Department of Pharmaceutical Sciences, University of Maryland, School of Pharmacy, 20 N. Pine Street, Baltimore, Maryland, 21201, USA.
Amneal Pharmaceuticals, 50 Horseblock Road, Brookhaven, New York, 11719, USA.
AAPS PharmSciTech. 2019 Jun 18;20(6):222. doi: 10.1208/s12249-019-1401-4.
The aim of the work is to develop a data fusion model using near-infrared (NIR) and process parameters for the predictions of drug dissolution from controlled release multiparticulate beads. Using a design of experiments, ciprofloxacin-coated beads were manufactured and critical process parameters such as air volume, product temperature, curing temperature, and curing time were measured; environmental humidity was monitored using a Pyrobuttons®. The NIR spectra were decomposed using principal component analysis (PCA). The PCA scores were fused with process measurements and all variables were autoscaled. The autoscaled variables were regressed against measured dissolution data at 1 h and 2 h time points; the PLS regression used quadratic and cross terms. The NIR spectra only model using data collected at the end of bead curing generated a PLS model using 5 latent variables with R equal to 0.245 and 0.299 and RMSECV 13.23 and 13.12 for the 1 h and 2 h dissolution time points, respectively. The low R and high root mean square error of cross validation (RMSECV) values indicate that NIR spectra alone were insufficient to model the drug release. Similar results were obtained for NIR model using data collected at the end of spraying phase. Models with fused spectral and process data yielded better prediction with R above 0.88 and RMSECV less than 5% for the 1 h and 2 h dissolution time points. The data fusion model predicted dissolution profiles with an error less than 10%.
本工作旨在开发一种使用近红外(NIR)和过程参数的数据融合模型,以预测控释多颗粒丸剂中药物的溶出度。采用实验设计,制备了环丙沙星包衣丸,并测量了关键工艺参数,如空气量、产品温度、固化温度和固化时间;使用 Pyrobuttons®监测环境湿度。采用主成分分析(PCA)对 NIR 光谱进行分解。将 PCA 得分与过程测量值融合,并对所有变量进行自动缩放。将自动缩放变量与 1 小时和 2 小时时间点的测量溶出度数据进行回归;偏最小二乘回归使用二次项和交叉项。仅使用固化结束时收集的数据建立 NIR 光谱模型,使用 5 个潜在变量的 PLS 模型,R 值分别为 0.245 和 0.299,1 小时和 2 小时溶出时间点的 RMSECV 分别为 13.23 和 13.12。R 值较低且交叉验证均方根误差(RMSECV)较高,表明 NIR 光谱本身不足以对药物释放进行建模。在固化结束时收集数据的 NIR 模型也得到了类似的结果。融合光谱和过程数据的模型具有更好的预测效果,R 值大于 0.88,1 小时和 2 小时溶出时间点的 RMSECV 小于 5%。数据融合模型预测的溶出度曲线误差小于 10%。