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Exploring the Relationship Between Segmentation Uncertainty, Segmentation Performance and Inter-observer Variability with Probabilistic Networks

机译:探讨概率网络分段不确定性,分段性能与观察者间变异性的关系

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Medical image segmentation is an essential tool for clinical decision making and treatment planning. Automation of this process led to significant improvements in diagnostics and patient care, especially after recent breakthroughs that have been triggered by deep learning. However, when integrating automatic tools into patient care, it is crucial to understand their limitations and to have means to assess their confidence for individual cases. Aleatoric and epistemic uncertainties have been subject of recent research. Methods have been developed to calculate these quantities automatically during segmentation inference. However, it is still unclear how much human factors affect these metrics. Varying image quality and different levels of human annotator expertise are an integral part of aleatoric uncertainty. It is unknown how much this variability affects uncertainty in the final segmentation. Thus, in this work we explore potential links between deep network segmentation uncertainties with inter-observer variance and segmentation performance. We show how the area of disagreement between different ground-truth annotators can be developed into model confidence metrics and evaluate them on the LIDC-IDRI dataset, which contains multiple expert annotations for each subject. Our results indicate that a probabilistic 3D U-Net and a 3D U-Net using Monte-Carlo dropout during inference both show a similar correlation between our segmentation uncertainty metrics, segmentation performance and human expert variability.
机译:医学图像分割是临床决策和治疗计划的重要工具。这种过程的自动化导致诊断和患者护理的显着改进,特别是在深受深度学习引发的最近突破之后。然而,在将自动工具集成到患者护理时,了解他们的局限性至关重要,并且有意思是评估他们对个体案件的信心。炼莱和认知的不确定因素是最近研究的主题。已经开发了方法以在分段推断期间自动计算这些数量。但是,目前尚不清楚人类因素影响这些指标。不同的图像质量和不同程度的人类注册者专业知识是炼体不确定性的一个组成部分。尚不清楚这种可变性在最终分割中影响不确定性。因此,在这项工作中,我们探讨了与观察者间方差和分割性能之间的深度网络分割不确定性之间的潜在链接。我们展示了如何将不同地面注入者之间的分歧领域开发成模型置信度指标,并在LIDC-IDRI数据集上评估它们,其中包含每个主题的多个专家注释。我们的结果表明,推理期间使用Monte-Carlo辍学的概率3D U-Net和3D U-Net显示了我们的分割不确定度量,分割性能和人类专家变异之间的相似相关性。

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