Frontiers in Bioengineering and Biotechnology (Jan 2022)

Morphology-Based Deep Learning Approach for Predicting Osteogenic Differentiation

  • Yiqing Lan,
  • Yiqing Lan,
  • Yiqing Lan,
  • Nannan Huang,
  • Nannan Huang,
  • Nannan Huang,
  • Yiru Fu,
  • Yiru Fu,
  • Yiru Fu,
  • Kehao Liu,
  • Kehao Liu,
  • Kehao Liu,
  • He Zhang,
  • He Zhang,
  • He Zhang,
  • Yuzhou Li,
  • Yuzhou Li,
  • Yuzhou Li,
  • Sheng Yang,
  • Sheng Yang,
  • Sheng Yang

DOI
https://doi.org/10.3389/fbioe.2021.802794
Journal volume & issue
Vol. 9

Abstract

Read online

Early, high-throughput, and accurate recognition of osteogenic differentiation of stem cells is urgently required in stem cell therapy, tissue engineering, and regenerative medicine. In this study, we established an automatic deep learning algorithm, i.e., osteogenic convolutional neural network (OCNN), to quantitatively measure the osteogenic differentiation of rat bone marrow mesenchymal stem cells (rBMSCs). rBMSCs stained with F-actin and DAPI during early differentiation (day 0, 1, 4, and 7) were captured using laser confocal scanning microscopy to train OCNN. As a result, OCNN successfully distinguished differentiated cells at a very early stage (24 h) with a high area under the curve (AUC) (0.94 ± 0.04) and correlated with conventional biochemical markers. Meanwhile, OCNN exhibited better prediction performance compared with the single morphological parameters and support vector machine. Furthermore, OCNN successfully predicted the dose-dependent effects of small-molecule osteogenic drugs and a cytokine. OCNN-based online learning models can further recognize the osteogenic differentiation of rBMSCs cultured on several material surfaces. Hence, this study initially demonstrated the foreground of OCNN in osteogenic drug and biomaterial screening for next-generation tissue engineering and stem cell research.

Keywords