Weight Pruning-UNet: Weight Pruning UNet with Depth-wise Separable Convolutions for Semantic Segmentation of Kidney Tumors.

IF 1.1 Q4 ENGINEERING, BIOMEDICAL
Journal of Medical Signals & Sensors Pub Date : 2022-05-12 eCollection Date: 2022-04-01 DOI:10.4103/jmss.jmss_108_21
Patike Kiran Rao, Subarna Chatterjee, Sreedhar Sharma
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引用次数: 2

Abstract

Background: Accurate semantic segmentation of kidney tumors in computed tomography (CT) images is difficult because tumors feature varied forms and occasionally, look alike. The KiTs19 challenge sets the groundwork for future advances in kidney tumor segmentation.

Methods: We present weight pruning (WP)-UNet, a deep network model that is lightweight with a small scale; it involves few parameters with a quick assumption time and a low floating-point computational complexity.

Results: We trained and evaluated the model with CT images from 210 patients. The findings implied the dominance of our method on the training Dice score (0.98) for the kidney tumor region. The proposed model only uses 1,297,441 parameters and 7.2e floating-point operations, three times lower than those for other network models.

Conclusions: The results confirm that the proposed architecture is smaller than that of UNet, involves less computational complexity, and yields good accuracy, indicating its potential applicability in kidney tumor imaging.

Abstract Image

Abstract Image

Abstract Image

权值修剪-UNet:基于深度可分离卷积的权值修剪UNet用于肾肿瘤的语义分割。
背景:计算机断层扫描(CT)图像中肾脏肿瘤的准确语义分割是困难的,因为肿瘤具有多种形式,有时看起来很相似。KiTs19的挑战为肾脏肿瘤分割的未来发展奠定了基础。方法:提出了一种轻量级、小规模的深度网络模型——权值修剪(WP)-UNet;它涉及的参数少,假设时间快,浮点计算复杂度低。结果:我们对210例患者的CT图像进行了训练和评估。研究结果表明,我们的方法在肾肿瘤区域的训练Dice得分(0.98)上占主导地位。该模型仅使用1,297,441个参数和7.2次浮点运算,比其他网络模型减少了三分之一。结论:结果证实,所提出的架构比UNet的架构更小,计算复杂度更低,并且具有良好的准确性,表明其在肾脏肿瘤成像中的潜在适用性。
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来源期刊
Journal of Medical Signals & Sensors
Journal of Medical Signals & Sensors ENGINEERING, BIOMEDICAL-
CiteScore
2.30
自引率
0.00%
发文量
53
审稿时长
33 weeks
期刊介绍: JMSS is an interdisciplinary journal that incorporates all aspects of the biomedical engineering including bioelectrics, bioinformatics, medical physics, health technology assessment, etc. Subject areas covered by the journal include: - Bioelectric: Bioinstruments Biosensors Modeling Biomedical signal processing Medical image analysis and processing Medical imaging devices Control of biological systems Neuromuscular systems Cognitive sciences Telemedicine Robotic Medical ultrasonography Bioelectromagnetics Electrophysiology Cell tracking - Bioinformatics and medical informatics: Analysis of biological data Data mining Stochastic modeling Computational genomics Artificial intelligence & fuzzy Applications Medical softwares Bioalgorithms Electronic health - Biophysics and medical physics: Computed tomography Radiation therapy Laser therapy - Education in biomedical engineering - Health technology assessment - Standard in biomedical engineering.
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