2023
DOI: 10.1016/j.ejps.2022.106346
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Predicting mini-tablet dissolution performance utilizing X-ray computed tomography

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Cited by 4 publications
(2 citation statements)
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“…The particles in contact with the fluid starts to dissolve. At the same time the fluid enters the tablet through the pores and its network resulting in the disintegration of the tablet into smaller pieces and this stage is effectively controlled by the concentration of pores [ 242 , 243 , 244 , 245 , 246 , 293 , 345 , 346 , 347 ]. By extracting the information of the pore network and its permeability from a SEM image, Zhang et al [ 348 ] has shown that one can estimate the drug release rate by computational fluid dynamic simulation.…”
Section: Tablet Characterizationmentioning
confidence: 99%
“…The particles in contact with the fluid starts to dissolve. At the same time the fluid enters the tablet through the pores and its network resulting in the disintegration of the tablet into smaller pieces and this stage is effectively controlled by the concentration of pores [ 242 , 243 , 244 , 245 , 246 , 293 , 345 , 346 , 347 ]. By extracting the information of the pore network and its permeability from a SEM image, Zhang et al [ 348 ] has shown that one can estimate the drug release rate by computational fluid dynamic simulation.…”
Section: Tablet Characterizationmentioning
confidence: 99%
“…Examples include the automated high-throughput extraction of morphological traits from μCT images of rice plants [ 68 ], geological sample classification [ 69 ], the classification of urinary stones from medical μCT scans [ 70 ], permeability estimation of complex pore structures of carbonate rock [ 71 ], and the quality enhancement of low-dose μCT scans [ 72 ]. In pharmaceutical research, CNNs have been applied to predict mini-tablet dissolution performance based on film coating integrity analysis using convolutional neural networks [ 73 ].…”
Section: Introductionmentioning
confidence: 99%