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Learning a cortical parcellation of the brain robust to the MRI segmentation with convolutional neural networks

机译:用卷积神经网络学习大脑的皮质包裹鲁棒到MRI分割

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The parcellation of the human cortex into meaningful anatomical units is a common step of various neuroimaging studies. There have been multiple successful efforts to process magnetic resonance (MR) brain images automatically and identify specific anatomical regions, following atlases defined from cortical landmarks. Those definitions usually rely first on a high-quality brain surface reconstruction. On the other hand, when high accuracy is not a requirement, simpler methods based on warping a probabilistic atlas have been widely adopted. Here, we develop a cortical parcellation method for MR brain images based on Convolutional Neural Networks (ConvNets), a machine-learning method, with the goal of automatically transferring the knowledge obtained from surface analyses onto something directly applicable on simpler volume data. We train a ConvNet on a large (thousand) set of cortical ribbons of multiple MRI cohorts, to reproduce parcellations obtained from a surface method, in this case FreeSurfer. Further, to make the model applicable in a broader context, we force the model to generalize to unseen segmentations. The model is evaluated on unseen data of unseen cohorts. We characterize the behavior of the model during learning, and quantify its reliance on the dataset itself, which tends to give support for the necessity of large training sets, augmentation, and multiple contrasts. Overall, ConvNets can provide an efficient way to parcel MRI images, following the guidance established within more complex methods, quickly and accurately. The trained model is embedded within a open-source parcellation tool available at https://github.com/bthyreau/parcelcortex. (C) 2020 Elsevier B.V. All rights reserved.
机译:人皮层对有意义的解剖单元的锁定是各种神经影像学研究的常见步骤。在从皮质地标定义的地图集下,自动处理磁共振(MR)脑图像并识别特定解剖区域的多重成功努力。这些定义通常首先依赖于高质量的脑表面重建。另一方面,当高精度不是要求时,基于翘曲概率图集的更简单方法已被广泛采用。在这里,我们为基于卷积神经网络(Coundnets)的MR脑图像,机器学习方法开发了一种用于MR脑图像的皮质局部局部方法,其目标是自动将从表面上获得的知识转移到直接适用于更简单的卷数据上的东西。我们在大型MRI队列的大(千)皮质丝带上训练一个大型(千)的皮质丝网,以重现从表面法获得的局部,在这种情况下,在这种情况下是FreeSurfer。此外,为了使模型适用于更广泛的背景,我们强迫模型概括到看不见的细分。该模型是在看不见的群组的看不见的数据上进行评估。我们在学习期间表征模型的行为,并量化其对数据集本身的依赖,这倾向于支持大型训练集,增强和多个对比的必要性。总的来说,扫描措施可以为包裹MRI图像提供有效的方法,这是在更复杂的方法中建立的,快速准确地建立的。培训的模型嵌入在HTTPS://github.com/bthyreau/parcelcortex的开源局部局部工具中。 (c)2020 Elsevier B.V.保留所有权利。

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