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首页> 外文期刊>Gait & posture >Cluster analysis to classify gait alterations in rheumatoid arthritis using peak pressure curves.
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Cluster analysis to classify gait alterations in rheumatoid arthritis using peak pressure curves.

机译:使用峰值压力曲线对类风湿关节炎的步态变化进行聚类分析。

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摘要

OBJECTIVE: To detect gait alterations in rheumatoid arthritis (RA) patients using peak pressure curves (PPC) and normalized force curves (NFC) instead of clinical classification based on the health assessment questionnaire (HAQ). METHODS: Three RA groups--30 patients each--were classified according to their HAQ score. Cluster analysis based on a k-means algorithm was applied to PPCs and NFCs in order to classify RA patients with respect to amplitude and shapes of such gait parameters. RESULTS: The best gait pattern identification was obtained by clustering PPCs into three clusters. Peak pressures of the three identified patterns were 1169.5+/-99.4 kPa for cluster 1, 885.8+/-165.2 kPa for cluster 2 and 402.0+/-128.5 kPa for cluster 3 (statistically different, Student's t-test, p<0.001). 41 patients were included in cluster 3, 31 in cluster 2 and only 18 patients in cluster 1. Most RA3 patients--17 out of 30--showed low peak pressures and almost normal PPCs (cluster 3). Cluster 2, which incorporated altered PPCs, was mainly formed by RA1 and RA2 patients. CONCLUSIONS: PPC appears as a reliable gait parameter for a shape-based clustering algorithm. The proposed cluster analysis was proved to be reliable and the delivered classifications stable. The distribution of RA patients among the three identified PPC clusters showed only a partial agreement between clinical and functional classification, thus revealing the development of specific gait strategies related to the pathology more than to its clinical level of severity. This finding may be clinically relevant and support effective treatment of RA gait related pathologies.
机译:目的:使用峰值压力曲线(PPC)和归一化力曲线(NFC)替代风湿性关节炎(RA)患者的步态变化,而不是根据健康评估调查表(HAQ)进行临床分类。方法:根据RAQ评分将三个RA组(每组-30名患者)分类。将基于k均值算法的聚类分析应用于PPC和NFC,以便根据步态参数的幅度和形状对RA患者进行分类。结果:最佳步态模式识别是通过将PPC聚集成三个聚类获得的。三种识别模式的峰值压力分别为:群集1为1169.5 +/- 99.4 kPa,群集2为885.8 +/- 165.2 kPa,群集3为402.0 +/- 128.5 kPa(统计上不同,Student's t检验,p <0.001) 。第3组中包括41例患者,第2组中包括31例患者,第1组中只有18例患者。在30例中,大多数RA3患者--17表现出较低的峰值压力和几乎正常的PPC(第3组)。合并了PPC的簇2主要由RA1和RA2患者组成。结论:PPC作为基于形状的聚类算法的可靠步态参数。所提出的聚类分析被证明是可靠的,并且交付的分类是稳定的。 RA患者在三个已识别的PPC簇中的分布在临床和功能分类之间仅显示出部分一致性,因此揭示了与病理相关的特定步态策略的发展,而不是其严重程度。该发现可能与临床相关,并支持有效治疗RA步态相关的病理。

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