Quality control (QC) in medical image analysis is time-consuming and laborious, leading to increased interest in automated methods. However, what is deemed suitable quality for algorithmic processing may be different from human-perceived measures of visual quality. In this work, we pose MR image quality assessment from an image reconstruction perspective. We train Bayesian CNNs using a heteroscedastic uncertainty model to recover clean images from noisy data, providing measures of uncertainty over the predictions. This framework enables us to divide data corruption into learnable and non-learnable components and leads us to interpret the predictive uncertainty as an estimation of the achievable recovery of an image. Thus, we argue that quality control for visual assessment cannot be equated to quality control for algorithmic processing. We validate this statement in a multi-task experiment combining artefact recovery with uncertainty prediction and grey matter segmentation. Recognising this distinction between visual and algorithmic quality has the impact that, depending on the downstream task, less data can be excluded based on ``visual quality" reasons alone.
翻译:在医学图像分析中,质量控制(QC)耗时费时费力,导致对自动化方法的兴趣增加。然而,被认为适合算法处理的质量可能不同于人类所看到的视觉质量衡量标准。在这项工作中,我们从图像重建的角度提出MR图像质量评估。我们训练贝叶西亚有线电视新闻网,用杂乱无序的不确定性模型从噪音数据中恢复干净的图像,为预测提供不确定性的度量。这个框架使我们能够将数据腐败分为可学习和不可忽略的组成部分,并导致我们将预测的不确定性解释为可实现的图像恢复的估计。因此,我们认为视觉评估的质量控制不能等同于算法处理的质量控制。我们在将艺术恢复与不确定性预测和灰质分解相结合的多任务实验中验证了这一说法。认识到视觉质量和算法质量之间的这种区别影响,根据下游任务,只能根据“视觉质量”的理由排除较少的数据。