Accurate medical image segmentation is crucial for diagnosis and analysis. However, the models without calibrated uncertainty estimates might lead to errors in downstream analysis and exhibit low levels of robustness. Estimating the uncertainty in the measurement is vital to making definite, informed conclusions. Especially, it is difficult to make accurate predictions on ambiguous areas and focus boundaries for both models and radiologists, even harder to reach a consensus with multiple annotations. In this work, the uncertainty under these areas is studied, which introduces significant information with anatomical structure and is as important as segmentation performance. We exploit the medical image segmentation uncertainty quantification by measuring segmentation performance with multiple annotations in a supervised learning manner and propose a U-Net based architecture with multiple decoders, where the image representation is encoded with the same encoder, and segmentation referring to each annotation is estimated with multiple decoders. Nevertheless, a cross-loss function is proposed for bridging the gap between different branches. The proposed architecture is trained in an end-to-end manner and able to improve predictive uncertainty estimates. The model achieves comparable performance with fewer parameters to the integrated training model that ranked the runner-up in the MICCAI-QUBIQ 2020 challenge.


翻译:对诊断和分析而言,准确的医学图象分解至关重要。但是,没有经过校准的不确定性估计模型可能导致下游分析错误,并表现出低强度。估计测量的不确定性对于得出明确、知情的结论至关重要。特别是,很难准确预测模型和放射学家的模糊领域和重点界限,更难以多个注释达成共识。在这项工作中,研究这些领域的不确定性,以解剖结构提供重要信息,其重要性与分解性能同样重要。我们利用医疗图像分解不确定性量化方法,以有监督的学习方式用多个注释衡量分解性能,并提议以多解码器为U-Net为基础的结构,在该结构中,图像代码与同一个编码,对每个注释的分解分解法则用多个解码器进行估计。然而,为了缩小不同分支之间的差距,提议了一个交叉损失功能。拟议的结构以端对端至端方式进行培训,并能够改进预测性不确定性估计。模型取得了与综合培训模型的可比较性业绩,其参数比得较少,而综合培训模型为MQ-Q。

1
下载
关闭预览

相关内容

专知会员服务
28+阅读 · 2021年8月2日
Hierarchically Structured Meta-learning
CreateAMind
26+阅读 · 2019年5月22日
Transferring Knowledge across Learning Processes
CreateAMind
27+阅读 · 2019年5月18日
A Technical Overview of AI & ML in 2018 & Trends for 2019
待字闺中
16+阅读 · 2018年12月24日
Hierarchical Disentangled Representations
CreateAMind
4+阅读 · 2018年4月15日
【推荐】全卷积语义分割综述
机器学习研究会
19+阅读 · 2017年8月31日
Arxiv
0+阅读 · 2021年11月4日
W-net: Bridged U-net for 2D Medical Image Segmentation
Arxiv
19+阅读 · 2018年7月12日
Arxiv
4+阅读 · 2018年6月1日
VIP会员
相关VIP内容
专知会员服务
28+阅读 · 2021年8月2日
Top
微信扫码咨询专知VIP会员