Radiomics Textural Features Extracted from Subcortical Structures of Grey Matter Probability for Alzheimers Disease Detection.

César Antonio Ortiz Toro, Nuria Gutiérrez Sánchez, C. Gonzalo-Martín, Roberto Garrido García, A. R. González, Ernestina Menasalvas Ruiz
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引用次数: 2

Abstract

Alzheimer's disease (AD) is characterized by a progressive deterioration of cognitive and behavioral functions as a result of the atrophy of specific regions of the brain. It is estimated that by 2050 there will be 131.5 million people affected. Thus, there is an urgent need to find biological markers for its early detection and monitoring. In this work, it is present an analysis of textural radiomics features extracted from a gray matter probability volume, in a set of individual subcortical regions, from a number of different atlases, to identify subject with AD in a MRI. Also, significant subcortical regions for AD detection have been identified using a ReliefF relevance test. Experimental results using the ADNI1 database have proven the potential of some of the tested radiomic features as possible biomarkers for AD/CN differentiation.
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从灰质皮层下结构提取辐射组学纹理特征用于阿尔茨海默病的检测。
阿尔茨海默病(AD)的特征是由于大脑特定区域的萎缩导致认知和行为功能的进行性恶化。据估计,到2050年将有1.315亿人受到影响。因此,迫切需要寻找早期发现和监测的生物标志物。在这项工作中,它提出了从灰质概率体积中提取的纹理放射组学特征的分析,在一组单独的皮层下区域,从许多不同的地图集,在MRI中识别AD受试者。此外,使用ReliefF相关测试确定了AD检测的重要皮层下区域。使用ADNI1数据库的实验结果证明了一些测试的放射学特征可能作为AD/CN分化的生物标志物。
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