Literature DB >> 32234511

Can machine learning predict drug nanocrystals?

Yuan He1, Zhuyifan Ye1, Xinyang Liu1, Zhengjie Wei1, Fen Qiu1, Hai-Feng Li2, Ying Zheng3, Defang Ouyang4.   

Abstract

Nanocrystals have exhibited great advantage for enhancing the dissolution rate of water insoluble drugs due to the reduced size to nanoscale. However, current pharmaceutical approaches for nanocrystals formulation development highly depend on the expert experience and trial-and-error attempts which remain time and resource consuming. In this research, we utilized machine learning techniques to predict the particle size and polydispersity index (PDI) of nanocrystals. Firstly, 910 nanocrystal size data and 341 PDI data by three preparation methods (ball wet milling (BWM) method, high-pressure homogenization (HPH) method and antisolvent precipitation (ASP) method) were collected for the construction of the prediction models. The results demonstrated that light gradient boosting machine (LightGBM) exhibited well performance for the nanocrystals size and PDI prediction with BWM and HPH methods, but relatively poor predictions for ASP method. The possible reasons for the poor prediction refer to low quality of data because of the poor reproducibility and instability of nanocrystals by ASP method, which also confirm that current commercialized products were mainly manufactured by BWM and HPH approaches. Notably, the contribution of the influence factors was ranked by the LightGBM, which demonstrated that milling time, cycle index and concentration of stabilizer are crucial factors for nanocrystals prepared by BWM, HPH and ASP, respectively. Furthermore, the model generalizations and prediction accuracies of LightGBM were confirmed experimentally by the newly prepared nanocrystals. In conclusion, the machine learning techniques can be successfully utilized for the predictions of nanocrystals prepared by BWM and HPH methods. Our research also reveals a new way for nanotechnology manufacture.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Machine learning; Nanocrystals; Particle size; Polydispersity index (PDI); Prediction

Mesh:

Substances:

Year:  2020        PMID: 32234511     DOI: 10.1016/j.jconrel.2020.03.043

Source DB:  PubMed          Journal:  J Control Release        ISSN: 0168-3659            Impact factor:   9.776


  11 in total

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7.  Integrated in silico formulation design of self-emulsifying drug delivery systems.

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