Multi-feature-Based Robust Cell Tracking.
Brian H JunAdib AhmadzadeganArezoo M ArdekaniLuis SolorioPavlos P VlachosPublished in: Annals of biomedical engineering (2022)
Cell tracking algorithms have been used to extract cell counts and motility information from time-lapse images of migrating cells. However, these algorithms often fail when the collected images have cells with spatially and temporally varying features, such as morphology, position, and signal-to-noise ratio. Consequently, state-of-the-art algorithms are not robust or reliable because they require manual inputs to overcome the cell feature changes. To address these issues, we present a fully automated, adaptive, and robust feature-based cell tracking algorithm for the accurate detection and tracking of cells in time-lapse images. Our algorithm tackles measurement limitations twofold. First, we use Hessian filtering and adaptive thresholding to detect the cells in images, overcoming spatial feature variations among the existing cells without manually changing the input thresholds. Second, cell feature parameters are measured, including position, diameter, mean intensity, area, and orientation, and these parameters are simultaneously used to accurately track the cells between subsequent frames, even under poor temporal resolution. Our technique achieved a minimum of 92% detection and tracking accuracy, compared to 16% from Mosaic and Trackmate. Our improved method allows for extended tracking and characterization of heterogeneous cell behavior that are of particular interest for intravital imaging users.
Keyphrases
- label free
- deep learning
- machine learning
- induced apoptosis
- single cell
- cell cycle arrest
- cell therapy
- convolutional neural network
- oxidative stress
- endoplasmic reticulum stress
- cell death
- signaling pathway
- optical coherence tomography
- pseudomonas aeruginosa
- pi k akt
- high intensity
- cystic fibrosis
- mass spectrometry
- quantum dots
- biofilm formation