Literature DB >> 30918435

Weakly Supervised Learning of Single-Cell Feature Embeddings.

Juan C Caicedo1, Claire McQuin1, Allen Goodman1, Shantanu Singh1, Anne E Carpenter1.   

Abstract

We study the problem of learning representations for single cells in microscopy images to discover biological relationships between their experimental conditions. Many new applications in drug discovery and functional genomics require capturing the morphology of individual cells as comprehensively as possible. Deep convolutional neural networks (CNNs) can learn powerful visual representations, but require ground truth for training; this is rarely available in biomedical profiling experiments. While we do not know which experimental treatments produce cells that look alike, we do know that cells exposed to the same experimental treatment should generally look similar. Thus, we explore training CNNs using a weakly supervised approach that uses this information for feature learning. In addition, the training stage is regularized to control for unwanted variations using mixup or RNNs. We conduct experiments on two different datasets; the proposed approach yields single-cell embeddings that are more accurate than the widely adopted classical features, and are competitive with previously proposed transfer learning approaches.

Entities:  

Year:  2018        PMID: 30918435      PMCID: PMC6432648          DOI: 10.1109/CVPR.2018.00970

Source DB:  PubMed          Journal:  Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit        ISSN: 1063-6919


  9 in total

1.  Capturing Single-Cell Phenotypic Variation via Unsupervised Representation Learning.

Authors:  Maxime W Lafarge; Juan C Caicedo; Anne E Carpenter; Josien P W Pluim; Shantanu Singh; Mitko Veta
Journal:  Proc Mach Learn Res       Date:  2019-07

2.  LiveCellMiner: A new tool to analyze mitotic progression.

Authors:  Daniel Moreno-Andrés; Anuk Bhattacharyya; Anja Scheufen; Johannes Stegmaier
Journal:  PLoS One       Date:  2022-07-07       Impact factor: 3.752

Review 3.  Pooled genetic perturbation screens with image-based phenotypes.

Authors:  David Feldman; Luke Funk; Anna Le; Rebecca J Carlson; Michael D Leiken; FuNien Tsai; Brian Soong; Avtar Singh; Paul C Blainey
Journal:  Nat Protoc       Date:  2022-01-12       Impact factor: 17.021

4.  Unbiased Phenotype Detection Using Negative Controls.

Authors:  Antje Janosch; Carolin Kaffka; Marc Bickle
Journal:  SLAS Discov       Date:  2019-01-07       Impact factor: 3.341

5.  Learning unsupervised feature representations for single cell microscopy images with paired cell inpainting.

Authors:  Alex X Lu; Oren Z Kraus; Sam Cooper; Alan M Moses
Journal:  PLoS Comput Biol       Date:  2019-09-03       Impact factor: 4.475

6.  Correcting nuisance variation using Wasserstein distance.

Authors:  Gil Tabak; Minjie Fan; Samuel Yang; Stephan Hoyer; Geoffrey Davis
Journal:  PeerJ       Date:  2020-02-28       Impact factor: 2.984

Review 7.  Image-based profiling for drug discovery: due for a machine-learning upgrade?

Authors:  Srinivas Niranj Chandrasekaran; Hugo Ceulemans; Justin D Boyd; Anne E Carpenter
Journal:  Nat Rev Drug Discov       Date:  2020-12-22       Impact factor: 84.694

8.  Applications and Challenges of Machine Learning to Enable Realistic Cellular Simulations.

Authors:  Ritvik Vasan; Meagan P Rowan; Christopher T Lee; Gregory R Johnson; Padmini Rangamani; Michael Holst
Journal:  Front Phys       Date:  2020-01-21

9.  A machine learning approach to define antimalarial drug action from heterogeneous cell-based screens.

Authors:  George W Ashdown; Michelle Dimon; Minjie Fan; Fernando Sánchez-Román Terán; Kathrin Witmer; David C A Gaboriau; Zan Armstrong; D Michael Ando; Jake Baum
Journal:  Sci Adv       Date:  2020-09-25       Impact factor: 14.136

  9 in total

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