UUnet: An effective cascade Unet for automatic segmentation of renal parenchyma

Gaoyu Cao, Zhanquan Sun, Minlan Pan, Jiangfei Pang, Zhiqiang He, Jiayu Shen
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引用次数: 1

Abstract

Although deep learning image segmentation technology has achieved good results in medical image processing, it is still challenging to segment renal parenchyma from diuretic renography. The diuretic nephrogram has the characteristics of obvious noise, poor image quality, unclear boundary and serious redundant information. It is difficult to accurately segment renal parenchyma directly using the classical Unet network. Therefore, we propose a cascaded network, i.e. a segment network that realize segmentation from coarse to fine. The coarse segmentation model is used to obtain the suggested area of the kidney in the diuretic renal image. The cascaded fine segmentation model is to segment the renal parenchyma from the suggested region of the kidney. Compared with the original Unet, the cascade network can reduce the noise interference to a large extent and get better segmentation performance of the renal parenchyma. The experiment showed that the dice coefficient increased by 9.78%, and the proposed network is efficient in the renal parenchyma segmentation.
UUnet:用于肾实质自动分割的有效级联Unet
虽然深度学习图像分割技术在医学图像处理中取得了较好的效果,但从利尿肾造影中分割肾实质仍然是一个挑战。利尿剂肾图具有噪声明显、图像质量差、边界不清、信息冗余严重等特点。经典Unet网络难以直接准确分割肾实质。因此,我们提出了一种级联网络,即实现从粗到细分割的段网络。采用粗分割模型得到利尿肾图像中肾脏的建议面积。级联精细分割模型是将肾实质从建议的肾脏区域分割出来。与原始Unet相比,级联网络可以在很大程度上降低噪声干扰,获得更好的肾实质分割性能。实验表明,该网络的骰子系数提高了9.78%,有效地分割了肾实质。
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