Optimization of critical quality attributes in continuous twin-screw wet granulation via design space validated with pilot scale experimental data

[Display omitted] In this study, the influence of key process variables (screw speed, throughput and liquid to solid (L/S) ratio) of a continuous twin screw wet granulation (TSWG) was investigated using a central composite face-centered (CCF) experimental design method. Regression models were develo...

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Veröffentlicht in:International journal of pharmaceutics 2017-06, Vol.525 (1), p.249-263
Hauptverfasser: Liu, Huolong, Galbraith, S.C., Ricart, Brendon, Stanton, Courtney, Smith-Goettler, Brandye, Verdi, Luke, O’Connor, Thomas, Lee, Sau, Yoon, Seongkyu
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Sprache:eng
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Zusammenfassung:[Display omitted] In this study, the influence of key process variables (screw speed, throughput and liquid to solid (L/S) ratio) of a continuous twin screw wet granulation (TSWG) was investigated using a central composite face-centered (CCF) experimental design method. Regression models were developed to predict the process responses (motor torque, granule residence time), granule properties (size distribution, volume average diameter, yield, relative width, flowability) and tablet properties (tensile strength). The effects of the three key process variables were analyzed via contour and interaction plots. The experimental results have demonstrated that all the process responses, granule properties and tablet properties are influenced by changing the screw speed, throughput and L/S ratio. The TSWG process was optimized to produce granules with specific volume average diameter of 150μm and the yield of 95% based on the developed regression models. A design space (DS) was built based on volume average granule diameter between 90 and 200μm and the granule yield larger than 75% with a failure probability analysis using Monte Carlo simulations. Validation experiments successfully validated the robustness and accuracy of the DS generated using the CCF experimental design in optimizing a continuous TSWG process.
ISSN:0378-5173
1873-3476
DOI:10.1016/j.ijpharm.2017.04.055