LFE-UNet:一种轻量级的全编码器u形网络,用于医学成像中高效的语义分割。

IF 1.1 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Qinghua Zhang, Yulei Hou, Changchun He, Zhengyu Zhai, Yunjiao Deng
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引用次数: 0

摘要

背景:语义分割算法对于医学图像中人体器官和病变的识别和分割至关重要。然而,当U-Net变体提高分割精度时,它们通常会增加参数计数,这需要更复杂和昂贵的训练硬件。目的:本研究旨在引入一种轻量级的U-Net,在充分利用编码器的特征提取能力的同时,优化网络参数和分割精度之间的权衡。方法:我们提出了一个轻量级的全编码器u型网络,称为LFE-UNet,它采用全编码器跳过连接,包含所有编码器层。该模型的设计减少了基本通道的数量——具体来说,是8个通道,而不是典型的64或32个通道——以实现更高效的体系结构。结果:LFE-UNet与ResNet34集成后,在ISBI LiTS 2017肝脏数据集上的Dice得分为0.97385。对于BraTS 2018脑肿瘤数据集,平均WT、TC和ET分别为0.87510、0.93759、0.87301和0.81469。本文还讨论了不同的基本通道数n和编码器层数n对网络参数效率的影响,以及模型对图像中不同程度的高斯噪声和标签中不同程度的椒盐噪声的鲁棒性。此外,还探讨了不同损失函数的影响。结论:LFE-UNet充分利用了全尺寸编码器的特征提取,在较低的参数下可以获得较高的分割精度。强调了损失函数选择的重要性和噪声对分割精度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LFE-UNet: A Lightweight Full-Encoder U-shaped Network for Efficient Semantic Segmentation in Medical Imaging.

Background: Semantic segmentation algorithms are essential for identifying and segmenting human organs and lesions in medical images. However, as U-Net variants enhance segmentation accuracy, they often increase in parameter count, demanding more sophisticated and costly hardware for training.

Objective: This study aims to introduce a lightweight U-Net that optimizes the trade-off between network parameters and segmentation accuracy, while fully leveraging the encoder's feature extraction capabilities.

Methods: We propose a lightweight full-encoder U-shaped network, termed LFE-UNet, which employs full-encoder skip connections, encompassing all encoder layers. This model is designed with a reduced number of basic channels-specifically, 8 instead of the typical 64 or 32-to achieve a more efficient architecture.

Results: The LFE-UNet, when integrated with ResNet34, achieved a Dice score of 0.97385 on the ISBI LiTS 2017 liver dataset. For the BraTS 2018 brain tumor dataset, it obtained 0.87510, 0.93759, 0.87301, and 0.81469 on average, WT, TC, and ET, respectively. The paper also discusses the impact of varying basic channel numbers n and encoder layer counts N on the network's parameter efficiency, as well as the model's robustness to different levels of Gaussian noise in images and salt and pepper noise in labels. Additionally, the influence of different loss functions is explored.

Conclusion: The LFE-UNet proves that high segmentation accuracy can be attained with a markedly lower parameters, fully utilizing the full-scale encoder's feature extraction. It also highlights the significance of loss function selection and the effects of noise on segmentation accuracy.

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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
246
审稿时长
1 months
期刊介绍: Current Medical Imaging Reviews publishes frontier review articles, original research articles, drug clinical trial studies and guest edited thematic issues on all the latest advances on medical imaging dedicated to clinical research. All relevant areas are covered by the journal, including advances in the diagnosis, instrumentation and therapeutic applications related to all modern medical imaging techniques. The journal is essential reading for all clinicians and researchers involved in medical imaging and diagnosis.
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