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Estimating the age of healthy subjects from T_1-weighted MRI scans using kernel methods: Exploring the influence of various parameters

机译:使用核方法从T_1加权MRI扫描估计健康受试者的年龄:探索各种参数的影响

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The early identification of brain anatomy deviating from the normal pattern of growth and atrophy, such as in Alzheimer's disease (AD), has the potential to improve clinical outcomes through early intervention. Recently, Davatzikos et al. (2009) supported the hypothesis that pathologic atrophy in AD is an accelerated aging process, implying accelerated brain atrophy. In order to recognize faster brain atrophy, a model of healthy brain aging is needed first. Here, we introduce a framework for automatically and efficiently estimating the age of healthy subjects from their T_1-weighted MRI scans using a kernel method for regression. This method was tested on over 650 healthy subjects, aged 19-86 years, and collected from four different scanners. Furthermore, the influence of various parameters on estimation accuracy was analyzed. Our age estimation framework included automatic preprocessing of the T_1-weighted images, dimension reduction via principal component analysis, training of a relevance vector machine (RVM; Tipping, 2000) for regression, and finally estimating the age of the subjects from the test samples. The framework proved to be a reliable, scanner-independent, and efficient method for age estimation in healthy subjects, yielding a correlation of r=0.92 between the estimated and the real age in the test samples and a mean absolute error of 5 years. The results indicated favorable performance of the RVM and identified the number of training samples as the critical factor for prediction accuracy. Applying the framework to people with mild AD resulted in a mean brain age gap estimate (BrainAGE) score of +10 years.
机译:早期识别偏离正常生长和萎缩模式(例如阿尔茨海默氏病(AD))的大脑解剖结构,具有通过早期干预改善临床结果的潜力。最近,Davatzikos等人。 (2009)支持这一假说,即AD的病理性萎缩是加速衰老的过程,这意味着脑萎缩加速。为了识别更快的脑萎缩,首先需要健康的大脑衰老模型。在这里,我们介绍了一个框架,该框架使用核方法进行回归,从健康受试者的T_1加权MRI扫描中自动有效地估算其年龄。该方法在650多名19-86岁的健康受试者中进行了测试,并从四台不同的扫描仪上进行了采集。此外,分析了各种参数对估计精度的影响。我们的年龄估算框架包括自动对T_1加权图像进行预处理,通过主成分分析进行降维,训练相关向量机(RVM; Tipping,2000)进行回归,最后从测试样本中估算受试者的年龄。该框架被证明是健康受试者年龄估计的可靠,独立于扫描仪的有效方法,在测试样本的估计年龄与实际年龄之间的相关系数r = 0.92,平均绝对误差为5年。结果表明RVM的性能良好,并将训练样本的数量确定为预测准确性的关键因素。将框架应用于轻度AD患者的平均脑年龄差距估计(BrainAGE)得分为+10年。

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