Graph metric learning quantifies morphological differences between two genotypes of shoot apical meristem cells inArabidopsis

Author:

Scott Cory Braker123ORCID,Mjolsness Eric23ORCID,Oyen Diane3ORCID,Kodera Chie45ORCID,Uyttewaal Magalie4ORCID,Bouchez David4ORCID

Affiliation:

1. Department of Mathematics and Computer Science, Colorado College , Colorado Springs, CO 80903 , USA

2. Department of Computer Science, University of California Irvine , Irvine, CA 92697 , USA

3. Los Alamos National Laboratory , Los Alamos, NM 87544 , USA

4. Université Paris-Saclay, INRAE, AgroParisTech, Institut Jean-Pierre Bourgin (IJPB) , 78000 Versailles , France

5. CryoCapCell, Inserm U1195, Université Paris Saclay , 94270 Le Kremlin-Bicêtre , France

Abstract

AbstractWe present a method for learning ‘spectrally descriptive’ edge weights for graphs. We generalize a previously known distance measure on graphs (graph diffusion distance [GDD]), thereby allowing it to be tuned to minimize an arbitrary loss function. Because all steps involved in calculating this modified GDD are differentiable, we demonstrate that it is possible for a small neural network model to learn edge weights which minimize loss. We apply this method to discriminate between graphs constructed from shoot apical meristem images of two genotypes of Arabidopsis thaliana specimens: wild-type and trm678 triple mutants with cell division phenotype. Training edge weights and kernel parameters with contrastive loss produce a learned distance metric with large margins between these graph categories. We demonstrate this by showing improved performance of a simple k-nearest-neighbour classifier on the learned distance matrix. We also demonstrate a further application of this method to biological image analysis. Once trained, we use our model to compute the distance between the biological graphs and a set of graphs output by a cell division simulator. Comparing simulated cell division graphs to biological ones allows us to identify simulation parameter regimes which characterize mutant versus wild-type Arabidopsis cells. We find that trm678 mutant cells are characterized by increased randomness of division planes and decreased ability to avoid previous vertices between cell walls.

Funder

Human Frontiers Science Program grant HFSP

U.S. NIH NIDA Brain Initiative

U.S. NIH National Institute of Aging

Leverhulme Trust Visiting Professor

Laboratory Directed Research and Development program of Los Alamos National Laboratory

Colorado College Department of Mathematics and Computer Science Faculty Research stipend

IJPB’s Plant Observatory technological platforms

Saclay Plant Sciences-SPS

Publisher

Oxford University Press (OUP)

Subject

Plant Science,Agronomy and Crop Science,Biochemistry, Genetics and Molecular Biology (miscellaneous),Modeling and Simulation

Reference23 articles.

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3. Universal rule for the symmetric division of plant cells;Besson;Proceedings of the National Academy of Science of the United States of Americas,2011

4. On a fundamental condition of equilibrium for living cells;Errera;Comptes Rendus Hebdomadaires des Seances de l'Academie des Sciences,1886

5. Neocognitron: a self-organizing neural network model for a mechanism of visual pattern recognition.;Fukushima,1982

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