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使用人工神经网络和近红外光谱法预测完整片剂的药物含量和硬度。

Prediction of drug content and hardness of intact tablets using artificial neural network and near-infrared spectroscopy.

作者信息

Chen Y, Thosar S S, Forbess R A, Kemper M S, Rubinovitz R L, Shukla A J

机构信息

Boehringer Ingelheim Vetmedica, Inc, St Joseph, Missouri, USA.

出版信息

Drug Dev Ind Pharm. 2001 Aug;27(7):623-31. doi: 10.1081/ddc-100107318.

Abstract

The purpose of this study was to predict drug content and hardness of intact tablets using artificial neural networks (ANN) and near-infrared spectroscopy (NIRS). Tablets for the drug content study were compressed from mixtures of Avicel PH-101, 0.5% magnesium stearate, and varying concentrations (0%, 1%, 2%, 5%, 10%, 20%, and 40% w/w) of theophylline. Tablets for the hardness study were compressed from mixtures of Avicel PH-101 and 0.5% magnesium stearate at varying compression forces ranging from 0.4 to 1 ton. An Intact Analyzer was used to obtain near infrared spectra from the tablets with varying drug contents, whereas a Rapid Content Analyzer (RCA) was used to obtain spectral data from the tablets with varying hardness. Two sets of tablets from each batch (i.e., tablets with varying drug content and hardness) were randomly selected. One set of tablets was used to generate appropriate calibration models, while the other set was used as the unknown (test) set. A total of 10 ANN calibration models (5 each with 10 and 160 inputs at appropriate wavelengths) and five separate 4-factor partial least squares (PLS) calibration models were generated to predict drug contents of the test tablets from the spectral data. For the prediction of tablet hardness, two ANN calibration models (one each with 10 and 160 inputs) and two 4-factor PLS calibration models were generated and used to predict the hardness of test tablets. The PLS calibration models were generated using Vision software. Prediction of drug contents of test tablets using the ANN calibration models generated with 10 inputs was significantly better than the prediction obtained with the ANN calibration models with 160 inputs. For tablets with low drug concentrations (less than or equal to 2% w/w) prediction of drug content was better with either of the two ANN calibration models than with the PLS calibration models. However, prediction of drug contents of tablets with greater than or equal to 5% w/w drug was better with the PLS calibration models than with the ANN calibration models. Prediction of tablet hardness was better with the ANN calibration models generated with either 10 or 160 inputs than with the PLS calibration models. This work demonstrated that a well-trained ANN model is a powerful alternative technique for analysis of NIRS data. Moreover, the technique could be used in instances when the conventional modeling of data does not work adequately.

摘要

本研究的目的是使用人工神经网络(ANN)和近红外光谱(NIRS)预测完整片剂的药物含量和硬度。用于药物含量研究的片剂由微晶纤维素PH - 101、0.5%硬脂酸镁以及不同浓度(0%、1%、2%、5%、10%、20%和40% w/w)的茶碱混合物压制而成。用于硬度研究的片剂由微晶纤维素PH - 101和0.5%硬脂酸镁混合物在0.4至1吨的不同压力下压制而成。使用完整分析仪从具有不同药物含量的片剂中获取近红外光谱,而使用快速含量分析仪(RCA)从具有不同硬度的片剂中获取光谱数据。从每批中随机选择两组片剂(即具有不同药物含量和硬度的片剂)。一组片剂用于生成适当的校准模型,而另一组用作未知(测试)组。总共生成了10个人工神经网络校准模型(5个在适当波长下分别具有10个和160个输入)和5个单独的4因子偏最小二乘法(PLS)校准模型,以根据光谱数据预测测试片剂的药物含量。对于片剂硬度的预测,生成了两个人工神经网络校准模型(一个具有10个输入,另一个具有160个输入)和两个4因子PLS校准模型,并用于预测测试片剂的硬度。PLS校准模型使用Vision软件生成。使用具有10个输入生成的人工神经网络校准模型对测试片剂药物含量的预测明显优于具有160个输入的人工神经网络校准模型。对于低药物浓度(小于或等于2% w/w)的片剂,两种人工神经网络校准模型中的任何一种对药物含量的预测都优于PLS校准模型。然而,对于药物含量大于或等于5% w/w的片剂,PLS校准模型对药物含量的预测优于人工神经网络校准模型。使用具有10个或160个输入生成的人工神经网络校准模型对片剂硬度的预测优于PLS校准模型。这项工作表明,经过良好训练的人工神经网络模型是分析近红外光谱数据的一种强大替代技术。此外,该技术可用于传统数据建模无法充分发挥作用的情况。

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