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Automated Nonlinear Feature Generation and Classification of Foot Pressure Lesions

机译:足底压力病变的非线性自动特征生成和分类

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Plantar lesions induced by biomechanical dysfunction pose a considerable socioeconomic health care challenge, and failure to detect lesions early can have significant effects on patient prognoses. Most of the previous works on plantar lesion identification employed the analysis of biomechanical microenvironment variables like pressure and thermal fields. This paper focuses on foot kinematics and applies kernel principal component analysis (KPCA) for nonlinear dimensionality reduction of features, followed by Fisher's linear discriminant analysis for the classification of patients with different types of foot lesions, in order to establish an association between foot motion and lesion formation. Performance comparisons are made using leave-one-out cross-validation. Results show that the proposed method can lead to ~94% correct classification rates, with a reduction of feature dimensionality from 2100 to 46, without any manual preprocessing or elaborate feature extraction methods. The results imply that foot kinematics contain information that is highly relevant to pathology classification and also that the nonlinear KPCA approach has considerable power in unraveling abstract biomechanical features into a relatively low-dimensional pathology-relevant space.
机译:由生物力学功能障碍引起的足底病变对社会经济保健提出了巨大挑战,而未能及早发现病变可对患者的预后产生重大影响。以前有关足底病变识别的大部分工作都是利用生物力学微环境变量(如压力场和热场)进行分析。本文着重于脚部运动学,并应用核主成分分析(KPCA)进行特征的非线性降维,然后采用Fisher线性判别分析法对不同类型脚部病变的患者进行分类,以建立脚部运动与脚部运动之间的关联。病变形成。使用留一法交叉验证进行性能比较。结果表明,所提出的方法可以导致〜94%的正确分类率,而特征维数从2100减少到46,而无需任何人工预处理或精心设计的特征提取方法。结果表明,足部运动学包含与病理学分类高度相关的信息,并且非线性KPCA方法在将抽象生物力学特征分解为相对低维的病理学相关空间方面具有相当大的作用。

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