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The applications of Machine learning (ML) in designing dry powder for inhalation by using thin-film-freezing technology.
Jiang, Junhuang; Peng, Han-Hsuan; Yang, Zhenpei; Ma, Xiangyu; Sahakijpijarn, Sawittree; Moon, Chaeho; Ouyang, Defang; Williams Iii, Robert O.
Afiliação
  • Jiang J; Department of Molecular Pharmaceutics and Drug Delivery, College of Pharmacy, The University of Texas at Austin, TX, USA.
  • Peng HH; Department of Molecular Pharmaceutics and Drug Delivery, College of Pharmacy, The University of Texas at Austin, TX, USA.
  • Yang Z; Department of Computer Science, The University of Texas at Austin, TX, USA.
  • Ma X; Global Investment Research, Goldman Sachs, NY, USA.
  • Sahakijpijarn S; TFF Pharmaceuticals, Inc., TX, USA.
  • Moon C; Department of Molecular Pharmaceutics and Drug Delivery, College of Pharmacy, The University of Texas at Austin, TX, USA.
  • Ouyang D; State Key Laboratory of Quality Research in Chinese Medicine, Institute of Chinese Medical Sciences (ICMS), University of Macau, Macau, China.
  • Williams Iii RO; Department of Molecular Pharmaceutics and Drug Delivery, College of Pharmacy, The University of Texas at Austin, TX, USA. Electronic address: bill.williams@austin.utexas.edu.
Int J Pharm ; 626: 122179, 2022 Oct 15.
Article em En | MEDLINE | ID: mdl-36084876
ABSTRACT
Dry powder inhalers (DPIs) are one of the most widely used devices for treating respiratory diseases. Thin--film--freezing (TFF) is a particle engineering technology that has been demonstrated to prepare dry powder for inhalation with enhanced physicochemical properties. Aerosol performance, which is indicated by fine particle fraction (FPF) and mass median aerodynamic diameter (MMAD), is an important consideration during the product development process. However, the conventional approach for formulation development requires many trial-and-error experiments, which is both laborious and time consuming. As a state-of-the art technique, machine learning has gained more attention in pharmaceutical science and has been widely applied in different settings. In this study, we have successfully built a prediction model for aerosol performance by using both tabular data and scanning electron microscopy (SEM) images. TFF technology was used to prepare 134 dry powder formulations which were collected as a tabular dataset. After testing many machine learning models, we determined that the Random Forest (RF) model was best for FPF prediction with a mean absolute error of ± 7.251%, and artificial neural networks (ANNs) performed the best in estimating MMAD with a mean absolute error of ± 0.393 µm. In addition, a convolutional neural network was employed for SEM image classification and has demonstrated high accuracy (>83.86%) and adaptability in predicting 316 SEM images of three different drug formulations. In conclusion, the machine learning models using both tabular data and image classification were successfully established to evaluate the aerosol performance of dry powder for inhalation. These machine learning models facilitate the product development process of dry powder for inhalation manufactured by TFF technology and have the potential to significantly reduce the product development workload. The machine learning methodology can also be applied to other formulation design and development processes in the future.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Tecnologia / Inaladores de Pó Seco Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Tecnologia / Inaladores de Pó Seco Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article