In recent research on the formulation prediction of oral dissolving drugs, deep learning models with significantly improved performance compared to machine learning models were proposed. However, the performance degradation due to limitations of an imbalanced dataset with a small size and inefficient neural network structure has still not been resolved. Therefore, we propose new deep learning-based prediction models that maximize the prediction performance for disintegration time of oral fast disintegrating films (OFDF) and cumulative dissolution profiles of sustained-release matrix tablets (SRMT). In the case of OFDF, we use principal component analysis (PCA) to reduce the dimensionality of the dataset, thereby improving the prediction per...
Deep learning based methods have been widely applied to predict various kinds of molecular propertie...
Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies an...
Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candi...
Current pharmaceutical formulation development still strongly relies on the traditional trial-and-er...
Oral disintegrating tablets (ODTs) are a novel dosage form that can Peer review under responsibili...
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...
In recent years, increasingly more data-driven approaches have been successfully applied in various ...
The aim of this study was to apply artificial neural networks as deep learning tools in establishing...
Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discove...
We obtained a curated database based on the database published elsewhere. Chemical descriptors were ...
A critical step in the production of Esomeprazole powder for solution is a period between the fillin...
Deep learning based methods have been widely applied to predict various kinds of molecular propertie...
Deep learning based methods have been widely applied to predict various kinds of molecular propertie...
Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies an...
Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candi...
Current pharmaceutical formulation development still strongly relies on the traditional trial-and-er...
Oral disintegrating tablets (ODTs) are a novel dosage form that can Peer review under responsibili...
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...
In recent years, increasingly more data-driven approaches have been successfully applied in various ...
The aim of this study was to apply artificial neural networks as deep learning tools in establishing...
Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discove...
We obtained a curated database based on the database published elsewhere. Chemical descriptors were ...
A critical step in the production of Esomeprazole powder for solution is a period between the fillin...
Deep learning based methods have been widely applied to predict various kinds of molecular propertie...
Deep learning based methods have been widely applied to predict various kinds of molecular propertie...
Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies an...
Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candi...