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An Analysis of Multi-organ Segmentation Performance of CNNs on Abdominal Organs with an Emphasis on Kidney

机译:CNNs在以肾脏为重点的腹部器官上的多器官分割性能分析

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Manual hand tailored biomedical image segmentation of different organs is a time consuming and laborious task. However, for the last decade or so, many deep learning convolutional neural network (CNN) models have emerged claiming to have close to human level results on biomedical image segmentation of different type organs while automating the task. Multi-organ segmentation is the process of segmenting multiple organs of the same patient. This offers a con-venient solution to automation by providing segmentation of multiple organs at a time. Since 2015, we seen massive improvements of deep CNNs. This has led to better multi-organ segmentation architectures and has influenced the study of multi-organ segmentation. In this paper, we analyze the performance of different multi-organ segmentation studies. Our main focus was kidney, spleen and pan-creas. We emphasized on kidney with the believe that we will see an increase in kidney segmentation tasks and challenges. We found that multi-organ segmenta-tion architectures have been improving over time and are performing quite well. However, we also found that there is substantial performance variance across the different studies even after using the same architecture and datasets on those studies.
机译:手动手工定制不同器官的生物医学图像分割是一项耗时且费力的任务。然而,在过去十年左右的时间里,出现了许多深度学习卷积神经网络(CNN)模型,它们声称在自动执行任务的同时,在不同类型器官的生物医学图像分割方面具有接近人类水平的结果。多器官分割是对同一患者的多个器官进行分割的过程。通过一次提供多个器官的分割,这为自动化提供了便捷的解决方案。自2015年以来,我们看到了深层CNN的大规模改进。这导致了更好的多器官分割架构,并影响了多器官分割的研究。在本文中,我们分析了不同的多器官分割研究的表现。我们的主要重点是肾脏,脾脏和胰腺。我们以肾脏为重点,并相信肾脏分割的任务和挑战将会增加。我们发现,随着时间的流逝,多器官细分架构一直在不断改进,并且表现良好。但是,我们还发现,即使在这些研究中使用相同的体系结构和数据集之后,不同研究之间的性能差异也很大。

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