Login / Signup

A hybrid clustering algorithm for multiple-source resolving in bioluminescence tomography.

Hongbo GuoJingjing YuZhenhua HuHuangjian YiYuqing HouXiaowei He
Published in: Journal of biophotonics (2017)
Bioluminescence tomography is a preclinical imaging modality to locate and quantify internal bioluminescent sources from surface measurements, which experienced rapid growth in the last 10 years. However, multiple-source resolving remains a challenging issue in BLT. In this study, it is treated as an unsupervised pattern recognition problem based on the reconstruction result, and a novel hybrid clustering algorithm combining the advantages of affinity propagation (AP) and K-means is developed to identify multiple sources automatically. Moreover, we incorporate the clustering analysis into a general multiple-source reconstruction framework, which can provide stable reconstruction and accurate resolving result without providing the number of targets. Numerical simulations and in vivo experiments on 4T1-luc2 mouse model were conducted to assess the performance of the proposed method in multiple-source resolving. The encouraging results demonstrate significant effectiveness and potential of our method in preclinical BLT applications.
Keyphrases
  • machine learning
  • mouse model
  • single cell
  • systematic review
  • rna seq
  • deep learning
  • drinking water
  • stem cells
  • risk assessment
  • mesenchymal stem cells
  • molecular dynamics
  • mass spectrometry
  • neural network