Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture
Three-dimensional culture systems that allow generation of monolayered epithelial cell spheroids are widely used to study epithelial function in vitro. Epithelial spheroid formation is applied to address cellular consequences of (mono)-genetic disorders, that is, ciliopathies, in toxicity testing, o...
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doaj-17464e1f7cdf4e5ba3a1b3670d06369d2020-11-25T02:41:16ZengFrontiers Media S.A.Frontiers in Genetics1664-80212020-03-011110.3389/fgene.2020.00248519111Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D CultureBirga Soetje0Joachim Fuellekrug1Dieter Haffner2Wolfgang H. Ziegler3Department of Paediatric Kidney, Liver and Metabolic Diseases, Hannover Medical School, Hanover, GermanyMolecular Cell Biology Laboratory, Internal Medicine IV, University Hospital Heidelberg, Heidelberg, GermanyDepartment of Paediatric Kidney, Liver and Metabolic Diseases, Hannover Medical School, Hanover, GermanyDepartment of Paediatric Kidney, Liver and Metabolic Diseases, Hannover Medical School, Hanover, GermanyThree-dimensional culture systems that allow generation of monolayered epithelial cell spheroids are widely used to study epithelial function in vitro. Epithelial spheroid formation is applied to address cellular consequences of (mono)-genetic disorders, that is, ciliopathies, in toxicity testing, or to develop treatment options aimed to restore proper epithelial cell characteristics and function. With the potential of a high-throughput method, the main obstacle to efficient application of the spheroid formation assay so far is the laborious, time-consuming, and bias-prone analysis of spheroid images by individuals. Hundredths of multidimensional fluorescence images are blinded, rated by three persons, and subsequently, differences in ratings are compared and discussed. Here, we apply supervised learning and compare strategies based on machine learning versus deep learning. While deep learning approaches can directly process raw image data, machine learning requires transformed data of features extracted from fluorescence images. We verify the accuracy of both strategies on a validation data set, analyse an experimental data set, and observe that different strategies can be very accurate. Deep learning, however, is less sensitive to overfitting and experimental batch-to-batch variations, thus providing a rather powerful and easily adjustable classification tool.https://www.frontiersin.org/article/10.3389/fgene.2020.00248/fullimage analysisepithelial morphogenesis3D culturepolarityspheroidsmachine learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Birga Soetje Joachim Fuellekrug Dieter Haffner Wolfgang H. Ziegler |
spellingShingle |
Birga Soetje Joachim Fuellekrug Dieter Haffner Wolfgang H. Ziegler Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture Frontiers in Genetics image analysis epithelial morphogenesis 3D culture polarity spheroids machine learning |
author_facet |
Birga Soetje Joachim Fuellekrug Dieter Haffner Wolfgang H. Ziegler |
author_sort |
Birga Soetje |
title |
Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture |
title_short |
Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture |
title_full |
Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture |
title_fullStr |
Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture |
title_full_unstemmed |
Application and Comparison of Supervised Learning Strategies to Classify Polarity of Epithelial Cell Spheroids in 3D Culture |
title_sort |
application and comparison of supervised learning strategies to classify polarity of epithelial cell spheroids in 3d culture |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Genetics |
issn |
1664-8021 |
publishDate |
2020-03-01 |
description |
Three-dimensional culture systems that allow generation of monolayered epithelial cell spheroids are widely used to study epithelial function in vitro. Epithelial spheroid formation is applied to address cellular consequences of (mono)-genetic disorders, that is, ciliopathies, in toxicity testing, or to develop treatment options aimed to restore proper epithelial cell characteristics and function. With the potential of a high-throughput method, the main obstacle to efficient application of the spheroid formation assay so far is the laborious, time-consuming, and bias-prone analysis of spheroid images by individuals. Hundredths of multidimensional fluorescence images are blinded, rated by three persons, and subsequently, differences in ratings are compared and discussed. Here, we apply supervised learning and compare strategies based on machine learning versus deep learning. While deep learning approaches can directly process raw image data, machine learning requires transformed data of features extracted from fluorescence images. We verify the accuracy of both strategies on a validation data set, analyse an experimental data set, and observe that different strategies can be very accurate. Deep learning, however, is less sensitive to overfitting and experimental batch-to-batch variations, thus providing a rather powerful and easily adjustable classification tool. |
topic |
image analysis epithelial morphogenesis 3D culture polarity spheroids machine learning |
url |
https://www.frontiersin.org/article/10.3389/fgene.2020.00248/full |
work_keys_str_mv |
AT birgasoetje applicationandcomparisonofsupervisedlearningstrategiestoclassifypolarityofepithelialcellspheroidsin3dculture AT joachimfuellekrug applicationandcomparisonofsupervisedlearningstrategiestoclassifypolarityofepithelialcellspheroidsin3dculture AT dieterhaffner applicationandcomparisonofsupervisedlearningstrategiestoclassifypolarityofepithelialcellspheroidsin3dculture AT wolfganghziegler applicationandcomparisonofsupervisedlearningstrategiestoclassifypolarityofepithelialcellspheroidsin3dculture |
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