scholarly journals Chromatin Folding Coordinate and Landscape Unraveled by Deep Learning Analysis of Single-Cell Imaging Data

2020 ◽  
Vol 118 (3) ◽  
pp. 548a
Author(s):  
Wenjun Xie ◽  
Yifeng Qi ◽  
Bin Zhang
2022 ◽  
Vol 8 ◽  
Author(s):  
Ebony Rose Watson ◽  
Atefeh Taherian Fard ◽  
Jessica Cara Mar

Integrating single cell omics and single cell imaging allows for a more effective characterisation of the underlying mechanisms that drive a phenotype at the tissue level, creating a comprehensive profile at the cellular level. Although the use of imaging data is well established in biomedical research, its primary application has been to observe phenotypes at the tissue or organ level, often using medical imaging techniques such as MRI, CT, and PET. These imaging technologies complement omics-based data in biomedical research because they are helpful for identifying associations between genotype and phenotype, along with functional changes occurring at the tissue level. Single cell imaging can act as an intermediary between these levels. Meanwhile new technologies continue to arrive that can be used to interrogate the genome of single cells and its related omics datasets. As these two areas, single cell imaging and single cell omics, each advance independently with the development of novel techniques, the opportunity to integrate these data types becomes more and more attractive. This review outlines some of the technologies and methods currently available for generating, processing, and analysing single-cell omics- and imaging data, and how they could be integrated to further our understanding of complex biological phenomena like ageing. We include an emphasis on machine learning algorithms because of their ability to identify complex patterns in large multidimensional data.


Biostatistics ◽  
2015 ◽  
Vol 16 (4) ◽  
pp. 655-669 ◽  
Author(s):  
Kirsty L. Hey ◽  
Hiroshi Momiji ◽  
Karen Featherstone ◽  
Julian R.E. Davis ◽  
Michael R.H. White ◽  
...  

2019 ◽  
Author(s):  
Erick Moen ◽  
Enrico Borba ◽  
Geneva Miller ◽  
Morgan Schwartz ◽  
Dylan Bannon ◽  
...  

AbstractLive-cell imaging experiments have opened an exciting window into the behavior of living systems. While these experiments can produce rich data, the computational analysis of these datasets is challenging. Single-cell analysis requires that cells be accurately identified in each image and subsequently tracked over time. Increasingly, deep learning is being used to interpret microscopy image with single cell resolution. In this work, we apply deep learning to the problem of tracking single cells in live-cell imaging data. Using crowdsourcing and a human-in-the-loop approach to data annotation, we constructed a dataset of over 11,000 trajectories of cell nuclei that includes lineage information. Using this dataset, we successfully trained a deep learning model to perform cell tracking within a linear programming framework. Benchmarking tests demonstrate that our method achieves state-of-the-art performance on the task of cell tracking with respect to multiple accuracy metrics. Further, we show that our deep learning-based method generalizes to perform cell tracking for both fluorescent and brightfield images of the cell cytoplasm, despite having never been trained on those data types. This enables analysis of live-cell imaging data collected across imaging modalities. A persistent cloud deployment of our cell tracker is available at http://www.deepcell.org.


Author(s):  
UKM Teichgräber ◽  
JG Pinkernelle ◽  
F Neumann ◽  
T Benter ◽  
H Bruhn ◽  
...  

2018 ◽  
Vol 14 (2) ◽  
pp. 115-125 ◽  
Author(s):  
Andrea K. Pomerantz ◽  
Farid Sari-Sarraf ◽  
Kerri J. Grove ◽  
Liliana Pedro ◽  
Patrick J. Rudewicz ◽  
...  

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