Predicting Oral Disintegrating Tablet Formulations by Neural Network Techniques
Run Han, Yilong Yang, Xiaoshan Li, Defang Ouyang

TL;DR
This study develops and compares neural network models, specifically ANN and DNN, to predict oral disintegrating tablet formulations, demonstrating that DNN provides more accurate predictions and can streamline formulation development.
Contribution
First application of deep neural networks with an improved dataset selection algorithm for small data formulation prediction in pharmaceuticals.
Findings
DNN outperforms ANN in prediction accuracy.
DNN achieved up to 85.60% accuracy on training data.
The predictive model can reduce development time and material use.
Abstract
Oral Disintegrating Tablets (ODTs) is a novel dosage form that can be dissolved on the tongue within 3min 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 data sets were divided into three parts: training set (105 data), validation set (20) and testing set (20). ANN and DNN were compared for the prediction of the disintegrating time. The accuracy of the ANN model has reached 85.60%, 80.00% and 75.00% on the training set, validation set and testing set…
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