Cargando…

Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion

Recent advances in multi-atlas based algorithms address many of the previous limitations in model-based and probabilistic segmentation methods. However, at the label fusion stage, a majority of algorithms focus primarily on optimizing weight-maps associated with the atlas library based on a theoreti...

Descripción completa

Detalles Bibliográficos
Autores principales: Bhagwat, Nikhil, Pipitone, Jon, Winterburn, Julie L., Guo, Ting, Duerden, Emma G., Voineskos, Aristotle N., Lepage, Martin, Miller, Steven P., Pruessner, Jens C., Chakravarty, M. Mallar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4949270/
https://www.ncbi.nlm.nih.gov/pubmed/27486386
http://dx.doi.org/10.3389/fnins.2016.00325
_version_ 1782443398443040768
author Bhagwat, Nikhil
Pipitone, Jon
Winterburn, Julie L.
Guo, Ting
Duerden, Emma G.
Voineskos, Aristotle N.
Lepage, Martin
Miller, Steven P.
Pruessner, Jens C.
Chakravarty, M. Mallar
author_facet Bhagwat, Nikhil
Pipitone, Jon
Winterburn, Julie L.
Guo, Ting
Duerden, Emma G.
Voineskos, Aristotle N.
Lepage, Martin
Miller, Steven P.
Pruessner, Jens C.
Chakravarty, M. Mallar
author_sort Bhagwat, Nikhil
collection PubMed
description Recent advances in multi-atlas based algorithms address many of the previous limitations in model-based and probabilistic segmentation methods. However, at the label fusion stage, a majority of algorithms focus primarily on optimizing weight-maps associated with the atlas library based on a theoretical objective function that approximates the segmentation error. In contrast, we propose a novel method—Autocorrecting Walks over Localized Markov Random Fields (AWoL-MRF)—that aims at mimicking the sequential process of manual segmentation, which is the gold-standard for virtually all the segmentation methods. AWoL-MRF begins with a set of candidate labels generated by a multi-atlas segmentation pipeline as an initial label distribution and refines low confidence regions based on a localized Markov random field (L-MRF) model using a novel sequential inference process (walks). We show that AWoL-MRF produces state-of-the-art results with superior accuracy and robustness with a small atlas library compared to existing methods. We validate the proposed approach by performing hippocampal segmentations on three independent datasets: (1) Alzheimer's Disease Neuroimaging Database (ADNI); (2) First Episode Psychosis patient cohort; and (3) A cohort of preterm neonates scanned early in life and at term-equivalent age. We assess the improvement in the performance qualitatively as well as quantitatively by comparing AWoL-MRF with majority vote, STAPLE, and Joint Label Fusion methods. AWoL-MRF reaches a maximum accuracy of 0.881 (dataset 1), 0.897 (dataset 2), and 0.807 (dataset 3) based on Dice similarity coefficient metric, offering significant performance improvements with a smaller atlas library (< 10) over compared methods. We also evaluate the diagnostic utility of AWoL-MRF by analyzing the volume differences per disease category in the ADNI1: Complete Screening dataset. We have made the source code for AWoL-MRF public at: https://github.com/CobraLab/AWoL-MRF.
format Online
Article
Text
id pubmed-4949270
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-49492702016-08-02 Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion Bhagwat, Nikhil Pipitone, Jon Winterburn, Julie L. Guo, Ting Duerden, Emma G. Voineskos, Aristotle N. Lepage, Martin Miller, Steven P. Pruessner, Jens C. Chakravarty, M. Mallar Front Neurosci Neuroscience Recent advances in multi-atlas based algorithms address many of the previous limitations in model-based and probabilistic segmentation methods. However, at the label fusion stage, a majority of algorithms focus primarily on optimizing weight-maps associated with the atlas library based on a theoretical objective function that approximates the segmentation error. In contrast, we propose a novel method—Autocorrecting Walks over Localized Markov Random Fields (AWoL-MRF)—that aims at mimicking the sequential process of manual segmentation, which is the gold-standard for virtually all the segmentation methods. AWoL-MRF begins with a set of candidate labels generated by a multi-atlas segmentation pipeline as an initial label distribution and refines low confidence regions based on a localized Markov random field (L-MRF) model using a novel sequential inference process (walks). We show that AWoL-MRF produces state-of-the-art results with superior accuracy and robustness with a small atlas library compared to existing methods. We validate the proposed approach by performing hippocampal segmentations on three independent datasets: (1) Alzheimer's Disease Neuroimaging Database (ADNI); (2) First Episode Psychosis patient cohort; and (3) A cohort of preterm neonates scanned early in life and at term-equivalent age. We assess the improvement in the performance qualitatively as well as quantitatively by comparing AWoL-MRF with majority vote, STAPLE, and Joint Label Fusion methods. AWoL-MRF reaches a maximum accuracy of 0.881 (dataset 1), 0.897 (dataset 2), and 0.807 (dataset 3) based on Dice similarity coefficient metric, offering significant performance improvements with a smaller atlas library (< 10) over compared methods. We also evaluate the diagnostic utility of AWoL-MRF by analyzing the volume differences per disease category in the ADNI1: Complete Screening dataset. We have made the source code for AWoL-MRF public at: https://github.com/CobraLab/AWoL-MRF. Frontiers Media S.A. 2016-07-19 /pmc/articles/PMC4949270/ /pubmed/27486386 http://dx.doi.org/10.3389/fnins.2016.00325 Text en Copyright © 2016 Bhagwat, Pipitone, Winterburn, Guo, Duerden, Voineskos, Lepage, Miller, Pruessner, Chakravarty and Alzheimer's Disease Neuroimaging Initiative. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Bhagwat, Nikhil
Pipitone, Jon
Winterburn, Julie L.
Guo, Ting
Duerden, Emma G.
Voineskos, Aristotle N.
Lepage, Martin
Miller, Steven P.
Pruessner, Jens C.
Chakravarty, M. Mallar
Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title_full Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title_fullStr Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title_full_unstemmed Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title_short Manual-Protocol Inspired Technique for Improving Automated MR Image Segmentation during Label Fusion
title_sort manual-protocol inspired technique for improving automated mr image segmentation during label fusion
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4949270/
https://www.ncbi.nlm.nih.gov/pubmed/27486386
http://dx.doi.org/10.3389/fnins.2016.00325
work_keys_str_mv AT bhagwatnikhil manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT pipitonejon manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT winterburnjuliel manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT guoting manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT duerdenemmag manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT voineskosaristotlen manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT lepagemartin manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT millerstevenp manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT pruessnerjensc manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion
AT chakravartymmallar manualprotocolinspiredtechniqueforimprovingautomatedmrimagesegmentationduringlabelfusion