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Dataset of Magnetic Resonance Images of Nonepileptic Subjects and Temporal Lobe Epilepsy Patients for Validation of Hippocampal Segmentation Techniques

机译:非癫痫患者和颞叶癫痫患者的磁共振图像数据集用于海马分割技术的验证

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The hippocampus has become the focus of research in several neurodegenerative disorders. Automatic segmentation of this structure from magnetic resonance (MR) imaging scans of the brain facilitates this work. Segmentation techniques must be evaluated using a dataset of MR images with accurate hippocampal outlines generated manually. Manual segmentation is not a trivial task. Lack of a unique segmentation protocol and poor image quality are only two factors that have confounded the consistency required for comparative study. We have developed a publicly available dataset of T1-weighted (T1W) MR images of epileptic and nonepileptic subjects along with their hippocampal outlines to provide a means of evaluation of segmentation techniques. This dataset contains 50 T1W MR images, 40 epileptic and ten nonepileptic. All images were manually segmented by a widely used protocol. Twenty five images were selected for training and were provided with hippocampal labels. Twenty five other images were provided without labels for testing algorithms. The users are allowed to evaluate their generated labels for the test images using 11 segmentation similarity metrics. Using this dataset, we evaluated two segmentation algorithms, Brain Parser and Classifier Fusion and Labeling (CFL), trained by the training set. For Brain Parser, an average Dice coefficient of 0.64 was obtained with the testing set. For CFL, this value was 0.75. Such findings indicate a need for further improvement of segmentation algorithms in order to enhance reliability.
机译:海马已成为几种神经退行性疾病研究的重点。从大脑的磁共振(MR)成像扫描中自动分割此结构有助于这项工作。必须使用具有手动生成的准确海马轮廓的MR图像数据集评估分割技术。手动分段不是一件容易的事。缺乏独特的分割协议和图像质量差只是混淆比较研究所需一致性的两个因素。我们已经开发了癫痫和非癫痫患者的T1加权(T1W)MR图像及其海马轮廓的公开可用数据集,以提供评估分割技术的手段。该数据集包含50个T1W MR图像,40个癫痫病和10个非癫痫病。通过广泛使用的协议对所有图像进行手动分割。选择了25张图像进行训练,并提供了海马标记。提供了另外25张没有标签的图像用于测试算法。允许用户使用11个细分相似度指标评估他们为测试图像生成的标签。使用该数据集,我们评估了由训练集训练的两种分割算法,即大脑解析器和分类器融合与标记(CFL)。对于Brain Parser,使用测试集获得的平均Dice系数为0.64。对于CFL,该值为0.75。这些发现表明需要进一步改进分割算法以增强可靠性。

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