Automated segmentation of cell organelles in volume electron microscopy using deep learning.

Journal: Microscopy research and technique
PMID:

Abstract

Recent advances in computing power triggered the use of artificial intelligence in image analysis in life sciences. To train these algorithms, a large enough set of certified labeled data is required. The trained neural network is then capable of producing accurate instance segmentation results that will then need to be re-assembled into the original dataset: the entire process requires substantial expertise and time to achieve quantifiable results. To speed-up the process, from cell organelle detection to quantification across electron microscopy modalities, we propose a deep-learning based approach for fast automatic outline segmentation (FAMOUS), that involves organelle detection combined with image morphology, and 3D meshing to automatically segment, visualize and quantify cell organelles within volume electron microscopy datasets. From start to finish, FAMOUS provides full segmentation results within a week on previously unseen datasets. FAMOUS was showcased on a HeLa cell dataset acquired using a focused ion beam scanning electron microscope, and on yeast cells acquired by transmission electron tomography. RESEARCH HIGHLIGHTS: Introducing a rapid, multimodal machine-learning workflow for the automatic segmentation of 3D cell organelles. Successfully applied to a variety of volume electron microscopy datasets and cell lines. Outperforming manual segmentation methods in time and accuracy. Enabling high-throughput quantitative cell biology.

Authors

  • Nebojša Nešić
    Faculty of Informatics and Computation, Singidunum University, Belgrade, Serbia.
  • Xavier Heiligenstein
    CryoCapCell, Le Kremlin-Bicêtre, France.
  • Lydia Zopf
    Austrian BioImaging, Vienna BioCenter Core Facilities, Vienna, Austria.
  • Valentin Blüml
    Vienna BioCenter Core Facilities GmbH (VBCF), Vienna, Austria.
  • Katharina S Keuenhof
    Department for Chemistry and Molecular Biology, University of Gothenburg, Gothenburg, Sweden.
  • Michael Wagner
  • Johanna L Höög
    Department for Chemistry and Molecular Biology, University of Gothenburg, Gothenburg, Sweden.
  • Heng Qi
    School of Mechanical Engineering, Anhui Polytechnic University, Wuhu 241000, China.
  • Zhiyang Li
    Department of Clinical Laboratory, The Affiliated Drum Tower Hospital of Nanjing University Medical School, Nanjing, China.
  • Georgios Tsaramirsis
    Information Technology Department, King Abdulaziz University, Jeddah 21589, Saudi Arabia. gtsaramirsis@kau.edu.sa.
  • Christopher J Peddie
    Electron Microscopy Science Technology Platform, The Francis Crick Institute, London, UK.
  • Milos Stojmenovic
    Department of Computer Science and Electrical Engineering, Singidunum University, 11000 Belgrade, Serbia. mstojmenovic@singidunum.ac.rs.
  • Andreas Walter
    Vienna BioCenter Core Facilities GmbH (VBCF), Vienna, Austria.