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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Effect of Experimental Design on the Prediction Performance of Calibration Models Based on Near-Infrared Spectroscopy for Pharmaceutical Applications
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Effect of Experimental Design on the Prediction Performance of Calibration Models Based on Near-Infrared Spectroscopy for Pharmaceutical Applications

机译:实验设计对基于近红外光谱的制药校正模型预测性能的影响

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摘要

Near-infrared spectroscopy (NIRS) is a valuable tool in the pharmaceutical industry, presenting opportunities for online analyses to achieve real-time assessment of intermediates and finished dosage forms. The purpose of this work was to investigate the effect of experimental designs on prediction performance of quantitative models based on NIRS using a five-component formulation as a model system. The following experimental designs were evaluated: five-level, full factorial (5-L FF); three-level, full factorial (3-L FF); central composite; I-optimal; and D-optimal. The factors for all designs were acetaminophen content and the ratio of microcrystalline cellulose to lactose monohydrate. Other constituents included croscarmellose sodium and magnesium stearate (content remained constant). Partial least squares-based models were generated using data from individual experimental designs that related acetaminophen content to spectral data. The effect of each experimental design was evaluated by determining the statistical significance of the difference in bias and standard error of the prediction for that model's prediction performance. The calibration model derived from the I-optimal design had similar prediction performance as did the model derived from the 5-L FF design, despite containing 16 fewer design points. It also outperformed all other models estimated from designs with similar or fewer numbers of samples. This suggested that experimental-design selection for calibration-model development is critical, and optimum performance can be achieved with efficient experimental designs (i.e., optimal designs).
机译:近红外光谱(NIRS)在制药行业中是一种有价值的工具,为在线分析提供了机会,以实现对中间体和最终剂型的实时评估。这项工作的目的是调查实验设计对基于NIRS的定量模型的预测性能的影响,其中NIRS使用五组分配方作为模型系统。评估了以下实验设计:五级全阶乘(5-L FF);三级全阶乘(3-L FF);中央复合材料我最优;和D最佳。所有设计的因素是对乙酰氨基酚含量和微晶纤维素与乳糖一水合物的比率。其他成分包括交联羧甲基纤维素钠和硬脂酸镁(含量保持恒定)。使用来自对乙酰氨基酚含量与光谱数据相关的单个实验设计的数据,生成了基于偏最小二乘的模型。通过确定该模型的预测性能的预测偏差和标准误差差异的统计显着性,可以评估每个实验设计的效果。尽管包含的设计点少了16个,但从I最优设计得出的校准模型的预测性能与从5-L FF设计得出的模型相似。它也胜过从具有相似或更少样本数量的设计估计的所有其他模型。这表明选择用于校准模型的实验设计至关重要,并且可以通过有效的实验设计(即最佳设计)实现最佳性能。

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