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The influence of data pre-processing in the pattern recognition of excipients near-infrared spectra.

机译:数据预处理对赋形剂近红外光谱模式识别的影响。

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摘要

The effect of data pre-processing (no pre-processing, offset correction, de-trending, standard normal variate transformation (SNV), SNV + de-trending, multiplicative scatter correction, first and second derivative transformation after smoothing) on the identification of ten pharmaceutical excipients is investigated. Four pattern recognition methods are tested in the study, namely the Mahalanobis distance method, the SIMCA residual variance method, the wavelength distance method and a method based on triangular potential functions. The performance of the 32 method combinations is evaluated on the basis of two NIR data sets. The first one, measured in 1994, is used to build the classification models, the second, measured from 1994-1997, is used to assess the quality of the models. The best approach for the given data sets is the wavelength distance method combined with de-trending, a simple baseline correction method. More general recommendations for pre-processing excipient NIR data and for choosing an appropriate classification method are given.
机译:数据预处理(无预处理,偏移校正,去趋势,标准正态变量变换(SNV),SNV +去趋势,乘法分散校正,平滑后的一阶和二阶导数变换)对识别的影响研究了十种药物赋形剂。研究中测试了四种模式识别方法,即马氏距离法,SIMCA残差方差法,波长距离法和基于三角势函数的方法。基于两个NIR数据集评估32种方法组合的性能。 1994年测得的第一个用于构建分类模型,1994-1997年测得的第二个用于评估模型的质量。对于给定的数据集,最好的方法是将波长距离方法与去趋势相结合,这是一种简单的基线校正方法。对于预处理赋形剂NIR数据和选择合适的分类方法,给出了更一般的建议。

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