Hybrid machine-learning framework for volumetric segmentation and quantification of vacuoles in individual yeast cells using holotomography.
Moosung LeeMarina KunziGabriel NeurohrSung Sik LeeYong Keun ParkPublished in: Biomedical optics express (2023)
The precise, quantitative evaluation of intracellular organelles in three-dimensional (3D) imaging data poses a significant challenge due to the inherent constraints of traditional microscopy techniques, the requirements of the use of exogenous labeling agents, and existing computational methods. To counter these challenges, we present a hybrid machine-learning framework exploiting correlative imaging of 3D quantitative phase imaging with 3D fluorescence imaging of labeled cells. The algorithm, which synergistically integrates a random-forest classifier with a deep neural network, is trained using the correlative imaging data set, and the trained network is then applied to 3D quantitative phase imaging of cell data. We applied this method to live budding yeast cells. The results revealed precise segmentation of vacuoles inside individual yeast cells, and also provided quantitative evaluations of biophysical parameters, including volumes, concentration, and dry masses of automatically segmented vacuoles.
Keyphrases
- high resolution
- machine learning
- induced apoptosis
- fluorescence imaging
- cell cycle arrest
- deep learning
- big data
- neural network
- electronic health record
- cell death
- convolutional neural network
- oxidative stress
- single cell
- climate change
- resistance training
- computed tomography
- magnetic resonance
- optical coherence tomography
- mesenchymal stem cells
- mass spectrometry
- label free