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首页> 外文期刊>Pharmaceutics >Fast, Spectroscopy-Based Prediction of In Vitro Dissolution Profile of Extended Release Tablets Using Artificial Neural Networks
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Fast, Spectroscopy-Based Prediction of In Vitro Dissolution Profile of Extended Release Tablets Using Artificial Neural Networks

机译:使用人工神经网络的基于光谱的快速预测的缓释片剂的体外溶出度

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The pharmaceutical industry has never seen such a vast development in process analytical methods as in the last decade. The application of near-infrared (NIR) and Raman spectroscopy in monitoring production lines has also become widespread. This work aims to utilize the large amount of information collected by these methods by building an artificial neural network (ANN) model that can predict the dissolution profile of the scanned tablets. An extended release formulation containing drotaverine (DR) as a model drug was developed and tablets were produced with 37 different settings, with the variables being the DR content, the hydroxypropyl methylcellulose (HPMC) content and compression force. NIR and Raman spectra of the tablets were recorded in both the transmission and reflection method. The spectra were used to build a partial least squares prediction model for the DR and HPMC content. The ANN model used these predicted values, along with the measured compression force, as input data. It was found that models based on both NIR and Raman spectra were capable of predicting the dissolution profile of the test tablets within the acceptance limit of the f 2 difference factor. The performance of these ANN models was compared to PLS models using the same data as input, and the prediction of the ANN models was found to be more accurate. The proposed method accomplishes the prediction of the dissolution profile of extended release tablets using either NIR or Raman spectra.
机译:制药行业从未像过去十年那样在过程分析方法中取得如此巨大的发展。近红外(NIR)和拉曼光谱在监控生产线中的应用也已广泛普及。这项工作旨在通过构建可以预测扫描片剂的溶出度的人工神经网络(ANN)模型来利用通过这些方法收集的大量信息。开发了含有屈他维林(DR)作为模型药物的缓释制剂,并生产了37种不同设置的片剂,变量包括DR含量,羟丙基甲基纤维素(HPMC)含量和压缩力。通过透射和反射方法记录片剂的NIR和拉曼光谱。光谱用于为DR和HPMC含量建立偏最小二乘预测模型。 ANN模型将这些预测值以及测得的压缩力用作输入数据。发现基于NIR和拉曼光谱的模型均能够在f 2差异因子的接受极限内预测测试片剂的溶出曲线。使用与输入相同的数据,将这些ANN模型的性能与PLS模型进行了比较,发现ANN模型的预测更为准确。拟议的方法完成了使用NIR或拉曼光谱对缓释片剂溶出度的预测。

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