Litcius/Paper detail

Computational analysis of controlled drug release from porous polymeric carrier with the aid of Mass transfer and Artificial Intelligence modeling

Saad M. Alshahrani, Hadil Faris Alotaibi, M. Yasmin Begum

2024Scientific Reports13 citationsDOIOpen Access PDF

Abstract

Controlled release of a desired drug from porous polymeric biomaterials was analyzed via computational method. The method is based on simulation of mass transfer and utilization of artificial intelligence (AI). This study explores the efficacy of three regression models, i.e., Kernel Ridge Regression (KRR), Gaussian Process Regression (GPR), and Gradient Boosting (GB) in determining the concentration of a chemical substance ( C ) based on coordinates ( r , z ). Leveraging Firefly Optimization (FFA) for hyperparameter optimization, the models are fine-tuned to maximize their predictive performance. The findings unveil notable disparities in the performance metrics of the models, with GB showcasing the most impressive R 2 score of 0.9977, indicative of a remarkable alignment with the data. GPR closely trails with an R 2 score of 0.88754, while KRR falls short with an R 2 score of 0.76134. Additionally, GB manifests the most modest Mean Squared Error (MSE) and Root Mean Squared Error (RMSE) among the trio of models, further cementing its supremacy in predictive precision. These outcomes accentuate the significance of judiciously selecting regression methodologies and optimization approaches for adeptly modeling intricate spatial datasets.

Topics & Concepts

KrigingMean squared errorHyperparameterComputer scienceRegressionArtificial intelligenceSupport vector machineMachine learningGaussian processRegression analysisGaussianStatisticsMathematicsChemistryComputational chemistryMachine Learning and Data ClassificationMachine Learning and AlgorithmsAdvanced Multi-Objective Optimization Algorithms