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Using Copula Distributions to Support More Accurate Imaging-Based Diagnostic Classifiers for Neuropsychiatric Disorders

机译:使用Copula分布来支持针对神经精神疾病的更准确的基于影像的诊断分类器

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摘要

Many investigators have tried to apply machine learning techniques to magnetic resonance images (MRIs) of the brain in order to diagnose neuropsychiatric disorders. Usually the number of brain imaging measures (such as measures of cortical thickness and measures of local surface morphology) derived from the MRIs (i.e., their dimensionality) has been large (e.g. >10) relative to the number of participants who provide the MRI data (<100). Sparse data in a high dimensional space increases the variability of the classification rules that machine learning algorithms generate, thereby limiting the validity, reproducibility, and generalizability of those classifiers. The accuracy and stability of the classifiers can improve significantly if the multivariate distributions of the imaging measures can be estimated accurately. To accurately estimate the multivariate distributions using sparse data, we propose to estimate first the univariate distributions of imaging data and then combine them using a Copula to generate more accurate estimates of their multivariate distributions. We then sample the estimated Copula distributions to generate dense sets of imaging measures and use those measures to train classifiers. We hypothesize that the dense sets of brain imaging measures will generate classifiers that are stable to variations in brain imaging measures, thereby improving the reproducibility, validity, and generalizability of diagnostic classification algorithms in imaging datasets from clinical populations. In our experiments, we used both computer-generated and real-world brain imaging datasets to assess the accuracy of multivariate Copula distributions in estimating the corresponding multivariate distributions of real-world imaging data. Our experiments showed that diagnostic classifiers generated using imaging measures sampled from the Copula were significantly more accurate and more reproducible than were the classifiers generated using either the real-world imaging measures or their multivariate Gaussian distributions. Thus, our findings demonstrate that estimated multivariate Copula distributions can generate dense sets of brain imaging measures that can in turn be used to train classifiers, and those classifiers are significantly more accurate and more reproducible than are those generated using real-world imaging measures alone.
机译:许多研究人员已尝试将机器学习技术应用于大脑的磁共振图像(MRI),以诊断神经精神疾病。通常,相对于提供MRI数据的参与者数量,源自MRI的大脑成像测量(例如皮质厚度测量和局部表面形态测量)数量大(例如,> 10) (<100)。高维空间中的稀疏数据会增加机器学习算法生成的分类规则的可变性,从而限制了这些分类器的有效性,可重复性和通用性。如果可以准确估计成像度量的多元分布,则分类器的准确性和稳定性可以显着提高。为了使用稀疏数据准确估计多元分布,我们建议首先估计成像数据的单变量分布,然后使用Copula对其进行组合以生成对其多元分布的更准确估计。然后,我们对估计的Copula分布进行采样,以生成密集的成像量度集,并使用这些量度来训练分类器。我们假设密集的脑成像测量集将生成对脑成像测量变化稳定的分类器,从而提高临床人群成像数据集中诊断分类算法的可重复性,有效性和通用性。在我们的实验中,我们使用计算机生成的和真实世界的大脑成像数据集来评估多元Copula分布的准确性,以估算真实世界成像数据的相应多元分布。我们的实验表明,使用Copula采样成像方法生成的诊断分类器比使用实际成像度量或其多元高斯分布生成的分类器显着更准确,更可重现。因此,我们的发现表明,估计的多元Copula分布可以生成密集的大脑成像指标集,进而可以用于训练分类器,并且与仅使用真实世界的成像指标生成的分类器相比,这些分类器的准确性和可重复性明显更高。

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