Dense cellular segmentation for EM using 2D–3D neural network ensembles

Biologists who use electron microscopy (EM) images to build nanoscale 3D models of whole cells and their organelles have historically been limited to small numbers of cells and cellular features due to constraints in imaging and analysis. This has been a major factor limiting insight into the complex variability of cellular environments. Modern EM can produce gigavoxel image volumes containing large numbers of cells, but accurate manual segmentation of image features is slow and limits the creation of cell models. Segmentation algorithms based on convolutional neural networks can process large volumes quickly, but achieving EM task accuracy goals often challenges current techniques. Here, we define dense cellular segmentation as a multiclass semantic segmentation task for modeling cells and large numbers of their organelles, and give an example in human blood platelets. We present an algorithm using novel hybrid 2D–3D segmentation networks to produce dense cellular segmentations with accuracy levels that outperform baseline methods and approach those of human annotators. To our knowledge, this work represents the first published approach to automating the creation of cell models with this level of structural detail.

PDF Abstract

Datasets


Introduced in the Paper:

3D Platelet EM
Task Dataset Model Metric Name Metric Value Global Rank Benchmark
3D Semantic Segmentation 3D Platelet EM 2D–3D + 3 × 3 × 3 Mean IoU (test) 0.446 # 1
Electron Microscopy Image Segmentation 3D Platelet EM Hybrid 2D-3D Segmentation Net Average IOU 44.6 # 1

Methods


No methods listed for this paper. Add relevant methods here