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Age-related Classification and Prediction Based on Magnetic Resonance Image: A Sparse Representation Method

机译:基于磁共振图像的年龄相关的分类和预测:稀疏表示方法

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Through analysis of structural magnetic resonance image (MRI), classification and prediction of the age of adults (19-79) were carried out to make analysis of the age-related changes of the grey matter (CM) density in cerebral cortex. Due to the distribute nature of the pattern representation in human brain, a multivariate voxel selection method based on sparse representation was introduced to improve the performance of the classifier. It can effectively pick out the isolating voxels as well as the clustered voxels which contribute enormously to the classification and age prediction. By using this multivariate voxel selection method, the binary classification can get a higher accuracy compared to univariate voxel selection method. Age prediction of all the subjects via sparse representation (SR) was carried out in our study. Four different models were used to fit the predicted age of all subjects in maturity index (MI) space. Difference trend of the brain development between the senior and the junior was observed. That the development or decline of GM of the senior over 60 accelerates was found in our study.
机译:通过分析结构磁共振图像(MRI),进行成人年龄(19-79)的分类和预测,以分析脑皮质中灰质(CM)密度的年龄相关变化。由于人脑中图案表示的分布性质,引入了一种基于稀疏表示的多变量体素选择方法来提高分类器的性能。它可以有效地挑出分离体素以及聚集体素,这些体素有助于对分类和年龄预测产生极大的贡献。通过使用这种多变量体素选择方法,与单变量体素选择方法相比,二进制分类可以获得更高的准确性。通过稀疏表示(SR)的所有受试者的年龄预测是在我们的研究中进行的。使用四种不同的模型来适应成熟指数(MI)空间中所有受试者的预测年龄。观察了高级和初级大脑发展的差异趋势。在我们的研究中发现了高级推定的转基金的发展或衰退。

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