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Joint estimation of multiple clinical variables of neurological diseases from imaging patterns

机译:从成像模式联合估算神经系统疾病的多个临床变量

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This paper presents a method to estimate multiple clinical variables associated with neurological pathologies from brain images, aiming to quantitatively evaluate continuous transition of neurological pathologies from the normal to diseased state. Built upon morphological measures derived from structural MR brain images, a Bayesian regression method is developed to jointly model multiple clinical variables for capturing their inherent correlations and suppressing noise. Coupled with a feature selection technique, the regression method is used to build a joint estimator of multiple clinical variables associated with Alzheimer's disease from structural MR brain images of elderly individuals. The cross-validation results demonstrate that the proposed method has superior performance over existing techniques.
机译:本文提出了一种从大脑图像估计与神经病理学相关的多个临床变量的方法,旨在定量评估神经病理学从正常状态到患病状态的连续转变。建立在从结构性MR脑图像得出的形态学指标的基础上,开发出一种贝叶斯回归方法,以对多个临床变量进行联合建模,以捕获其固有的相关性并抑制噪声。结合特征选择技术,该回归方法用于根据老年人的结构性MR脑图像建立与阿尔茨海默氏病相关的多个临床变量的联合估计量。交叉验证结果表明,所提出的方法具有优于现有技术的性能。

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