Department of Biosystems Machinery Engineering, College of Agricultural and Life Science, Chungnam National University , 99 Daehak-ro, Yuseong-gu, Daejeon 34134, South Korea.
Process Analytical Technology, Analytical Development, Biogen , Cambridge, Massachusetts, United States.
Anal Chem. 2016 Nov 15;88(22):11055-11061. doi: 10.1021/acs.analchem.6b02969. Epub 2016 Oct 31.
Monitoring the amount of active pharmaceutical ingredient (API) in finished dosage form is important to ensure the content uniformity of the product. In this report, we summarize the development and validation of a hyperspectral imaging (HSI) technique for rapid in-line prediction of the active pharmaceutical ingredient (API) in microtablets with concentrations varying from 60 to 130% API (w/w). The tablet spectra of different API concentrations were collected in-line using an HSI system within the visible/near-infrared (vis/NIR; 400-1000 nm) and short-wave infrared (SWIR; 1100-2500 nm) regions. The ability of the HSI technique to predict the API concentration in the tablet samples was validated against a reference high-performance liquid chromatography (HPLC) method. The prediction efficiency of two different types of multivariate data modeling methods, that is, partial least-squares regression (PLSR) and principle component regression (PCR), were compared. The prediction ability of the regression models was cross-validated against results generated with the reference HPLC method. The results obtained from the PLSR models showed reliable performance for predicting the API concentration in SWIR region. The highest coefficient of determination (Rp) was 0.96, associated with the lowest predicted error and bias of 4.45 and -0.35%, respectively. Furthermore, the concentration-mapped images of PLSR and PCR models were used to visually characterize the API concentration present on the tablet surface. Based on these results, we suggest that HSI measurement combined with multivariate data analysis and chemical imaging could be implemented in the production environment for rapid in-line determination of pharmaceutical product quality.
监测成品制剂中活性药物成分 (API) 的含量对于确保产品的含量均匀度非常重要。在本报告中,我们总结了一种高光谱成像 (HSI) 技术的开发和验证,该技术可快速在线预测浓度范围为 60%至 130% API(w/w)的微丸中的活性药物成分 (API)。使用 HSI 系统在可见/近红外 (vis/NIR; 400-1000nm) 和短波红外 (SWIR; 1100-2500nm) 区域内在线采集不同 API 浓度的片剂光谱。HSI 技术预测片剂样品中 API 浓度的能力通过与参考高效液相色谱 (HPLC) 方法进行验证。比较了两种不同类型的多元数据分析方法,即偏最小二乘回归 (PLSR) 和主成分回归 (PCR),预测 API 浓度的能力。回归模型的预测能力通过与参考 HPLC 方法生成的结果进行交叉验证来验证。PLSR 模型的结果表明,在 SWIR 区域预测 API 浓度具有可靠的性能。最高决定系数 (Rp) 为 0.96,与最低预测误差和偏差 4.45%和-0.35%相关。此外,PLSR 和 PCR 模型的浓度映射图像用于直观地表征片剂表面存在的 API 浓度。基于这些结果,我们建议将 HSI 测量与多元数据分析和化学成像相结合,可用于生产环境中快速在线确定药物产品质量。