基于关节卷积神经网络的肩关节图像分割

Yunpeng Liu, Renfang Wang, Ran Jin, Dechao Sun, Hui-xia Xu, Chen Dong
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引用次数: 3

摘要

磁共振成像(MRI)现在被广泛用于关节的检查和诊断。一个关键步骤是在MRI中分割感兴趣的骨骼。提出了一种基于关节卷积神经网络模型的肩关节图像自动分割算法,该算法能准确分割肩关节图像中的肩关节和肱骨头。该方法包括两个协同深度学习网络。第一个网络使用Mask R-CNN分割模型对肩关节头和肱骨头进行初步实例分割。第二个网络使用属于不同物体(关节、肱骨头和背景)的体素的概率图作为空间位置的约束;从而可以获得更准确的分割。采用50组MRI进行训练和测试,对肩关节和肱骨头的Dice系数、阳性预测值(Positive predictive Value, PPV)和灵敏度的准确率分别达到0.91±0.02、0.95±0.01、0.94±0.02和0.88±0.01、0.91±0.02、0.90±0.02,超过了目前先进的分割算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shoulder Joint Image Segmentation Based on Joint Convolutional Neural Networks
Magnetic resonance imaging (MRI) is now commonly used for the examination and diagnosis of joints. A key step is to segment the bones of interest in MRI. This paper presents an algorithm for automatic segmentation of shoulder joint images based on a joint convolutional neural network model, which can accurately segment glenoid and humeral head in the shoulder image. This method includes two collaborative deep learning networks. The first network uses Mask R-CNN segmentation model to perform preliminary instance segmentation of glenoid and humeral head. The second network uses the probability maps of voxel belonging to the different objects (glenoid, humeral head, and background) as the constraint of the spatial location; thereby more accurate segmentation can be obtained. There are 50 groups of MRI which are used to train and test, the accuracy of Dice Coefficient, Positive Predicted Value (PPV), and Sensitivity for glenoid and humeral head reached 0.91±0.02, 0.95±0.01, 0.94±0.02 and 0.88±0.01, 0.91±0.02, 0.90±0.02 respectively, exceeding the current advanced segmentation algorithms.
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