NuSeT: A deep learning tool for reliably separating and analyzing crowded cells.
Linfeng YangRajarshi P GhoshJ Matthew FranklinSimon B ChenChenyu YouRaja R NarayanMarc L MelcherJan T LiphardtPublished in: PLoS computational biology (2020)
Segmenting cell nuclei within microscopy images is a ubiquitous task in biological research and clinical applications. Unfortunately, segmenting low-contrast overlapping objects that may be tightly packed is a major bottleneck in standard deep learning-based models. We report a Nuclear Segmentation Tool (NuSeT) based on deep learning that accurately segments nuclei across multiple types of fluorescence imaging data. Using a hybrid network consisting of U-Net and Region Proposal Networks (RPN), followed by a watershed step, we have achieved superior performance in detecting and delineating nuclear boundaries in 2D and 3D images of varying complexities. By using foreground normalization and additional training on synthetic images containing non-cellular artifacts, NuSeT improves nuclear detection and reduces false positives. NuSeT addresses common challenges in nuclear segmentation such as variability in nuclear signal and shape, limited training sample size, and sample preparation artifacts. Compared to other segmentation models, NuSeT consistently fares better in generating accurate segmentation masks and assigning boundaries for touching nuclei.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- fluorescence imaging
- machine learning
- induced apoptosis
- high resolution
- magnetic resonance
- single cell
- stem cells
- high throughput
- optical coherence tomography
- cell therapy
- label free
- mass spectrometry
- cell cycle arrest
- signaling pathway
- high speed
- molecularly imprinted
- data analysis