A bioimage informatics approach to automatically extract complex fungal networks.

MOTIVATION: Fungi form extensive interconnected mycelial networks that scavenge efficiently for scarce resources in a heterogeneous environment. The architecture of the network is highly responsive to local nutritional cues, damage or predation, and continuously adapts through growth, branching, fu...

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Main Authors: Obara, B, Grau, V, Fricker, M
Format: Journal article
Language:English
Published: 2012
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author Obara, B
Grau, V
Fricker, M
author_facet Obara, B
Grau, V
Fricker, M
author_sort Obara, B
collection OXFORD
description MOTIVATION: Fungi form extensive interconnected mycelial networks that scavenge efficiently for scarce resources in a heterogeneous environment. The architecture of the network is highly responsive to local nutritional cues, damage or predation, and continuously adapts through growth, branching, fusion or regression. These networks also provide an example of an experimental planar network system that can be subjected to both theoretical analysis and experimental manipulation in multiple replicates. For high-throughput measurements, with hundreds of thousands of branches on each image, manual detection is not a realistic option, especially if extended time series are captured. Furthermore, branches typically show considerable variation in contrast as the individual cords span several orders of magnitude and the compressed soil substrate is not homogeneous in texture making automated segmentation challenging. RESULTS: We have developed and evaluated a high-throughput automated image analysis and processing approach using Phase Congruency Tensors and watershed segmentation to characterize complex fungal networks. The performance of the proposed approach is evaluated using complex images of saprotrophic fungal networks with 10(5)-10(6) edges. The results obtained demonstrate that this approach provides a fast and robust solution for detection and graph-based representation of complex curvilinear networks. AVAILABILITY AND IMPLEMENTATION: The Matlab toolbox is freely available through the Oxford e-Research Centre website: http://www.oerc.ox.ac.uk/research/bioimage/software CONTACTS: boguslaw.obara@oerc.ox.ac.uk.
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spelling oxford-uuid:85c20a54-c55e-4ed3-89b6-a485e35e7ab62022-03-26T21:59:33ZA bioimage informatics approach to automatically extract complex fungal networks.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:85c20a54-c55e-4ed3-89b6-a485e35e7ab6EnglishSymplectic Elements at Oxford2012Obara, BGrau, VFricker, M MOTIVATION: Fungi form extensive interconnected mycelial networks that scavenge efficiently for scarce resources in a heterogeneous environment. The architecture of the network is highly responsive to local nutritional cues, damage or predation, and continuously adapts through growth, branching, fusion or regression. These networks also provide an example of an experimental planar network system that can be subjected to both theoretical analysis and experimental manipulation in multiple replicates. For high-throughput measurements, with hundreds of thousands of branches on each image, manual detection is not a realistic option, especially if extended time series are captured. Furthermore, branches typically show considerable variation in contrast as the individual cords span several orders of magnitude and the compressed soil substrate is not homogeneous in texture making automated segmentation challenging. RESULTS: We have developed and evaluated a high-throughput automated image analysis and processing approach using Phase Congruency Tensors and watershed segmentation to characterize complex fungal networks. The performance of the proposed approach is evaluated using complex images of saprotrophic fungal networks with 10(5)-10(6) edges. The results obtained demonstrate that this approach provides a fast and robust solution for detection and graph-based representation of complex curvilinear networks. AVAILABILITY AND IMPLEMENTATION: The Matlab toolbox is freely available through the Oxford e-Research Centre website: http://www.oerc.ox.ac.uk/research/bioimage/software CONTACTS: boguslaw.obara@oerc.ox.ac.uk.
spellingShingle Obara, B
Grau, V
Fricker, M
A bioimage informatics approach to automatically extract complex fungal networks.
title A bioimage informatics approach to automatically extract complex fungal networks.
title_full A bioimage informatics approach to automatically extract complex fungal networks.
title_fullStr A bioimage informatics approach to automatically extract complex fungal networks.
title_full_unstemmed A bioimage informatics approach to automatically extract complex fungal networks.
title_short A bioimage informatics approach to automatically extract complex fungal networks.
title_sort bioimage informatics approach to automatically extract complex fungal networks
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AT grauv bioimageinformaticsapproachtoautomaticallyextractcomplexfungalnetworks
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