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Classification of Alzheimer's disease in MRI using visual saliency information

机译:使用视觉显着信息对MRI中的阿尔茨海默病的分类

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Computational visual atention models aims to emulate the Human Visual System performance in selecting relevant features for efficient visual scene processing. As a result, visual saliency maps highlights relevant visual patterns in an image, possibly associated with objects or specific concepts. In the analysis of medical images, this allows the radiologist or clinical expert to focus the attention on image anormalities or specific patterns that could suggest the presence of a pathology. This paper presents an initial exploration of the effect of visual saliency models in the extraction of pathology-related relevant patterns, suitable for classification of Magnetic Resonance images of normal controls and probable Alzheimer's disease patients. By adjusting the saliency models to work on medical images, and combining this process with a Support Vector Machine for classification, the preliminar results shows a maximum performance of 85% in accuracy and 0.9 in the area under the ROC curve. In comparison with previous approaches, an increment of about 4% in the classification performance, suggesting that the visual saliency information could be promising for AD discrimination.
机译:计算可视化模型旨在模拟人类视觉系统性能,在选择有效的视觉场景处理中选择相关特征。结果,视觉显着图突出显示图像中的相关视觉模式,可能与对象或特定概念相关联。在对医学图像的分析中,这允许放射科医师或临床专家将注意力集中在可能提出病理学存在的图像主张或特定模式上。本文提出了对视力效果在促进病理学相关的相关模式中的影响的初步探索,适用于正常对照的磁共振图像和可能的阿尔茨海默病患者的磁共振图像分类。通过调整在医学图像上工作的显着模型,并将该过程与用于分类的支持向量机相结合,预备结果在ROC曲线下的区域中的最高性能为85%,而在该区域下的0.9。与以前的方法相比,分类性能的增量约为4%,表明视力效力可能是对广告歧视的承诺。

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