In medical image segmentation, it is difficult to mark ambiguous areas accurately with binary masks, especially when dealing with small lesions. Therefore, it is a challenge for radiologists to reach a consensus by using binary masks under the condition of multiple annotations. However, these areas may contain anatomical structures that are conducive to diagnosis. Uncertainty is introduced to study these situations. Nevertheless, the uncertainty is usually measured by the variances between predictions in a multiple trial way. It is not intuitive, and there is no exact correspondence in the image. Inspired by image matting, we introduce matting as a soft segmentation method and a new perspective to deal with and represent uncertain regions into medical scenes, namely medical matting. More specifically, because there is no available medical matting dataset, we first labeled two medical datasets with alpha matte. Secondly, the matting method applied to the natural image is not suitable for the medical scene, so we propose a new architecture to generate binary masks and alpha matte in a row. Thirdly, the uncertainty map is introduced to highlight the ambiguous regions from the binary results and improve the matting performance. Evaluated on these datasets, the proposed model outperformed state-of-the-art matting algorithms by a large margin, and alpha matte is proved to be a more efficient labeling form than a binary mask.
翻译:在医学图像分割中,很难精确地用二元面罩标出模棱两可的地区,特别是在处理小损伤时。因此,放射科医生在多个注释的条件下使用二元面罩达成共识是一项挑战。然而,这些地区可能包含有助于诊断的解剖结构。引入了不确定性来研究这些情况。然而,不确定性通常通过多种试验方式的预测差异来测量。它不是直观的,而且图像中没有准确的对应关系。在图像交配的启发下,我们采用软分解方法和新的视角来处理和在医疗场景中代表不确定的区域,即医学交配。更具体地说,因为没有可用的医学配配配数据集,我们首先将两种医学数据集标出有利于诊断的解剖结构。第二,对自然图像应用的交配方法不适合医学场景,因此我们提出了一个新架构,在一行中生成双向面面罩和阿尔法面面罩。第三,引入了不确定性地图,以突出介面结果的模棱两面区域,在医学场景中代表了不确定区域,通过一个经验证的大幅的变形模型来改进的变形。