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Prediction of Dissolution Data Integrated in Tablet Database Using Four-Layered Artificial Neural Networks

机译:使用四层人工神经网络预测片剂数据库中的溶出度数据

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A large number of dissolution data were measured and integrated into a previously constructed tablet database composed of 14 kinds of compounds as model active pharmaceutical ingredients (APIs) with contents ranging from 10 to 80%. The database has contained physicochemical and powder properties of APIs, together with basic physical attributes of tablets such as the tensile strength and the disintegration time. In order to enhance the value of this database, drug dissolution data are essential to improving key information for designing tablet formulations. A four-layered artificial neural network (4LNN), newly implemented in commercially available software, was employed to predict dissolution data from physicochemical and powder properties of APIs. Our results showed that an excellent model for the prediction of dissolution data was achieved with 4LNN method. The function of 4LNN was appreciably better than that of conventional three-layered model, despite both models adopting the same number of nodes and algorithms for activation functions. Furthermore, linear regression models resulted in poor prediction of dissolution data.
机译:测量了大量的溶出度数据并将其整合到先前构建的片剂数据库中,该数据库由14种化合物组成,作为模型活性药物成分(API),含量在10%至80%之间。该数据库包含API的理化性质和粉末性质,以及片剂的基本物理属性,例如抗张强度和崩解时间。为了提高该数据库的价值,药物溶解数据对于改善设计片剂的关键信息至关重要。在商业软件中新实现的四层人工神经网络(4LNN)用于根据API的理化性质和粉末性质预测溶出数据。我们的结果表明,使用4LNN方法可建立一个出色的溶出度数据预测模型。尽管两个模型都采用相同数量的节点和用于激活功能的算法,但4LNN的功能明显优于传统的三层模型。此外,线性回归模型导致溶出度数据预测不佳。

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