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Multivariate Analysis Applied to the Study of Spatial Distributions Found in Drug-Eluting Stent Coatings by Confocal Raman Microscopy

机译:多变量分析在共焦拉曼显微镜研究药物洗脱支架涂层中发现的空间分布

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Multivariate data analysis was applied to confocal Raman measurements on stents coated with the polymers and drug used in the CYPHER Sirolimus-eluting Coronary Stents. Partial least-squares (PLS) regression was used to establish three independent calibration curves for the coating constituents: sirolimus, poly(n-butyl methacrylate) [PBMA], and poly(ethylene-co-vinyl acetate) [PEVA]. The PLS calibrations were based on average spectra generated from each spatial location profiled. The PLS models were tested on six unknown stent samples to assess accuracy and precision. The wt percent difference between PLS predictions and laboratory assay values for sirolimus was less than 1 wt percent for the composite of the six unknowns, while the polymer models were estimated to be less than 0.5 wt percent difference for the combined samples. The linearity and specificity of the three PLS models were also demonstrated with the three PLS models. In contrast to earlier univariate models, the PLS models achieved mass balance with better accuracy. This analysis was extended to evaluate the spatial distribution of the three constituents. Quantitative bitmap images of drug-eluting stent coatings are presented for the first time to assess the local distribution of components.
机译:多变量数据分析用于共聚焦拉曼测量,该支架上涂有用于CYPHER西罗莫司洗脱冠状动脉支架的聚合物和药物的支架。偏最小二乘(PLS)回归用于建立涂料成分的三个独立的校准曲线:西罗莫司,聚(甲基丙烯酸正丁酯)[PBMA]和聚(乙烯-乙酸乙烯酯)[PEVA]。 PLS校准基于从每个空间位置轮廓生成的平均光谱。在六个未知的支架样本上测试了PLS模型,以评估准确性和精密度。对于六个未知物质的复合物,西罗莫司的PLS预测值与实验室测定值之间的重量百分比差异小于1重量%,而组合样品的聚合物模型估计小于0.5重量%。三种PLS模型也证明了三种PLS模型的线性和特异性。与早期的单变量模型相比,PLS模型以更高的精度实现了质量平衡。扩展了该分析以评估三个组成部分的空间分布。首次展示了药物洗脱支架涂层的定量位图图像,以评估组件的局部分布。

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