论文标题
医学图像注释的一种不引人注目的质量监督方法
An unobtrusive quality supervision approach for medical image annotation
论文作者
论文摘要
图像注释是启用数据驱动算法的重要步骤。在医学成像中,具有大型且可靠的注释数据集对于牢固地识别各种疾病至关重要。但是,注释者的性能差异很大,因此会影响模型训练。因此,通常应该使用多个注释者,但是这是昂贵且资源密集的。因此,希望用户应注释看不见的数据并具有自动化系统,以在此过程中不显眼地对其性能进行评分。我们根据显示肺流体细胞的整个幻灯片图像(WSI)检查了这样的系统。我们评估了两种方法的生成合成个体细胞图像的产生:条件生成对抗网络和扩散模型(DM)。对于定性和定量评估,我们进行了一项用户研究,以突出产生的细胞的适用性。用户无法通过验证DM来检测52.12%的生成图像,从而在不被注意的情况下用合成细胞替换原始单元的可行性。
Image annotation is one essential prior step to enable data-driven algorithms. In medical imaging, having large and reliably annotated data sets is crucial to recognize various diseases robustly. However, annotator performance varies immensely, thus impacts model training. Therefore, often multiple annotators should be employed, which is however expensive and resource-intensive. Hence, it is desirable that users should annotate unseen data and have an automated system to unobtrusively rate their performance during this process. We examine such a system based on whole slide images (WSIs) showing lung fluid cells. We evaluate two methods the generation of synthetic individual cell images: conditional Generative Adversarial Networks and Diffusion Models (DM). For qualitative and quantitative evaluation, we conduct a user study to highlight the suitability of generated cells. Users could not detect 52.12% of generated images by DM proofing the feasibility to replace the original cells with synthetic cells without being noticed.