Oral disintegrating tablets (ODTs) are a novel dosage form that can Peer review under responsibility of Shenyang Pharmaceutical University. be dissolved on the tongue within 3 min or less especially for geriatric and pediatric patients. Current ODT formulation studies usually rely on the personal experience of pharmaceutical experts and trial-and-error in the laboratory, which is inefficient and time-consuming. The aim of current research was to establish the prediction model of ODT formulations with direct compression process by artificial neural network (ANN) and deep neural network (DNN) techniques. 145 formulation data were extracted from Web of Science. All datasets were divided into three parts: training set (105 data), validation s...
As the pharmaceutical industry increasingly adopts the Pharma 4.0. concept, there is a growing need ...
NoThis study compares the performance of neurofuzzy logic and neural networks using two software pac...
In this study, effects of lubricant type, tablet compression pressure, and the duration of mixing wi...
In recent research on the formulation prediction of oral dissolving drugs, deep learning models with...
Current pharmaceutical formulation development still strongly relies on the traditional trial-and-er...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
We obtained a curated database based on the database published elsewhere. Chemical descriptors were ...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
The aim of this study was to apply artificial neural networks as deep learning tools in establishing...
During the development of a pharmaceutical formulation, a powerful tool is needed to extract the key...
As the pharmaceutical industry increasingly adopts the Pharma 4.0. concept, there is a growing need ...
NoThis study compares the performance of neurofuzzy logic and neural networks using two software pac...
In this study, effects of lubricant type, tablet compression pressure, and the duration of mixing wi...
In recent research on the formulation prediction of oral dissolving drugs, deep learning models with...
Current pharmaceutical formulation development still strongly relies on the traditional trial-and-er...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
A large number of dissolution data were measured and integrated into a previously constructed tablet...
We obtained a curated database based on the database published elsewhere. Chemical descriptors were ...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
Purpose: To investigate the impact of critical quality attributes (CQAs) and critical process parame...
The aim of this study was to apply artificial neural networks as deep learning tools in establishing...
During the development of a pharmaceutical formulation, a powerful tool is needed to extract the key...
As the pharmaceutical industry increasingly adopts the Pharma 4.0. concept, there is a growing need ...
NoThis study compares the performance of neurofuzzy logic and neural networks using two software pac...
In this study, effects of lubricant type, tablet compression pressure, and the duration of mixing wi...