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Automated design of robust discriminant analysis classifier for foot pressure lesions using kinematic data

机译:基于运动学数据的足压病变鲁棒判别分析分类器的自动化设计

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摘要

In the recent years, the use of motion tracking systems for acquisition of functional biomechanical gait data, has received increasing interest due to the richness and accuracy of the measured kinematic information. However, costs frequently restrict the number of subjects employed, and this makes the dimensionality of the collected data far higher than the available samples. This paper applies discriminant analysis algorithms to the classification of patients with different types of foot lesions, in order to establish an association between foot motion and lesion formation. With primary attention to small sample size situations, we compare different types of Bayesian classifiers and evaluate their performance with various dimensionality reduction techniques for feature extraction, as well as search methods for selection of raw kinematic variables. Finally, we propose a novel integrated method which fine-tunes the classifier parameters and selects the most relevant kinematic variables simultaneously. Performance comparisons are using robust resampling techniques such as Bootstrap$632+$and k-fold cross-validation. Results from experimentations with lesion subjects suffering from pathological plantar hyperkeratosis, show that the proposed method can lead to$sim 96%$correct classification rates with less than 10% of the original features.
机译:近年来,由于所测量的运动学信息的丰富性和准确性,使用运动跟踪系统来获取功能性生物力学步态数据已引起越来越多的关注。但是,成本经常会限制所用受试者的数量,这使收集到的数据的维数远远高于可用样本。本文将判别分析算法应用于具有不同类型足部病变的患者的分类,以建立足部运动与病变形成之间的关联。首先关注小样本量情况,我们比较了不同类型的贝叶斯分类器,并使用各种降维技术进行特征提取以及用于选择原始运动学变量的搜索方法,以评估其性能。最后,我们提出了一种新颖的集成方法,该方法可以微调分类器参数并同时选择最相关的运动学变量。性能比较使用的是强大的重采样技术,例如Bootstrap $ 632 + $和k倍交叉验证。对患有病理性足底过度角化病的病变对象进行实验的结果表明,该方法可导致正确分类率达到96%,而原始特征却不到10%。

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