High-Throughput Segmentation of Tiled Biological Structures using Random-Walk Distance Transforms

Author:

Baum Daniel1ORCID,Weaver James C2,Zlotnikov Igor3,Knötel David1,Tomholt Lara24,Dean Mason N5

Affiliation:

1. Department of Visual Data Analysis, Zuse Institute Berlin, Berlin, Germany

2. Wyss Institute for Biologically Inspired Engineering, Harvard University, Cambridge, MA, USA

3. B CUBE—Center for Molecular Bioengineering, Technische Universität Dresden, Dresden, Germany

4. Harvard Graduate School of Design, Harvard University, Cambridge, MA, USA

5. Max Planck Institute of Colloids and Interfaces, Department of Biomaterials, Research Campus Golm, Potsdam, Germany

Abstract

Abstract Various 3D imaging techniques are routinely used to examine biological materials, the results of which are usually a stack of grayscale images. In order to quantify structural aspects of the biological materials, however, they must first be extracted from the dataset in a process called segmentation. If the individual structures to be extracted are in contact or very close to each other, distance-based segmentation methods utilizing the Euclidean distance transform are commonly employed. Major disadvantages of the Euclidean distance transform, however, are its susceptibility to noise (very common in biological data), which often leads to incorrect segmentations (i.e., poor separation of objects of interest), and its limitation of being only effective for roundish objects. In the present work, we propose an alternative distance transform method, the random-walk distance transform, and demonstrate its effectiveness in high-throughput segmentation of three microCT datasets of biological tilings (i.e., structures composed of a large number of similar repeating units). In contrast to the Euclidean distance transform, the random-walk approach represents the global, rather than the local, geometric character of the objects to be segmented and, thus, is less susceptible to noise. In addition, it is directly applicable to structures with anisotropic shape characteristics. Using three case studies—tessellated cartilage from a stingray, the dermal endoskeleton of a starfish, and the prismatic layer of a bivalve mollusc shell—we provide a typical workflow for the segmentation of tiled structures, describe core image processing concepts that are underused in biological research, and show that for each study system, large amounts of biologically-relevant data can be rapidly segmented, visualized, and analyzed.

Funder

Adaptation and Evolution of Biological Materials

SICB 2019

SICB Divisions

American Microscopy Society

Company of Biologists

Bioinspiration and Biomimetics

Micro Photonics Inc.

Overleaf and Thermo Fisher Scientific

HFSP Young Investigators

US Office of Naval Research

Bundesministerium für Bildung und Forschung

BMBF

Center for Nanoscale Systems

CNS

National Nanotechnology Coordinated Infrastructure Network

NNCI

National Science Foundation

NSF

Publisher

Oxford University Press (OUP)

Subject

Plant Science,Animal Science and Zoology

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