Enhancing High-Content Imaging for Studying Microtubule Networks at Large-Scale
Abstract
Given the crucial role of microtubules for cell survival, many researchers have found success using microtubule-targeting agents in the search for effective cancer therapeutics. Understanding microtubule responses to targeted interventions requires that the microtubule network within cells can be consistently observed across a large sample of images. However, fluorescence noise sources captured simultaneously with biological signals while using wide-held microscopes can obfuscate fine microtubule structures. Such requirements are particularly challenging for high-throughput imaging, where researchers must make decisions related to the trade-off between imaging quality and speed. Here, we propose a computational framework to enhance the quality of high-throughput imaging data to achieve fast speed and high quality simultaneously. Using CycleGAN, we learn an image model from low-throughput, high-resolution images to enhance features, such as microtubule networks in high-throughput low-resolution images. We show that CycleGAN is effective in identifying microtubules with 0.93+ AUC-ROC and that these results are robust to different kinds of image noise. We further apply CycleGAN to quantify the changes in microtubule density as a result of the application of drug compounds, and show that the quantified responses correspond well with known drug effects.
Cite
Text
Lee et al. "Enhancing High-Content Imaging for Studying Microtubule Networks at Large-Scale." Proceedings of the 4th Machine Learning for Healthcare Conference, 2019.Markdown
[Lee et al. "Enhancing High-Content Imaging for Studying Microtubule Networks at Large-Scale." Proceedings of the 4th Machine Learning for Healthcare Conference, 2019.](https://mlanthology.org/mlhc/2019/lee2019mlhc-enhancing/)BibTeX
@inproceedings{lee2019mlhc-enhancing,
title = {{Enhancing High-Content Imaging for Studying Microtubule Networks at Large-Scale}},
author = {Lee, Hao-Chih and Cherng, Sarah T. and Miotto, Riccardo and Dudley, Joel T.},
booktitle = {Proceedings of the 4th Machine Learning for Healthcare Conference},
year = {2019},
pages = {592-613},
volume = {106},
url = {https://mlanthology.org/mlhc/2019/lee2019mlhc-enhancing/}
}