Literature DB >> 28294138

Machine learning applications in cell image analysis.

Andrey Kan1,2.   

Abstract

Machine learning (ML) refers to a set of automatic pattern recognition methods that have been successfully applied across various problem domains, including biomedical image analysis. This review focuses on ML applications for image analysis in light microscopy experiments with typical tasks of segmenting and tracking individual cells, and modelling of reconstructed lineage trees. After describing a typical image analysis pipeline and highlighting challenges of automatic analysis (for example, variability in cell morphology, tracking in presence of clutters) this review gives a brief historical outlook of ML, followed by basic concepts and definitions required for understanding examples. This article then presents several example applications at various image processing stages, including the use of supervised learning methods for improving cell segmentation, and the application of active learning for tracking. The review concludes with remarks on parameter setting and future directions.

Mesh:

Year:  2017        PMID: 28294138     DOI: 10.1038/icb.2017.16

Source DB:  PubMed          Journal:  Immunol Cell Biol        ISSN: 0818-9641            Impact factor:   5.126


  35 in total

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8.  CellProfiler: image analysis software for identifying and quantifying cell phenotypes.

Authors:  Anne E Carpenter; Thouis R Jones; Michael R Lamprecht; Colin Clarke; In Han Kang; Ola Friman; David A Guertin; Joo Han Chang; Robert A Lindquist; Jason Moffat; Polina Golland; David M Sabatini
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9.  Computational Image Analysis Reveals Intrinsic Multigenerational Differences between Anterior and Posterior Cerebral Cortex Neural Progenitor Cells.

Authors:  Mark R Winter; Mo Liu; David Monteleone; Justin Melunis; Uri Hershberg; Susan K Goderie; Sally Temple; Andrew R Cohen
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Review 10.  Machine learning and computer vision approaches for phenotypic profiling.

Authors:  Ben T Grys; Dara S Lo; Nil Sahin; Oren Z Kraus; Quaid Morris; Charles Boone; Brenda J Andrews
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  25 in total

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2.  Cell Tracking Profiler - a user-driven analysis framework for evaluating 4D live-cell imaging data.

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3.  Artificial intelligence, physiological genomics, and precision medicine.

Authors:  Anna Marie Williams; Yong Liu; Kevin R Regner; Fabrice Jotterand; Pengyuan Liu; Mingyu Liang
Journal:  Physiol Genomics       Date:  2018-01-26       Impact factor: 3.107

4.  Advanced microscopy and imaging techniques in immunology and cell biology.

Authors:  Edwin D Hawkins
Journal:  Immunol Cell Biol       Date:  2017-07       Impact factor: 5.126

5.  Fluorescence-based quantification of nucleocytoplasmic transport.

Authors:  Joshua B Kelley; Bryce M Paschal
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7.  Deep learning approach for quantification of organelles and misfolded polypeptide delivery within degradative compartments.

Authors:  Diego Morone; Alessandro Marazza; Timothy J Bergmann; Maurizio Molinari
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8.  A simple segmentation and quantification method for numerical quantitative analysis of cells and tissues.

Authors:  Hyun-Kyu Kang; Ki-Han Kim; Jin-Su Ahn; Hong-Bae Kim; Jeong-Han Yi; Hyung-Sik Kim
Journal:  Technol Health Care       Date:  2020       Impact factor: 1.285

9.  RNA-seq assistant: machine learning based methods to identify more transcriptional regulated genes.

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Review 10.  Systems Immunology: Revealing Influenza Immunological Imprint.

Authors:  Adriana Tomic; Andrew J Pollard; Mark M Davis
Journal:  Viruses       Date:  2021-05-20       Impact factor: 5.048

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