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首页> 外文期刊>NeuroImage >Bayesian convolutional neural network based MRI brain extraction on nonhuman primates
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Bayesian convolutional neural network based MRI brain extraction on nonhuman primates

机译:基于贝叶斯卷积神经网络的非人印象的MRI脑提取

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摘要

Brain extraction or skull stripping of magnetic resonance images (MRI) is an essential step in neuroimaging studies, the accuracy of which can severely affect subsequent image processing procedures. Current automatic brain extraction methods demonstrate good results on human brains, but are often far from satisfactory on nonhuman primates, which are a necessary part of neuroscience research. To overcome the challenges of brain extraction in nonhuman primates, we propose a fully-automated brain extraction pipeline combining deep Bayesian convolutional neural network (CNN) and fully connected three-dimensional (3D) conditional random field (CRF). The deep Bayesian CNN, Bayesian SegNet, is used as the core segmentation engine. As a probabilistic network, it is not only able to perform accurate high-resolution pixel-wise brain segmentation, but also capable of measuring the model uncertainty by Monte Carlo sampling with dropout in the testing stage. Then, fully connected 3D CRF is used to refine the probability result from Bayesian SegNet in the whole 3D context of the brain volume. The proposed method was evaluated with a manually brain-extracted dataset comprising T1w images of 100 nonhuman primates. Our method outperforms six popular publicly available brain extraction packages and three well-established deep learning based methods with a mean Dice coefficient of 0.985 and a mean average symmetric surface distance of 0.220 mm. A better performance against all the compared methods was verified by statistical tests (all p-values 10(-4), two-sided, Bonferroni corrected). The maximum uncertainty of the model on nonhuman primate brain extraction has a mean value of 0.116 across all the 100 subjects. The behavior of the uncertainty was also studied, which shows the uncertainty increases as the training set size decreases, the number of inconsistent labels in the training set increases, or the inconsistency between the training set and the testing set increases.
机译:脑提取或颅骨剥离磁共振图像(MRI)是神经影像学研究的重要步骤,其准确性可能会严重影响后续图像处理程序。目前的自动脑提取方法展示了人类大脑的良好结果,但往往远远令人满意的非人类灵长类动物,这是神经科学研究的必要部分。为了克服脑提取在非人的灵长类动物中脑提取的挑战,我们提出了一种完全自动化的脑提取管道,组合深贝叶斯卷积神经网络(CNN)和完全连接的三维(3D)条件随机场(CRF)。 Deep Bayesian CNN,贝叶斯赛人,用作核心分割引擎。作为概率网络,它不仅能够执行准确的高分辨率像素明智的大脑分割,而且还能够通过在测试阶段中的爆张下丢失的蒙特卡罗采样测量模型不确定性。然后,完全连接的3D CRF用于在大脑体积的整个3D上下文中优化贝叶斯赛人的概率结果。用包括100个非人的图像的T1W图像的手动提取的数据集评估所提出的方法。我们的方法优于六种流行的公共脑提取包和三种良好的基于​​深度学习的方法,平均骰子系数为0.985,平均对称表面距离为0.220mm。通过统计测试验证了针对所有比较方法的更好的性能(所有p值<10(-4),双面,Bonferroni校正)。在所有100个受试者中,非人类气激发模型模型的最大不确定性在所有100个受试者中具有0.116的平均值。还研究了不确定性的行为,这表明,随着训练集大小的降低,训练集中的不一致标签的数量增加,或训练集和测试集之间的不一致增加。

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