Weighted average ensemble-based semantic segmentation in biological electron microscopy images.
Kavitha Shaga DevanHans A KestlerClarissa ReadPaul WaltherPublished in: Histochemistry and cell biology (2022)
Semantic segmentation of electron microscopy images using deep learning methods is a valuable tool for the detailed analysis of organelles and cell structures. However, these methods require a large amount of labeled ground truth data that is often unavailable. To address this limitation, we present a weighted average ensemble model that can automatically segment biological structures in electron microscopy images when trained with only a small dataset. Thus, we exploit the fact that a combination of diverse base-learners is able to outperform one single segmentation model. Our experiments with seven different biological electron microscopy datasets demonstrate quantitative and qualitative improvements. We show that the Grad-CAM method can be used to interpret and verify the prediction of our model. Compared with a standard U-Net, the performance of our method is superior for all tested datasets. Furthermore, our model leverages a limited number of labeled training data to segment the electron microscopy images and therefore has a high potential for automated biological applications.
Keyphrases
- electron microscopy
- deep learning
- convolutional neural network
- artificial intelligence
- machine learning
- magnetic resonance
- big data
- stem cells
- optical coherence tomography
- magnetic resonance imaging
- systematic review
- contrast enhanced
- single cell
- network analysis
- computed tomography
- rna seq
- neural network
- virtual reality
- cell therapy
- pet imaging
- pet ct
- mesenchymal stem cells
- data analysis