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An analysis of 14 molecular markers for monitoring osteoarthritis: segregation of the markers into clusters and distinguishing osteoarthritis at baseline.

机译:分析用于监测骨关节炎的14种分子标记物:将这些标记物分成簇,并在基线时区分骨关节炎。

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OBJECTIVE: To investigate the relationships between serum and urinary molecular markers (MM) used to monitor osteoarthritis. DESIGN: Forty osteoarthritis patients had blood and urine collected at baseline and 1, 3, 6 and 12 months later. Specimens from 20 controls were obtained twice at a one month interval. The concentration of 14 different markers was determined at each time point and the data were analyzed by statistical methodology. RESULTS: The markers could be divided by the method of principal components analysis into five clusters of related markers: inflammation markers (C-reactive protein, tumor necrosis receptor type I and tumor necrosis receptor type II, interleukin 6, eosinophilic cationic protein), bone markers (bone sialoprotein, hydroxylysyl pyridinoline, lysyl pyridinoline), putative markers of cartilage anabolism (carboxypropeptide of type II procollagen, hyaluronan, epitope 846) and catabolism (keratan sulfate, cartilage oligomeric matrix protein), and transforming growth factor beta. Three markers (tumor necrosis factor receptor II, cartilage oligomeric matrix protein and epitope 846) from independent clusters discriminated osteoarthritis patients from controls. Inflammation was not a confounding factor in measurement, but a recognizable distinguishing factor in osteoarthritis. CONCLUSIONS: The markers separated into rational groups on the basis of their covariance, a finding with independent biochemical support. The covariance of markers from the same cluster suggests the use of a representative marker from the cluster to reflect changes in osteoarthritis. If multiple markers are being measured within a single cluster, then the use of a weighted cluster 'factor' may be preferable to the separate use of individual markers.
机译:目的:探讨血清和尿液分子标记物(MM)之间的关系,以监测骨关节炎。设计:四十名骨关节炎患者在基线以及1、3、6和12个月后收集了血液和尿液。在一个月的间隔内两次从20个对照中获得标本。在每个时间点确定14种不同标志物的浓度,并通过统计方法分析数据。结果:可以通过主成分分析的方法将标记物分为五类相关标记物:炎症标记物(C反应蛋白,I型肿瘤坏死受体和II型肿瘤坏死受体,白细胞介素6,嗜酸性阳离子蛋白),骨标记(骨唾液蛋白,羟基吡啶基吡啶啉,赖氨酰吡啶啉),软骨合成代谢的推定标记(II型前胶原的羧肽,透明质酸,表位846)和分解代谢(硫酸角蛋白,软骨寡聚基质蛋白)和转化生长因子β。来自独立簇的三个标志物(肿瘤坏死因子受体II,软骨寡聚基质蛋白和表位846)将骨关节炎患者与对照区分开。炎症不是测量中的混杂因素,而是骨关节炎中可识别的区别因素。结论:标记物根据其协方差分为合理的组,这一发现具有独立的生化支持。来自同一簇的标志物的协方差表明,使用来自簇的代表性标志物来反映骨关节炎的变化。如果在单个聚类中测量多个标记,则使用加权聚类“因子”可能比单独使用单个标记更可取。

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