In medical image segmentation, it is often necessary to collect opinions from multiple experts to make the final decision. This clinical routine helps to mitigate individual bias. But when data is multiply annotated, standard deep learning models are often not applicable. In this paper, we propose a novel neural network framework, called Multi-Rater Prism (MrPrism) to learn the medical image segmentation from multiple labels. Inspired by the iterative half-quadratic optimization, the proposed MrPrism will combine the multi-rater confidences assignment task and calibrated segmentation task in a recurrent manner. In this recurrent process, MrPrism can learn inter-observer variability taking into account the image semantic properties, and finally converges to a self-calibrated segmentation result reflecting the inter-observer agreement. Specifically, we propose Converging Prism (ConP) and Diverging Prism (DivP) to process the two tasks iteratively. ConP learns calibrated segmentation based on the multi-rater confidence maps estimated by DivP. DivP generates multi-rater confidence maps based on the segmentation masks estimated by ConP. The experimental results show that by recurrently running ConP and DivP, the two tasks can achieve mutual improvement. The final converged segmentation result of MrPrism outperforms state-of-the-art (SOTA) strategies on a wide range of medical image segmentation tasks.
翻译:在医学图像分割中,通常有必要收集来自多个专家的意见,以便做出最终决定。 这种临床例行做法有助于减轻个人偏差。 但是, 当数据被乘以附加说明时, 标准的深层次学习模式往往不适用。 在本文中, 我们提议了一个全新的神经网络框架, 叫做多光谱棱柱( MrPrism), 以便从多个标签中学习医学图像分割。 在迭接半半赤道优化的启发下, 拟议的 Mrprism 将多纬度信任分配任务和经校准的分割任务以经常性的方式结合起来。 在这个经常性过程中, Mrprism 能够学习观察者之间的偏移, 同时考虑到图像语义特性, 标准深层学习模式往往不适用。 在本文中, 我们提议一个自校准的神经网络框架框架框架, 来从多个观察者协议中学习医学图解析。 我们提议Conprism (DivP) 根据DivP估计的多纬度信任图进行校准。