Inferring statistical properties of 3D cell geometry from 2D slices.

Although cell shape can reflect the mechanical and biochemical properties of the cell and its environment, quantification of 3D cell shapes within 3D tissues remains difficult, typically requiring digital reconstruction from a stack of 2D images. We investigate a simple alternative technique to extr...

Full description

Bibliographic Details
Main Authors: Tristan A Sharp, Matthias Merkel, M Lisa Manning, Andrea J Liu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0209892
id doaj-4cb4cc1ae1ac4f238423484f2abab843
record_format Article
spelling doaj-4cb4cc1ae1ac4f238423484f2abab8432021-03-03T20:55:11ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01142e020989210.1371/journal.pone.0209892Inferring statistical properties of 3D cell geometry from 2D slices.Tristan A SharpMatthias MerkelM Lisa ManningAndrea J LiuAlthough cell shape can reflect the mechanical and biochemical properties of the cell and its environment, quantification of 3D cell shapes within 3D tissues remains difficult, typically requiring digital reconstruction from a stack of 2D images. We investigate a simple alternative technique to extract information about the 3D shapes of cells in a tissue; this technique connects the ensemble of 3D shapes in the tissue with the distribution of 2D shapes observed in independent 2D slices. Using cell vertex model geometries, we find that the distribution of 2D shapes allows clear determination of the mean value of a 3D shape index. We analyze the errors that may arise in practice in the estimation of the mean 3D shape index from 2D imagery and find that typically only a few dozen cells in 2D imagery are required to reduce uncertainty below 2%. Even though we developed the method for isotropic animal tissues, we demonstrate it on an anisotropic plant tissue. This framework could also be naturally extended to estimate additional 3D geometric features and quantify their uncertainty in other materials.https://doi.org/10.1371/journal.pone.0209892
collection DOAJ
language English
format Article
sources DOAJ
author Tristan A Sharp
Matthias Merkel
M Lisa Manning
Andrea J Liu
spellingShingle Tristan A Sharp
Matthias Merkel
M Lisa Manning
Andrea J Liu
Inferring statistical properties of 3D cell geometry from 2D slices.
PLoS ONE
author_facet Tristan A Sharp
Matthias Merkel
M Lisa Manning
Andrea J Liu
author_sort Tristan A Sharp
title Inferring statistical properties of 3D cell geometry from 2D slices.
title_short Inferring statistical properties of 3D cell geometry from 2D slices.
title_full Inferring statistical properties of 3D cell geometry from 2D slices.
title_fullStr Inferring statistical properties of 3D cell geometry from 2D slices.
title_full_unstemmed Inferring statistical properties of 3D cell geometry from 2D slices.
title_sort inferring statistical properties of 3d cell geometry from 2d slices.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Although cell shape can reflect the mechanical and biochemical properties of the cell and its environment, quantification of 3D cell shapes within 3D tissues remains difficult, typically requiring digital reconstruction from a stack of 2D images. We investigate a simple alternative technique to extract information about the 3D shapes of cells in a tissue; this technique connects the ensemble of 3D shapes in the tissue with the distribution of 2D shapes observed in independent 2D slices. Using cell vertex model geometries, we find that the distribution of 2D shapes allows clear determination of the mean value of a 3D shape index. We analyze the errors that may arise in practice in the estimation of the mean 3D shape index from 2D imagery and find that typically only a few dozen cells in 2D imagery are required to reduce uncertainty below 2%. Even though we developed the method for isotropic animal tissues, we demonstrate it on an anisotropic plant tissue. This framework could also be naturally extended to estimate additional 3D geometric features and quantify their uncertainty in other materials.
url https://doi.org/10.1371/journal.pone.0209892
work_keys_str_mv AT tristanasharp inferringstatisticalpropertiesof3dcellgeometryfrom2dslices
AT matthiasmerkel inferringstatisticalpropertiesof3dcellgeometryfrom2dslices
AT mlisamanning inferringstatisticalpropertiesof3dcellgeometryfrom2dslices
AT andreajliu inferringstatisticalpropertiesof3dcellgeometryfrom2dslices
_version_ 1714819757765558272