Literature DB >> 33417603

A deep learning approach for staging embryonic tissue isolates with small data.

Adam Joseph Ronald Pond1, Seongwon Hwang1, Berta Verd1,2, Benjamin Steventon1.   

Abstract

Machine learning approaches are becoming increasingly widespread and are now present in most areas of research. Their recent surge can be explained in part due to our ability to generate and store enormous amounts of data with which to train these models. The requirement for large training sets is also responsible for limiting further potential applications of machine learning, particularly in fields where data tend to be scarce such as developmental biology. However, recent research seems to indicate that machine learning and Big Data can sometimes be decoupled to train models with modest amounts of data. In this work we set out to train a CNN-based classifier to stage zebrafish tail buds at four different stages of development using small information-rich data sets. Our results show that two and three dimensional convolutional neural networks can be trained to stage developing zebrafish tail buds based on both morphological and gene expression confocal microscopy images, achieving in each case up to 100% test accuracy scores. Importantly, we show that high accuracy can be achieved with data set sizes of under 100 images, much smaller than the typical training set size for a convolutional neural net. Furthermore, our classifier shows that it is possible to stage isolated embryonic structures without the need to refer to classic developmental landmarks in the whole embryo, which will be particularly useful to stage 3D culture in vitro systems such as organoids. We hope that this work will provide a proof of principle that will help dispel the myth that large data set sizes are always required to train CNNs, and encourage researchers in fields where data are scarce to also apply ML approaches.

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Mesh:

Year:  2021        PMID: 33417603      PMCID: PMC7793293          DOI: 10.1371/journal.pone.0244151

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  42 in total

Review 1.  A survey on deep learning in medical image analysis.

Authors:  Geert Litjens; Thijs Kooi; Babak Ehteshami Bejnordi; Arnaud Arindra Adiyoso Setio; Francesco Ciompi; Mohsen Ghafoorian; Jeroen A W M van der Laak; Bram van Ginneken; Clara I Sánchez
Journal:  Med Image Anal       Date:  2017-07-26       Impact factor: 8.545

2.  Machine Learning for Integrating Data in Biology and Medicine: Principles, Practice, and Opportunities.

Authors:  Marinka Zitnik; Francis Nguyen; Bo Wang; Jure Leskovec; Anna Goldenberg; Michael M Hoffman
Journal:  Inf Fusion       Date:  2018-09-21       Impact factor: 12.975

3.  Stages of embryonic development of the zebrafish.

Authors:  C B Kimmel; W W Ballard; S R Kimmel; B Ullmann; T F Schilling
Journal:  Dev Dyn       Date:  1995-07       Impact factor: 3.780

4.  Comparative genomic and expression analysis of group B1 sox genes in zebrafish indicates their diversification during vertebrate evolution.

Authors:  Yuich Okuda; Hiroki Yoda; Masanori Uchikawa; Makoto Furutani-Seiki; Hiroyuki Takeda; Hisato Kondoh; Yusuke Kamachi
Journal:  Dev Dyn       Date:  2006-03       Impact factor: 3.780

5.  Dermatologist-level classification of skin cancer with deep neural networks.

Authors:  Andre Esteva; Brett Kuprel; Roberto A Novoa; Justin Ko; Susan M Swetter; Helen M Blau; Sebastian Thrun
Journal:  Nature       Date:  2017-01-25       Impact factor: 49.962

6.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning.

Authors:  Hoo-Chang Shin; Holger R Roth; Mingchen Gao; Le Lu; Ziyue Xu; Isabella Nogues; Jianhua Yao; Daniel Mollura; Ronald M Summers
Journal:  IEEE Trans Med Imaging       Date:  2016-02-11       Impact factor: 10.048

Review 7.  Deep learning for cellular image analysis.

Authors:  Erick Moen; Dylan Bannon; Takamasa Kudo; William Graf; Markus Covert; David Van Valen
Journal:  Nat Methods       Date:  2019-05-27       Impact factor: 28.547

8.  DeepCpG: accurate prediction of single-cell DNA methylation states using deep learning.

Authors:  Christof Angermueller; Heather J Lee; Wolf Reik; Oliver Stegle
Journal:  Genome Biol       Date:  2017-04-11       Impact factor: 13.583

9.  Prospective identification of hematopoietic lineage choice by deep learning.

Authors:  Felix Buggenthin; Florian Buettner; Philipp S Hoppe; Max Endele; Manuel Kroiss; Michael Strasser; Michael Schwarzfischer; Dirk Loeffler; Konstantinos D Kokkaliaris; Oliver Hilsenbeck; Timm Schroeder; Fabian J Theis; Carsten Marr
Journal:  Nat Methods       Date:  2017-02-20       Impact factor: 28.547

10.  Performance of convolutional neural networks for identification of bacteria in 3D microscopy datasets.

Authors:  Edouard A Hay; Raghuveer Parthasarathy
Journal:  PLoS Comput Biol       Date:  2018-12-03       Impact factor: 4.475

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