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首页> 外文期刊>Analytica chimica acta >Comparison of several curve resolution methods for drug impurity profiling using high-performance liquid chromatography with diode array detection
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Comparison of several curve resolution methods for drug impurity profiling using high-performance liquid chromatography with diode array detection

机译:高效液相色谱-二极管阵列检测用于药物杂质分析的几种曲线拆分方法的比较

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摘要

The performance of five curve resolution methods was compared systematically for the identification and quantification of impurities in drug imurity profiling. These methods are alternating least-squares (ALS) with either random or iterative key-set factor analysis (IKSFA) initialisation, iterative target transformation factor analysis (ITTFA), evolving factor analysis (EFA), and heuristic evolving latent projections (HELP). Real and simulated high-performance liquid chromatography diode array detection (HPLC-DAD) data were obtained for drug mixtures containing one main compound and two impurities. The elution order of the main compound and the impurities was varied. Furthermore, resolutions were varied from 0.56 to 3.36 and impurity levels from 30% down to 0.1%. For simulated data, ALS with IKSFA initialisation and HELP perform better than ITTFA and EFA, which perform better than ALS with random initialisation. ITTFA works better than EFA for almost completely separated data, while the opposite is true for moderately or strongly overlapping data. Only ALS with IKSFA initialisation and HELP were found to resolve the required 0.1% level for moderately overlapping data. For real data, comparison of the methods provides similar results. ITTFA performs clearly better than EFA. However, none of the curve resolution methods can identify or quantify impurities at the required 0.1% levle. The results for real data are worse than for simulated data because of heteroscedasticity, nonlinearity, and the acquisition resolution of the A/D-converter.
机译:系统比较了五种曲线拆分方法的性能,以鉴定和量化药物杂质分析中的杂质。这些方法是交替最小二乘(ALS),具有随机或迭代键集因子分析(IKSFA)初始化,迭代目标转换因子分析(ITTFA),演化因子分析(EFA)和启发式演化潜在投影(HELP)。获得了包含一种主要化合物和两种杂质的药物混合物的真实和模拟高效液相色谱二极管阵列检测(HPLC-DAD)数据。主化合物和杂质的洗脱顺序有所不同。此外,分离度从0.56到3.36不等,杂质含量从30%下降到0.1%。对于模拟数据,具有IKSFA初始化和HELP的ALS的性能优于ITTFA和EFA,后者具有比具有随机初始化的ALS更好的性能。对于几乎完全分离的数据,ITTFA比EFA更好,而对于中等或高度重叠的数据则相反。仅发现具有IKSFA初始化和HELP的ALS可以解决中等重叠数据所需的0.1%水平。对于真实数据,方法的比较可提供相似的结果。 ITTFA的表现明显优于全民教育。但是,没有一种曲线分辨率方法可以识别或量化所需的0.1%含量的杂质。由于异方差性,非线性和A / D转换器的采集分辨率,实际数据的结果比模拟数据的结果差。

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