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Segmentation of Molecular Neuroimages Using Hidden Markov Random Fields in Order to Improve the Assisted Diagnosis of Neurodegenerative Diseases

机译:利用隐马尔科夫随机田的分子神经因子的分割,以改善神经变性疾病的辅助诊断

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In recent years, several computer-assisted diagnosis systems for neurodegenerative disorders have been presented. A large branch of these systems analyzes neuroimaging data using machine learning algorithms and are able to estimate the diagnosis of a new subject. Due to the high dimensionality of brain neuroimages compared to the number of examples available for training these systems, a dimensionality reduction strategy is recommended. In this work, we demonstrate a method to select regions of interest from molecular neuroimages, reducing, that way, their dimensionality. It is based on Hidden Markov Random Field (HMRF) and the Bhattacharyya distance. First, the average of all the images of a given modality is calculated. Subsequently, this image is segmented by a method based on HMRF. As a result, different maps are obtained according to the intensity and neighborhood of the voxels (it is more likely that a given voxel belongs to the same map than the voxels in its neighborhood). The resulting maps are then used as a mask to segment all our neuroimages. Subsequently, the data corresponding to the most discriminative maps are selected as regions of interest. The discriminative capacity is estimated by means of the Bhattacharyya distance. Finally, a Support Vector Machine classifier is used to separate controls and patients using the selected maps as features. This approach was evaluated using two sets of neuroimages, one with Alzheimer’s disease patients and healthy subjects and another one with parkinsonian patients and controls. For both datasets, the proposed method achieved higher accuracy rates than classical approaches, what suggest that segmentation based on HMRF is an interesting approach to select regions of interest from molecular neuroimaging data.
机译:近年来,已经提出了几种用于神经变性障碍的计算机辅助诊断系统。这些系统的大分支通过机器学习算法分析了神经影像数据,并且能够估计新对象的诊断。由于脑神经因子的高度与可用于训练这些系统的示例的数量相比,建议减少维度减少策略。在这项工作中,我们证明了一种选择来自分子神经镜的感兴趣区域,减少其维度的方法。它基于隐马尔可夫随机场(HMRF)和Bhattacharyya距离。首先,计算给定模态的所有图像的平均值。随后,通过基于HMRF的方法分段,该图像被分割。结果,根据体素的强度和邻域获得不同的地图(更可能是给定的体素属于与其邻域中的体素相同的地图)。然后将所得到的地图用作掩模以将所有神经图像分割。随后,选择与最多判别映射相对应的数据作为感兴趣的区域。通过Bhattacharyya距离估算判别能力。最后,使用支持向量机分类器用于将控件和患者单独使用所选地图作为特征。使用两组神经显影来评估这种方法,其中一组与阿尔茨海默病患者和健康受试者,另一个与帕金森患者和对照组。对于两个数据集,所提出的方法比经典方法实现了更高的精度率,这表明基于HMRF的分割是选择来自分子神经影像数据的感兴趣区域的有趣方法。

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