Depthwise Separable Convolutional Neural Network for Knee Segmentation: Data from the Osteoarthritis Initiative

K. Lai, Pauline Shan Qing Yeoh, S. Goh, K. Hasikin, Xiang Wu
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Abstract

Automated knee segmentation plays an important role in knee osteoarthritis diagnosis as this disease exhibits different imaging biomarkers as it progresses. A good knee segmentation model that is practical and computationally efficient allows a more efficient clinical workflow. This paper presents a preliminary study on Depthwise Separable convolutional layers utilizing the end-to-end segmentation network, UNet architecture on knee segmentation. Results showed that DS2D-UNet and DS3D-UNet perform more efficiently with the adoption of Depthwise Separable convolutional layers with fewer cost of computations, without compromising the overall performance. The models produced strong results of Balanced Accuracy ranging between 90–93% and Dice Similarity Coefficient ranging between 91–93%. In conclusion, the potential of Depthwise Separable convolution should be further investigated to optimize the efficiency of 3D deep learning architectures, specifically on knee imaging volumes.
深度可分离卷积神经网络用于膝关节分割:来自骨关节炎倡议的数据
自动膝关节分割在膝关节骨性关节炎诊断中起着重要作用,因为这种疾病在其进展过程中表现出不同的成像生物标志物。一个实用且计算效率高的膝关节分割模型可以提高临床工作流程的效率。本文利用端到端分割网络UNet架构对深度可分卷积层进行了初步研究。结果表明,DS2D-UNet和DS3D-UNet在采用深度可分卷积层的情况下,在不影响整体性能的情况下,计算成本更低,执行效率更高。模型的平衡精度在90-93%之间,骰子相似系数在91-93%之间。总之,深度可分离卷积的潜力应该进一步研究,以优化3D深度学习架构的效率,特别是在膝关节成像体积上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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