Treffer: Computer-aided optimization of carbidopa/levodopa orally disintegrating tablets.

Title:
Computer-aided optimization of carbidopa/levodopa orally disintegrating tablets.
Authors:
Qin, Fucheng1 (AUTHOR), Wan, Congcong1 (AUTHOR), Zhang, Yuanyuan1 (AUTHOR) zyy800928@126.com
Source:
Drug Development & Industrial Pharmacy. Apr2024, Vol. 50 Issue 4, p331-340. 10p.
Database:
Business Source Premier

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This study aimed to optimize the formulation of carbidopa/levodopa orally disintegrating tablets (ODTs) in order to improve their disintegration performance, and facilitate easier medication intake for Parkinson's patients. The response surface methodology (RSM) was used to optimize the formulation, with the content of cross-linked polyvinylpyrrolidone (PVPP), microcrystalline cellulose (MCC), and mannitol (MNT) as independent variables, and disintegration time as the response parameter. Python was utilized to model Carr Indices and mixing time to determine the suitable mixing time. Direct compression (DC) was used for the preparation of ODTs. The optimization process resulted in the following values for the independent variables: 7.04% PVPP, 22.02% MCC, and 16.21% MNT. By optimizing the mixing time using Python, it was reduced to 14.19 min. The ODTs prepared using the optimized formulation and a mixing time of 14.19 min exhibited disintegration times of 16.74 s in vitro and 17.63 s in vivo. The content uniformity of levodopa and carbidopa was found to be 100.83% and 99.48%, respectively. The ODTs optimized using RSM and Python demonstrated excellent disintegration performance, leading to a decrease in the time the drug exists in solid form in the oral cavity. This improvement in disintegration time reduced the difficulty of swallowing for patients and enhanced medication compliance, while still ensuring that ODTs prepared by DC had sufficient mechanical strength to meet storage and transportation requirements. [ABSTRACT FROM AUTHOR]

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