三维多模态MRI骨肿瘤分割的半监督标签生成。

Anna Curto-Vilalta, Benjamin Schlossmacher, Christina Valle, Alexandra Gersing, Jan Neumann, Ruediger von Eisenhart-Rothe, Daniel Rueckert, Florian Hinterwimmer
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引用次数: 0

摘要

由于需要专家注释和这些手动创建的标签的可变性,医学图像分割是具有挑战性的。以前处理标签可变性的方法侧重于2D分割和单一模式,但可靠的3D多模式方法对于肿瘤学等临床应用是必要的。在本文中,我们提出了一个框架,以最小的放射科医生输入生成可靠和公正的标签,用于监督3D分割,减少放射科医生的工作量和人工标记的可变性。我们的框架通过基于特征聚类和半监督细化的3D多模态无监督分割两步过程生成人工智能辅助标签。然后将这些标签与由3D多模态骨肿瘤分割组成的下游任务中的传统专家生成的标签进行比较。训练两个3D-Unet模型,一个使用手动创建的专家标签,另一个使用人工智能辅助标签。然后,对这两个模型的分割结果进行盲评估,以评估训练标签的可靠性。该框架以最小的专家输入有效地生成准确的分割标签,实现最先进的性能。经过人工智能辅助标记训练的模型在61.67%的盲评价中优于基线模型,这表明人工智能辅助标记在分割质量上得到了提高,也证明了人工智能辅助标记在减少放射科医生工作量和提高三维多模态骨肿瘤分割标签可靠性方面的潜力。代码可在https://github.com/acurtovilalta/3D_LabelGeneration上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised Label Generation for 3D Multi-modal MRI Bone Tumor Segmentation.

Medical image segmentation is challenging due to the need for expert annotations and the variability of these manually created labels. Previous methods tackling label variability focus on 2D segmentation and single modalities, but reliable 3D multi-modal approaches are necessary for clinical applications such as in oncology. In this paper, we propose a framework for generating reliable and unbiased labels with minimal radiologist input for supervised 3D segmentation, reducing radiologists' efforts and variability in manual labeling. Our framework generates AI-assisted labels through a two-step process involving 3D multi-modal unsupervised segmentation based on feature clustering and semi-supervised refinement. These labels are then compared against traditional expert-generated labels in a downstream task consisting of 3D multi-modal bone tumor segmentation. Two 3D-Unet models are trained, one with manually created expert labels and the other with AI-assisted labels. Following this, a blind evaluation is performed on the segmentations of these two models to assess the reliability of training labels. The framework effectively generated accurate segmentation labels with minimal expert input, achieving state-of-the-art performance. The model trained with AI-assisted labels outperformed the baseline model in 61.67% of blind evaluations, indicating the enhancement of segmentation quality and demonstrating the potential of AI-assisted labeling to reduce radiologists' workload and improve label reliability for 3D multi-modal bone tumor segmentation. The code is available at https://github.com/acurtovilalta/3D_LabelGeneration .

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