The human annotations are imperfect, especially when produced by junior practitioners. Multi-expert consensus is usually regarded as golden standard, while this annotation protocol is too expensive to implement in many real-world projects. In this study, we propose a method to refine human annotation, named Neural Annotation Refinement (NeAR). It is based on a learnable implicit function, which decodes a latent vector into represented shape. By integrating the appearance as an input of implicit functions, the appearance-aware NeAR fixes the annotation artefacts. Our method is demonstrated on the application of adrenal gland analysis. We first show that the NeAR can repair distorted golden standards on a public adrenal gland segmentation dataset. Besides, we develop a new Adrenal gLand ANalysis (ALAN) dataset with the proposed NeAR, where each case consists of a 3D shape of adrenal gland and its diagnosis label (normal vs. abnormal) assigned by experts. We show that models trained on the shapes repaired by the NeAR can diagnose adrenal glands better than the original ones. The ALAN dataset will be open-source, with 1,584 shapes for adrenal gland diagnosis, which serves as a new benchmark for medical shape analysis. Code and dataset are available at https://github.com/M3DV/NeAR.
翻译:多专家共识通常被视为黄金标准,而这一批注协议在现实世界的许多项目中执行费用太高。在本研究中,我们提出了一个改进人类批注的方法,名为神经注解精细化(NeAR) 。它基于一个可学习的隐含功能,将潜伏矢量解译成代表形状。通过将外观作为隐含功能的输入,外观觉觉觉觉神经AR修正了注解工艺品。我们的方法在肾上腺分析的应用中得到了演示。我们首先显示,NeAR可以修复公共肾上腺分解数据组的扭曲的金标准。此外,我们开发了一个新的Adrenal gLand Analication(ALAN)数据集,与拟议的 NeAR(NeAR) 数据集一起,其中每个案例由3D型肾上腺形状和专家指定的诊断标签(正常与异常)组成。我们展示了由NeAR修饰的形状所训练的模型能够诊断肾上腺腺/DRubcom的比原始的要好。ALAN3 数据组将用来进行开源分析。