult for supervised models to learn the complex features necessary for accurate lesion detection and segmentation.We proposed a novel semi-supervised algorithm that embeds prototype learning into mean-teacher (MT) training to improve the feature representation for unlabeled data. In this method, pseudo-labels generated by the teacher network simultaneously serve as supervision for unlabeled prototype-based segmentation. By enabling prototype segmentation to operate across labeled and unlabeled data, the network enriches the pool of "lesion representative prototypes", and allows prototypes to flow bidirectionally-from support-to-query and query-to-support paths. This intersected, bidirectional information flow strengthens the model's generalization ability. This approach is distinct from the MT algorithm as it involves few-shot training and differs from prototypical learning for adopting unlabeled data for training.This study evaluated multiple datasets with 767 patients from three different institutions, including the publicly available PROSTATEx/PROSTATEx2 datasets as the holdout institute for reproducibility. The experimental results showed that the proposed algorithm outperformed state-of-the-art semi-supervised methods with limited labeled data, observing an improvement in Dice similarity coefficient with increasing labeled data, ranging from 0.04 to 0.09.Our method shows promise in improving segmentation outcomes with limited labeled data and potentially aiding clinicians in making informed patient treatment and management decisions8The algorithm implementation has been made available on GitHub viagit@github.com:yanwenCi/semi-proto-seg.git...
由于标记数据的可用性有限,从多参数磁共振图像中进行前列腺病变分割极具挑战性。标注图像的稀缺使得监督模型难以学习准确病变检测和分割所需的复杂特征。我们提出了一种新颖的半监督算法,将原型学习嵌入到均值教师(MT)训练中,以改进未标记数据的特征表示。在这种方法中,教师网络生成的伪标签同时作为基于未标记原型分割的监督。通过使原型分割能够跨标记和未标记数据运行,网络丰富了“病变代表性原型”池,并允许原型双向流动——从支持路径到查询路径以及从查询路径到支持路径。这种交叉的双向信息流增强了模型的泛化能力。这种方法与MT算法不同,因为它涉及少样本训练,并且与原型学习不同,它采用未标记数据进行训练。本研究评估了来自三个不同机构的767名患者的多个数据集,包括公开可用的PROSTATEx/PROSTATEx2数据集作为用于可重复性的保留机构。实验结果表明,所提出的算法在有限标记数据的情况下优于当前最先进的半监督方法,随着标记数据的增加,Dice相似系数有所提高,范围从0.04到0.09。我们的方法在利用有限标记数据改善分割结果方面显示出前景,并可能帮助临床医生做出明智的患者治疗和管理决策。该算法的实现已通过git@github.com:yanwenCi/semi-proto-seg.git在GitHub上提供……