Applied Sciences (Jun 2022)

Transfer Learning Analysis for Subvisible Particle Flow Imaging of Pharmaceutical Formulations

  • Xiangan Long,
  • Chongjun Ma,
  • Han Sheng,
  • Liwen Chen,
  • Yiyan Fei,
  • Lan Mi,
  • Dongmei Han,
  • Jiong Ma

DOI
https://doi.org/10.3390/app12125843
Journal volume & issue
Vol. 12, no. 12
p. 5843

Abstract

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Subvisible particles are an ongoing problem in biotherapeutic injectable pharmaceutical formulations, and their identification is an important prerequisite for tracing them back to their source and optimizing the process. Flow imaging microscopy (FIM) is a favored imaging technique, mainly because of its ability to achieve rapid batch imaging of subvisible particles in solution with excellent imaging quality. This study used VGG16 after transfer learning to identify subvisible particle images acquired using FlowCam. We manually prepared standards for seven classes of particles, acquired the image information through FlowCam, and fed the images over 5 µm into VGG16 consisting of a convolutional base of VGG16 pre-trained with ImageNet data and a custom classifier for training. An accuracy of 97.51% was obtained for the test set data. The study also demonstrated that the recognition method using transfer learning outperforms machine learning methods based on morphological parameters in terms of accuracy, and has a significant training speed advantage over scratch-trained CNN. The combination of transfer learning and FIM images is expected to provide a general and accurate data-analysis method for identifying subvisible particles.

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