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Patch-Based Surface Morphometry Feature Selection with Federated Group Lasso Regression

机译:基于补丁的曲面形态格子特征选择与联合组套索回归

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Collectively, vast quantities of brain imaging data exist across hospitals and research institutions, providing valuable resources to study brain disorders such as Alzheimer's disease (AD). However, in practice, putting all these distributed datasets into a centralized platform is infeasible due to patient privacy concerns, data restrictions and legal regulations. In this study, we propose a novel federated feature selection framework that can analyze the data at each individual institution without data-sharing or accessing private patient information. In this framework, we first propose a federated group lasso optimization method based on block coordinate descent. We employ stability selection to determine statistically significant features, by solving the group lasso problem with a sequence of regularization parameters. To accelerate the stability selection, we further propose a federated screening rule, which can identify and exclude the irrelevant features before solving the group lasso. Here, we use this framework for patch based feature selection on hippocampal morphometry. Shape is characterized through two different kinds of local measures, the radial distance and the surface area determined via tensor-based morphometry (TBM). The method is tested on 1,127 T1-wcighted brain magnetic resonance images (MRI) of AD, mild cognitive impairment (MCI) and elderly control subjects, randomly assigned to five independent hypothetical institutions for testing purpose. We examine the association of MRI-based anatomical measures with general cognitive assessment and amyloid burden to identify the morphometry changes related to AD deterioration and plaque accumulation. Finally, we visualize the significance of the association on the hippocampal surfaces. Our experimental results successfully demonstrate the efficiency and effectiveness of our method.
机译:总之,脑成像数据的数量庞大的跨医院和研究机构的存在,提供了宝贵的资源来研究大脑疾病,如阿尔茨海默氏病(AD)。然而,在实践中,把所有这些分布式数据集到一个集中的平台是不可行的,由于病人的隐私问题,数据的限制和法律规定。在这项研究中,我们提出了一个新的联合特征选择的框架,可以在没有数据共享或访问私人病人信息的每个单个机构分析数据。在此框架下,我们首先提出了一种基于块坐标下降联合组套索优化方法。我们采用稳定性选择,以确定统计学显著的特点,通过正规化参数序列解决组套索问题。为了加速稳定性选择,我们进一步提出了一个联合的筛选规则,它可以识别并解决组套索之前,排除不相关的功能。在这里,我们使用对海马形态基于补丁特性选择这个框架。形状,其特征在于通过两种不同的地方措施,径向距离和表面面积经由基于张量的形态学(TBM)测定。该方法是在AD的1127 T1-wcighted脑磁共振图像(MRI)测试,轻度认知障碍(MCI)和老年对照受试者,随机分配至5个独立假想机构用于测试目的。我们研究与一般认知评估和淀粉样蛋白的负担基于MRI的解剖措施,以查明有关AD恶化和菌斑堆积的形态变化的关系。最后,我们形象化海马表面上的关联的意义。我们的实验结果证明成功的方法,我们的效率和效益。

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