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Automatic Rodent Brain MRI Lesion Segmentation with Fully Convolutional Networks

机译:具有完全卷积网络的自动啮齿动物MRI病变分割

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Manual segmentation of rodent brain lesions from magnetic resonance images (MRIs) is an arduous, time-consuming and subjective task that is highly important in pre-clinical research. Several automatic methods have been developed for different human brain MRI segmentation, but little research has targeted automatic rodent lesion segmentation. The existing tools for performing automatic lesion segmentation in rodents are constrained by strict assumptions about the data. Deep learning has been successfully used for medical image segmentation. However, there has not been any deep learning approach specifically designed for tackling rodent brain lesion segmentation. In this work, we propose a novel Fully Convolutional Network (FCN), RatLesNet, for the aforementioned task. Our dataset consists of 131 T2-weighted rat brain scans from 4 different studies in which ischemic stroke was induced by transient middle cerebral artery occlusion. We compare our method with two other 3D FCNs originally developed for anatomical segmentation (VoxResNet and 3D-U-Net) with 5-fold cross-validation on a single study and a generalization test, where the training was done on a single study and testing on three remaining studies. The labels generated by our method were quantitatively and qualitatively better than the predictions of the compared methods. The average Dice coefficient achieved in the 5-fold cross-validation experiment with the proposed approach was 0.88, between 3.7% and 38% higher than the compared architectures. The presented architecture also outperformed the other FCNs at generalizing on different studies, achieving the average Dice coefficient of 0.79.
机译:从磁共振图像(MRI)手动分割啮齿动物的脑部病变是一项艰巨,耗时且主观的任务,在临床前研究中非常重要。已经针对不同的人脑MRI分割开发了几种自动方法,但是针对自动啮齿动物病变分割的研究很少。用于对啮齿动物进行自动病变分割的现有工具受到有关数据严格假设的约束。深度学习已成功用于医学图像分割。但是,还没有专门设计用于解决啮齿动物脑病变分割的深度学习方法。在这项工作中,我们为上述任务提出了一种新颖的全卷积网络(RCN),即RatLesNet。我们的数据集由来自4个不同研究的131次T2加权大鼠脑扫描组成,其中短暂性中脑动脉闭塞诱发了缺血性中风。我们将我们的方法与其他两个最初为解剖学分割而开发的3D FCN(VoxResNet和3D-U-Net)进行了比较,并在单个研究和泛化测试中进行了5倍交叉验证,其中训练是在单个研究和测试中完成的其余三项研究。通过我们的方法生成的标记在数量和质量上均优于比较方法的预测。在5倍交叉验证实验中,通过提出的方法实现的平均Dice系数为0.88,比比较的体系结构高3.7%至38%。提出的架构在不同研究上的表现也优于其他FCN,达到了平均Dice系数0.79。

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