Medical image quality assessment (MIQA) is a vital prerequisite in various medical image analysis applications. Most existing MIQA algorithms are fully supervised that request a large amount of annotated data. However, annotating medical images is time-consuming and labor-intensive. In this paper, we propose an unsupervised anomaly-aware framework with test-time clustering for optical coherence tomography angiography (OCTA) image quality assessment in a setting wherein only a set of high-quality samples are accessible in the training phase. Specifically, a feature-embedding-based low-quality representation module is proposed to quantify the quality of OCTA images and then to discriminate between outstanding quality and non-outstanding quality. Within the non-outstanding quality class, to further distinguish gradable images from ungradable ones, we perform dimension reduction and clustering of multi-scale image features extracted by the trained OCTA quality representation network. Extensive experiments are conducted on one publicly accessible dataset sOCTA-3*3-10k, with superiority of our proposed framework being successfully established.
翻译:医学图像质量评估(MIQA)是各种医学图像分析应用的重要先决条件,大多数现有的MIQA算法都受到充分监督,要求大量附带说明的数据,但是,说明医学图像既耗时又费力。在本文中,我们提出一个不受监督的异常觉察框架,在经过培训的OCTA质量代表网络中为光学一致性断层摄影成像学(OCTA)图像质量评估(OCTA)进行测试集成,进行测试集成,在培训阶段只提供一套高质量的样本。具体地说,提议了一个基于特性组合的低质量代表模块,以量化OCTA图像的质量,然后区分杰出质量和非优劣质量。在非优秀质量类中,为了进一步区分可分化图像和不可分化图像,我们对经过培训的OCTA质量代表网络所提取的多尺度图像特征进行维度减少和组合。对一个公开访问的 sOCTA-3*3-10k进行了广泛的实验,我们提议的框架的优越性正在成功建立。