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An Elastic Functional Data Analysis Framework for Preoperative Evaluation of Patients with Rheumatoid Arthritis

机译:用于术前评价类风湿性关节炎患者的弹性功能数据分析框架

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We present a novel framework to analyze hand force signals and to capture their key spatio-temporal patterns in order to characterize Rheumatoid Arthritis. We introduce a new continuous representation of hand force and derive optimal intra-class alignments using the notion of Karcher means on the quotient space under the action of the warping group. We apply this idea to temporally register hand force signal data using non-linear time warping. As a result, the original signals are separated into their phase and amplitude components. To capture the amplitude and phase variabilities in force functions we compute the dominant eigenfunctions of the covariance operator using functional principal component analysis. Finally, we use support vector machine classifiers to learn priors from current state-of-the-art features and additional features derived from our functional data analysis framework. The experimental results demonstrate that the proposed framework generates clinically relevant features leading to state-of-the-art classification performance.
机译:我们提出了一种新颖的框架来分析手力信号并捕获它们的关键时空模式,以表征类风湿性关节炎。我们使用Karcher手段概念在翘曲组的动作下引入新的手力和阶级阶级对齐的新连续表示。我们将此想法应用于使用非线性时间翘曲暂时登记手力信号数据。结果,原始信号被分成其相位和幅度分量。为了捕获力函数中的幅度和相变性,我们使用功能主成分分析计算协方差运算符的主导特征函数。最后,我们使用支持向量机分类器来学习来自当前最先进的功能的前沿以及源自我们的功能数据分析框架的其他功能。实验结果表明,所提出的框架产生临床相关的特征,导致最先进的分类性能。

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