Image-Based Identification of Cell Cultures by Machine Learning
@inproceedings{Babatunde2017ImageBasedIO, title={Image-Based Identification of Cell Cultures by Machine Learning}, author={Oluleye Hezekiah Babatunde and Ashley Baltes and J. Yin}, year={2017} }
Biomedical laboratories often use different cell types in the same assay or the same cell type in different assays. One cell type can become contaminated by another, or cells can be mis-identified, giving poor results. Addressing these issues by DNA analyses can be time-consuming, labor intensive or costly to implement. Here we uniquely employ Legendre moments (LM), Zernike moments (ZM), circularity and a genetic algorithm (GA) to advance a computer-based vision system, and we task it to… CONTINUE READING
Figures and Topics from this paper
One Citation
References
SHOWING 1-10 OF 62 REFERENCES
Context based mixture model for cell phase identification in automated fluorescence microscopy
- Computer Science, Medicine
- BMC Bioinformatics
- 2006
- 35
- PDF
Lung cancer cell identification based on artificial neural network ensembles
- Computer Science, Medicine
- Artif. Intell. Medicine
- 2002
- 339
- PDF
A neural network classifier capable of recognizing the patterns of all major subcellular structures in fluorescence microscope images of HeLa cells
- Medicine, Computer Science
- Bioinform.
- 2001
- 425
- PDF
Brain tumor segmentation with Deep Neural Networks
- Computer Science, Medicine
- Medical Image Anal.
- 2017
- 1,451
- PDF
Blood Cell Identification Using a Simple Neural Network
- Computer Science, Medicine
- Int. J. Neural Syst.
- 2008
- 27
Cell identification using single beam lensless imaging with pseudo-random phase encoding.
- Computer Science, Medicine
- Optics letters
- 2016
- 9
Real-Time Three-Dimensional Cell Segmentation in Large-Scale Microscopy Data of Developing Embryos.
- Biology, Medicine
- Developmental cell
- 2016
- 118
- PDF
EBImage—an R package for image processing with applications to cellular phenotypes
- Computer Science, Medicine
- Bioinform.
- 2010
- 399
- PDF