首页> 外文会议>MICCAI 2011;International conference on medical image computing and computer-assisted intervention >Detecting Outlying Subjects in High-Dimensional Neuroimaging Datasets with Regularized Minimum Covariance Determinant
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Detecting Outlying Subjects in High-Dimensional Neuroimaging Datasets with Regularized Minimum Covariance Determinant

机译:使用规范化的最小协方差行列式检测高维神经影像数据集中的外围对象

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Medical imaging datasets used in clinical studies or basic research often comprise highly variable multi-subject data. Statistically-controlled inclusion of a subject in a group study, i.e. deciding whether its images should be considered as samples from a given population or whether they should be rejected as outlier data, is a challenging issue. While the informal approaches often used do not provide any statistical assessment that a given dataset is indeed an outlier, traditional statistical procedures are not well-suited to the noisy, high-dimensional, settings encountered in medical imaging, e.g. with functional brain images. In this work, we modify the classical Minimum Covariance Determinant approach by adding a regularization term, that ensures that the estimation is well-posed in high-dimensional settings and in the presence of many outliers. We show on simulated and real data that outliers can be detected satisfactorily, even in situations where the number of dimensions of the data exceeds the number of observations.
机译:临床研究或基础研究中使用的医学成像数据集通常包含高度可变的多主题数据。在小组研究中以统计方式控制对象的纳入,即确定是否应将其图像视为来自给定人群的样本,或者是否应将其作为异常数据而拒绝,这是一个具有挑战性的问题。尽管经常使用的非正式方法无法提供任何统计评估,即给定的数据集确实是异常值,但传统的统计程序并不适合医学成像(例如医学影像)中遇到的嘈杂的高维设置。具有功能性的大脑图像。在这项工作中,我们通过添加正则化项来修改经典的最小协方差行列式方法,以确保估计在高维环境中和存在许多异常值时均具有正确的位置。我们在模拟数据和真实数据上显示,即使在数据维数超过观察数的情况下,也可以令人满意地检测到异常值。

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